US20150153757A1 - Microgrid Model Based Automated Real Time Simulation for Market Based Electric Power System Optimization - Google Patents

Microgrid Model Based Automated Real Time Simulation for Market Based Electric Power System Optimization Download PDF

Info

Publication number
US20150153757A1
US20150153757A1 US14/617,271 US201514617271A US2015153757A1 US 20150153757 A1 US20150153757 A1 US 20150153757A1 US 201514617271 A US201514617271 A US 201514617271A US 2015153757 A1 US2015153757 A1 US 2015153757A1
Authority
US
United States
Prior art keywords
virtual
real
electric power
model
data
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Abandoned
Application number
US14/617,271
Inventor
Kevin Meagher
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Wavetech Global Inc
Original Assignee
Power Analytics Corp
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Power Analytics Corp filed Critical Power Analytics Corp
Priority to US14/617,271 priority Critical patent/US20150153757A1/en
Publication of US20150153757A1 publication Critical patent/US20150153757A1/en
Assigned to PACIFIC WESTERN BANK reassignment PACIFIC WESTERN BANK SECURITY INTEREST (SEE DOCUMENT FOR DETAILS). Assignors: POWER ANALYTICS CORPORATION
Assigned to EDSA MICRO CORPORATION reassignment EDSA MICRO CORPORATION ASSIGNMENT OF ASSIGNORS INTEREST (SEE DOCUMENT FOR DETAILS). Assignors: MEAGHER, KEVIN
Assigned to POWER ANALYTICS CORPORATION reassignment POWER ANALYTICS CORPORATION CHANGE OF NAME (SEE DOCUMENT FOR DETAILS). Assignors: EDSA MICRO CORPORATION
Assigned to POWER ANALYTICS CORPORATION reassignment POWER ANALYTICS CORPORATION RELEASE BY SECURED PARTY (SEE DOCUMENT FOR DETAILS). Assignors: PACIFIC WESTERN BANK
Priority to US15/925,245 priority patent/US10962999B2/en
Assigned to WAVETECH GLOBAL INC. reassignment WAVETECH GLOBAL INC. ASSIGNMENT OF ASSIGNORS INTEREST (SEE DOCUMENT FOR DETAILS). Assignors: POWER ANALYTICS CORPORATION
Abandoned legal-status Critical Current

Links

Images

Classifications

    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05FSYSTEMS FOR REGULATING ELECTRIC OR MAGNETIC VARIABLES
    • G05F1/00Automatic systems in which deviations of an electric quantity from one or more predetermined values are detected at the output of the system and fed back to a device within the system to restore the detected quantity to its predetermined value or values, i.e. retroactive systems
    • G05F1/66Regulating electric power
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B17/00Systems involving the use of models or simulators of said systems
    • G05B17/02Systems involving the use of models or simulators of said systems electric
    • G06F17/5009
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F30/00Computer-aided design [CAD]
    • G06F30/20Design optimisation, verification or simulation
    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J3/00Circuit arrangements for ac mains or ac distribution networks
    • H02J3/38Arrangements for parallely feeding a single network by two or more generators, converters or transformers
    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J2203/00Indexing scheme relating to details of circuit arrangements for AC mains or AC distribution networks
    • H02J2203/20Simulating, e g planning, reliability check, modelling or computer assisted design [CAD]
    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J3/00Circuit arrangements for ac mains or ac distribution networks
    • H02J3/008Circuit arrangements for ac mains or ac distribution networks involving trading of energy or energy transmission rights
    • HELECTRICITY
    • H02GENERATION; CONVERSION OR DISTRIBUTION OF ELECTRIC POWER
    • H02JCIRCUIT ARRANGEMENTS OR SYSTEMS FOR SUPPLYING OR DISTRIBUTING ELECTRIC POWER; SYSTEMS FOR STORING ELECTRIC ENERGY
    • H02J3/00Circuit arrangements for ac mains or ac distribution networks
    • H02J3/04Circuit arrangements for ac mains or ac distribution networks for connecting networks of the same frequency but supplied from different sources
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02EREDUCTION OF GREENHOUSE GAS [GHG] EMISSIONS, RELATED TO ENERGY GENERATION, TRANSMISSION OR DISTRIBUTION
    • Y02E40/00Technologies for an efficient electrical power generation, transmission or distribution
    • Y02E40/70Smart grids as climate change mitigation technology in the energy generation sector
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02EREDUCTION OF GREENHOUSE GAS [GHG] EMISSIONS, RELATED TO ENERGY GENERATION, TRANSMISSION OR DISTRIBUTION
    • Y02E60/00Enabling technologies; Technologies with a potential or indirect contribution to GHG emissions mitigation
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y04INFORMATION OR COMMUNICATION TECHNOLOGIES HAVING AN IMPACT ON OTHER TECHNOLOGY AREAS
    • Y04SSYSTEMS INTEGRATING TECHNOLOGIES RELATED TO POWER NETWORK OPERATION, COMMUNICATION OR INFORMATION TECHNOLOGIES FOR IMPROVING THE ELECTRICAL POWER GENERATION, TRANSMISSION, DISTRIBUTION, MANAGEMENT OR USAGE, i.e. SMART GRIDS
    • Y04S10/00Systems supporting electrical power generation, transmission or distribution
    • Y04S10/50Systems or methods supporting the power network operation or management, involving a certain degree of interaction with the load-side end user applications
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y04INFORMATION OR COMMUNICATION TECHNOLOGIES HAVING AN IMPACT ON OTHER TECHNOLOGY AREAS
    • Y04SSYSTEMS INTEGRATING TECHNOLOGIES RELATED TO POWER NETWORK OPERATION, COMMUNICATION OR INFORMATION TECHNOLOGIES FOR IMPROVING THE ELECTRICAL POWER GENERATION, TRANSMISSION, DISTRIBUTION, MANAGEMENT OR USAGE, i.e. SMART GRIDS
    • Y04S40/00Systems for electrical power generation, transmission, distribution or end-user application management characterised by the use of communication or information technologies, or communication or information technology specific aspects supporting them
    • Y04S40/20Information technology specific aspects, e.g. CAD, simulation, modelling, system security
    • YGENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
    • Y04INFORMATION OR COMMUNICATION TECHNOLOGIES HAVING AN IMPACT ON OTHER TECHNOLOGY AREAS
    • Y04SSYSTEMS INTEGRATING TECHNOLOGIES RELATED TO POWER NETWORK OPERATION, COMMUNICATION OR INFORMATION TECHNOLOGIES FOR IMPROVING THE ELECTRICAL POWER GENERATION, TRANSMISSION, DISTRIBUTION, MANAGEMENT OR USAGE, i.e. SMART GRIDS
    • Y04S50/00Market activities related to the operation of systems integrating technologies related to power network operation or related to communication or information technologies
    • Y04S50/10Energy trading, including energy flowing from end-user application to grid

Definitions

  • the present invention relates generally to computer modeling and management of systems and, more particularly, to computer simulation techniques with real-time system monitoring and prediction of electrical system performance.
  • Electric generation has traditionally been performed by large-scale centralized facilities that are powered by fossil fuels or nuclear power or hydropower.
  • Distributed generation is an alternative approach to centralized systems.
  • Distributed generation systems include smaller-scale power generation facilities that can be used in addition to or instead of the traditional centralized facilities.
  • a microgrid is a localized grouping of electrical resources and loads that are typically connected to and synchronized with the traditional centralized electrical grid (also referred to herein as the macrogrid).
  • a microgrid is typically connected to the macrogrid at a single point of connection, and the microgrid can typically disconnect from the macrogrid and function as an autonomous power system.
  • the microgrid typically includes control independent of the macrogrid that allows the microgrid to be adjusted for changes in operating parameters, such as local load levels, independently of the macrogrid.
  • Microgrids can be used as part of a distributed energy system where energy is generation is decentralized and energy is generated from many small sources.
  • a microgrid may be a smaller generation station that is designed to supply power to a single building or set of buildings, such as a hospital or office building complex.
  • a microgrid might also be designed to power a larger area, such as a university campus or industrial complex that includes a larger number of buildings and can include greater load.
  • the microgrid can have varying reliability requirements. For example, an implementation of a microgrid at a hospital or an industrial complex may have greater reliability requirements than a microgrid supplying power to a residential dormitories and classrooms on a university campus.
  • Microgrids can provide a hybrid power infrastructure where power from the conventional macrogrid is used in combination with the power generated onsite by the microgrid. Electrical power is often sold on complex market, and distributed energy systems, such as microgrids, add additional complexity to the market. Microgrids can sell excess power to the macrogrid and can purchase power from the macrogrid in order to meet local demand in excess of the generation capacity of the microgrid.
  • Conventional systems provide market-based pricing of distributed energy off-line and do not consider real-time power network conditions. Conventional systems also do not provide for real-time evaluation of microgrid data to generated predicted impacts on availability and reliability of the microgrids.
  • Computer models of complex systems enable improved system design, development, and implementation through techniques for off-line simulation of the system operation. That is, system models can be created that computers can “operate” in a virtual environment to determine design parameters. All manner of systems can be modeled, designed, and virtually operated in this way, including machinery, factories, electrical power and distribution systems, processing plants, devices, chemical processes, biological systems, and the like. Such simulation techniques have resulted in reduced development costs and superior operation.
  • Design and production processes have benefited greatly from such computer simulation techniques, and such techniques are relatively well developed, but such techniques have not been applied in real-time, e.g., for real-time operational monitoring and management.
  • predictive failure analysis techniques do not generally use real-time data that reflect actual system operation. Greater efforts at real-time operational monitoring and management would provide more accurate and timely suggestions for operational decisions, and such techniques applied to failure analysis would provide improved predictions of system problems before they occur. With such improved techniques, operational costs could be greatly reduced.
  • mission critical electrical systems e.g., for data centers or nuclear power facilities
  • the systems must be as failure proof as possible, and many layers of redundancy must be designed in to ensure that there is always a backup in case of a failure.
  • Computer design and modeling programs allow for the design of such systems by allowing a designer to model the system and simulate its operation. Thus, the designer can ensure that the system will operate as intended before the facility is constructed.
  • the design is typically only referred to when there is a failure.
  • the system design is used to trace the failure and take corrective action; however, because such design are complex, and there are many interdependencies, it can be extremely difficult and time consuming to track the failure and all its dependencies and then take corrective action that does not result in other system disturbances.
  • the real-time model represents a current state of the electrical system can be developed by collecting data from sensors interfaced with the various components of the electrical system.
  • the virtual model of the electrical system mirrors the real-time model of the electrical system and can be used to generate predictions regarding the performance, availability, and reliability of cost and reliability of various distributed energy sources and to predict the price of acquiring energy from these sources.
  • the virtual model can be used to test “what if” scenarios, such as routine maintenance, system changes, and unplanned events that impact the electrical power network.
  • the virtual model can also be used to predict the effect of various scenarios on microgrid utilization and capacity.
  • a system for real-time modeling of electrical system performance of a microgrid electrical system includes a data acquisition component communicatively connected to a sensor configured to acquire real-time data output from the electrical system.
  • the system also includes an analytics server communicatively connected to the data acquisition component.
  • the analytics server comprises a virtual system modeling engine, analytics engine, and a network optimization simulation engine.
  • the virtual system modeling engine is configured to generate predicted data output for the electrical system utilizing a first virtual system model of the electrical system.
  • the analytics engine is configured to monitor the real-time data output and the predicted data output of the electrical system.
  • the analytics engine is further configured to initiate a calibration and synchronization operation to update the first virtual system model when a difference between the real-time data output and the predicted data output exceeds a threshold.
  • the network optimization simulation engine is configured to use the virtual system model updated based on the real-time data to forecast the cost of operating the microgrid electrical system and the reliability and availability of the microgrid electrical system.
  • a computer implemented method for real-time modeling of the performance of a microgrid electrical system wherein one or more processors are programmed to perform steps of the method.
  • the method includes the steps of creating a first virtual system model of the microgrid electrical system, acquiring real-time data from sensors interfaced with components of the electrical system, calculating predicated data forecasting the cost of operating the microgrid electrical system and the reliability and availability of the microgrid electrical system, the predicted data being calculated using the first virtual system model of the microgrid electrical system, initiating a calibration and synchronization calibration and synchronization operation to update the first virtual system model when a difference between the real-time data and the predicted data exceeds a threshold, and recalculating the predicated data forecasting the cost of operating the microgrid electrical system and the reliability and availability of the microgrid electrical system using the calibrated first virtual system model of the microgrid electrical system.
  • FIG. 1 is an illustration of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment
  • FIG. 2 is a diagram illustrating a detailed view of an analytics server included in the system of FIG. 1 ;
  • FIG. 3 is a diagram illustrating how the system of FIG. 1 operates to synchronize the operating parameters between a physical facility and a virtual system model of the facility;
  • FIG. 4 is an illustration of the scalability of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment
  • FIG. 5 is a block diagram that shows the configuration details of the system illustrated in FIG. 1 , in accordance with one embodiment
  • FIG. 6 is an illustration of a flowchart describing a method for real-time monitoring and predictive analysis of a monitored system, in accordance with one embodiment
  • FIG. 7 is an illustration of a flowchart describing a method for managing real-time updates to a virtual system model of a monitored system, in accordance with one embodiment
  • FIG. 8 is an illustration of a flowchart describing a method for synchronizing real-time system data with a virtual system model of a monitored system, in accordance with one embodiment
  • FIG. 9 is a flow chart illustrating an example method for updating the virtual model in accordance with one embodiment
  • FIG. 10 is a diagram illustrating how a network optimization simulation engine works in conjunction with other elements of the analytics system to make predictions about various scenarios related to distributed energy solutions.
  • FIG. 11 is another diagram illustrating how a network optimization simulation engine works in conjunction with other elements of the analytics system to make predictions about various scenarios related to distributed energy solutions in an electric;
  • FIG. 12 is a flow chart illustrating an example process for predicting, in real-time, various aspects associated with distributed energy solutions, in accordance with one embodiment.
  • the real-time model represents a current state of the electrical system can be developed by collecting data from sensors interfaced with the various components of the electrical system.
  • the virtual model of the electrical system mirrors the real-time model of the electrical system and can be used to generate predictions regarding the performance, availability, and reliability of cost and reliability of various distributed energy sources and to predict the price of acquiring energy from these sources.
  • the virtual model can be used to test “what if” scenarios, such as routine maintenance, system changes, and unplanned events that impact the electrical power network.
  • the virtual model can also be used to predict the effect of various scenarios on microgrid utilization and capacity.
  • Conventional systems provide market-based pricing of distributed energy off-line and do not consider real-time power network conditions. Conventional systems also do not provide for real-time evaluation of microgrid or other distributed energy source data to predict impacts on availability and reliability of the microgrids or other distributed energy source. For example, the generation capacities of some microgrid distributed energy generation solutions, such as solar power generation system and wind turbine generation systems, that can be influenced by changing weather conditions. For example, solar power generation systems can be impacted by cloudy days and wind turbine generation systems can be impacted by changing wind conditions or a lack of wind. Both of these examples can impact the availability and reliability of the microgrid system.
  • the advanced power system modeling and analytics techniques provided herein address the shortcomings of conventional systems. These techniques include utilize a real-time model and a virtual model of a microgrid.
  • the real-time model represents a current state of the electrical system can be developed by collecting data from sensors interfaced with the various components of the electrical system.
  • the virtual model of the electrical system mirrors the real-time model of the electrical system and can be used to generate predictions regarding the performance, availability, and reliability of cost and reliability of various distributed energy sources and to predict the price of acquiring energy from these sources.
  • This advanced power system modeling and associated analytics are vital to determining what power network constraints may exist that would negatively impact the microgrid.
  • a typical microgrid includes local power generation sources, and these local generation sources are an important aspect of market optimization considerations.
  • the operator of the microgrid can define a desired use or mix of generation sources that includes locally generated power from local power generation sources as well as power from other electrical providers from the macrogrid.
  • the desired market optimizations cannot be realized if the desired mix of generation sources cannot be maintained for the duration of the period of time used to calculate the market optimizations.
  • some operators may use a rolling 24-hour period or rolling 12-hour period on which market optimizations are based, but if the desired mix of energy resources cannot be achieved throughout that entire period, the market optimizations cannot be realized.
  • conventional systems for making market predictions do not include these real-time modeling of the microgrid, which can result in the inaccurate market forecasts.
  • critical elements of the microgrid are already overloaded or unavailable (e.g., due to maintenance or other localized events)
  • the conventional solutions may not recognize this problem because they do not use a real-time model of the microgrid as well as a virtual model of the microgrid when making forecasts.
  • the systems and methods disclosed herein overcome these problems by using both a real-time model of the system that represents the current state of the system as well as a virtual model of the system can be adapted and synchronized to the changing conditions on the microgrid.
  • the market forecasts generated by the techniques disclosed herein are more accurate and reliable than those generated by conventional systems.
  • Embodiments of the systems and methods disclosed herein can also be used to monitor operation of the smart grid and to control electricity trading with the macrogrid. For example, if the microgrid has excess capacity, electricity can be sold to the macrogrid. Conversely, if the utilization of the microgrid exceeds the microgrid capacity, electricity can be purchased from the macrogrid to meet the current utilization. The capacity of the microgrid can be monitored in real-time to determine whether electricity can be sold or electricity needs to be purchased from a utility company via the macrogrid. All transactions between the public electric service on the macrogrid and the microgrid infrastructure are closely monitored, and rate and pricing information for the management of electricity exchange are also maintained.
  • objectives of a microgrid operator might include minimizing the annual cost of operation, minimizing the carbon footprint, minimizing the peak load, minimizing public utility consumption, or a combination thereof. These objectives can vary based on time, energy source reliability, or other factors that can impact the operating objectives of the microgrid operator.
  • a system denotes a set of components, real or abstract, comprising a whole where each component interacts with or is related to at least one other component within the whole.
  • systems include machinery, factories, electrical systems, processing plants, devices, chemical processes, biological systems, data centers, aircraft carriers, and the like.
  • An electrical system can designate a power generation and/or distribution system that is widely dispersed, i.e., power generation, transformers, and/or electrical distribution components distributed geographically throughout a large region, or bounded within a particular location, e.g., a power plant within a production facility, a bounded geographic area, on board a ship, etc.
  • a network application is any application that is stored on an application server connected to a network, e.g., local area network, wide area network, etc., in accordance with any contemporary client/server architecture model and can be accessed via the network.
  • the network application programming interface resides on the application server separate from the client machine.
  • the client interface would typically be a web browser, e.g. INTERNET EXPLORERTM, FIREFOXTM, NETSCAPETM, etc., that is in communication with the network application server via a network connection, e.g., HTTP, HTTPS, RSS, etc.
  • FIG. 1 is an illustration of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment.
  • the system 100 includes a series of sensors, i.e., Sensor A 104 , Sensor B 106 , Sensor C 108 , interfaced with the various components of a monitored system 102 , a data acquisition hub 112 , an analytics server 116 , and a thin-client device 128 .
  • the monitored system 102 is an electrical power generation plant.
  • the monitored system 102 is an electrical power transmission infrastructure.
  • the monitored system 102 is an electrical power distribution system.
  • the monitored system 102 includes a combination of one or more electrical power generation plant(s), power transmission infrastructure(s), and/or an electrical power distribution system. It should be understood that the monitored system 102 can be any combination of components whose operations can be monitored with conventional sensors and where each component interacts with or is related to at least one other component within the combination.
  • the sensors can provide data such as voltage, frequency, current, power, power factor, and the like.
  • the monitored system 102 is a microgrid system.
  • the microgrid system can comprise electrical power generation components as well as electrical power distribution elements.
  • the microgrid system can also be interfaced with the macrogrid.
  • the microgrid can be monitored for excess capacity that can be used to generate electricity that can be sold over the public grid and/or for utilization that requires electricity to be purchased off of the macrogrid.
  • the sensors 104 , 106 and 108 can be configured to provide output values for system parameters that indicate the operational status and/or “health” of the monitored system 102 .
  • the current output or voltage readings for the various components that comprise the power generation system is indicative of the overall health and/or operational condition of the system.
  • the sensors are configured to also measure additional data that can affect system operation.
  • the sensor output can include environmental information, e.g., temperature, humidity, etc., which can impact electrical power demand and can also affect the operation and efficiency of the power distribution system itself.
  • the sensors 104 , 106 and 108 can be configured to output data in an analog format.
  • electrical power sensor measurements e.g., voltage, current, etc.
  • the sensors 104 , 106 and 108 can be configured to output data in a digital format.
  • the same electrical power sensor measurements can be taken in discrete time increments that are not continuous in time or amplitude.
  • the sensors 104 , 106 and 108 can be configured to output data in either an analog format, digital format, or both, depending on the sampling requirements of the monitored system 102 .
  • the sensors 104 , 106 and 108 can be configured to capture output data at split-second intervals to effectuate “real time” data capture.
  • the sensors 104 , 106 and 108 can be configured to generate hundreds of thousands of data readings per second. It should be appreciated, however, that the number of data output readings taken by a particular sensor can be set to any value as long as the operational limits of the sensor and the data processing capabilities of the data acquisition hub 112 are not exceeded.
  • each sensor 104 , 106 and 108 can be communicatively connected to the data acquisition hub 112 via an analog or digital data connection 110 .
  • the data acquisition hub 112 can be a standalone unit or integrated within the analytics server 116 and can be embodied as a piece of hardware, software, or some combination thereof.
  • the data connection 110 is a “hard wired” physical data connection, e.g., serial, network, etc. For example, a serial or parallel cable connection between the sensor and the hub 112 .
  • the data connection 110 is a wireless data connection. For example, a radio frequency (RF), BLUETOOTHTM, infrared or equivalent connection between the sensor and the hub 112 .
  • RF radio frequency
  • BLUETOOTHTM infrared or equivalent connection between the sensor and the hub 112 .
  • the data acquisition hub 112 can be configured to communicate “real-time” data from the monitored system 102 to the analytics server 116 using a network connection 114 .
  • the network connection 114 is a “hardwired” physical connection.
  • the data acquisition hub 112 can be communicatively connected, e.g., via Category 5 (CAT5), fiber optic, or equivalent cabling, to a data server (not shown) that is communicatively connected, e.g., via CAT5, fiber optic, or equivalent cabling, through the Internet and to the analytics server 116 server.
  • the analytics server 116 can also be communicatively connected with the Internet, e.g., via CAT5, fiber optic, or equivalent cabling.
  • the network connection 114 can be a wireless network connection, e.g., Wi-Fi, WLAN, etc.
  • Wi-Fi Wireless Fidelity
  • WLAN Wireless Fidelity
  • 802.11b/g or equivalent transmission format 802.11b/g or equivalent transmission format.
  • the network connection used is dependent upon the particular requirements of the monitored system 102 .
  • Data acquisition hub 112 can also be configured to supply warning and alarms signals as well as control signals to monitored system 102 and/or sensors 104 , 106 , and 108 as described in more detail below.
  • the analytics server 116 can host an analytics engine 118 , virtual system modeling engine 124 , and several databases 126 , 130 , and 132 .
  • the virtual system modeling engine 124 can, e.g., be a computer modeling system, such as described above. In this context, however, the modeling engine 124 can be used to precisely model and mirror the actual electrical system.
  • Analytics engine 118 can be configured to generate predicted data for the monitored system and analyze difference between the predicted data and the real-time data received from hub 112 . In an embodiment, if the monitored system is a microgrid, the predicted data can include predictions on capacity and utilization.
  • microgrid operations may meet the objectives of the microgrid operator, such as minimizing the annual cost of operations, minimizing the carbon footprint of the microgrid system, minimizing the peak load on the microgrid, minimizing public utility consumption, or a combination thereof.
  • the microgrid operator can define a set of operational objectives. For example, a microgrid operator could define an objective that requires that utility power from the macrogrid only be used during off-peak hours in order to reduce operational costs, unless system reliability falls below 99.99%, at which time utility power can be used to ensure that the system reliability objectives are met.
  • FIG. 2 is a diagram illustrating a more detailed view of analytic server 116 .
  • analytic server 116 is interfaced with a monitored facility 102 via sensors 202 , e.g., sensors 104 , 106 , and 108 .
  • Sensors 202 are configured to supply real-time data from within monitored facility 102 .
  • the real-time data is communicated to analytic server 116 via a hub 204 .
  • Hub 204 can be configured to provide real-time data to server 116 as well as alarming, sensing, and control features for facility 102 .
  • the real-time data from hub 204 can be passed to a comparison engine 210 , which can form part of analytics engine 118 .
  • Comparison engine 210 can be configured to continuously compare the real-time data with predicted values generated by simulation engine 208 . Based on the comparison, comparison engine 210 can be further configured to determine whether deviations between the real-time and the expected values exists, and if so to classify the deviation, e.g., high, marginal, low, etc. The deviation level can then be communicated to decision engine 212 , which can also comprise part of analytics engine 118 .
  • Decision engine 212 can be configured to look for significant deviations between the predicted values and real-time values as received from the comparison engine 210 . If significant deviations are detected, decision engine 212 can also be configured to determine whether an alarm condition exists, activate the alarm and communicate the alarm to Human-Machine Interface (HMI) 214 for display in real-time via, e.g., thin client 128 . Decision engine 212 can also be configured to perform root cause analysis for significant deviations in order to determine the interdependencies and identify the parent-child failure relationships that may be occurring. In this manner, parent alarm conditions are not drowned out by multiple children alarm conditions, allowing the user/operator to focus on the main problem, at least at first.
  • HMI Human-Machine Interface
  • and alarm condition for the parent can be displayed via HMI 214 along with an indication that processes and equipment dependent on the parent process or equipment are also in alarm condition.
  • server 116 can maintain a parent-child logical relationship between processes and equipment comprising facility 102 .
  • the processes can be classified as critical, essential, non-essential, etc.
  • Decision engine 212 can also be configured to determine health and performance levels and indicate these levels for the various processes and equipment via HMI 214 . All of which, when combined with the analytic capabilities of analytics engine 118 allows the operator to minimize the risk of catastrophic equipment failure by predicting future failures and providing prompt, informative information concerning potential/predicted failures before they occur. Avoiding catastrophic failures reduces risk and cost, and maximizes facility performance and up time.
  • Simulation engine 208 operates on complex logical models 206 of facility 102 . These models are continuously and automatically synchronized with the actual facility status based on the real-time data provided by hub 204 . In other words, the models are updated based on current switch status, breaker status, e.g., open-closed, equipment on/off status, etc. Thus, the models are automatically updated based on such status, which allows simulation engine to produce predicted data based on the current facility status. This in turn, allows accurate and meaningful comparisons of the real-time data to the predicted data.
  • Example models 206 that can be maintained and used by server 116 include power flow models used to calculate expected kW, kVAR, power factor values, etc., short circuit models used to calculate maximum and minimum available fault currents, protection models used to determine proper protection schemes and ensure selective coordination of protective devices, power quality models used to determine voltage and current distortions at any point in the network, to name just a few. It will be understood that different models can be used depending on the system being modeled.
  • hub 204 is configured to supply equipment identification associated with the real-time data. This identification can be cross referenced with identifications provided in the models.
  • comparison engine 210 determines whether the differential between the real-time sensor output value and the expected value exceeds a Defined Difference Tolerance (DDT) value, i.e., the “real-time” output values of the sensor output do not indicate an alarm condition, but below an alarm condition, i.e., alarm threshold value.
  • DDT Defined Difference Tolerance
  • a calibration request is generated by the analytics engine 118 . If the differential exceeds the alarm condition, an alarm or notification message can be generated by the analytics engine 118 . If the differential is below the DTT value, the analytics engine can do nothing and continues to monitor the real-time data and expected data.
  • DDT Defined Difference Tolerance
  • the alarm or notification message can be sent directly to the client or user) 128 , e.g., via HMI 214 , for display in real-time on a web browser, pop-up message box, e-mail, or equivalent on the client 128 display panel.
  • the alarm or notification message can be sent to a wireless mobile device, e.g., BLACKBERRYTM, laptop, pager, etc., to be displayed for the user by way of a wireless router or equivalent device interfaced with the analytics server 116 .
  • the alarm or notification message can be sent to both the client 128 display and the wireless mobile device.
  • the alarm can be indicative of a need for a repair event or maintenance to be done on the monitored system. It should be noted, however, that calibration requests should not be allowed if an alarm condition exists to prevent the models from being calibrated to an abnormal state.
  • model(s) 206 can be updated or adjusted to reflect the actual facility configuration. This can include, but is not limited to, modifying the predicted data output from the simulation engine 208 , adjusting the logic/processing parameters used by the model(s) 206 , adding/subtracting functional elements from model(s) 206 , etc. It should be understood that any operational parameter used by models 206 can be modified as long as the resulting modifications can be processed and registered by simulation engine 208 .
  • models 206 can be stored in the virtual system model database 126 .
  • the virtual system model can include components for modeling reliability, modeling voltage stability, and modeling power flow.
  • models 206 can include dynamic control logic that permits a user to configure the models 206 by specifying control algorithms and logic blocks in addition to combinations and interconnections of generators, governors, relays, breakers, transmission line, and the like.
  • the voltage stability parameters can indicate capacity in terms of size, supply, and distribution, and can indicate availability in terms of remaining capacity of the presently configured system.
  • the power flow model can specify voltage, frequency, and power factor, thus representing the “health” of the system.
  • a virtual system model database 130 can be configured to store the virtual system model.
  • a duplicate, but synchronized copy of the virtual system model can be stored in a virtual simulation model database 130 .
  • This duplicate model can be used for what-if simulations. In other words, this model can be used to allow a system designer to make hypothetical changes to the facility and test the resulting effect, without taking down the facility or costly and time consuming analysis. Such hypothetical can be used to learn failure patterns and signatures as well as to test proposed modifications, upgrades, additions, etc., for the facility.
  • the real-time data, as well as trending produced by analytics engine 118 can be stored in a real-time data acquisition database 132 .
  • the virtual system model is periodically calibrated and synchronized with “real-time” sensor data outputs so that the virtual system model provides data output values that are consistent with the actual “real-time” values received from the sensor output signals.
  • the virtual system models described herein are updated and calibrated with the real-time system operational data to provide better predictive output values. A divergence between the real-time sensor output values and the predicted output values generate either an alarm condition for the values in question and/or a calibration request that is sent to the calibration engine 134 .
  • the analytics engine 118 can be configured to implement pattern/sequence recognition into a real-time decision loop that, e.g., is enabled by a new type of machine learning called associative memory, or hierarchical temporal memory (HTM), which is a biological approach to learning and pattern recognition.
  • Associative memory allows storage, discovery, and retrieval of learned associations between extremely large numbers of attributes in real time.
  • an associative memory stores information about how attributes and their respective features occur together. The predictive power of the associative memory technology comes from its ability to interpret and analyze these co-occurrences and to produce various metrics.
  • Associative memory is built through “experiential” learning in which each newly observed state is accumulated in the associative memory as a basis for interpreting future events.
  • the associative memory is able to learn normal patterns as a basis for identifying non-normal behavior and appropriate responses, and to associate patterns with particular outcomes, contexts or responses.
  • the analytics engine 118 is also better able to understand component mean time to failure rates through observation and system availability characteristics. This technology in combination with the virtual system model can be characterized as a “neocortical” model of the system under management
  • This approach also presents a novel way to digest and comprehend alarms in a manageable and coherent way.
  • the neocortical model could assist in uncovering the patterns and sequencing of alarms to help pinpoint the location of the (impending) failure, its context, and even the cause.
  • responding to the alarms is done manually by experts who have gained familiarity with the system through years of experience. However, at times, the amount of information is so great that an individual cannot respond fast enough or does not have the necessary expertise.
  • An “intelligent” system like the neocortical system that observes and recommends possible responses could improve the alarm management process by either supporting the existing operator, or even managing the system autonomously.
  • the virtual system model database 126 can be configured to store one or more virtual system models, virtual simulation models, and real-time data values, each customized to a particular system being monitored by the analytics server 118 .
  • the analytics server 118 can be used to monitor more than one system at a time.
  • the databases 126 , 130 , and 132 can be hosted on the analytics server 116 and communicatively interfaced with the analytics engine 118 .
  • databases 126 , 130 , and 132 can be hosted on a separate database server (not shown) that is communicatively connected to the analytics server 116 in a manner that allows the virtual system modeling engine 124 and analytics engine 118 to access the databases as needed.
  • the client 128 can modify the virtual system model stored on the virtual system model database 126 by using a virtual system model development interface using well-known modeling tools that are separate from the other network interfaces. For example, dedicated software applications that run in conjunction with the network interface to allow a client 128 to create or modify the virtual system models.
  • the client 128 can use a variety of network interfaces, e.g., web browser, CITRIXTM, WINDOWS TERMINAL SERVICESTM, telnet, or other equivalent thin-client terminal applications, etc., to access, configure, and modify the sensors, e.g., configuration files, etc., analytics engine 118 , e.g., configuration files, analytics logic, etc., calibration parameters, e.g., configuration files, calibration parameters, etc., virtual system modeling engine 124 , e.g., configuration files, simulation parameters, etc., and virtual system model of the system under management, e.g., virtual system model operating parameters and configuration files.
  • data from those various components of the monitored system 102 can be displayed on a client 128 display panel for viewing by a system administrator or equivalent.
  • server 116 is configured to synchronize the physical world with the virtual and report, e.g., via visual, real-time display, deviations between the two as well as system health, alarm conditions, predicted failures, etc.
  • FIG. 3 the synchronization of the physical world (left side) and virtual world (right side) is illustrated.
  • sensors 202 produce real-time data 302 for the processes 312 and equipment 314 that make up facility 102 .
  • simulations 304 of the virtual system model 206 provide predicted values 306 , which are correlated and synchronized with the real-time data 302 .
  • the real-time data can then be compared to the predicted values so that differences 308 can be detected.
  • the significance of these differences can be determined to determine the health status 310 of the system.
  • the health stats can then be communicated to the processes 312 and equipment 314 , e.g., via alarms and indicators, as well as to thin client 128 , e.g., via web pages 316 .
  • FIG. 4 is an illustration of the scalability of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment.
  • an analytics central server 422 is communicatively connected with analytics server A 414 , analytics server B 416 , and analytics server n 418 , i.e., one or more other analytics servers, by way of one or more network connections 114 .
  • Each of the analytics servers 414 , 416 , and 418 is communicatively connected with a respective data acquisition hub, i.e., Hub A 408 , Hub B 410 , Hub n 412 , which communicates with one or more sensors that are interfaced with a system, i.e., Monitored System A 402 , Monitored System B 404 , Monitored System n 406 , which the respective analytical server monitors.
  • analytics server A 414 is communicative connected with data acquisition hub A 408 , which communicates with one or more sensors interfaced with monitored system A 402 .
  • the Monitored System A 402 , Monitored System B 404 , Monitored System n 406 can be distributed generation systems, such as microgrid systems.
  • multiple distributed energy generation systems might be used by a microgrid system.
  • a university campus might include multiple distributed energy generation sources, such as solar panel arrays, wind turbines, and other on-premise power generation systems.
  • Each of the distributed energy solutions could be treated as separate monitored systems that are managed via the analytics central server 422 .
  • a university might have multiple campuses that each have their own microgrid for on-site power generation and each campus can be treated a separate monitored system that is administered from a central location.
  • Each analytics server i.e., analytics server A 414 , analytics server B 416 , analytics server n 418 , can be configured to monitor the sensor output data of its corresponding monitored system and feed that data to the central analytics server 422 .
  • each of the analytics servers 414 , 416 and 418 can function as a proxy agent of the central analytics server 422 during the modifying and/or adjusting of the operating parameters of the system sensors they monitor.
  • analytics server B 416 can be configured as a proxy to modify the operating parameters of the sensors interfaced with monitored system B 404 .
  • the central analytics server 422 which is communicatively connected to one or more analytics server(s), can be used to enhance the scalability.
  • a central analytics server 422 can be used to monitor multiple electrical power generation facilities, i.e., monitored system A 402 can be a power generation facility located in city A while monitored system B 404 is a power generation facility located in city B, on an electrical power grid.
  • the number of electrical power generation facilities that can be monitored by central analytics server 422 is limited only by the data processing capacity of the central analytics server 422 .
  • central analytics server 422 can be used to monitor multiple distributed electrical power generation facilities that are part of a microgrid.
  • the central analytics server 422 can be configured to enable a client 128 to modify and adjust the operational parameters of any the analytics servers communicatively connected to the central analytics server 422 .
  • each of the analytics servers 414 , 416 and 418 can be configured to serve as proxies for the central analytics server 422 to enable a client 128 to modify and/or adjust the operating parameters of the sensors interfaced with the systems that they respectively monitor.
  • the client 128 can use the central analytics server 422 , and vice versa, to modify and/or adjust the operating parameters of analytics server A 414 and use the same to modify and/or adjust the operating parameters of the sensors interfaced with monitored system A 402 .
  • each of the analytics servers can be configured to allow a client 128 to modify the virtual system model through a virtual system model development interface using well-known modeling tools.
  • the central analytics server 422 can function to monitor and control a monitored system when its corresponding analytics server is out of operation.
  • central analytics server 422 can take over the functionality of analytics server B 416 when the server 416 is out of operation. That is, the central analytics server 422 can monitor the data output from monitored system B 404 and modify and/or adjust the operating parameters of the sensors that are interfaced with the system 404 .
  • the network connection 114 is established through a wide area network (WAN) such as the Internet. In another embodiment, the network connection is established through a local area network (LAN) such as the company intranet. In a separate embodiment, the network connection 114 is a “hardwired” physical connection.
  • the data acquisition hub 112 can be communicatively connected, e.g., via Category 5 (CAT5), fiber optic, or equivalent cabling, to a data server that is communicatively connected, e.g., via CAT5, fiber optic, or equivalent cabling, through the Internet and to the analytics server 116 server hosting the analytics engine 118 .
  • the network connection 114 is a wireless network connection, e.g., Wi-Fi, WLAN, etc. For example, utilizing an 802.11b/g or equivalent transmission format.
  • regional analytics servers can be placed between local analytics servers 414 , 416 , 418 and central analytics server 422 . Further, in certain embodiments a disaster recovery site can be included at the central analytics server 422 level.
  • FIG. 5 is a block diagram that shows the configuration details of analytics server 116 illustrated in FIG. 1 in more detail. It should be understood that the configuration details in FIG. 5 are merely one embodiment of the items described for FIG. 1 , and it should be understood that alternate configurations and arrangements of components could also provide the functionality described herein.
  • the analytics server 116 includes a variety of components.
  • the analytics server 116 is implemented in a Web-based configuration, so that the analytics server 116 includes, or communicates with, a secure web server 530 for communication with the sensor systems 519 , e.g., data acquisition units, metering devices, sensors, etc., and external communication entities 534 , e.g., web browser, “thin client” applications, etc.
  • a variety of user views and functions 532 are available to the client 128 such as: alarm reports, Active X controls, equipment views, view editor tool, custom user interface page, and XML parser.
  • the analytics server 116 also includes an alarm engine 506 and messaging engine 504 , for the aforementioned external communications.
  • the alarm engine 506 is configured to work in conjunction with the messaging engine 504 to generate alarm or notification messages 502 , in the form of text messages, e-mails, paging, etc., in response to the alarm conditions previously described.
  • the analytics server 116 determines alarm conditions based on output data it receives from the various sensor systems 519 through a communications connection, e.g., wireless 516 , TCP/IP 518 , Serial 520 , etc., and simulated output data from a virtual system model 512 , of the monitored system, processed by the analytics engines 118 .
  • the virtual system model 512 can be created by a user through interacting with an external communication entity 534 by specifying the components that comprise the monitored system and by specifying relationships between the components of the monitored system.
  • the virtual system model 512 can be automatically generated by the analytics engines 118 as components of the monitored system are brought online and interfaced with the analytics server 508 .
  • a virtual system model database 526 can be communicatively connected with the analytics server 116 and can be configured to store one or more virtual system models 512 , each of which represents a particular monitored system.
  • the analytics server 116 can conceivably monitor multiple electrical power generation systems, e.g., system A, system B, system C, etc., spread across a wide geographic area, e.g., City A, City B, City C, etc. Therefore, the analytics server 116 can use a different virtual system model 512 for each of the electrical power generation systems that it monitors.
  • Virtual simulation model database 538 can be configured to store a synchronized, duplicate copy of the virtual system model 512
  • real-time data acquisition database 540 can store the real-time and trending data for the system(s) being monitored.
  • analytics server 116 can receive real-time data for various sensors, i.e., components, through data acquisition system 202 .
  • analytics server 116 can comprise various drivers configured to interface with the various types of sensors, etc., comprising data acquisition system 202 .
  • This data represents the real-time operational data for the various components.
  • the data can indicate that a certain component is operating at a certain voltage level and drawing certain amount of current.
  • This information can then be fed to a modeling engine to generate a virtual system model 512 that is based on the actual real-time operational data.
  • Analytics engine 118 can be configured to compare predicted data based on the virtual system model 512 with real-time data received from data acquisition system 202 and to identify any differences. In some instances, analytics engine can be configured to identify these differences and then update, i.e., calibrate, the virtual system model 512 for use in future comparisons. In this manner, more accurate comparisons and warnings can be generated.
  • Analytics engine 118 can detect such changes and issue warnings that can allow the changes to be detected before a failure occurs.
  • the analytic engine 118 can be configured to generate warnings that can be communicated via interface 532 .
  • a user can access information from server 116 using thin client 534 .
  • reports can be generate and served to thin client 534 via server 540 .
  • These reports can, for example, comprise schematic or symbolic illustrations of the system being monitored.
  • Status information for each component can be illustrated or communicated for each component. This information can be numerical, i.e., the voltage or current level, or it can be symbolic, i.e., green for normal, red for failure or warning.
  • intermediate levels of failure can also be communicated, i.e., yellow can be used to indicate operational conditions that project the potential for future failure. It should be noted that this information can be accessed in real-time.
  • the information can be accessed from anywhere and anytime.
  • the Analytics Engine 118 is communicatively interfaced with a HTM pattern recognition and machine learning engine 551 .
  • the HTM engine 551 can be configured to work in conjunction with the analytics engine 118 and a virtual system model of the monitored system to make real-time predictions, i.e., forecasts, about various operational aspects of the monitored system.
  • the HTM engine 551 works by processing and storing patterns observed during the normal operation of the monitored system over time. These observations are provided in the form of real-time data captured using a multitude of sensors that are imbedded within the monitored system.
  • the virtual system model can also be updated with the real-time data such that the virtual system model “ages” along with the monitored system.
  • Examples of a monitored system can include machinery, factories, electrical systems, processing plants, devices, chemical processes, biological systems, data centers, aircraft carriers, and the like. It should be understood that the monitored system can be any combination of components whose operations can be monitored with conventional sensors and where each component interacts with or is related to at least one other component within the combination.
  • FIG. 6 is a flowchart describing a method for real-time monitoring and predictive analysis of a monitored system, in accordance with one embodiment.
  • Method 600 begins with operation 602 where real-time data indicative of the monitored system status is processed to enable a virtual model of the monitored system under management to be calibrated and synchronized with the real-time data.
  • the monitored system 102 is a mission critical electrical power system.
  • the monitored system 102 can include an electrical power transmission infrastructure.
  • the monitored system 102 includes a combination of thereof. It should be understood that the monitored system 102 can be any combination of components whose operations can be monitored with conventional sensors and where each component interacts with or is related to at least one other component within the combination.
  • Method 600 moves on to operation 604 where the virtual system model of the monitored system under management is updated in response to the real-time data.
  • This may include, but is not limited to, modifying the simulated data output from the virtual system model, adjusting the logic/processing parameters utilized by the virtual system modeling engine to simulate the operation of the monitored system, adding/subtracting functional elements of the virtual system model, etc.
  • any operational parameter of the virtual system modeling engine and/or the virtual system model may be modified by the calibration engine as long as the resulting modifications can be processed and registered by the virtual system modeling engine.
  • Method 600 proceeds on to operation 606 where the simulated real-time data indicative of the monitored system status is compared with a corresponding virtual system model created at the design stage.
  • the design stage models which may be calibrated and updated based on real-time monitored data, are used as a basis for the predicted performance of the system.
  • the real-time monitored data can then provide the actual performance over time.
  • difference can be identified a tracked by, e.g., the analytics engine 118 .
  • Analytics engines 118 can then track trends, determine alarm states, etc., and generate a real-time report of the system status in response to the comparison.
  • the analytics can be used to analyze the comparison and real-time data and determine if there is a problem that should be reported and what level the problem may be, e.g., low priority, high priority, critical, etc.
  • the analytics can also be used to predict future failures and time to failure, etc.
  • reports can be displayed on a conventional web browser (e.g. INTERNET EXPLORERTM, FIREFOXTM, NETSCAPETM, etc., which can be rendered on a standard personal computing (PC) device.
  • PC personal computing
  • the “real-time” report can be rendered on a “thin-client” computing device, e.g., CITRIXTM, WINDOWS TERMINAL SERVICESTM, telnet, or other equivalent thin-client terminal application.
  • the report can be displayed on a wireless mobile device, e.g., BLACKBERRYTM, laptop, pager, etc.
  • the “real-time” report can include such information as the differential in a particular power parameter, i.e., current, voltage, etc., between the real-time measurements and the virtual output data.
  • FIG. 7 is a flowchart describing a method for managing real-time updates to a virtual system model of a monitored system, in accordance with one embodiment.
  • Method 700 begins with operation 702 where real-time data output from a sensor interfaced with the monitored system is received.
  • the sensor is configured to capture output data at split-second intervals to effectuate “real time” data capture.
  • the sensor is configured to generate hundreds of thousands of data readings per second. It should be appreciated, however, that the number of data output readings taken by the sensor may be set to any value as long as the operational limits of the sensor and the data processing capabilities of the data acquisition hub are not exceeded.
  • Method 700 moves to operation 704 where the real-time data is processed into a defined format.
  • the data is converted from an analog signal to a digital signal.
  • the data is converted from a digital signal to an analog signal. It should be understood, however, that the real-time data may be processed into any defined format as long as the analytics engine can utilize the resulting data in a comparison with simulated output data from a virtual system model of the monitored system.
  • Method 700 continues on to operation 706 where the predicted, i.e., simulated, data for the monitored system is generated using a virtual system model of the monitored system.
  • a virtual system modeling engine uses dynamic control logic stored in the virtual system model to generate the predicted output data.
  • the predicted data is supposed to be representative of data that should actually be generated and output from the monitored system.
  • Method 700 proceeds to operation 708 where a determination is made as to whether the difference between the real-time data output and the predicted system data falls between a set value and an alarm condition value, where if the difference falls between the set value and the alarm condition value a virtual system model calibration and a response can be generated. That is, if the comparison indicates that the differential between the “real-time” sensor output value and the corresponding “virtual” model data output value exceeds a Defined Difference Tolerance (DDT) value, i.e., the “real-time” output values of the sensor output do not indicate an alarm condition, but below an alarm condition, i.e., alarm threshold value, a response can be generated by the analytics engine.
  • DDT Defined Difference Tolerance
  • the analytics engine 118 if the differential exceeds, the alarm condition, an alarm or notification message is generated by the analytics engine 118 . In another embodiment, if the differential is below the DTT value, the analytics engine does nothing and continues to monitor the “real-time” data and “virtual” data. Generally speaking, the comparison of the set value and alarm condition is indicative of the functionality of one or more components of the monitored system.
  • FIG. 8 is a flowchart describing a method for synchronizing real-time system data with a virtual system model of a monitored system, in accordance with one embodiment.
  • Method 800 begins with operation 802 where a virtual system model calibration request is received.
  • a virtual model calibration request can be generated by an analytics engine whenever the difference between the real-time data output and the predicted system data falls between a set value and an alarm condition value.
  • Method 800 proceeds to operation 804 where the predicted system output value for the virtual system model is updated with a real-time output value for the monitored system. For example, if sensors interfaced with the monitored system outputs a real-time current value of A, then the predicted system output value for the virtual system model is adjusted to reflect a predicted current value of A.
  • Method 800 moves on to operation 806 where a difference between the real-time sensor value measurement from a sensor integrated with the monitored system and a predicted sensor value for the sensor is determined.
  • the analytics engine is configured to receive “real-time” data from sensors interfaced with the monitored system via the data acquisition hub, or, alternatively directly from the sensors, and “virtual” data from the virtual system modeling engine simulating the data output from a virtual system model of the monitored system.
  • the values are in units of electrical power output, i.e., current or voltage, from an electrical power generation or transmission system. It should be appreciated, however, that the values can essentially be any unit type as long as the sensors can be configured to output data in those units or the analytics engine can convert the output data received from the sensors into the desired unit type before performing the comparison.
  • Method 800 continues on to operation 808 where the operating parameters of the virtual system model are adjusted to minimize the difference.
  • the logic parameters of the virtual system model that a virtual system modeling engine uses to simulate the data output from actual sensors interfaced with the monitored system are adjusted so that the difference between the real-time data output and the simulated data output is minimized.
  • this operation will update and adjust any virtual system model output parameters that are functions of the virtual system model sensor values. For example, in a power distribution environment, output parameters of power load or demand factor might be a function of multiple sensor data values.
  • the operating parameters of the virtual system model that mimic the operation of the sensor will be adjusted to reflect the real-time data received from those sensors.
  • authorization from a system administrator is requested prior to the operating parameters of the virtual system model being adjusted. This is to ensure that the system administrator is aware of the changes that are being made to the virtual system model.
  • a report is generated to provide a summary of all the adjustments that have been made to the virtual system model.
  • virtual system modeling engine 124 can be configured to model various aspects of the system to produce predicted values for the operation of various components within monitored system 102 . These predicted values can be compared to actual values being received via data acquisition hub 112 . If the differences are greater than a certain threshold, e.g., the DTT, but not in an alarm condition, then a calibration instruction can be generated. The calibration instruction can cause a calibration engine 134 to update the virtual model being used by system modeling engine 124 to reflect the new operating information.
  • a certain threshold e.g., the DTT
  • monitored system 102 ages, or more specifically the components comprising monitored system 102 age, then the operating parameters, e.g., currents and voltages associated with those components will also change.
  • the process of calibrating the virtual model based on the actual operating information provides a mechanism by which the virtual model can be aged along with the monitored system 102 so that the comparisons being generated by analytics engine 118 are more meaningful.
  • step 902 data is collected from, e.g., sensors 104 , 106 , and 108 .
  • the sensors can be configured to monitor protective devices within an electrical distribution system to determine and monitor the ability of the protective devices to withstand faults, which is describe in more detail below.
  • step 904 the data from the various sensors can be processed by analytics engine 118 in order to evaluate various parameters related to monitored system 102 .
  • simulation engine 124 can be configured to generate predicted values for monitored system 102 using a virtual model of the system that can be compared to the parameters generated by analytics engine 118 in step 904 . If there are differences between the actual values and the predicted values, then the virtual model can be updated to ensure that the virtual model ages with the actual system 102 .
  • the monitored system 102 ages, various components can be repaired, replaced, or upgraded, which can also create differences between the simulated and actual data that is not an alarm condition. Such activity can also lead to calibrations of the virtual model to ensure that the virtual model produces relevant predicted values. Thus, not only can the virtual model be updated to reflect aging of monitored system 102 , but it can also be updated to reflect retrofits, repairs, etc.
  • FIG. 10 is a diagram illustrating how a network optimization simulation engine 1005 for optimizing energy consumption in a multi-energy source site can work in conjunction with other elements of the analytics system in order to make predictions about the cost and availability of various distributed energy resources.
  • the system illustrated in FIG. 10 is similar to the configured illustrated in FIG. 1 , except that network optimization simulation engine 1005 is implemented on the analytics server 116 .
  • the network optimization simulation engine 1105 can be configured to allow an operator to run simulations to determine how the selection of various distributed energy sources can be used to optimize the performance of the microgrid being monitored.
  • the operator can define one or more scenarios to be tested, such as changing the operating parameters of one or more of the distributed energy sources, adding or removing distributed energy generations sources, taking portions of existing energy generation sources offline, or changing the mix of energy obtained from distributed energy sources of the microgrid and energy from the macrogrid can be changed to forecast how those changes could impact the reliability of the electrical network, capacity of the microgrid, and the cost of operation.
  • the network optimization simulation engine 1105 can allow the operator to select an option to test multiple scenarios in parallel. Multiple copies of the virtual model of the microgrid system can be generated and each scenario tested on a copy of the virtual model. Predicted data from each scenario can then be presented to the operator on a display of the client 128 .
  • the predicted data can include predicted utilization, capacity, and reliability information for each scenario.
  • the predicted data can also include predicted operating costs for each scenario based on the cost of generating power using the microgrid system, the cost of purchasing power from the macrogrid, and any cost offsets that might available due to the sale of electricity generated by excess capacity of the microgrid.
  • the operator can review the information presented and determine whether to change the operating parameters of the components of the microgrid in response to the predicted data.
  • FIG. 11 is another diagram illustrating how a network optimization simulation engine 1105 works in conjunction with other elements of the analytics system in order to make predictions about the cost and availability of various distributed energy resources. While the embodiment illustrated in FIG. 10 is of a similar configuration as that of FIG. 4 , the analytics central server 422 in the embodiment illustrated in FIG. 11 includes a market-based optimization engine 1105 . As described above, a virtual model of a microgrid can be created that includes various distributed energy generation solutions. The network optimization simulation engine 1105 works similarly to that of network optimization simulation engine 1005 illustrated in FIG. 10 . The network optimization simulation engine 1105 allows an operator to define one or more scenarios to generate predicted data for those scenarios. The network optimization simulation engine 1105 can create multiple copies of the virtual model of the electrical system in order to execute the simulations.
  • the embodiment illustrated in FIG. 11 illustrates a configuration that is similar to the electrical network configuration illustrated in FIG. 4 where multiple electrical systems are monitored.
  • the network optimization simulation engine 1105 can be implemented on the analytics central server 422 , and the monitored systems can comprise microgrid systems.
  • the microgrid systems can be located at different geographic locations. For example, a state university system can use microgrid systems on multiple campuses. Sensors coupled to components of each microgrid system can provide real-time data regarding the operational characteristics of each of the microgrids.
  • the central analytics server 422 can be configured to enable a client 128 to modify and adjust the operational parameters of any the analytics servers communicatively connected to the central analytics server 422 based on the data collected from the monitored systems. Additionally, each of the analytics servers can be configured to allow a client 128 to modify the virtual system model through a virtual system model development interface using well-known modeling tools.
  • FIG. 12 is a flow chart illustrating an example process for operating a real-time simulation for market-based electric power system optimization according to an embodiment.
  • a virtual system model of a microgrid can be created that includes logical models of the components of the microgrid including distributed energy generation solutions (step 1702 ).
  • the virtual system model can be created using virtual system modeling engine 124 .
  • the virtual system model can include components for modeling reliability, modeling voltage stability, and modeling power flow of the microgrid.
  • a plurality of virtual system models that represent discrete parts of the electrical power system can be created.
  • the distributed energy generation solutions included in a microgrid might include solar panels, wind turbines, other on-premise energy generation solutions, or a combination thereof.
  • the virtual model of the microgrid can be used to generate predicted data for the microgrid, including predicted capacity and utilization.
  • predictions regarding the cost of operation can also be generated using the cost of generating power at the microgrid and the cost of purchasing power from the macrogrid. These costs can be offset by the sale of electricity generated by excess capacity to the public utilities on the macrogrid.
  • real-time data can be collected from sensors interfaced with various components of the electrical system (step 1704 ).
  • the sensors can be configured to provide output values for system parameters that indicate the operational status and/or health of the monitored systems.
  • data can be collected from multiple monitored systems. Each monitored system can have a data acquisition hub that collects data from the sensor interfaced with components of that system and that sends the data across a network connection to a central analytics server.
  • the virtual model or models of the electrical system can be used to calculate predicted operational values for the electrical system (step 1706 ).
  • the virtual model can be used for modeling reliability, modeling voltage stability, and modeling power flow of the electrical system.
  • the predicted data can be used to generate market-based pricing predictions based on the performance of the components of the electrical system. For example, if the predicted utilization exceeds the predicted capacity of the microgrid, electricity from the macrogrid may need to be purchased to meet the excess utilization. Alternatively, utilization might need to be curtailed to prevent utilization from exceeding the generation capacity of the microgrid.
  • the predicted data generated by the virtual system model can be compared with real-time sensor data collected from the electrical system and the virtual model can be calibrated with the real-time data to ensure that the virtual system model provide data output that is consistent with the actual real-time data (step 1708 ).
  • decision engine 212 can be configured to look for significant deviations between the predicted values and the real-time values as received.
  • an alarm condition can be generated to alert a system administrator that the virtual system model is out of synch with the real-time model of the network.
  • a calibration request can be generated that is sent to the calibration engine 134 , which will cause the calibration engine 134 to calibrate the virtual model.
  • the predicted capacity for a microgrid could vary from the real-time data collected from the microgrid if system changes have been made to a distributed generation resource, components of a distributed generation resource are undergoing routing maintenance, or an unplanned outage of one or more components of the distributed generation resource has occurred. Calibrating the virtual model of the electrical system to match the real-time model of the system can result in increasingly accurate prediction data being generated using the virtual model.
  • the calibrated virtual system model can then be used to generate predicted data for various “what if” scenarios.
  • the network optimization simulation engine can be configured to receive one or more modified operational variables related to distributed energy sources and mixes of energy sources in calibrated model to optimize cost (step 1710 ).
  • the network optimization simulation engine can update the virtual model of the electrical system being used by the simulation engine 208 using the modified parameters For example, the operating parameters of one or more of the distributed energy sources can be changed, additional distributed energy sources can be added, existing energy sources can be taken offline, or the mix of energy obtained from distributed energy sources of the microgrid and energy from the macrogrid can be changed to forecast how those changes could impact the reliability of the electrical network, capacity of the microgrid, and the cost of operation.
  • the cost of operation can included the cost of generating electricity using the microgrid and the cost of purchasing electricity from the macrogrid. These costs can be offset by the sale of electricity generated by the microgrid based on excess capacity.
  • the generation capacities of some microgrid distributed energy generation solutions that can be influenced by changing weather conditions, such as solar power generation system and wind turbine generation systems.
  • Various weather scenarios can be tested to determine what the effects of these conditions might be on the cost of operation and the availability and reliability of the network. If generation capacity is decreased due to weather conditions, additional power may be needed from the macrogrid.
  • a particularly clear and sunny period of weather could result in a solar power generation system generate more power, but higher temperatures caused by the clear weather could result in these gains could be offset by additional loads on the system due to increased air conditioning system operations.
  • the virtual model allows the operator to test complex scenarios such as these to determine what the impact of these scenarios might be.
  • the what-if scenarios can be used for disaster or emergency preparedness simulations.
  • the operator can define various scenarios where one or more distributed energy sources have been damaged or rendered unavailable.
  • Various scenarios can be tested to predict the affects on capacity and utilization might be for these scenarios.
  • An administrator can utilize the predictions to prepare contingency plans for dealing with these scenarios.
  • the virtual model can be used to allow an administrator to make hypothetical changes to the operating parameters of one or more distributed energy sources and test the resulting effect, without taking down any of the facilities or having to perform costly and time consuming analysis.
  • multiple copies of the virtual model can be created and a different scenario can be modeled using a copy of the virtual model.
  • the predicted data generated using the virtual model or models can be used estimate price and availability of electricity based on the various changes the made by the administrator.
  • the simulation engine 208 can then generate predicted data for each of the modified virtual model or models using the parameters provided in step 1710 (step 1711 ).
  • the original virtual model of the electrical system is not modified when performing “what-if” analysis for various scenarios. Instead, one or more copies of the virtual model are created to test each of the scenarios.
  • the predicted data generated by each of the scenarios being tested can then be compared to real-time data associated with the real-time model of the electrical system to identify optimal scenarios (step 1712 ).
  • the comparison of the predicted data to the actual real-time data can be used to identify which solutions might provide the optimal pricing and availability of electrical resources.
  • the results of these simulations as well as real-time status information can be presented to the administrator/operator (step 1714 ).
  • the operator may then opt to make changes to one or more variables related to the distributed energy sources (step 1710 ) in order to see how these changes may further optimize cost and availability of the system.
  • the system can provide a user interface, such as a web page or a graphical user interface that an operator can access to display a view a representation of the real-time status of the electrical system as well as predicted data for one or more virtual models of the system.
  • the user interface may also enable the operator to select a particular model that provides optimal results and the system will update the operating parameters of the electrical system to match those of the selected virtual model.
  • the embodiments described herein can be practiced with other computer system configurations including hand-held devices, microprocessor systems, microprocessor-based or programmable consumer electronics, minicomputers, mainframe computers and the like.
  • the embodiments can also be practiced in distributing computing environments where tasks are performed by remote processing devices that are linked through a network.
  • the embodiment also relates to a device or an apparatus for performing these operations.
  • the systems and methods described herein can be specially constructed for the required purposes, such as the carrier network discussed above, or it may be a general purpose computer selectively activated or configured by a computer program stored in the computer.
  • various general purpose machines may be used with computer programs written in accordance with the teachings herein, or it may be more convenient to construct a more specialized apparatus to perform the required operations.
  • the embodiments described herein can also be embodied as computer readable code on a computer readable medium.
  • the computer readable medium is any data storage device that can store data, which can thereafter be read by a computer system. Examples of the computer readable medium include hard drives, network attached storage (NAS), read-only memory, random-access memory, CD-ROMs, CD-Rs, CD-RWs, magnetic tapes, and other optical and non-optical data storage devices.
  • the computer readable medium can also be distributed over a network coupled computer systems so that the computer readable code is stored and executed in a distributed fashion.
  • Certain embodiments can also be embodied as computer readable code on a computer readable medium.
  • the computer readable medium is any data storage device that can store data, which can thereafter be read by a computer system. Examples of the computer readable medium include hard drives, network attached storage (NAS), read-only memory, random-access memory, CD-ROMs, CD-Rs, CD-RWs, magnetic tapes, and other optical and non-optical data storage devices.
  • the computer readable medium can also be distributed over a network coupled computer systems so that the computer readable code is stored and executed in a distributed fashion.

Abstract

Systems and methods for optimizing energy consumption in multi-energy sources sites are provided. These techniques include developing a real-time model and a virtual model of the electrical system of a multi-energy source site, such as a microgrid. The real-time model represents a current state of the electrical system can be developed by collecting data from sensors interfaced with the various components of the electrical system. The virtual model of the electrical system mirrors the real-time model of the electrical system and can be used to generate predictions regarding the performance, availability, and reliability of cost and reliability of various distributed energy sources and to predict the price of acquiring energy from these sources. The virtual model can be used to test “what if” scenarios, such as routine maintenance, system changes, and unplanned events that impact the utilization and capacity of the microgrid.

Description

    CROSS-REFERENCES TO RELATED APPLICATIONS
  • This application is a continuation of U.S. application Ser. No. 12/895,597 filed Sep. 30, 2010, which claims the benefit of U.S. Provisional Application No. 61/247,915, filed Oct. 1, 2009, each of which is herein incorporated by reference in its entirety.
  • This application is also related to U.S. patent application Ser. No. 12/895,586, now U.S. Pat. No. 8,321,194, filed Sep. 30, 2010, which in turn claims the benefit of U.S. Provisional Application Ser. No. 61/247,917, filed Oct. 1, 2009, both of which are incorporated herein by reference in their entirety as if set forth in full.
  • BACKGROUND OF THE INVENTION
  • 1. Field of the Invention
  • The present invention relates generally to computer modeling and management of systems and, more particularly, to computer simulation techniques with real-time system monitoring and prediction of electrical system performance.
  • 2. Background
  • Electric generation has traditionally been performed by large-scale centralized facilities that are powered by fossil fuels or nuclear power or hydropower. Distributed generation is an alternative approach to centralized systems. Distributed generation systems include smaller-scale power generation facilities that can be used in addition to or instead of the traditional centralized facilities.
  • A microgrid is a localized grouping of electrical resources and loads that are typically connected to and synchronized with the traditional centralized electrical grid (also referred to herein as the macrogrid). A microgrid is typically connected to the macrogrid at a single point of connection, and the microgrid can typically disconnect from the macrogrid and function as an autonomous power system. The microgrid typically includes control independent of the macrogrid that allows the microgrid to be adjusted for changes in operating parameters, such as local load levels, independently of the macrogrid. Microgrids can be used as part of a distributed energy system where energy is generation is decentralized and energy is generated from many small sources. For example, a microgrid may be a smaller generation station that is designed to supply power to a single building or set of buildings, such as a hospital or office building complex. A microgrid might also be designed to power a larger area, such as a university campus or industrial complex that includes a larger number of buildings and can include greater load. Depending upon the specific implementation, the microgrid can have varying reliability requirements. For example, an implementation of a microgrid at a hospital or an industrial complex may have greater reliability requirements than a microgrid supplying power to a residential dormitories and classrooms on a university campus.
  • Microgrids can provide a hybrid power infrastructure where power from the conventional macrogrid is used in combination with the power generated onsite by the microgrid. Electrical power is often sold on complex market, and distributed energy systems, such as microgrids, add additional complexity to the market. Microgrids can sell excess power to the macrogrid and can purchase power from the macrogrid in order to meet local demand in excess of the generation capacity of the microgrid.
  • Optimization of market-based power systems is a critical component of distributed energy generation management. Demand for electricity and market conditions, such as pricing and availability of electrical power, create a complex market, and consideration must be taken for overall availability and reliability of the system. Various scenarios under consideration can impact or be impacted by external events, such as routine maintenance, system changes, or unplanned events that impact the electrical power network. Conventional approaches to market-based optimization do not take into account these potential effects on the power market.
  • Conventional systems provide market-based pricing of distributed energy off-line and do not consider real-time power network conditions. Conventional systems also do not provide for real-time evaluation of microgrid data to generated predicted impacts on availability and reliability of the microgrids.
  • Computer models of complex systems, such as microgrids, enable improved system design, development, and implementation through techniques for off-line simulation of the system operation. That is, system models can be created that computers can “operate” in a virtual environment to determine design parameters. All manner of systems can be modeled, designed, and virtually operated in this way, including machinery, factories, electrical power and distribution systems, processing plants, devices, chemical processes, biological systems, and the like. Such simulation techniques have resulted in reduced development costs and superior operation.
  • Design and production processes have benefited greatly from such computer simulation techniques, and such techniques are relatively well developed, but such techniques have not been applied in real-time, e.g., for real-time operational monitoring and management. In addition, predictive failure analysis techniques do not generally use real-time data that reflect actual system operation. Greater efforts at real-time operational monitoring and management would provide more accurate and timely suggestions for operational decisions, and such techniques applied to failure analysis would provide improved predictions of system problems before they occur. With such improved techniques, operational costs could be greatly reduced.
  • For example, mission critical electrical systems, e.g., for data centers or nuclear power facilities, must be designed to ensure that power is always available. Thus, the systems must be as failure proof as possible, and many layers of redundancy must be designed in to ensure that there is always a backup in case of a failure. It will be understood that such systems are highly complex, a complexity made even greater as a result of the required redundancy. Computer design and modeling programs allow for the design of such systems by allowing a designer to model the system and simulate its operation. Thus, the designer can ensure that the system will operate as intended before the facility is constructed.
  • Once the facility is constructed, however, the design is typically only referred to when there is a failure. In other words, once there is failure, the system design is used to trace the failure and take corrective action; however, because such design are complex, and there are many interdependencies, it can be extremely difficult and time consuming to track the failure and all its dependencies and then take corrective action that does not result in other system disturbances.
  • SUMMARY
  • Systems and methods for optimizing energy consumption in multi-energy sources sites are provided. Techniques are provided for developing a real-time model and a virtual model of the electrical system of a multi-energy source site, such as a microgrid. The real-time model represents a current state of the electrical system can be developed by collecting data from sensors interfaced with the various components of the electrical system. The virtual model of the electrical system mirrors the real-time model of the electrical system and can be used to generate predictions regarding the performance, availability, and reliability of cost and reliability of various distributed energy sources and to predict the price of acquiring energy from these sources. The virtual model can be used to test “what if” scenarios, such as routine maintenance, system changes, and unplanned events that impact the electrical power network. The virtual model can also be used to predict the effect of various scenarios on microgrid utilization and capacity.
  • According to an embodiment, a system for real-time modeling of electrical system performance of a microgrid electrical system is provided. The system includes a data acquisition component communicatively connected to a sensor configured to acquire real-time data output from the electrical system. The system also includes an analytics server communicatively connected to the data acquisition component. The analytics server comprises a virtual system modeling engine, analytics engine, and a network optimization simulation engine. The virtual system modeling engine is configured to generate predicted data output for the electrical system utilizing a first virtual system model of the electrical system. The analytics engine is configured to monitor the real-time data output and the predicted data output of the electrical system. The analytics engine is further configured to initiate a calibration and synchronization operation to update the first virtual system model when a difference between the real-time data output and the predicted data output exceeds a threshold. The network optimization simulation engine is configured to use the virtual system model updated based on the real-time data to forecast the cost of operating the microgrid electrical system and the reliability and availability of the microgrid electrical system.
  • According to one embodiment, a computer implemented method for real-time modeling of the performance of a microgrid electrical system wherein one or more processors are programmed to perform steps of the method. The method includes the steps of creating a first virtual system model of the microgrid electrical system, acquiring real-time data from sensors interfaced with components of the electrical system, calculating predicated data forecasting the cost of operating the microgrid electrical system and the reliability and availability of the microgrid electrical system, the predicted data being calculated using the first virtual system model of the microgrid electrical system, initiating a calibration and synchronization calibration and synchronization operation to update the first virtual system model when a difference between the real-time data and the predicted data exceeds a threshold, and recalculating the predicated data forecasting the cost of operating the microgrid electrical system and the reliability and availability of the microgrid electrical system using the calibrated first virtual system model of the microgrid electrical system.
  • These and other features, aspects, and embodiments of the invention are described below in the section entitled “Detailed Description.”
  • BRIEF DESCRIPTION OF THE DRAWINGS
  • For a more complete understanding of the principles disclosed herein, and the advantages thereof, reference is now made to the following descriptions taken in conjunction with the accompanying drawings, in which:
  • FIG. 1 is an illustration of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment;
  • FIG. 2 is a diagram illustrating a detailed view of an analytics server included in the system of FIG. 1;
  • FIG. 3 is a diagram illustrating how the system of FIG. 1 operates to synchronize the operating parameters between a physical facility and a virtual system model of the facility;
  • FIG. 4 is an illustration of the scalability of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment;
  • FIG. 5 is a block diagram that shows the configuration details of the system illustrated in FIG. 1, in accordance with one embodiment;
  • FIG. 6 is an illustration of a flowchart describing a method for real-time monitoring and predictive analysis of a monitored system, in accordance with one embodiment;
  • FIG. 7 is an illustration of a flowchart describing a method for managing real-time updates to a virtual system model of a monitored system, in accordance with one embodiment;
  • FIG. 8 is an illustration of a flowchart describing a method for synchronizing real-time system data with a virtual system model of a monitored system, in accordance with one embodiment;
  • FIG. 9 is a flow chart illustrating an example method for updating the virtual model in accordance with one embodiment;
  • FIG. 10 is a diagram illustrating how a network optimization simulation engine works in conjunction with other elements of the analytics system to make predictions about various scenarios related to distributed energy solutions; and
  • FIG. 11 is another diagram illustrating how a network optimization simulation engine works in conjunction with other elements of the analytics system to make predictions about various scenarios related to distributed energy solutions in an electric; and
  • FIG. 12 is a flow chart illustrating an example process for predicting, in real-time, various aspects associated with distributed energy solutions, in accordance with one embodiment.
  • DETAILED DESCRIPTION
  • Systems and methods for optimizing energy consumption in multi-energy source sites, such as a microgrid, are provided. Techniques are provided for developing a real-time model and a virtual model of the electrical system of a multi-energy source site, such as a microgrid. The real-time model represents a current state of the electrical system can be developed by collecting data from sensors interfaced with the various components of the electrical system. The virtual model of the electrical system mirrors the real-time model of the electrical system and can be used to generate predictions regarding the performance, availability, and reliability of cost and reliability of various distributed energy sources and to predict the price of acquiring energy from these sources. The virtual model can be used to test “what if” scenarios, such as routine maintenance, system changes, and unplanned events that impact the electrical power network. The virtual model can also be used to predict the effect of various scenarios on microgrid utilization and capacity.
  • Conventional systems provide market-based pricing of distributed energy off-line and do not consider real-time power network conditions. Conventional systems also do not provide for real-time evaluation of microgrid or other distributed energy source data to predict impacts on availability and reliability of the microgrids or other distributed energy source. For example, the generation capacities of some microgrid distributed energy generation solutions, such as solar power generation system and wind turbine generation systems, that can be influenced by changing weather conditions. For example, solar power generation systems can be impacted by cloudy days and wind turbine generation systems can be impacted by changing wind conditions or a lack of wind. Both of these examples can impact the availability and reliability of the microgrid system.
  • The advanced power system modeling and analytics techniques provided herein address the shortcomings of conventional systems. These techniques include utilize a real-time model and a virtual model of a microgrid. The real-time model represents a current state of the electrical system can be developed by collecting data from sensors interfaced with the various components of the electrical system. The virtual model of the electrical system mirrors the real-time model of the electrical system and can be used to generate predictions regarding the performance, availability, and reliability of cost and reliability of various distributed energy sources and to predict the price of acquiring energy from these sources. This advanced power system modeling and associated analytics are vital to determining what power network constraints may exist that would negatively impact the microgrid. As these potential constraints are dynamic, iteratively monitoring the state of the microgrid using real-time data is essential to achieving a reliable and sustainable market forecast. For example, a typical microgrid includes local power generation sources, and these local generation sources are an important aspect of market optimization considerations. The operator of the microgrid can define a desired use or mix of generation sources that includes locally generated power from local power generation sources as well as power from other electrical providers from the macrogrid. However, the desired market optimizations cannot be realized if the desired mix of generation sources cannot be maintained for the duration of the period of time used to calculate the market optimizations. For example, some operators may use a rolling 24-hour period or rolling 12-hour period on which market optimizations are based, but if the desired mix of energy resources cannot be achieved throughout that entire period, the market optimizations cannot be realized. As described above, conventional systems for making market predictions do not include these real-time modeling of the microgrid, which can result in the inaccurate market forecasts. For example, if critical elements of the microgrid are already overloaded or unavailable (e.g., due to maintenance or other localized events), the conventional solutions may not recognize this problem because they do not use a real-time model of the microgrid as well as a virtual model of the microgrid when making forecasts. The systems and methods disclosed herein overcome these problems by using both a real-time model of the system that represents the current state of the system as well as a virtual model of the system can be adapted and synchronized to the changing conditions on the microgrid. As a result, the market forecasts generated by the techniques disclosed herein are more accurate and reliable than those generated by conventional systems.
  • Embodiments of the systems and methods disclosed herein can also be used to monitor operation of the smart grid and to control electricity trading with the macrogrid. For example, if the microgrid has excess capacity, electricity can be sold to the macrogrid. Conversely, if the utilization of the microgrid exceeds the microgrid capacity, electricity can be purchased from the macrogrid to meet the current utilization. The capacity of the microgrid can be monitored in real-time to determine whether electricity can be sold or electricity needs to be purchased from a utility company via the macrogrid. All transactions between the public electric service on the macrogrid and the microgrid infrastructure are closely monitored, and rate and pricing information for the management of electricity exchange are also maintained. Closely monitoring this information and updating the virtual and real time models accordingly allows the systems and methods disclosed herein to optimize energy consumption to meet various objectives of the microgrid operator. For example, objectives of a microgrid operator might include minimizing the annual cost of operation, minimizing the carbon footprint, minimizing the peak load, minimizing public utility consumption, or a combination thereof. These objectives can vary based on time, energy source reliability, or other factors that can impact the operating objectives of the microgrid operator.
  • As used herein, a system denotes a set of components, real or abstract, comprising a whole where each component interacts with or is related to at least one other component within the whole. Examples of systems include machinery, factories, electrical systems, processing plants, devices, chemical processes, biological systems, data centers, aircraft carriers, and the like. An electrical system can designate a power generation and/or distribution system that is widely dispersed, i.e., power generation, transformers, and/or electrical distribution components distributed geographically throughout a large region, or bounded within a particular location, e.g., a power plant within a production facility, a bounded geographic area, on board a ship, etc.
  • A network application is any application that is stored on an application server connected to a network, e.g., local area network, wide area network, etc., in accordance with any contemporary client/server architecture model and can be accessed via the network. In this arrangement, the network application programming interface (API) resides on the application server separate from the client machine. The client interface would typically be a web browser, e.g. INTERNET EXPLORER™, FIREFOX™, NETSCAPE™, etc., that is in communication with the network application server via a network connection, e.g., HTTP, HTTPS, RSS, etc.
  • FIG. 1 is an illustration of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment. As shown herein, the system 100 includes a series of sensors, i.e., Sensor A 104, Sensor B 106, Sensor C 108, interfaced with the various components of a monitored system 102, a data acquisition hub 112, an analytics server 116, and a thin-client device 128. In one embodiment, the monitored system 102 is an electrical power generation plant. In another embodiment, the monitored system 102 is an electrical power transmission infrastructure. In still another embodiment, the monitored system 102 is an electrical power distribution system. In still another embodiment, the monitored system 102 includes a combination of one or more electrical power generation plant(s), power transmission infrastructure(s), and/or an electrical power distribution system. It should be understood that the monitored system 102 can be any combination of components whose operations can be monitored with conventional sensors and where each component interacts with or is related to at least one other component within the combination. For a monitored system 102 that is an electrical power generation, transmission, or distribution system, the sensors can provide data such as voltage, frequency, current, power, power factor, and the like. In an embodiment, the monitored system 102 is a microgrid system. The microgrid system can comprise electrical power generation components as well as electrical power distribution elements. The microgrid system can also be interfaced with the macrogrid. The microgrid can be monitored for excess capacity that can be used to generate electricity that can be sold over the public grid and/or for utilization that requires electricity to be purchased off of the macrogrid.
  • The sensors 104, 106 and 108 can be configured to provide output values for system parameters that indicate the operational status and/or “health” of the monitored system 102. For example, in an electrical power generation system, the current output or voltage readings for the various components that comprise the power generation system is indicative of the overall health and/or operational condition of the system. In one embodiment, the sensors are configured to also measure additional data that can affect system operation. For example, for an electrical power distribution system, the sensor output can include environmental information, e.g., temperature, humidity, etc., which can impact electrical power demand and can also affect the operation and efficiency of the power distribution system itself.
  • Continuing with FIG. 1, in one embodiment, the sensors 104, 106 and 108 can be configured to output data in an analog format. For example, electrical power sensor measurements, e.g., voltage, current, etc., are sometimes conveyed in an analog format as the measurements may be continuous in both time and amplitude. In another embodiment, the sensors 104, 106 and 108 can be configured to output data in a digital format. For example, the same electrical power sensor measurements can be taken in discrete time increments that are not continuous in time or amplitude. In still another embodiment, the sensors 104, 106 and 108 can be configured to output data in either an analog format, digital format, or both, depending on the sampling requirements of the monitored system 102.
  • The sensors 104, 106 and 108 can be configured to capture output data at split-second intervals to effectuate “real time” data capture. For example, in one embodiment, the sensors 104, 106 and 108 can be configured to generate hundreds of thousands of data readings per second. It should be appreciated, however, that the number of data output readings taken by a particular sensor can be set to any value as long as the operational limits of the sensor and the data processing capabilities of the data acquisition hub 112 are not exceeded.
  • Still referring to FIG. 1, each sensor 104, 106 and 108 can be communicatively connected to the data acquisition hub 112 via an analog or digital data connection 110. The data acquisition hub 112 can be a standalone unit or integrated within the analytics server 116 and can be embodied as a piece of hardware, software, or some combination thereof. In one embodiment, the data connection 110 is a “hard wired” physical data connection, e.g., serial, network, etc. For example, a serial or parallel cable connection between the sensor and the hub 112. In another embodiment, the data connection 110 is a wireless data connection. For example, a radio frequency (RF), BLUETOOTH™, infrared or equivalent connection between the sensor and the hub 112.
  • The data acquisition hub 112 can be configured to communicate “real-time” data from the monitored system 102 to the analytics server 116 using a network connection 114. In one embodiment, the network connection 114 is a “hardwired” physical connection. For example, the data acquisition hub 112 can be communicatively connected, e.g., via Category 5 (CAT5), fiber optic, or equivalent cabling, to a data server (not shown) that is communicatively connected, e.g., via CAT5, fiber optic, or equivalent cabling, through the Internet and to the analytics server 116 server. The analytics server 116 can also be communicatively connected with the Internet, e.g., via CAT5, fiber optic, or equivalent cabling. In another embodiment, the network connection 114 can be a wireless network connection, e.g., Wi-Fi, WLAN, etc. For example, utilizing an 802.11b/g or equivalent transmission format. In practice, the network connection used is dependent upon the particular requirements of the monitored system 102.
  • Data acquisition hub 112 can also be configured to supply warning and alarms signals as well as control signals to monitored system 102 and/or sensors 104, 106, and 108 as described in more detail below.
  • As shown in FIG. 1, in one embodiment, the analytics server 116 can host an analytics engine 118, virtual system modeling engine 124, and several databases 126, 130, and 132. The virtual system modeling engine 124 can, e.g., be a computer modeling system, such as described above. In this context, however, the modeling engine 124 can be used to precisely model and mirror the actual electrical system. Analytics engine 118 can be configured to generate predicted data for the monitored system and analyze difference between the predicted data and the real-time data received from hub 112. In an embodiment, if the monitored system is a microgrid, the predicted data can include predictions on capacity and utilization. These predictions can be used to project whether the microgrid operations may meet the objectives of the microgrid operator, such as minimizing the annual cost of operations, minimizing the carbon footprint of the microgrid system, minimizing the peak load on the microgrid, minimizing public utility consumption, or a combination thereof. The microgrid operator can define a set of operational objectives. For example, a microgrid operator could define an objective that requires that utility power from the macrogrid only be used during off-peak hours in order to reduce operational costs, unless system reliability falls below 99.99%, at which time utility power can be used to ensure that the system reliability objectives are met.
  • FIG. 2 is a diagram illustrating a more detailed view of analytic server 116. As can be seen, analytic server 116 is interfaced with a monitored facility 102 via sensors 202, e.g., sensors 104, 106, and 108. Sensors 202 are configured to supply real-time data from within monitored facility 102. The real-time data is communicated to analytic server 116 via a hub 204. Hub 204 can be configured to provide real-time data to server 116 as well as alarming, sensing, and control features for facility 102.
  • The real-time data from hub 204 can be passed to a comparison engine 210, which can form part of analytics engine 118. Comparison engine 210 can be configured to continuously compare the real-time data with predicted values generated by simulation engine 208. Based on the comparison, comparison engine 210 can be further configured to determine whether deviations between the real-time and the expected values exists, and if so to classify the deviation, e.g., high, marginal, low, etc. The deviation level can then be communicated to decision engine 212, which can also comprise part of analytics engine 118.
  • Decision engine 212 can be configured to look for significant deviations between the predicted values and real-time values as received from the comparison engine 210. If significant deviations are detected, decision engine 212 can also be configured to determine whether an alarm condition exists, activate the alarm and communicate the alarm to Human-Machine Interface (HMI) 214 for display in real-time via, e.g., thin client 128. Decision engine 212 can also be configured to perform root cause analysis for significant deviations in order to determine the interdependencies and identify the parent-child failure relationships that may be occurring. In this manner, parent alarm conditions are not drowned out by multiple children alarm conditions, allowing the user/operator to focus on the main problem, at least at first.
  • Thus, in one embodiment, and alarm condition for the parent can be displayed via HMI 214 along with an indication that processes and equipment dependent on the parent process or equipment are also in alarm condition. This also means that server 116 can maintain a parent-child logical relationship between processes and equipment comprising facility 102. Further, the processes can be classified as critical, essential, non-essential, etc.
  • Decision engine 212 can also be configured to determine health and performance levels and indicate these levels for the various processes and equipment via HMI 214. All of which, when combined with the analytic capabilities of analytics engine 118 allows the operator to minimize the risk of catastrophic equipment failure by predicting future failures and providing prompt, informative information concerning potential/predicted failures before they occur. Avoiding catastrophic failures reduces risk and cost, and maximizes facility performance and up time.
  • Simulation engine 208 operates on complex logical models 206 of facility 102. These models are continuously and automatically synchronized with the actual facility status based on the real-time data provided by hub 204. In other words, the models are updated based on current switch status, breaker status, e.g., open-closed, equipment on/off status, etc. Thus, the models are automatically updated based on such status, which allows simulation engine to produce predicted data based on the current facility status. This in turn, allows accurate and meaningful comparisons of the real-time data to the predicted data.
  • Example models 206 that can be maintained and used by server 116 include power flow models used to calculate expected kW, kVAR, power factor values, etc., short circuit models used to calculate maximum and minimum available fault currents, protection models used to determine proper protection schemes and ensure selective coordination of protective devices, power quality models used to determine voltage and current distortions at any point in the network, to name just a few. It will be understood that different models can be used depending on the system being modeled.
  • In certain embodiments, hub 204 is configured to supply equipment identification associated with the real-time data. This identification can be cross referenced with identifications provided in the models.
  • In one embodiment, if the comparison performed by comparison engine 210 indicates that the differential between the real-time sensor output value and the expected value exceeds a Defined Difference Tolerance (DDT) value, i.e., the “real-time” output values of the sensor output do not indicate an alarm condition, but below an alarm condition, i.e., alarm threshold value, a calibration request is generated by the analytics engine 118. If the differential exceeds the alarm condition, an alarm or notification message can be generated by the analytics engine 118. If the differential is below the DTT value, the analytics engine can do nothing and continues to monitor the real-time data and expected data.
  • In one embodiment, the alarm or notification message can be sent directly to the client or user) 128, e.g., via HMI 214, for display in real-time on a web browser, pop-up message box, e-mail, or equivalent on the client 128 display panel. In another embodiment, the alarm or notification message can be sent to a wireless mobile device, e.g., BLACKBERRY™, laptop, pager, etc., to be displayed for the user by way of a wireless router or equivalent device interfaced with the analytics server 116. In still another embodiment, the alarm or notification message can be sent to both the client 128 display and the wireless mobile device. The alarm can be indicative of a need for a repair event or maintenance to be done on the monitored system. It should be noted, however, that calibration requests should not be allowed if an alarm condition exists to prevent the models from being calibrated to an abnormal state.
  • Once the calibration is generated by the analytics engine 118, the various operating parameters or conditions of model(s) 206 can be updated or adjusted to reflect the actual facility configuration. This can include, but is not limited to, modifying the predicted data output from the simulation engine 208, adjusting the logic/processing parameters used by the model(s) 206, adding/subtracting functional elements from model(s) 206, etc. It should be understood that any operational parameter used by models 206 can be modified as long as the resulting modifications can be processed and registered by simulation engine 208.
  • Referring back to FIG. 1, models 206 can be stored in the virtual system model database 126. As noted, a variety of conventional virtual model applications can be used for creating a virtual system model, so that a wide variety of systems and system parameters can be modeled. For example, in the context of an electrical power distribution system, the virtual system model can include components for modeling reliability, modeling voltage stability, and modeling power flow. In addition, models 206 can include dynamic control logic that permits a user to configure the models 206 by specifying control algorithms and logic blocks in addition to combinations and interconnections of generators, governors, relays, breakers, transmission line, and the like. The voltage stability parameters can indicate capacity in terms of size, supply, and distribution, and can indicate availability in terms of remaining capacity of the presently configured system. The power flow model can specify voltage, frequency, and power factor, thus representing the “health” of the system.
  • All of models 206 can be referred to as a virtual system model. Thus, a virtual system model database 130 can be configured to store the virtual system model. A duplicate, but synchronized copy of the virtual system model can be stored in a virtual simulation model database 130. This duplicate model can be used for what-if simulations. In other words, this model can be used to allow a system designer to make hypothetical changes to the facility and test the resulting effect, without taking down the facility or costly and time consuming analysis. Such hypothetical can be used to learn failure patterns and signatures as well as to test proposed modifications, upgrades, additions, etc., for the facility. The real-time data, as well as trending produced by analytics engine 118 can be stored in a real-time data acquisition database 132.
  • As discussed above, the virtual system model is periodically calibrated and synchronized with “real-time” sensor data outputs so that the virtual system model provides data output values that are consistent with the actual “real-time” values received from the sensor output signals. Unlike conventional systems that use virtual system models primarily for system design and implementation purposes, i.e., offline simulation and facility planning, the virtual system models described herein are updated and calibrated with the real-time system operational data to provide better predictive output values. A divergence between the real-time sensor output values and the predicted output values generate either an alarm condition for the values in question and/or a calibration request that is sent to the calibration engine 134.
  • Continuing with FIG. 1, the analytics engine 118 can be configured to implement pattern/sequence recognition into a real-time decision loop that, e.g., is enabled by a new type of machine learning called associative memory, or hierarchical temporal memory (HTM), which is a biological approach to learning and pattern recognition. Associative memory allows storage, discovery, and retrieval of learned associations between extremely large numbers of attributes in real time. At a basic level, an associative memory stores information about how attributes and their respective features occur together. The predictive power of the associative memory technology comes from its ability to interpret and analyze these co-occurrences and to produce various metrics. Associative memory is built through “experiential” learning in which each newly observed state is accumulated in the associative memory as a basis for interpreting future events. Thus, by observing normal system operation over time, and the normal predicted system operation over time, the associative memory is able to learn normal patterns as a basis for identifying non-normal behavior and appropriate responses, and to associate patterns with particular outcomes, contexts or responses. The analytics engine 118 is also better able to understand component mean time to failure rates through observation and system availability characteristics. This technology in combination with the virtual system model can be characterized as a “neocortical” model of the system under management
  • This approach also presents a novel way to digest and comprehend alarms in a manageable and coherent way. The neocortical model could assist in uncovering the patterns and sequencing of alarms to help pinpoint the location of the (impending) failure, its context, and even the cause. Typically, responding to the alarms is done manually by experts who have gained familiarity with the system through years of experience. However, at times, the amount of information is so great that an individual cannot respond fast enough or does not have the necessary expertise. An “intelligent” system like the neocortical system that observes and recommends possible responses could improve the alarm management process by either supporting the existing operator, or even managing the system autonomously.
  • Current simulation approaches for maintaining transient stability involve traditional numerical techniques and typically do not test all possible scenarios. The problem is further complicated as the numbers of components and pathways increase. Through the application of the neocortical model, by observing simulations of circuits, and by comparing them to actual system responses, it may be possible to improve the simulation process, thereby improving the overall design of future circuits.
  • The virtual system model database 126, as well as databases 130 and 132, can be configured to store one or more virtual system models, virtual simulation models, and real-time data values, each customized to a particular system being monitored by the analytics server 118. Thus, the analytics server 118 can be used to monitor more than one system at a time. As depicted herein, the databases 126, 130, and 132 can be hosted on the analytics server 116 and communicatively interfaced with the analytics engine 118. In other embodiments, databases 126, 130, and 132 can be hosted on a separate database server (not shown) that is communicatively connected to the analytics server 116 in a manner that allows the virtual system modeling engine 124 and analytics engine 118 to access the databases as needed.
  • Therefore, in one embodiment, the client 128 can modify the virtual system model stored on the virtual system model database 126 by using a virtual system model development interface using well-known modeling tools that are separate from the other network interfaces. For example, dedicated software applications that run in conjunction with the network interface to allow a client 128 to create or modify the virtual system models.
  • The client 128 can use a variety of network interfaces, e.g., web browser, CITRIX™, WINDOWS TERMINAL SERVICES™, telnet, or other equivalent thin-client terminal applications, etc., to access, configure, and modify the sensors, e.g., configuration files, etc., analytics engine 118, e.g., configuration files, analytics logic, etc., calibration parameters, e.g., configuration files, calibration parameters, etc., virtual system modeling engine 124, e.g., configuration files, simulation parameters, etc., and virtual system model of the system under management, e.g., virtual system model operating parameters and configuration files. Correspondingly, data from those various components of the monitored system 102 can be displayed on a client 128 display panel for viewing by a system administrator or equivalent.
  • As described above, server 116 is configured to synchronize the physical world with the virtual and report, e.g., via visual, real-time display, deviations between the two as well as system health, alarm conditions, predicted failures, etc. This is illustrated with the aid of FIG. 3, in which the synchronization of the physical world (left side) and virtual world (right side) is illustrated. In the physical world, sensors 202 produce real-time data 302 for the processes 312 and equipment 314 that make up facility 102. In the virtual world, simulations 304 of the virtual system model 206 provide predicted values 306, which are correlated and synchronized with the real-time data 302. The real-time data can then be compared to the predicted values so that differences 308 can be detected. The significance of these differences can be determined to determine the health status 310 of the system. The health stats can then be communicated to the processes 312 and equipment 314, e.g., via alarms and indicators, as well as to thin client 128, e.g., via web pages 316.
  • FIG. 4 is an illustration of the scalability of a system for utilizing real-time data for predictive analysis of the performance of a monitored system, in accordance with one embodiment. As depicted herein, an analytics central server 422 is communicatively connected with analytics server A 414, analytics server B 416, and analytics server n 418, i.e., one or more other analytics servers, by way of one or more network connections 114. Each of the analytics servers 414, 416, and 418 is communicatively connected with a respective data acquisition hub, i.e., Hub A 408, Hub B 410, Hub n 412, which communicates with one or more sensors that are interfaced with a system, i.e., Monitored System A 402, Monitored System B 404, Monitored System n 406, which the respective analytical server monitors. For example, analytics server A 414 is communicative connected with data acquisition hub A 408, which communicates with one or more sensors interfaced with monitored system A 402. According to an embodiment, the Monitored System A 402, Monitored System B 404, Monitored System n 406 can be distributed generation systems, such as microgrid systems. In an embodiment, multiple distributed energy generation systems might be used by a microgrid system. For example, a university campus might include multiple distributed energy generation sources, such as solar panel arrays, wind turbines, and other on-premise power generation systems. Each of the distributed energy solutions could be treated as separate monitored systems that are managed via the analytics central server 422. In another example, a university might have multiple campuses that each have their own microgrid for on-site power generation and each campus can be treated a separate monitored system that is administered from a central location.
  • Each analytics server, i.e., analytics server A 414, analytics server B 416, analytics server n 418, can be configured to monitor the sensor output data of its corresponding monitored system and feed that data to the central analytics server 422. Additionally, each of the analytics servers 414, 416 and 418 can function as a proxy agent of the central analytics server 422 during the modifying and/or adjusting of the operating parameters of the system sensors they monitor. For example, analytics server B 416 can be configured as a proxy to modify the operating parameters of the sensors interfaced with monitored system B 404.
  • Moreover, the central analytics server 422, which is communicatively connected to one or more analytics server(s), can be used to enhance the scalability. For example, a central analytics server 422 can be used to monitor multiple electrical power generation facilities, i.e., monitored system A 402 can be a power generation facility located in city A while monitored system B 404 is a power generation facility located in city B, on an electrical power grid. In this example, the number of electrical power generation facilities that can be monitored by central analytics server 422 is limited only by the data processing capacity of the central analytics server 422. As described above, central analytics server 422 can be used to monitor multiple distributed electrical power generation facilities that are part of a microgrid.
  • The central analytics server 422 can be configured to enable a client 128 to modify and adjust the operational parameters of any the analytics servers communicatively connected to the central analytics server 422. Furthermore, as discussed above, each of the analytics servers 414, 416 and 418 can be configured to serve as proxies for the central analytics server 422 to enable a client 128 to modify and/or adjust the operating parameters of the sensors interfaced with the systems that they respectively monitor. For example, the client 128 can use the central analytics server 422, and vice versa, to modify and/or adjust the operating parameters of analytics server A 414 and use the same to modify and/or adjust the operating parameters of the sensors interfaced with monitored system A 402. Additionally, each of the analytics servers can be configured to allow a client 128 to modify the virtual system model through a virtual system model development interface using well-known modeling tools.
  • In one embodiment, the central analytics server 422 can function to monitor and control a monitored system when its corresponding analytics server is out of operation. For example, central analytics server 422 can take over the functionality of analytics server B 416 when the server 416 is out of operation. That is, the central analytics server 422 can monitor the data output from monitored system B 404 and modify and/or adjust the operating parameters of the sensors that are interfaced with the system 404.
  • In one embodiment, the network connection 114 is established through a wide area network (WAN) such as the Internet. In another embodiment, the network connection is established through a local area network (LAN) such as the company intranet. In a separate embodiment, the network connection 114 is a “hardwired” physical connection. For example, the data acquisition hub 112 can be communicatively connected, e.g., via Category 5 (CAT5), fiber optic, or equivalent cabling, to a data server that is communicatively connected, e.g., via CAT5, fiber optic, or equivalent cabling, through the Internet and to the analytics server 116 server hosting the analytics engine 118. In another embodiment, the network connection 114 is a wireless network connection, e.g., Wi-Fi, WLAN, etc. For example, utilizing an 802.11b/g or equivalent transmission format.
  • In certain embodiments, regional analytics servers can be placed between local analytics servers 414, 416, 418 and central analytics server 422. Further, in certain embodiments a disaster recovery site can be included at the central analytics server 422 level.
  • FIG. 5 is a block diagram that shows the configuration details of analytics server 116 illustrated in FIG. 1 in more detail. It should be understood that the configuration details in FIG. 5 are merely one embodiment of the items described for FIG. 1, and it should be understood that alternate configurations and arrangements of components could also provide the functionality described herein.
  • The analytics server 116 includes a variety of components. In the example of FIG. 5, the analytics server 116 is implemented in a Web-based configuration, so that the analytics server 116 includes, or communicates with, a secure web server 530 for communication with the sensor systems 519, e.g., data acquisition units, metering devices, sensors, etc., and external communication entities 534, e.g., web browser, “thin client” applications, etc. A variety of user views and functions 532 are available to the client 128 such as: alarm reports, Active X controls, equipment views, view editor tool, custom user interface page, and XML parser. It should be appreciated, however, that these are just examples of a few in a long list of views and functions 532 that the analytics server 116 can deliver to the external communications entities 534 and are not meant to limit the types of views and functions 532 available to the analytics server 116 in any way.
  • The analytics server 116 also includes an alarm engine 506 and messaging engine 504, for the aforementioned external communications. The alarm engine 506 is configured to work in conjunction with the messaging engine 504 to generate alarm or notification messages 502, in the form of text messages, e-mails, paging, etc., in response to the alarm conditions previously described. The analytics server 116 determines alarm conditions based on output data it receives from the various sensor systems 519 through a communications connection, e.g., wireless 516, TCP/IP 518, Serial 520, etc., and simulated output data from a virtual system model 512, of the monitored system, processed by the analytics engines 118. In one embodiment, the virtual system model 512 can be created by a user through interacting with an external communication entity 534 by specifying the components that comprise the monitored system and by specifying relationships between the components of the monitored system. In another embodiment, the virtual system model 512 can be automatically generated by the analytics engines 118 as components of the monitored system are brought online and interfaced with the analytics server 508.
  • Continuing with FIG. 5, a virtual system model database 526 can be communicatively connected with the analytics server 116 and can be configured to store one or more virtual system models 512, each of which represents a particular monitored system. For example, the analytics server 116 can conceivably monitor multiple electrical power generation systems, e.g., system A, system B, system C, etc., spread across a wide geographic area, e.g., City A, City B, City C, etc. Therefore, the analytics server 116 can use a different virtual system model 512 for each of the electrical power generation systems that it monitors. Virtual simulation model database 538 can be configured to store a synchronized, duplicate copy of the virtual system model 512, and real-time data acquisition database 540 can store the real-time and trending data for the system(s) being monitored.
  • Thus, in operation, analytics server 116 can receive real-time data for various sensors, i.e., components, through data acquisition system 202. As can be seen, analytics server 116 can comprise various drivers configured to interface with the various types of sensors, etc., comprising data acquisition system 202. This data represents the real-time operational data for the various components. For example, the data can indicate that a certain component is operating at a certain voltage level and drawing certain amount of current. This information can then be fed to a modeling engine to generate a virtual system model 512 that is based on the actual real-time operational data.
  • Analytics engine 118 can be configured to compare predicted data based on the virtual system model 512 with real-time data received from data acquisition system 202 and to identify any differences. In some instances, analytics engine can be configured to identify these differences and then update, i.e., calibrate, the virtual system model 512 for use in future comparisons. In this manner, more accurate comparisons and warnings can be generated.
  • But in other instances, the differences will indicate a failure, or the potential for a failure. For example, when a component begins to fail, the operating parameters will begin to change. This change may be sudden or it may be a progressive change over time. Analytics engine 118 can detect such changes and issue warnings that can allow the changes to be detected before a failure occurs. The analytic engine 118 can be configured to generate warnings that can be communicated via interface 532.
  • For example, a user can access information from server 116 using thin client 534. For example, reports can be generate and served to thin client 534 via server 540. These reports can, for example, comprise schematic or symbolic illustrations of the system being monitored. Status information for each component can be illustrated or communicated for each component. This information can be numerical, i.e., the voltage or current level, or it can be symbolic, i.e., green for normal, red for failure or warning. In certain embodiments, intermediate levels of failure can also be communicated, i.e., yellow can be used to indicate operational conditions that project the potential for future failure. It should be noted that this information can be accessed in real-time. Moreover, via thin client 534, the information can be accessed from anywhere and anytime.
  • Continuing with FIG. 5, the Analytics Engine 118 is communicatively interfaced with a HTM pattern recognition and machine learning engine 551. The HTM engine 551 can be configured to work in conjunction with the analytics engine 118 and a virtual system model of the monitored system to make real-time predictions, i.e., forecasts, about various operational aspects of the monitored system. The HTM engine 551 works by processing and storing patterns observed during the normal operation of the monitored system over time. These observations are provided in the form of real-time data captured using a multitude of sensors that are imbedded within the monitored system. In one embodiment, the virtual system model can also be updated with the real-time data such that the virtual system model “ages” along with the monitored system. Examples of a monitored system can include machinery, factories, electrical systems, processing plants, devices, chemical processes, biological systems, data centers, aircraft carriers, and the like. It should be understood that the monitored system can be any combination of components whose operations can be monitored with conventional sensors and where each component interacts with or is related to at least one other component within the combination.
  • FIG. 6 is a flowchart describing a method for real-time monitoring and predictive analysis of a monitored system, in accordance with one embodiment. Method 600 begins with operation 602 where real-time data indicative of the monitored system status is processed to enable a virtual model of the monitored system under management to be calibrated and synchronized with the real-time data. In one embodiment, the monitored system 102 is a mission critical electrical power system. In another embodiment, the monitored system 102 can include an electrical power transmission infrastructure. In still another embodiment, the monitored system 102 includes a combination of thereof. It should be understood that the monitored system 102 can be any combination of components whose operations can be monitored with conventional sensors and where each component interacts with or is related to at least one other component within the combination.
  • Method 600 moves on to operation 604 where the virtual system model of the monitored system under management is updated in response to the real-time data. This may include, but is not limited to, modifying the simulated data output from the virtual system model, adjusting the logic/processing parameters utilized by the virtual system modeling engine to simulate the operation of the monitored system, adding/subtracting functional elements of the virtual system model, etc. It should be understood, that any operational parameter of the virtual system modeling engine and/or the virtual system model may be modified by the calibration engine as long as the resulting modifications can be processed and registered by the virtual system modeling engine.
  • Method 600 proceeds on to operation 606 where the simulated real-time data indicative of the monitored system status is compared with a corresponding virtual system model created at the design stage. The design stage models, which may be calibrated and updated based on real-time monitored data, are used as a basis for the predicted performance of the system. The real-time monitored data can then provide the actual performance over time. By comparing the real-time time data with the predicted performance information, difference can be identified a tracked by, e.g., the analytics engine 118. Analytics engines 118 can then track trends, determine alarm states, etc., and generate a real-time report of the system status in response to the comparison.
  • In other words, the analytics can be used to analyze the comparison and real-time data and determine if there is a problem that should be reported and what level the problem may be, e.g., low priority, high priority, critical, etc. The analytics can also be used to predict future failures and time to failure, etc. In one embodiment, reports can be displayed on a conventional web browser (e.g. INTERNET EXPLORER™, FIREFOX™, NETSCAPE™, etc., which can be rendered on a standard personal computing (PC) device. In another embodiment, the “real-time” report can be rendered on a “thin-client” computing device, e.g., CITRIX™, WINDOWS TERMINAL SERVICES™, telnet, or other equivalent thin-client terminal application. In still another embodiment, the report can be displayed on a wireless mobile device, e.g., BLACKBERRY™, laptop, pager, etc. For example, in one embodiment, the “real-time” report can include such information as the differential in a particular power parameter, i.e., current, voltage, etc., between the real-time measurements and the virtual output data.
  • FIG. 7 is a flowchart describing a method for managing real-time updates to a virtual system model of a monitored system, in accordance with one embodiment. Method 700 begins with operation 702 where real-time data output from a sensor interfaced with the monitored system is received. The sensor is configured to capture output data at split-second intervals to effectuate “real time” data capture. For example, in one embodiment, the sensor is configured to generate hundreds of thousands of data readings per second. It should be appreciated, however, that the number of data output readings taken by the sensor may be set to any value as long as the operational limits of the sensor and the data processing capabilities of the data acquisition hub are not exceeded.
  • Method 700 moves to operation 704 where the real-time data is processed into a defined format. This would be a format that can be used by the analytics server to analyze or compare the data with the simulated data output from the virtual system model. In one embodiment, the data is converted from an analog signal to a digital signal. In another embodiment, the data is converted from a digital signal to an analog signal. It should be understood, however, that the real-time data may be processed into any defined format as long as the analytics engine can utilize the resulting data in a comparison with simulated output data from a virtual system model of the monitored system.
  • Method 700 continues on to operation 706 where the predicted, i.e., simulated, data for the monitored system is generated using a virtual system model of the monitored system. As discussed above, a virtual system modeling engine uses dynamic control logic stored in the virtual system model to generate the predicted output data. The predicted data is supposed to be representative of data that should actually be generated and output from the monitored system.
  • Method 700 proceeds to operation 708 where a determination is made as to whether the difference between the real-time data output and the predicted system data falls between a set value and an alarm condition value, where if the difference falls between the set value and the alarm condition value a virtual system model calibration and a response can be generated. That is, if the comparison indicates that the differential between the “real-time” sensor output value and the corresponding “virtual” model data output value exceeds a Defined Difference Tolerance (DDT) value, i.e., the “real-time” output values of the sensor output do not indicate an alarm condition, but below an alarm condition, i.e., alarm threshold value, a response can be generated by the analytics engine. In one embodiment, if the differential exceeds, the alarm condition, an alarm or notification message is generated by the analytics engine 118. In another embodiment, if the differential is below the DTT value, the analytics engine does nothing and continues to monitor the “real-time” data and “virtual” data. Generally speaking, the comparison of the set value and alarm condition is indicative of the functionality of one or more components of the monitored system.
  • FIG. 8 is a flowchart describing a method for synchronizing real-time system data with a virtual system model of a monitored system, in accordance with one embodiment. Method 800 begins with operation 802 where a virtual system model calibration request is received. A virtual model calibration request can be generated by an analytics engine whenever the difference between the real-time data output and the predicted system data falls between a set value and an alarm condition value.
  • Method 800 proceeds to operation 804 where the predicted system output value for the virtual system model is updated with a real-time output value for the monitored system. For example, if sensors interfaced with the monitored system outputs a real-time current value of A, then the predicted system output value for the virtual system model is adjusted to reflect a predicted current value of A.
  • Method 800 moves on to operation 806 where a difference between the real-time sensor value measurement from a sensor integrated with the monitored system and a predicted sensor value for the sensor is determined. As discussed above, the analytics engine is configured to receive “real-time” data from sensors interfaced with the monitored system via the data acquisition hub, or, alternatively directly from the sensors, and “virtual” data from the virtual system modeling engine simulating the data output from a virtual system model of the monitored system. In one embodiment, the values are in units of electrical power output, i.e., current or voltage, from an electrical power generation or transmission system. It should be appreciated, however, that the values can essentially be any unit type as long as the sensors can be configured to output data in those units or the analytics engine can convert the output data received from the sensors into the desired unit type before performing the comparison.
  • Method 800 continues on to operation 808 where the operating parameters of the virtual system model are adjusted to minimize the difference. This means that the logic parameters of the virtual system model that a virtual system modeling engine uses to simulate the data output from actual sensors interfaced with the monitored system are adjusted so that the difference between the real-time data output and the simulated data output is minimized. Correspondingly, this operation will update and adjust any virtual system model output parameters that are functions of the virtual system model sensor values. For example, in a power distribution environment, output parameters of power load or demand factor might be a function of multiple sensor data values. The operating parameters of the virtual system model that mimic the operation of the sensor will be adjusted to reflect the real-time data received from those sensors. In one embodiment, authorization from a system administrator is requested prior to the operating parameters of the virtual system model being adjusted. This is to ensure that the system administrator is aware of the changes that are being made to the virtual system model. In one embodiment, after the completion of all the various calibration operations, a report is generated to provide a summary of all the adjustments that have been made to the virtual system model.
  • As described above, virtual system modeling engine 124 can be configured to model various aspects of the system to produce predicted values for the operation of various components within monitored system 102. These predicted values can be compared to actual values being received via data acquisition hub 112. If the differences are greater than a certain threshold, e.g., the DTT, but not in an alarm condition, then a calibration instruction can be generated. The calibration instruction can cause a calibration engine 134 to update the virtual model being used by system modeling engine 124 to reflect the new operating information.
  • It will be understood that as monitored system 102 ages, or more specifically the components comprising monitored system 102 age, then the operating parameters, e.g., currents and voltages associated with those components will also change. Thus, the process of calibrating the virtual model based on the actual operating information provides a mechanism by which the virtual model can be aged along with the monitored system 102 so that the comparisons being generated by analytics engine 118 are more meaningful.
  • At a high level, this process can be illustrated with the aid of FIG. 9, which is a flow chart illustrating an example method for updating the virtual model in accordance with one embodiment. In step 902, data is collected from, e.g., sensors 104, 106, and 108. For example, the sensors can be configured to monitor protective devices within an electrical distribution system to determine and monitor the ability of the protective devices to withstand faults, which is describe in more detail below.
  • In step 904, the data from the various sensors can be processed by analytics engine 118 in order to evaluate various parameters related to monitored system 102. In step 905, simulation engine 124 can be configured to generate predicted values for monitored system 102 using a virtual model of the system that can be compared to the parameters generated by analytics engine 118 in step 904. If there are differences between the actual values and the predicted values, then the virtual model can be updated to ensure that the virtual model ages with the actual system 102.
  • It should be noted that as the monitored system 102 ages, various components can be repaired, replaced, or upgraded, which can also create differences between the simulated and actual data that is not an alarm condition. Such activity can also lead to calibrations of the virtual model to ensure that the virtual model produces relevant predicted values. Thus, not only can the virtual model be updated to reflect aging of monitored system 102, but it can also be updated to reflect retrofits, repairs, etc.
  • FIG. 10 is a diagram illustrating how a network optimization simulation engine 1005 for optimizing energy consumption in a multi-energy source site can work in conjunction with other elements of the analytics system in order to make predictions about the cost and availability of various distributed energy resources. The system illustrated in FIG. 10 is similar to the configured illustrated in FIG. 1, except that network optimization simulation engine 1005 is implemented on the analytics server 116.
  • The network optimization simulation engine 1105 can be configured to allow an operator to run simulations to determine how the selection of various distributed energy sources can be used to optimize the performance of the microgrid being monitored. For example, the operator can define one or more scenarios to be tested, such as changing the operating parameters of one or more of the distributed energy sources, adding or removing distributed energy generations sources, taking portions of existing energy generation sources offline, or changing the mix of energy obtained from distributed energy sources of the microgrid and energy from the macrogrid can be changed to forecast how those changes could impact the reliability of the electrical network, capacity of the microgrid, and the cost of operation.
  • According to an embodiment, the network optimization simulation engine 1105 can allow the operator to select an option to test multiple scenarios in parallel. Multiple copies of the virtual model of the microgrid system can be generated and each scenario tested on a copy of the virtual model. Predicted data from each scenario can then be presented to the operator on a display of the client 128. The predicted data can include predicted utilization, capacity, and reliability information for each scenario. The predicted data can also include predicted operating costs for each scenario based on the cost of generating power using the microgrid system, the cost of purchasing power from the macrogrid, and any cost offsets that might available due to the sale of electricity generated by excess capacity of the microgrid. The operator can review the information presented and determine whether to change the operating parameters of the components of the microgrid in response to the predicted data.
  • FIG. 11 is another diagram illustrating how a network optimization simulation engine 1105 works in conjunction with other elements of the analytics system in order to make predictions about the cost and availability of various distributed energy resources. While the embodiment illustrated in FIG. 10 is of a similar configuration as that of FIG. 4, the analytics central server 422 in the embodiment illustrated in FIG. 11 includes a market-based optimization engine 1105. As described above, a virtual model of a microgrid can be created that includes various distributed energy generation solutions. The network optimization simulation engine 1105 works similarly to that of network optimization simulation engine 1005 illustrated in FIG. 10. The network optimization simulation engine 1105 allows an operator to define one or more scenarios to generate predicted data for those scenarios. The network optimization simulation engine 1105 can create multiple copies of the virtual model of the electrical system in order to execute the simulations.
  • The embodiment illustrated in FIG. 11 illustrates a configuration that is similar to the electrical network configuration illustrated in FIG. 4 where multiple electrical systems are monitored. The network optimization simulation engine 1105 can be implemented on the analytics central server 422, and the monitored systems can comprise microgrid systems. According to some embodiments, the microgrid systems can be located at different geographic locations. For example, a state university system can use microgrid systems on multiple campuses. Sensors coupled to components of each microgrid system can provide real-time data regarding the operational characteristics of each of the microgrids.
  • The central analytics server 422 can be configured to enable a client 128 to modify and adjust the operational parameters of any the analytics servers communicatively connected to the central analytics server 422 based on the data collected from the monitored systems. Additionally, each of the analytics servers can be configured to allow a client 128 to modify the virtual system model through a virtual system model development interface using well-known modeling tools.
  • FIG. 12 is a flow chart illustrating an example process for operating a real-time simulation for market-based electric power system optimization according to an embodiment. According to an embodiment, the analytics server 116 or the analytic servers 414, 416, and 418, or central analytics server 422 illustrated in FIGS. 1, 4, 10, and 11.
  • A virtual system model of a microgrid can be created that includes logical models of the components of the microgrid including distributed energy generation solutions (step 1702). According to embodiment, the virtual system model can be created using virtual system modeling engine 124. The virtual system model can include components for modeling reliability, modeling voltage stability, and modeling power flow of the microgrid. According to some embodiments, a plurality of virtual system models that represent discrete parts of the electrical power system can be created. In an example, the distributed energy generation solutions included in a microgrid might include solar panels, wind turbines, other on-premise energy generation solutions, or a combination thereof. The virtual model of the microgrid can be used to generate predicted data for the microgrid, including predicted capacity and utilization. Based on predicted capacity and utilization, predictions regarding the cost of operation can also be generated using the cost of generating power at the microgrid and the cost of purchasing power from the macrogrid. These costs can be offset by the sale of electricity generated by excess capacity to the public utilities on the macrogrid.
  • Once the virtual model or models of the electrical system have been created, real-time data can be collected from sensors interfaced with various components of the electrical system (step 1704). As described above, the sensors can be configured to provide output values for system parameters that indicate the operational status and/or health of the monitored systems. In some embodiments, data can be collected from multiple monitored systems. Each monitored system can have a data acquisition hub that collects data from the sensor interfaced with components of that system and that sends the data across a network connection to a central analytics server.
  • The virtual model or models of the electrical system can be used to calculate predicted operational values for the electrical system (step 1706). For example, the virtual model can be used for modeling reliability, modeling voltage stability, and modeling power flow of the electrical system. The predicted data can be used to generate market-based pricing predictions based on the performance of the components of the electrical system. For example, if the predicted utilization exceeds the predicted capacity of the microgrid, electricity from the macrogrid may need to be purchased to meet the excess utilization. Alternatively, utilization might need to be curtailed to prevent utilization from exceeding the generation capacity of the microgrid.
  • The predicted data generated by the virtual system model can be compared with real-time sensor data collected from the electrical system and the virtual model can be calibrated with the real-time data to ensure that the virtual system model provide data output that is consistent with the actual real-time data (step 1708). According to an embodiment, decision engine 212 can be configured to look for significant deviations between the predicted values and the real-time values as received. According to an embodiment, if the real-time sensor data and the predicted values generated by the virtual system model diverge beyond a predetermined threshold, an alarm condition can be generated to alert a system administrator that the virtual system model is out of synch with the real-time model of the network. According to an embodiment, if the real-time sensor data and the predicted values generated by the virtual system model diverge beyond a predetermined threshold, a calibration request can be generated that is sent to the calibration engine 134, which will cause the calibration engine 134 to calibrate the virtual model. For example, the predicted capacity for a microgrid could vary from the real-time data collected from the microgrid if system changes have been made to a distributed generation resource, components of a distributed generation resource are undergoing routing maintenance, or an unplanned outage of one or more components of the distributed generation resource has occurred. Calibrating the virtual model of the electrical system to match the real-time model of the system can result in increasingly accurate prediction data being generated using the virtual model.
  • The calibrated virtual system model can then be used to generate predicted data for various “what if” scenarios. The network optimization simulation engine can be configured to receive one or more modified operational variables related to distributed energy sources and mixes of energy sources in calibrated model to optimize cost (step 1710). The network optimization simulation engine can update the virtual model of the electrical system being used by the simulation engine 208 using the modified parameters For example, the operating parameters of one or more of the distributed energy sources can be changed, additional distributed energy sources can be added, existing energy sources can be taken offline, or the mix of energy obtained from distributed energy sources of the microgrid and energy from the macrogrid can be changed to forecast how those changes could impact the reliability of the electrical network, capacity of the microgrid, and the cost of operation. The cost of operation can included the cost of generating electricity using the microgrid and the cost of purchasing electricity from the macrogrid. These costs can be offset by the sale of electricity generated by the microgrid based on excess capacity.
  • In another example, the generation capacities of some microgrid distributed energy generation solutions that can be influenced by changing weather conditions, such as solar power generation system and wind turbine generation systems. Various weather scenarios can be tested to determine what the effects of these conditions might be on the cost of operation and the availability and reliability of the network. If generation capacity is decreased due to weather conditions, additional power may be needed from the macrogrid. Alternatively, a particularly clear and sunny period of weather could result in a solar power generation system generate more power, but higher temperatures caused by the clear weather could result in these gains could be offset by additional loads on the system due to increased air conditioning system operations. The virtual model allows the operator to test complex scenarios such as these to determine what the impact of these scenarios might be.
  • According to another embodiment, the what-if scenarios can be used for disaster or emergency preparedness simulations. The operator can define various scenarios where one or more distributed energy sources have been damaged or rendered unavailable. Various scenarios can be tested to predict the affects on capacity and utilization might be for these scenarios. An administrator can utilize the predictions to prepare contingency plans for dealing with these scenarios.
  • In other words, the virtual model can be used to allow an administrator to make hypothetical changes to the operating parameters of one or more distributed energy sources and test the resulting effect, without taking down any of the facilities or having to perform costly and time consuming analysis. According to some embodiments, multiple copies of the virtual model can be created and a different scenario can be modeled using a copy of the virtual model. The predicted data generated using the virtual model or models can be used estimate price and availability of electricity based on the various changes the made by the administrator.
  • The simulation engine 208 can then generate predicted data for each of the modified virtual model or models using the parameters provided in step 1710 (step 1711). According to some embodiments, the original virtual model of the electrical system is not modified when performing “what-if” analysis for various scenarios. Instead, one or more copies of the virtual model are created to test each of the scenarios.
  • The predicted data generated by each of the scenarios being tested can then be compared to real-time data associated with the real-time model of the electrical system to identify optimal scenarios (step 1712). The comparison of the predicted data to the actual real-time data can be used to identify which solutions might provide the optimal pricing and availability of electrical resources. The results of these simulations as well as real-time status information can be presented to the administrator/operator (step 1714). The operator may then opt to make changes to one or more variables related to the distributed energy sources (step 1710) in order to see how these changes may further optimize cost and availability of the system. According to an embodiment, the system can provide a user interface, such as a web page or a graphical user interface that an operator can access to display a view a representation of the real-time status of the electrical system as well as predicted data for one or more virtual models of the system. The user interface may also enable the operator to select a particular model that provides optimal results and the system will update the operating parameters of the electrical system to match those of the selected virtual model.
  • The embodiments described herein, can be practiced with other computer system configurations including hand-held devices, microprocessor systems, microprocessor-based or programmable consumer electronics, minicomputers, mainframe computers and the like. The embodiments can also be practiced in distributing computing environments where tasks are performed by remote processing devices that are linked through a network.
  • It should also be understood that the embodiments described herein can employ various computer-implemented operations involving data stored in computer systems. These operations are those requiring physical manipulation of physical quantities. Usually, though not necessarily, these quantities take the form of electrical or magnetic signals capable of being stored, transferred, combined, compared, and otherwise manipulated. Further, the manipulations performed are often referred to in terms, such as producing, identifying, determining, or comparing.
  • Any of the operations that form part of the embodiments described herein are useful machine operations. The embodiment also relates to a device or an apparatus for performing these operations. The systems and methods described herein can be specially constructed for the required purposes, such as the carrier network discussed above, or it may be a general purpose computer selectively activated or configured by a computer program stored in the computer. In particular, various general purpose machines may be used with computer programs written in accordance with the teachings herein, or it may be more convenient to construct a more specialized apparatus to perform the required operations.
  • The embodiments described herein can also be embodied as computer readable code on a computer readable medium. The computer readable medium is any data storage device that can store data, which can thereafter be read by a computer system. Examples of the computer readable medium include hard drives, network attached storage (NAS), read-only memory, random-access memory, CD-ROMs, CD-Rs, CD-RWs, magnetic tapes, and other optical and non-optical data storage devices. The computer readable medium can also be distributed over a network coupled computer systems so that the computer readable code is stored and executed in a distributed fashion.
  • Certain embodiments can also be embodied as computer readable code on a computer readable medium. The computer readable medium is any data storage device that can store data, which can thereafter be read by a computer system. Examples of the computer readable medium include hard drives, network attached storage (NAS), read-only memory, random-access memory, CD-ROMs, CD-Rs, CD-RWs, magnetic tapes, and other optical and non-optical data storage devices. The computer readable medium can also be distributed over a network coupled computer systems so that the computer readable code is stored and executed in a distributed fashion.
  • Although a few embodiments of the present invention have been described in detail herein, it should be understood, by those of ordinary skill, that the present invention may be embodied in many other specific forms without departing from the spirit or scope of the invention. Therefore, the present examples and embodiments are to be considered as illustrative and not restrictive, and the invention is not to be limited to the details provided therein, but may be modified and practiced within the scope of the appended claims.

Claims (23)

1-20. (canceled)
21. A system for optimizing operation of an electric power system of multiple distributed energy sources, comprising:
a data acquisition component configured to acquire real-time output data from sensors interfaced with components of the electric power system;
an analytics server communicatively connected to the data acquisition component, comprising:
a virtual system modeling engine configured to generate simulated output data for the electric power system utilizing a first virtual system model of the electric power system;
an analytics engine configured to monitor the real-time output data and the simulated output data of the electric power system; and
a network optimization simulation engine configured to forecast the cost of operation and reliability and availability of various distributed energy sources in the electric power system and optimize the performance of the electric power system.
22. The system of claim 21, wherein the analytics engine further configured to initiate a calibration and synchronization operation to update the first virtual system model when a difference between the real-time output data and the simulated output data exceeds a threshold.
23. The system of claim 22, wherein the threshold is a Defined Difference Tolerance (DDT) value for at least one of the frequency deviation, voltage deviation, power factor deviation, and other deviations between the real-time output data and simulated output data.
24. The system of claim 21, wherein the network optimization simulation engine is further configured to receive modified operational parameters for the first virtual system model to create a second virtual system model and to forecast the cost of operation and the reliability and availability of various distributed energy sources operating under the modified parameters of the second virtual system model.
25. The system of claim 24, wherein the modified parameters include changing a mix of distributed energy sources being used to generate power for the electric power system.
26. The system of claim 24, wherein the modified parameters include changing an electricity output of a distributed energy source being used to generate power for the electric power system.
27. The system of claim 24, wherein the modified parameters include changing a mix of energy obtained from distributed energy sources of the electric power system and energy from energy sources outside of the electric power system.
28. The system of claim 24, further comprising a client terminal configured to allow a system administrator to modify the parameters of the first virtual system model when the network optimization simulation engine is operating in the scenario builder mode and display a report of the forecasted aspects.
29. The system of claim 28, wherein the forecasted cost of operation and reliability and availability of various distributed energy sources in the electric power system is communicated by way of graphics on a display interfaced with the client terminal.
30. The system of claim 28, wherein the forecasted cost of operation and reliability and availability of various distributed energy sources in the electric power system is communicated by way of text on a display interfaced with the client terminal.
31. The system of claim 28, wherein the forecasted cost of operation and reliability and availability of various distributed energy sources in the electric power system is communicated by way of synthesized speech generated by the client terminal.
32. A system for optimizing operation of an electric power system of multi-energy source sites, comprising:
a data acquisition component configured to acquire real-time output data from sensors interfaced with components of the electric power system;
an analytics server communicatively connected to the data acquisition component, comprising:
a virtual system modeling engine configured to generate simulated output data for the electric power system utilizing a first virtual system model of the electric power system;
an analytics engine configured to monitor the real-time output data and the simulated output data of the electric power system, the analytics engine further configured to initiate a calibration and synchronization operation to update the first virtual system model when a difference between the real-time output data and the simulated output data exceeds a threshold; and
a network optimization simulation engine configured to generate predicated data based on the updated first virtual system model with the one or more iteratively received modified operational parameters and identify an optimal operating configuration based on the predicted data.
33. The system of claim 32, wherein the threshold is a Defined Difference Tolerance (DDT) value for at least one of the frequency deviation, voltage deviation, power factor deviation, and other deviations between the real-time output data and simulated output data.
34. The system of claim 32, wherein the predicted data comprises predicted utilization, capacity, and reliability information.
35. The system of claim 32, wherein the network optimization simulation engine is further configured to create a second virtual model based on the updated first virtual model and the modified operational parameters.
36. The system of claim 35, the network optimization simulation engine is further configured to identifying an optimal operating configuration for the electric power system based on comparison of a first set of predicted data generated from the updated first virtual model and a second set of predicted data generated from the second virtual model to the real-time output data.
37. The system of claim 36, further comprising a client terminal configured to display the comparison.
38. The system of claim 37, wherein the client terminal is configured to display the comparison as a set of graphics on a display interface of the client terminal.
39. The system of claim 37, wherein the client terminal is configured to display the comparison as text on a display interface of the client terminal.
40. The system of claim 32, wherein the modified operational parameters include changing a mix of distributed energy sources being used to generate power for the electric power system.
41. The system of claim 32, wherein the modified operational parameters include changing an electricity output of a distributed energy source being used to generate power for the electric power system.
42. The system of claim 32, wherein the modified operational parameters include changing a mix of energy obtained from distributed energy sources of the electric power system and energy from energy sources outside of the electric power system.
US14/617,271 2009-10-01 2015-02-09 Microgrid Model Based Automated Real Time Simulation for Market Based Electric Power System Optimization Abandoned US20150153757A1 (en)

Priority Applications (2)

Application Number Priority Date Filing Date Title
US14/617,271 US20150153757A1 (en) 2009-10-01 2015-02-09 Microgrid Model Based Automated Real Time Simulation for Market Based Electric Power System Optimization
US15/925,245 US10962999B2 (en) 2009-10-01 2018-03-19 Microgrid model based automated real time simulation for market based electric power system optimization

Applications Claiming Priority (4)

Application Number Priority Date Filing Date Title
US24791509P 2009-10-01 2009-10-01
US24791709P 2009-10-01 2009-10-01
US12/895,597 US20110082597A1 (en) 2009-10-01 2010-09-30 Microgrid model based automated real time simulation for market based electric power system optimization
US14/617,271 US20150153757A1 (en) 2009-10-01 2015-02-09 Microgrid Model Based Automated Real Time Simulation for Market Based Electric Power System Optimization

Related Parent Applications (1)

Application Number Title Priority Date Filing Date
US12/895,597 Continuation US20110082597A1 (en) 2009-10-01 2010-09-30 Microgrid model based automated real time simulation for market based electric power system optimization

Related Child Applications (1)

Application Number Title Priority Date Filing Date
US15/925,245 Continuation US10962999B2 (en) 2009-10-01 2018-03-19 Microgrid model based automated real time simulation for market based electric power system optimization

Publications (1)

Publication Number Publication Date
US20150153757A1 true US20150153757A1 (en) 2015-06-04

Family

ID=43823828

Family Applications (3)

Application Number Title Priority Date Filing Date
US12/895,597 Abandoned US20110082597A1 (en) 2009-10-01 2010-09-30 Microgrid model based automated real time simulation for market based electric power system optimization
US14/617,271 Abandoned US20150153757A1 (en) 2009-10-01 2015-02-09 Microgrid Model Based Automated Real Time Simulation for Market Based Electric Power System Optimization
US15/925,245 Active US10962999B2 (en) 2009-10-01 2018-03-19 Microgrid model based automated real time simulation for market based electric power system optimization

Family Applications Before (1)

Application Number Title Priority Date Filing Date
US12/895,597 Abandoned US20110082597A1 (en) 2009-10-01 2010-09-30 Microgrid model based automated real time simulation for market based electric power system optimization

Family Applications After (1)

Application Number Title Priority Date Filing Date
US15/925,245 Active US10962999B2 (en) 2009-10-01 2018-03-19 Microgrid model based automated real time simulation for market based electric power system optimization

Country Status (5)

Country Link
US (3) US20110082597A1 (en)
EP (1) EP2483794A2 (en)
AU (1) AU2010300341A1 (en)
CA (1) CA2776376A1 (en)
WO (1) WO2011041741A2 (en)

Cited By (18)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US9652723B2 (en) 2015-06-05 2017-05-16 Sas Institute Inc. Electrical transformer failure prediction
US9705329B2 (en) 2012-06-29 2017-07-11 Operation Technology, Inc. Proactive intelligent load shedding
US9864820B2 (en) 2012-10-03 2018-01-09 Operation Technology, Inc. Generator dynamic model parameter estimation and tuning using online data and subspace state space model
US9875324B2 (en) 2013-08-16 2018-01-23 Operation Technology, Inc. Traction power simulation
US9940524B2 (en) 2015-04-17 2018-04-10 General Electric Company Identifying and tracking vehicles in motion
US10043307B2 (en) 2015-04-17 2018-08-07 General Electric Company Monitoring parking rule violations
US20180284743A1 (en) * 2016-05-09 2018-10-04 StrongForce IoT Portfolio 2016, LLC Methods and systems for industrial internet of things data collection for vibration sensitive equipment
CN109782629A (en) * 2019-03-22 2019-05-21 中国东方电气集团有限公司 Variable speed constant frequency pump-storage generator controller hardware assemblage on-orbit test platform
US10678233B2 (en) 2017-08-02 2020-06-09 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection and data sharing in an industrial environment
US10867087B2 (en) 2006-02-14 2020-12-15 Wavetech Global, Inc. Systems and methods for real-time DC microgrid power analytics for mission-critical power systems
US10962999B2 (en) 2009-10-01 2021-03-30 Wavetech Global Inc. Microgrid model based automated real time simulation for market based electric power system optimization
US10983897B2 (en) 2018-01-30 2021-04-20 International Business Machines Corporation Testing embedded systems and application using hardware-in-the-loop as a service (HILAAS)
US10983507B2 (en) 2016-05-09 2021-04-20 Strong Force Iot Portfolio 2016, Llc Method for data collection and frequency analysis with self-organization functionality
US11199835B2 (en) 2016-05-09 2021-12-14 Strong Force Iot Portfolio 2016, Llc Method and system of a noise pattern data marketplace in an industrial environment
US11199837B2 (en) 2017-08-02 2021-12-14 Strong Force Iot Portfolio 2016, Llc Data monitoring systems and methods to update input channel routing in response to an alarm state
US11237546B2 (en) 2016-06-15 2022-02-01 Strong Force loT Portfolio 2016, LLC Method and system of modifying a data collection trajectory for vehicles
US11379091B2 (en) * 2017-04-27 2022-07-05 Hitachi, Ltd. Operation support device and operation support method
US11774944B2 (en) 2016-05-09 2023-10-03 Strong Force Iot Portfolio 2016, Llc Methods and systems for the industrial internet of things

Families Citing this family (66)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US9263894B2 (en) 2007-03-21 2016-02-16 Sandia Corporation Customized electric power storage device for inclusion in a collective microgrid
US9148019B2 (en) * 2010-12-06 2015-09-29 Sandia Corporation Computing architecture for autonomous microgrids
US9721312B2 (en) 2007-03-21 2017-08-01 Steven Y. Goldsmith Customized electric power storage device for inclusion in a microgrid
US7653009B2 (en) 2007-09-10 2010-01-26 Juniper Networks, Inc. Routing network packets based on electrical power procurement arrangements
US8321194B2 (en) * 2009-10-01 2012-11-27 Power Analytics Corporation Real time microgrid power analytics portal for mission critical power systems
US8401709B2 (en) * 2009-11-03 2013-03-19 Spirae, Inc. Dynamic distributed power grid control system
US9300137B2 (en) 2010-07-29 2016-03-29 Spirae, Inc. Dynamic distributed power grid control system
DE102010040296A1 (en) * 2010-09-06 2012-03-08 BSH Bosch und Siemens Hausgeräte GmbH Procedure for switching to a cheaper consumption rate for a household appliance and a suitable household appliance
US9172245B1 (en) 2010-12-06 2015-10-27 Sandia Corporation Intelligent electrical outlet for collective load control
US8812165B1 (en) 2011-02-02 2014-08-19 Duke Energy Corporation Electric grid optimization
US8793004B2 (en) * 2011-06-15 2014-07-29 Caterpillar Inc. Virtual sensor system and method for generating output parameters
US8855828B2 (en) 2011-08-19 2014-10-07 Qualcomm Incorporated Facilitating distributed power production units in a power group to store power for power conditioning during an anticipated temporary power production disruption
US8862279B2 (en) 2011-09-28 2014-10-14 Causam Energy, Inc. Systems and methods for optimizing microgrid power generation and management with predictive modeling
US9225173B2 (en) * 2011-09-28 2015-12-29 Causam Energy, Inc. Systems and methods for microgrid power generation and management
US8751036B2 (en) 2011-09-28 2014-06-10 Causam Energy, Inc. Systems and methods for microgrid power generation management with selective disconnect
US8946929B2 (en) 2011-11-04 2015-02-03 Honeywell International Inc. Method and apparatus for effective utilization of energy storage components within a microgid
AT512133A1 (en) * 2011-11-14 2013-05-15 Kuhn Andreas Dr METHOD FOR REGULATING ENERGY TRANSMISSIONS
JP5665779B2 (en) * 2012-02-21 2015-02-04 株式会社東芝 Signal transmission / reception system, installation method thereof, and plant
US9563215B2 (en) 2012-07-14 2017-02-07 Causam Energy, Inc. Method and apparatus for actively managing electric power supply for an electric power grid
US9513648B2 (en) * 2012-07-31 2016-12-06 Causam Energy, Inc. System, method, and apparatus for electric power grid and network management of grid elements
US9723553B2 (en) * 2012-10-15 2017-08-01 Telefonaktiebolaget Lm Ericsson (Publ) Method, network device, computer program and computer program product for determining a set of power state parameters
WO2014071314A2 (en) * 2012-11-02 2014-05-08 Coritech Srvices, Inc. Modular microgrid unit and method of use
CN104981955A (en) * 2013-02-19 2015-10-14 索兰托半导体公司 Self forming microgrids
CN104021424B (en) * 2013-02-28 2018-12-07 乌托巴斯洞察公司 Method and apparatus for predicting the output power of the blower in wind field
GB2514121A (en) * 2013-05-13 2014-11-19 Swanbarton Ltd A microgrid control apparatus, method and system for controlling energy flow within a microgrid
US9733623B2 (en) * 2013-07-31 2017-08-15 Abb Research Ltd. Microgrid energy management system and method for controlling operation of a microgrid
CN103474991B (en) * 2013-09-18 2015-11-18 国电南瑞科技股份有限公司 Based on the power distribution network global optimization dispatching method of time scale
US9851701B2 (en) * 2013-11-15 2017-12-26 Sabreez, LLC Methods for optimizing an analysis of energy consumption to reduce cost and devices thereof
CN103678948B (en) * 2014-01-09 2016-10-26 电子科技大学 CCHP system trilogy supply Multipurpose Optimal Method
JP5967265B2 (en) * 2014-07-31 2016-08-10 ダイキン工業株式会社 Equipment control device
CN104281059B (en) * 2014-10-20 2017-05-03 中国运载火箭技术研究院 Multi-source detection semi-physical simulation and time window analysis system
WO2016061741A1 (en) * 2014-10-21 2016-04-28 Accenture Global Services Limited System, method, and apparatus for capacity determination for micro grid, and tangible computer readable medium
CN104330980B (en) * 2014-11-03 2017-04-05 中国科学院广州能源研究所 A kind of micro-capacitance sensor emulation test system based on RT LAB
US10948936B2 (en) * 2014-11-21 2021-03-16 Howard University Test bed platforms for advanced multi-stage automation and control for smart and micro grid
CN104570768A (en) * 2014-12-31 2015-04-29 浙江大学 Information physics semi-physical simulation system based on Rt-Lab and OPNET
CN104573866B (en) * 2015-01-08 2017-12-08 深圳供电局有限公司 A kind of method and system for predicting power equipments defect
US10769734B2 (en) * 2015-01-13 2020-09-08 Causam Energy, Inc. Systems and methods for advanced energy settlements, network-based messaging, and software applications for electric power grids, microgrids, grid elements, and/or electric power networks
US11042128B2 (en) * 2015-03-18 2021-06-22 Accenture Global Services Limited Method and system for predicting equipment failure
US9965531B2 (en) * 2015-07-21 2018-05-08 Accenture Global Services Limited Data storage extract, transform and load operations for entity and time-based record generation
CN105354416B (en) * 2015-10-26 2018-04-24 南京南瑞集团公司 It is a kind of based on the Basin Rainfall runoff electricity macro-forecast method for representing power station
US10256633B2 (en) 2015-11-04 2019-04-09 Utopus Insights, Inc Real-time estimation of contributions from classes of energy generators in residual load signals
GB2539292B (en) * 2015-11-16 2017-07-05 Ayyeka Tech Ltd Method and system for reducing power consumption in network-connected measurement units using prediction
EP3182613A1 (en) * 2015-12-18 2017-06-21 Airbus Defence and Space Limited Communications link simulation
GB2546795A (en) * 2016-01-29 2017-08-02 Hitachi Ltd Demand-side management method and system
US10423185B2 (en) 2016-05-09 2019-09-24 General Electric Company Systems and methods for regulating a microgrid
US10176284B2 (en) * 2016-09-30 2019-01-08 Taiwan Semiconductor Manufacturing Company Ltd. Semiconductor circuit design and manufacture method
US20180335907A1 (en) * 2017-05-22 2018-11-22 General Electric Company Extensible graphical editor for asset modeling
WO2019023715A1 (en) * 2017-07-28 2019-01-31 Florida State University Research Foundation, Inc. Optimal control technology for distributed energy resources
CN109557827B (en) * 2017-09-25 2021-10-01 中国电力科学研究院 Generation and result simulation method and system of power grid logic control script
US11070060B2 (en) 2018-04-20 2021-07-20 Eaton Intelligent Power Limited Predictive grid control system and method based on sensitivity of variance with respect to electric power prediction
EP3599523A1 (en) * 2018-07-24 2020-01-29 Siemens Aktiengesellschaft Detection of a calibration condition of at least one unit
EP3660611A1 (en) * 2018-11-29 2020-06-03 Siemens Aktiengesellschaft Method, apparatus and system for managing alarms
EP3671374A1 (en) * 2018-12-21 2020-06-24 ABB Schweiz AG Method and system for determining system settings for an industrial system
US10884398B2 (en) * 2019-01-04 2021-01-05 Johnson Controls Technology Company Systems and methods for prediction model update scheduling for building equipment
KR102589383B1 (en) * 2019-03-12 2023-10-17 한국전력공사 Apparatus for estimating power supply of microgrid and method thereof
CN110119554A (en) * 2019-04-30 2019-08-13 南方电网调峰调频发电有限公司 It is a kind of for constructing the dummy emulation system implementation method of high-voltage electrical equipment
CN110543697B (en) * 2019-08-15 2023-05-23 南方电网科学研究院有限责任公司 Electric power market simulation running system
US11636310B2 (en) * 2019-08-23 2023-04-25 Johnson Controls Tyco IP Holdings LLP Building system with selective use of data for probabilistic forecasting
US11188039B2 (en) 2019-10-18 2021-11-30 Johnson Controls Tyco IP Holdings LLP Building management system with dynamic energy prediction model updates
AT523586A1 (en) * 2020-02-27 2021-09-15 I4See Tech Gmbh Method for at least partially decentralized calculation of the health status of at least one wind turbine
CN111082989B (en) * 2020-03-05 2021-11-12 东南大学 Micro-grid distributed communication topology design method based on network mirror image and global propagation rate
CN112231920A (en) * 2020-10-22 2021-01-15 合肥阳光新能源科技有限公司 Method and system for determining parameters of micro-grid simulation model
CN112731818A (en) * 2020-12-21 2021-04-30 深圳供电局有限公司 Metering device communication simulation system and method
CN113473472B (en) * 2021-09-02 2021-11-12 北京信联科汇科技有限公司 Power network target range terminal access simulation and attack replay method and system
CN114254494A (en) * 2021-12-09 2022-03-29 国网上海市电力公司 Multi-energy micro-grid group self and market decision collaborative optimization method
CN117081169B (en) * 2023-08-17 2024-02-23 四川大学 Operation method of distributed photovoltaic energy sources in polymerization park

Family Cites Families (262)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US548463A (en) 1895-10-22 Can-heading machine
US2309934A (en) 1941-07-22 1943-02-02 Roby J Clay Electrical measuring device
US3789201A (en) 1972-05-18 1974-01-29 Pacific Technology Inc Simulated load forecast and control apparatus
US4390841A (en) 1980-10-14 1983-06-28 Purdue Research Foundation Monitoring apparatus and method for battery power supply
US4419619A (en) 1981-09-18 1983-12-06 Mcgraw-Edison Company Microprocessor controlled voltage regulating transformer
US5687139A (en) 1987-03-23 1997-11-11 Budney; Stanley M. Electrical load optimization device
AU3150493A (en) 1989-09-07 1994-06-22 Lexington Power Management Corporation Subscriber electric power load control system
US4972290A (en) 1989-09-29 1990-11-20 Abb Power T & D Company Inc. Electric power system with remote monitoring and control of protective relays
US5177695A (en) 1990-07-05 1993-01-05 Motorola, Inc. Device and method for adaptive digital power control
US5251268A (en) 1991-08-09 1993-10-05 Electric Power Research Institute, Inc. Integrated method and apparatus for character and symbol recognition
ES2159505T3 (en) 1991-09-26 2001-10-16 Mitsubishi Electric Corp SYSTEM WITH APPROXIMATION MEANS TO RECOGNIZE GRAPHIC ELEMENTS.
JPH07501643A (en) 1991-12-09 1995-02-16 シーメンス アクチエンゲゼルシヤフト Control parameter optimization method for systems with actual value characteristics that depend on control parameters
US5761083A (en) 1992-03-25 1998-06-02 Brown, Jr.; Robert J. Energy management and home automation system
US5396416A (en) 1992-08-19 1995-03-07 Continental Controls, Inc. Multivariable process control method and apparatus
US5576700A (en) 1992-08-26 1996-11-19 Scientific-Atlanta Apparatus and method for controlling an electrical load and monitoring control operations and the electrical load
US5483463A (en) 1993-07-30 1996-01-09 Controlled Power Company Uninterruptible power supply (UPS) and method
US5539638A (en) 1993-08-05 1996-07-23 Pavilion Technologies, Inc. Virtual emissions monitor for automobile
US5546074A (en) 1993-08-19 1996-08-13 Sentrol, Inc. Smoke detector system with self-diagnostic capabilities and replaceable smoke intake canopy
US5578931A (en) 1993-10-15 1996-11-26 The Texas A & M University System ARC spectral analysis system
US5519622A (en) 1993-10-18 1996-05-21 Chasek; Norman E. Real time, economic-impact display system for consumers of commoditized electric power
US5963457A (en) 1994-03-18 1999-10-05 Hitachi, Ltd. Electrical power distribution monitoring system and method
US5796628A (en) 1995-04-20 1998-08-18 Cornell Research Foundation, Inc. Dynamic method for preventing voltage collapse in electrical power systems
US7202776B2 (en) 1997-10-22 2007-04-10 Intelligent Technologies International, Inc. Method and system for detecting objects external to a vehicle
US6314194B1 (en) 1995-07-26 2001-11-06 The United States Of America As Represented By The Secretary Of The Army Method for generating computer aided design programming circuit designs from scanned images of the design
US6408953B1 (en) 1996-03-25 2002-06-25 Halliburton Energy Services, Inc. Method and system for predicting performance of a drilling system for a given formation
US6901299B1 (en) 1996-04-03 2005-05-31 Don Whitehead Man machine interface for power management control systems
US7058617B1 (en) 1996-05-06 2006-06-06 Pavilion Technologies, Inc. Method and apparatus for training a system model with gain constraints
US5974572A (en) 1996-10-15 1999-10-26 Mercury Interactive Corporation Software system and methods for generating a load test using a server access log
US6029092A (en) 1996-11-21 2000-02-22 Intellinet, Inc. System and method for providing modular control and for managing energy consumption
DE69731060T2 (en) 1996-11-29 2005-11-17 Woodward Governor Co., Loveland Method and apparatus for calculating and controlling non-linear disturbances in a feedback control system
GB9710489D0 (en) 1997-05-22 1997-07-16 British Nuclear Fuels Plc Improvements in & relating to monitoring & analysis
US6942469B2 (en) 1997-06-26 2005-09-13 Crystal Investments, Inc. Solenoid cassette pump with servo controlled volume detection
EP1025276A1 (en) 1997-09-17 2000-08-09 Tokyo Electron Limited Device and method for detecting and preventing arcing in rf plasma systems
US6002260A (en) 1997-09-23 1999-12-14 Pacific Gas & Electric Company Fault sensor suitable for use in heterogenous power distribution systems
AU1699499A (en) 1997-11-17 1999-06-07 Lifestyle Technologies Universal power supply
US6128540A (en) 1998-02-20 2000-10-03 Hagen Method Pty. Ltd. Method and computer system for controlling an industrial process using financial analysis
US6008971A (en) 1998-03-23 1999-12-28 Electric Boat Corporation Fault protection arrangement for electric power distribution systems
US6311144B1 (en) 1998-05-13 2001-10-30 Nabil A. Abu El Ata Method and apparatus for designing and analyzing information systems using multi-layer mathematical models
US6313752B1 (en) 1998-05-21 2001-11-06 Steven P. Corrigan System for displaying dynamic on-line operating conditions of an interconnected power transmission network
US6272449B1 (en) 1998-06-22 2001-08-07 Torrent Systems, Inc. Computer system and process for explaining behavior of a model that maps input data to output data
US6178362B1 (en) 1998-09-24 2001-01-23 Silicon Energy Corp. Energy management system and method
US6321187B1 (en) 1998-12-22 2001-11-20 Hamilton Sundstrand Corporation System reliability assessment tool
US6553418B1 (en) 1999-01-02 2003-04-22 Daniel J. Collins Energy information and control system
US20040095237A1 (en) 1999-01-09 2004-05-20 Chen Kimball C. Electronic message delivery system utilizable in the monitoring and control of remote equipment and method of same
US6625200B1 (en) 1999-01-25 2003-09-23 Ericsson Inc. Multi-stage CDMA synchronization with parallel execution
AU2624700A (en) 1999-01-27 2000-08-18 Washington University Method and apparatus for processing images with curves
US6496342B1 (en) 1999-02-12 2002-12-17 Bitronics Inc. Distributed monitoring and protection system for a distributed power network
US8044793B2 (en) 2001-03-01 2011-10-25 Fisher-Rosemount Systems, Inc. Integrated device alerts in a process control system
FR2790338B1 (en) 1999-02-25 2001-05-04 Schneider Electric Ind Sa SELECTIVE ELECTRONIC TRIGGER
US6636977B1 (en) 1999-03-10 2003-10-21 Shin Jiuh Corp. Control device for use in a power supplying apparatus including multiple processors adapted to perform separate functions associated with status monitoring and load balancing
US6917186B2 (en) 2000-04-24 2005-07-12 S & C Electric Co. Monitoring and control for power electronic system
US6343617B1 (en) 1999-07-09 2002-02-05 Millipore Corporation System and method of operation of a digital mass flow controller
US6785592B1 (en) 1999-07-16 2004-08-31 Perot Systems Corporation System and method for energy management
JP3647677B2 (en) 1999-07-26 2005-05-18 富士通株式会社 Network simulation model generation apparatus, method thereof, and recording medium storing program for realizing the method
US6496757B1 (en) 1999-07-30 2002-12-17 Illinois Institute Of Technology Nonlinear contingency screening for voltage collapse
US7020595B1 (en) 1999-11-26 2006-03-28 General Electric Company Methods and apparatus for model based diagnostics
US6597999B1 (en) 1999-12-20 2003-07-22 General Electric Company Method and system for real-time prediction of zero crossings of fault currents
DE10001484C1 (en) 2000-01-15 2001-09-27 Daimler Chrysler Ag Electrical sensor/actuator component simulation device, has control module providing model of simulated component controlled by real-time signals provided at signal interfaces associated with terminal pins
EP1120386B1 (en) 2000-01-26 2004-04-07 Ngk Spark Plug Co., Ltd Metallized ceramic member, process for producing the same, vacuum switch, and vacuum vessel
US20020138176A1 (en) 2000-02-01 2002-09-26 Patrick Davis Automated aggregation and management of distributed electric load reduction
US7739096B2 (en) 2000-03-09 2010-06-15 Smartsignal Corporation System for extraction of representative data for training of adaptive process monitoring equipment
US6957172B2 (en) 2000-03-09 2005-10-18 Smartsignal Corporation Complex signal decomposition and modeling
AU4733601A (en) 2000-03-10 2001-09-24 Cyrano Sciences Inc Control for an industrial process using one or more multidimensional variables
US6530065B1 (en) 2000-03-14 2003-03-04 Transim Technology Corporation Client-server simulator, such as an electrical circuit simulator provided by a web server over the internet
US6535370B1 (en) 2000-03-17 2003-03-18 General Electric Company Apparatus and method for representing protection device trip response
GB0007065D0 (en) 2000-03-23 2000-05-10 Simsci Limited Process monitoring and control using self-validating sensors
JP2001280249A (en) 2000-03-31 2001-10-10 Matsushita Electric Ind Co Ltd Compressor and motor
JP3602825B2 (en) 2000-04-12 2004-12-15 財団法人電力中央研究所 System and method for estimating power consumption of electrical equipment and abnormality warning system using the same
US6751655B1 (en) 2000-04-18 2004-06-15 Sun Microsystems, Inc. Method and apparatus for transport of scenegraph information across a network
US6549867B1 (en) 2000-05-26 2003-04-15 Intel Corporation Power supply feed-forward compensation technique
JP4397104B2 (en) 2000-05-26 2010-01-13 いすゞ自動車株式会社 Characteristic value identification method and apparatus
US6519509B1 (en) 2000-06-22 2003-02-11 Stonewater Software, Inc. System and method for monitoring and controlling energy distribution
WO2002007365A2 (en) 2000-07-13 2002-01-24 Nxegen System and method for monitoring and controlling energy usage
DE10137597A1 (en) 2000-08-30 2002-03-14 Luk Lamellen & Kupplungsbau Method of diagnosing fault in motor vehicle clutch involves producing clutch actuator position signal for comparison to estimated signal
US7143021B1 (en) 2000-10-03 2006-11-28 Cadence Design Systems, Inc. Systems and methods for efficiently simulating analog behavior of designs having hierarchical structure
US7373283B2 (en) 2001-02-22 2008-05-13 Smartsignal Corporation Monitoring and fault detection system and method using improved empirical model for range extrema
US7085824B2 (en) 2001-02-23 2006-08-01 Power Measurement Ltd. Systems for in the field configuration of intelligent electronic devices
WO2002069137A1 (en) 2001-02-23 2002-09-06 The Trustees Of The University Of Pennsylvania Dynamical brain model for use in data processing applications
US6853930B2 (en) 2001-02-27 2005-02-08 Hitachi, Ltd. System for aiding the preparation of operation and maintenance plans for a power generation installation
JP2002259508A (en) 2001-03-05 2002-09-13 Hitachi Ltd Energy monitoring system
CA2440397C (en) 2001-03-09 2008-11-18 Ads Corporation Sewer flow monitoring method and system
GB0109643D0 (en) 2001-04-19 2001-06-13 Isis Innovation System and method for monitoring and control
US20020198629A1 (en) 2001-04-27 2002-12-26 Enerwise Global Technologies, Inc. Computerized utility cost estimation method and system
ATE504969T1 (en) 2001-05-21 2011-04-15 Abb Research Ltd STABILITY PREDICTION FOR ELECTRICAL ENERGY NETWORK
US20020193978A1 (en) 2001-06-14 2002-12-19 Christophe Soudier Electrical power system performance simulation
US7136725B1 (en) 2001-06-21 2006-11-14 Paciorek Ronald R Load shed notification method, product, and apparatus
US6622097B2 (en) 2001-06-28 2003-09-16 Robert R. Hunter Method and apparatus for reading and controlling electric power consumption
US7039532B2 (en) 2001-06-28 2006-05-02 Hunter Robert R Method and apparatus for reading and controlling utility consumption
US20030088511A1 (en) 2001-07-05 2003-05-08 Karboulonis Peter Panagiotis Method and system for access and usage management of a server/client application by a wireless communications appliance
US6892361B2 (en) 2001-07-06 2005-05-10 International Business Machines Corporation Task composition method for computer applications
US8417360B2 (en) 2001-08-10 2013-04-09 Rockwell Automation Technologies, Inc. System and method for dynamic multi-objective optimization of machine selection, integration and utilization
US6492801B1 (en) 2001-08-21 2002-12-10 Southern Company Services, Inc. Method, apparatus, and system for real time reactive power output monitoring and predicting
US6733384B2 (en) 2001-09-06 2004-05-11 Intel Corporation Creating a cutting template for a virtual jigsaw puzzle using guide points and a spline-fitting algorithm
US6532212B1 (en) 2001-09-25 2003-03-11 Mcdata Corporation Trunking inter-switch links
GB0127552D0 (en) 2001-11-16 2002-01-09 Abb Ab Analysing events
US7171344B2 (en) 2001-12-21 2007-01-30 Caterpillar Inc Method and system for providing end-user visualization
US20040044442A1 (en) 2001-12-28 2004-03-04 Bayoumi Deia Salah-Eldin Optimized dispatch planning of distributed resources in electrical power systems
US7747356B2 (en) 2002-02-25 2010-06-29 General Electric Company Integrated protection, monitoring, and control system
WO2003073580A2 (en) 2002-02-25 2003-09-04 General Electric Company Processing system for a power distribution system
US20030174070A1 (en) 2002-03-13 2003-09-18 Garrod J. Kelly Wireless supervisory control and data acquisition
US7049976B2 (en) 2002-04-15 2006-05-23 Hunt Power, L.P. User-installable power consumption monitoring system
US7444310B2 (en) 2002-04-19 2008-10-28 Computer Associates Think, Inc. Automatic model maintenance through local nets
EP1497900A1 (en) 2002-04-22 2005-01-19 The Tokyo Electric Power Co., Inc. Method and system for on-line dynamical screening of electric power system
US7363099B2 (en) 2002-06-07 2008-04-22 Cadence Design Systems, Inc. Integrated circuit metrology
KR100456413B1 (en) 2002-06-21 2004-11-10 에치투엘 주식회사 System and method for AI controlling waste-water treatment by neural network and back-propagation algorithm
US6810069B2 (en) 2002-07-12 2004-10-26 Mcgraw-Edison Company Electrical arc furnace protection system
US20040061380A1 (en) 2002-09-26 2004-04-01 Hann Raymond E. Power management system for variable load applications
US6806446B1 (en) 2002-10-04 2004-10-19 Stephen D. Neale Power management controls for electric appliances
US6983590B2 (en) 2002-10-22 2006-01-10 General Motors Corporation Secondary air injection diagnostic system using pressure feedback
EP2511997A3 (en) 2002-10-25 2013-11-20 S & C Electric Company Method and apparatus for control of an electric power system in response to circuit abnormalities
US20040158417A1 (en) 2002-11-06 2004-08-12 Bonet Antonio Trias System and method for monitoring and managing electrical power transmission and distribution networks
US6823675B2 (en) 2002-11-13 2004-11-30 General Electric Company Adaptive model-based control systems and methods for controlling a gas turbine
US7295119B2 (en) 2003-01-22 2007-11-13 Wireless Valley Communications, Inc. System and method for indicating the presence or physical location of persons or devices in a site specific representation of a physical environment
US6962043B2 (en) 2003-01-30 2005-11-08 General Electric Company Method and apparatus for monitoring the performance of a gas turbine system
US20040225625A1 (en) 2003-02-07 2004-11-11 Van Gorp John Christopher Method and system for calculating and distributing utility costs
US7024649B2 (en) 2003-02-14 2006-04-04 Iwatt Multi-output power supply design system
EP1595313B1 (en) 2003-02-20 2007-06-20 Rockwell Automation Technologies, Inc. Modular electrical device
US20040176991A1 (en) 2003-03-05 2004-09-09 Mckennan Carol System, method and apparatus using biometrics to communicate dissatisfaction via stress level
FR2852391B1 (en) 2003-03-11 2005-09-09 Oxand METHOD AND SYSTEM FOR MONITORING (MONITORING) THE BEHAVIOR OF PIPING CONTAINING PRESSURIZED FLUID
US7689323B2 (en) 2003-05-13 2010-03-30 Siemens Aktiengesellschaft Automatic generation control of a power distribution system
US7085660B2 (en) 2003-05-13 2006-08-01 Siemens Power Transmission & Distribution, Inc. Energy management system in a power and distribution system
US7305282B2 (en) 2003-05-13 2007-12-04 Siemens Power Transmission & Distribution, Inc. Very short term load prediction in an energy management system
US7739138B2 (en) 2003-05-19 2010-06-15 Trimble Navigation Limited Automated utility supply management system integrating data sources including geographic information systems (GIS) data
US20040236188A1 (en) 2003-05-19 2004-11-25 Ge Medical Systems Information Method and apparatus for monitoring using a mathematical model
WO2004107264A2 (en) 2003-05-23 2004-12-09 Computer Associates Think, Inc. Adaptive learning enhancement to auotmated model maintenance
SE525419C2 (en) 2003-06-13 2005-02-15 Abb Ab Method of reconciling a system for arc welding and arc welding system, computer program product and computer readable medium
US7010363B2 (en) 2003-06-13 2006-03-07 Battelle Memorial Institute Electrical appliance energy consumption control methods and electrical energy consumption systems
US7458028B2 (en) 2003-07-18 2008-11-25 Avinash Chidambaram Graphical interface for configuring a power supply controller
US7170238B2 (en) 2003-07-30 2007-01-30 Colorado Vnet, Llc Control systems and methods
WO2005015366A2 (en) 2003-08-08 2005-02-17 Electric Power Group, Llc Real-time performance monitoring and management system
US7180517B2 (en) 2003-08-21 2007-02-20 Distribution Control Systems, Inc. Quality of service terrain map for utilities
US7406399B2 (en) 2003-08-26 2008-07-29 Siemens Energy & Automation, Inc. System and method for distributed reporting of machine performance
US7127327B1 (en) 2003-09-11 2006-10-24 Dte Energy Technologies, Inc. System and method for managing energy generation equipment
US7013227B2 (en) 2003-09-15 2006-03-14 Georgia Tech Research Corporation System and method for determining harmonic contributions from non-linear loads
WO2005040992A2 (en) 2003-10-24 2005-05-06 Square D Company Intelligent power management control system
US7081823B2 (en) 2003-10-31 2006-07-25 International Business Machines Corporation System and method of predicting future behavior of a battery of end-to-end probes to anticipate and prevent computer network performance degradation
US7565215B2 (en) 2003-12-18 2009-07-21 Curtiss-Wright Flow Control Corporation System and method for protection system design support
US20050156715A1 (en) 2004-01-16 2005-07-21 Jie Zou Method and system for interfacing with mobile telemetry devices
US20050230350A1 (en) 2004-02-26 2005-10-20 Applied Materials, Inc. In-situ dry clean chamber for front end of line fabrication
US20050216243A1 (en) 2004-03-02 2005-09-29 Simon Graham Computer-simulated virtual reality environments for evaluation of neurobehavioral performance
US7451003B2 (en) 2004-03-04 2008-11-11 Falconeer Technologies Llc Method and system of monitoring, sensor validation and predictive fault analysis
US7634394B2 (en) 2004-03-05 2009-12-15 The Procter & Gamble Company Method of analysis of comfort for virtual prototyping system
US7260501B2 (en) 2004-04-21 2007-08-21 University Of Connecticut Intelligent model-based diagnostics for system monitoring, diagnosis and maintenance
JP2005309736A (en) 2004-04-21 2005-11-04 Shimadzu Corp Equipment analytical data processing system
US20050236449A1 (en) 2004-04-27 2005-10-27 Ben Bird Electrical safety backpack
JP2007536634A (en) 2004-05-04 2007-12-13 フィッシャー−ローズマウント・システムズ・インコーポレーテッド Service-oriented architecture for process control systems
GB0410135D0 (en) 2004-05-06 2004-06-09 Ricardo Uk Ltd Cylinder pressure sensor
US7454050B2 (en) 2004-06-18 2008-11-18 Csi Technology, Inc. Method of automating a thermographic inspection process
US7172132B2 (en) 2004-08-05 2007-02-06 Carrier Corporation Balanced utility load management
US7355865B2 (en) 2004-08-13 2008-04-08 Rockwell Automation Technologies, Inc. Method and apparatus for rejecting the second harmonic current in an active converter with an unbalanced AC line voltage source
BG108851A (en) 2004-08-23 2006-02-28 Георги Стоилов Momentary electricity market
US7359453B1 (en) 2004-09-03 2008-04-15 Rf Micro Devices, Inc. System and method for transitioning between modulation formats in adjacent bursts triggering on ramps
GB0419588D0 (en) 2004-09-03 2004-10-06 Virtual Well Engineer Ltd "Design and control of oil well formation"
US20060074598A1 (en) 2004-09-10 2006-04-06 Emigholz Kenneth F Application of abnormal event detection technology to hydrocracking units
US7286960B2 (en) 2004-09-30 2007-10-23 General Electric Company Systems and methods for monitoring fouling and slagging in heat transfer devices in coal fired power plants
CA2479603A1 (en) 2004-10-01 2006-04-01 Sureshchandra B. Patel Sequential and parallel loadflow computation for electrical power system
US7702435B2 (en) 2004-11-05 2010-04-20 Honeywell International Inc. Method and apparatus for system monitoring and maintenance
US7839275B2 (en) 2004-11-09 2010-11-23 Truveon Corp. Methods, systems and computer program products for controlling a climate in a building
US7941307B2 (en) 2004-11-10 2011-05-10 Exxonmobil Upstream Research Company Method for calibrating a model of in-situ formation stress distribution
US20060184462A1 (en) 2004-12-10 2006-08-17 Hawkins Jeffrey C Methods, architecture, and apparatus for implementing machine intelligence and hierarchical memory systems
US7356383B2 (en) 2005-02-10 2008-04-08 General Electric Company Methods and apparatus for optimizing combined cycle/combined process facilities
US7356371B2 (en) 2005-02-11 2008-04-08 Alstom Technology Ltd Adaptive sensor model
US7200502B2 (en) 2005-03-30 2007-04-03 Rockwell Automation Technologies, Inc. Dual connection power line parameter analysis method and system
US7571028B2 (en) 2005-04-19 2009-08-04 Genscape Intangible Holding, Inc. Method and system for AC power grid monitoring
US7640145B2 (en) 2005-04-25 2009-12-29 Smartsignal Corporation Automated model configuration and deployment system for equipment health monitoring
US7467049B2 (en) 2005-05-27 2008-12-16 American Electric Power Company, Inc. System and method for detecting impaired electric power equipment
US8032265B2 (en) 2005-06-29 2011-10-04 Honeywell International Inc. System and method for enhancing computer-generated images of terrain on aircraft displays
KR101322434B1 (en) 2005-07-11 2013-10-28 브룩스 오토메이션 인코퍼레이티드 Intelligent condition-monitoring and fault diagnostic system
JP4911487B2 (en) 2005-07-12 2012-04-04 独立行政法人産業技術総合研究所 Method and apparatus for measuring precise flow rate and calorific value of mixed gas
WO2007014146A2 (en) 2005-07-22 2007-02-01 Cannon Technologies, Inc. Load shedding control for cycled or variable load appliances
US20070055392A1 (en) 2005-09-06 2007-03-08 D Amato Fernando J Method and system for model predictive control of a power plant
US7398168B2 (en) 2005-09-08 2008-07-08 Genscape Intangible Holding, Inc. Method and system for monitoring power flow through an electric power transmission line
US7714735B2 (en) 2005-09-13 2010-05-11 Daniel Rockwell Monitoring electrical assets for fault and efficiency correction
US20070112694A1 (en) 2005-11-14 2007-05-17 Sempa Power Systems Ltd. Facility energy management system
US7415389B2 (en) 2005-12-29 2008-08-19 Honeywell International Inc. Calibration of engine control systems
CN101405711A (en) 2006-01-19 2009-04-08 贝尔润美国公司 Method and device for providing location based content delivery
US7512817B2 (en) 2006-01-20 2009-03-31 Rit Technologies Ltd. Management of a network supplying power over data lines
WO2007087729A1 (en) 2006-02-03 2007-08-09 Recherche 2000 Inc. Intelligent monitoring system and method for building predictive models and detecting anomalies
US20120191440A1 (en) 2011-01-25 2012-07-26 Power Analytics Corporation Systems and methods for real-time dc microgrid power analytics for mission-critical power systems
US8959006B2 (en) 2006-03-10 2015-02-17 Power Analytics Corporation Systems and methods for automatic real-time capacity assessment for use in real-time power analytics of an electrical power distribution system
US7729808B2 (en) 2006-03-10 2010-06-01 Edsa Micro Corporation System for comparing real-time data and modeling engine data to predict arc flash events
US20160246905A1 (en) 2006-02-14 2016-08-25 Power Analytics Corporation Method For Predicting Arc Flash Energy And PPE Category Within A Real-Time Monitoring System
US9846752B2 (en) 2006-02-14 2017-12-19 Power Analytics Corporation System and methods for intuitive modeling of complex networks in a digital environment
US11016450B2 (en) 2006-02-14 2021-05-25 Power Analytics Corporation Real-time predictive systems for intelligent energy monitoring and management of electrical power networks
US20160247065A1 (en) 2006-02-14 2016-08-25 Power Analytics Corporation Systems and Methods for Real-Time Forecasting and Predicting of Electrical Peaks and Managing the Energy, Health, Reliability, and Performance of Electrical Power Systems Based on an Artificial Adaptive Neural Network
WO2007095585A2 (en) 2006-02-14 2007-08-23 Edsa Micro Corporation Systems and methods for real-time system monitoring and predictive analysis
US8170856B2 (en) 2006-04-12 2012-05-01 Power Analytics Corporation Systems and methods for real-time advanced visualization for predicting the health, reliability and performance of an electrical power system
US20170046458A1 (en) 2006-02-14 2017-02-16 Power Analytics Corporation Systems and methods for real-time dc microgrid power analytics for mission-critical power systems
US9092593B2 (en) 2007-09-25 2015-07-28 Power Analytics Corporation Systems and methods for intuitive modeling of complex networks in a digital environment
US7840395B2 (en) 2006-03-10 2010-11-23 Edsa Micro Corporation Systems and methods for predictive monitoring including real-time strength and security analysis in an electrical power distribution system
US9557723B2 (en) 2006-07-19 2017-01-31 Power Analytics Corporation Real-time predictive systems for intelligent energy monitoring and management of electrical power networks
US8036872B2 (en) 2006-03-10 2011-10-11 Edsa Micro Corporation Systems and methods for performing automatic real-time harmonics analyses for use in real-time power analytics of an electrical power distribution system
US8131401B2 (en) * 2006-07-19 2012-03-06 Power Analytics Corporation Real-time stability indexing for intelligent energy monitoring and management of electrical power network system
US8868398B2 (en) 2006-06-29 2014-10-21 Power Analytics Corporation Method for predicting arc flash energy and PPE category within a real-time monitoring system
US8165723B2 (en) * 2006-03-10 2012-04-24 Power Analytics Corporation Real-time system for verification and monitoring of protective device settings within an electrical power distribution network and automatic correction of deviances found
CA2880385A1 (en) 2006-03-10 2007-09-20 Power Analytics Corporation Systems and methods for real-time protective device evaluation in an electrical power distribution system
US7840396B2 (en) 2006-03-10 2010-11-23 Edsa Micro Corporation Systems and methods for determining protective device clearing times used for providing real-time predictions about arc flash events
US8126685B2 (en) 2006-04-12 2012-02-28 Edsa Micro Corporation Automatic real-time optimization and intelligent control of electrical power distribution and transmission systems
US7693608B2 (en) 2006-04-12 2010-04-06 Edsa Micro Corporation Systems and methods for alarm filtering and management within a real-time data acquisition and monitoring environment
US7788205B2 (en) 2006-05-12 2010-08-31 International Business Machines Corporation Using stochastic models to diagnose and predict complex system problems
US7716535B2 (en) * 2006-06-08 2010-05-11 Oracle America, Inc. Kalman filtering for grid computing telemetry and workload management
US7844440B2 (en) 2006-07-07 2010-11-30 Edsa Micro Corporation Systems and methods for real-time dynamic simulation of uninterruptible power supply solutions and their control logic systems
US7489990B2 (en) 2006-07-17 2009-02-10 Fehr Stephen L Systems and methods for calculating and predicting near term production cost, incremental heat rate, capacity and emissions of electric generation power plants based on current operating and, optionally, atmospheric conditions
US8775934B2 (en) 2006-07-19 2014-07-08 Power Analytics Corporation Systems and methods for creation of a schematic user interface for monitoring and predicting the real-time health, reliability and performance of an electrical power system
ATE538423T1 (en) 2006-07-20 2012-01-15 Edsa Micro Corp SYSTEMS AND METHODS FOR ALARM FILTERING AND MANAGEMENT WITHIN A REAL-TIME DATA COLLECTION AND MONITORING ENVIRONMENT
US20080046387A1 (en) 2006-07-23 2008-02-21 Rajeev Gopal System and method for policy based control of local electrical energy generation and use
US20080040296A1 (en) 2006-08-10 2008-02-14 V2 Green Inc. Electric Resource Power Meter in a Power Aggregation System for Distributed Electric Resources
US20090066287A1 (en) * 2006-08-10 2009-03-12 V2Green, Inc. Business Methods in a Power Aggregation System for Distributed Electric Resources
US8103463B2 (en) 2006-09-21 2012-01-24 Impact Technologies, Llc Systems and methods for predicting failure of electronic systems and assessing level of degradation and remaining useful life
US8180622B2 (en) 2006-10-24 2012-05-15 Power Analytics Corporation Systems and methods for a real-time synchronized electrical power system simulator for “what-if” analysis and prediction over electrical power networks
US7310590B1 (en) 2006-11-15 2007-12-18 Computer Associates Think, Inc. Time series anomaly detection using multiple statistical models
US20080177678A1 (en) 2007-01-24 2008-07-24 Paul Di Martini Method of communicating between a utility and its customer locations
US20120143383A1 (en) 2007-02-02 2012-06-07 Inovus Solar, Inc. Energy-efficient utility system utilizing solar-power
US9148019B2 (en) 2010-12-06 2015-09-29 Sandia Corporation Computing architecture for autonomous microgrids
US7570174B2 (en) 2007-03-29 2009-08-04 International Business Machines Corporation Real time alarm classification and method of use
US20080249756A1 (en) 2007-04-06 2008-10-09 Pongsak Chaisuparasmikul Method and system for integrating computer aided design and energy simulation
US8229722B2 (en) 2007-05-16 2012-07-24 Power Analytics Corporation Electrical power system modeling, design, analysis, and reporting via a client-server application framework
US9886535B2 (en) 2007-06-29 2018-02-06 Power Analytics Corporation Method for predicting symmetric, automated, real-time ARC flash energy within a real-time monitoring system
US7991512B2 (en) * 2007-08-28 2011-08-02 General Electric Company Hybrid robust predictive optimization method of power system dispatch
US8155943B2 (en) 2007-10-12 2012-04-10 Power Analytics Corporation Systems and methods for automatically converting CAD drawing files into intelligent objects with database connectivity for the design, analysis, and simulation of electrical power systems
US20090112049A1 (en) 2007-10-29 2009-04-30 Saudi Arabian Oil Company Heart pump apparatus and method for beating heart surgery
US7646308B2 (en) 2007-10-30 2010-01-12 Eaton Corporation System for monitoring electrical equipment and providing predictive diagnostics therefor
AU2008356120A1 (en) 2007-11-07 2009-11-12 Edsa Micro Corporation Systems and methods for real-time forecasting and predicting of electrical peaks and managing the energy, health, reliability, and performance of electrical power systems based on an artificial adaptive neural network
US8000913B2 (en) * 2008-01-21 2011-08-16 Current Communications Services, Llc System and method for providing power distribution system information
US8892375B2 (en) 2008-05-09 2014-11-18 Accenture Global Services Limited Power grid outage and fault condition management
US8849630B2 (en) 2008-06-26 2014-09-30 International Business Machines Corporation Techniques to predict three-dimensional thermal distributions in real-time
AU2009270675A1 (en) 2008-07-18 2010-01-21 Edsa Micro Corporation A method for predicting symmetric, automated, real-time arc flash energy within a real-time monitoring system
US8401833B2 (en) 2008-08-15 2013-03-19 Power Analytics Corporation Method for predicting power usage effectiveness and data center infrastructure efficiency within a real-time monitoring system
US7930070B2 (en) 2008-09-25 2011-04-19 Kingston Consulting, Inc. System, method, and module capable of curtailing energy production within congestive grid operating environments
KR101022574B1 (en) 2008-10-28 2011-03-16 한국전력공사 Day-Ahead Load Reduction System Based on Customer Baseline Load
US8364609B2 (en) 2009-01-14 2013-01-29 Integral Analytics, Inc. Optimization of microgrid energy use and distribution
US20100217550A1 (en) 2009-02-26 2010-08-26 Jason Crabtree System and method for electric grid utilization and optimization
US20100250590A1 (en) * 2009-03-30 2010-09-30 Galvin Brian R System and method for managing energy
US8068938B2 (en) 2009-05-15 2011-11-29 General Electric Company Method and system for managing a load demand on an electrical grid
US8321194B2 (en) 2009-10-01 2012-11-27 Power Analytics Corporation Real time microgrid power analytics portal for mission critical power systems
US20110082597A1 (en) 2009-10-01 2011-04-07 Edsa Micro Corporation Microgrid model based automated real time simulation for market based electric power system optimization
US8892264B2 (en) 2009-10-23 2014-11-18 Viridity Energy, Inc. Methods, apparatus and systems for managing energy assets
US8401709B2 (en) 2009-11-03 2013-03-19 Spirae, Inc. Dynamic distributed power grid control system
US20110202467A1 (en) 2010-01-19 2011-08-18 Hilber Del A Automated load control and dispatch system and method
US20110257804A1 (en) 2010-04-14 2011-10-20 Raytheon Company Administration of Power Environments
US8682495B2 (en) 2010-10-21 2014-03-25 The Boeing Company Microgrid control system
US20120166085A1 (en) 2010-12-14 2012-06-28 Peter Gevorkian Solar power monitoring and predicting of solar power output
US20120158205A1 (en) 2010-12-17 2012-06-21 Greenvolts, Inc. Scalable backend management system for remotely operating one or more photovoltaic generation facilities
CA2825777A1 (en) 2011-01-25 2012-08-02 Power Analytics Corporation Systems and methods for automated model-based real-time simulation of a microgrid for market-based electric power system optimization
US10127568B2 (en) 2011-04-04 2018-11-13 The Catholic University Of America Systems and methods for improving the accuracy of day-ahead load forecasts on an electric utility grid
US9078299B2 (en) 2011-04-14 2015-07-07 Suntracker Technologies Ltd Predictive daylight harvesting system
US8452461B2 (en) 2011-05-10 2013-05-28 First Solar, Inc Control system for photovoltaic power plant
US20120323382A1 (en) 2011-06-15 2012-12-20 Expanergy, Llc Systems and methods to assess and optimize energy usage for a facility
US9672576B2 (en) 2011-09-13 2017-06-06 International Business Machines Corporation System and method for enabling effective work force management of a smart grid
US9225173B2 (en) 2011-09-28 2015-12-29 Causam Energy, Inc. Systems and methods for microgrid power generation and management
WO2013067428A1 (en) 2011-11-04 2013-05-10 Kaplan David L Modular energy storage system
US8793028B2 (en) 2011-11-21 2014-07-29 General Electric Company System and method for determining potential power of inverters during curtailment mode
US9870593B2 (en) 2011-12-05 2018-01-16 Hatch Ltd. System, method and controller for managing and controlling a micro-grid
US8417391B1 (en) 2011-12-15 2013-04-09 Restore Nv Automated demand response energy management system
US9218035B2 (en) 2012-02-10 2015-12-22 University Of Florida Research Foundation, Inc. Renewable energy control systems and methods
US20130253898A1 (en) 2012-03-23 2013-09-26 Power Analytics Corporation Systems and methods for model-driven demand response
US20130253718A1 (en) 2012-03-23 2013-09-26 Power Analytics Corporation Systems and methods for integrated, model, and role-based management of a microgrid based on real-time power management
US20180373827A1 (en) 2012-03-23 2018-12-27 Power Analytics Corporation Systems and methods for model-based solar power management
US9634522B2 (en) 2012-09-19 2017-04-25 International Business Machines Corporation Power grid data monitoring and control
CA2833768A1 (en) 2012-11-15 2014-05-15 Power Analytics Corporation Systems and methods for model-based solar power management
CN110460992A (en) 2014-07-08 2019-11-15 华为技术有限公司 A kind of method, terminal and the system of shared WLAN
WO2017201427A1 (en) 2016-05-19 2017-11-23 The Catholic University Of America System and methods for improving the accuracy of solar energy and wind energy forecasts for an electric utility grid

Cited By (114)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US10867087B2 (en) 2006-02-14 2020-12-15 Wavetech Global, Inc. Systems and methods for real-time DC microgrid power analytics for mission-critical power systems
US10962999B2 (en) 2009-10-01 2021-03-30 Wavetech Global Inc. Microgrid model based automated real time simulation for market based electric power system optimization
US9705329B2 (en) 2012-06-29 2017-07-11 Operation Technology, Inc. Proactive intelligent load shedding
US9864820B2 (en) 2012-10-03 2018-01-09 Operation Technology, Inc. Generator dynamic model parameter estimation and tuning using online data and subspace state space model
US9875324B2 (en) 2013-08-16 2018-01-23 Operation Technology, Inc. Traction power simulation
US9940524B2 (en) 2015-04-17 2018-04-10 General Electric Company Identifying and tracking vehicles in motion
US10043307B2 (en) 2015-04-17 2018-08-07 General Electric Company Monitoring parking rule violations
US11328515B2 (en) 2015-04-17 2022-05-10 Ubicquia Iq Llc Determining overlap of a parking space by a vehicle
US10380430B2 (en) 2015-04-17 2019-08-13 Current Lighting Solutions, Llc User interfaces for parking zone creation
US10872241B2 (en) 2015-04-17 2020-12-22 Ubicquia Iq Llc Determining overlap of a parking space by a vehicle
US9652723B2 (en) 2015-06-05 2017-05-16 Sas Institute Inc. Electrical transformer failure prediction
US11243522B2 (en) 2016-05-09 2022-02-08 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial Internet of Things data collection environment with intelligent data collection and equipment package adjustment for a production line
US10866584B2 (en) 2016-05-09 2020-12-15 Strong Force Iot Portfolio 2016, Llc Methods and systems for data processing in an industrial internet of things data collection environment with large data sets
US11836571B2 (en) 2016-05-09 2023-12-05 Strong Force Iot Portfolio 2016, Llc Systems and methods for enabling user selection of components for data collection in an industrial environment
US11838036B2 (en) 2016-05-09 2023-12-05 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial internet of things data collection environment
US10732621B2 (en) 2016-05-09 2020-08-04 Strong Force Iot Portfolio 2016, Llc Methods and systems for process adaptation in an internet of things downstream oil and gas environment
US11269318B2 (en) 2016-05-09 2022-03-08 Strong Force Iot Portfolio 2016, Llc Systems, apparatus and methods for data collection utilizing an adaptively controlled analog crosspoint switch
US10712738B2 (en) * 2016-05-09 2020-07-14 Strong Force Iot Portfolio 2016, Llc Methods and systems for industrial internet of things data collection for vibration sensitive equipment
US11269319B2 (en) 2016-05-09 2022-03-08 Strong Force Iot Portfolio 2016, Llc Methods for determining candidate sources of data collection
US11797821B2 (en) 2016-05-09 2023-10-24 Strong Force Iot Portfolio 2016, Llc System, methods and apparatus for modifying a data collection trajectory for centrifuges
US11791914B2 (en) 2016-05-09 2023-10-17 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial Internet of Things data collection environment with a self-organizing data marketplace and notifications for industrial processes
US11774944B2 (en) 2016-05-09 2023-10-03 Strong Force Iot Portfolio 2016, Llc Methods and systems for the industrial internet of things
US10983507B2 (en) 2016-05-09 2021-04-20 Strong Force Iot Portfolio 2016, Llc Method for data collection and frequency analysis with self-organization functionality
US10983514B2 (en) 2016-05-09 2021-04-20 Strong Force Iot Portfolio 2016, Llc Methods and systems for equipment monitoring in an Internet of Things mining environment
US11003179B2 (en) 2016-05-09 2021-05-11 Strong Force Iot Portfolio 2016, Llc Methods and systems for a data marketplace in an industrial internet of things environment
US11009865B2 (en) 2016-05-09 2021-05-18 Strong Force Iot Portfolio 2016, Llc Methods and systems for a noise pattern data marketplace in an industrial internet of things environment
US11029680B2 (en) 2016-05-09 2021-06-08 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial internet of things data collection environment with frequency band adjustments for diagnosing oil and gas production equipment
US11262737B2 (en) 2016-05-09 2022-03-01 Strong Force Iot Portfolio 2016, Llc Systems and methods for monitoring a vehicle steering system
US11048248B2 (en) 2016-05-09 2021-06-29 Strong Force Iot Portfolio 2016, Llc Methods and systems for industrial internet of things data collection in a network sensitive mining environment
US11054817B2 (en) 2016-05-09 2021-07-06 Strong Force Iot Portfolio 2016, Llc Methods and systems for data collection and intelligent process adjustment in an industrial environment
US11755878B2 (en) 2016-05-09 2023-09-12 Strong Force Iot Portfolio 2016, Llc Methods and systems of diagnosing machine components using analog sensor data and neural network
US11073826B2 (en) 2016-05-09 2021-07-27 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection providing a haptic user interface
US11086311B2 (en) 2016-05-09 2021-08-10 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection having intelligent data collection bands
US11092955B2 (en) 2016-05-09 2021-08-17 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection utilizing relative phase detection
US11106199B2 (en) 2016-05-09 2021-08-31 Strong Force Iot Portfolio 2016, Llc Systems, methods and apparatus for providing a reduced dimensionality view of data collected on a self-organizing network
US11112785B2 (en) 2016-05-09 2021-09-07 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection and signal conditioning in an industrial environment
US11112784B2 (en) 2016-05-09 2021-09-07 Strong Force Iot Portfolio 2016, Llc Methods and systems for communications in an industrial internet of things data collection environment with large data sets
US11119473B2 (en) 2016-05-09 2021-09-14 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection and processing with IP front-end signal conditioning
US11728910B2 (en) 2016-05-09 2023-08-15 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial internet of things data collection environment with expert systems to predict failures and system state for slow rotating components
US11126171B2 (en) 2016-05-09 2021-09-21 Strong Force Iot Portfolio 2016, Llc Methods and systems of diagnosing machine components using neural networks and having bandwidth allocation
US11663442B2 (en) 2016-05-09 2023-05-30 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial Internet of Things data collection environment with intelligent data management for industrial processes including sensors
US11137752B2 (en) 2016-05-09 2021-10-05 Strong Force loT Portfolio 2016, LLC Systems, methods and apparatus for data collection and storage according to a data storage profile
US11646808B2 (en) 2016-05-09 2023-05-09 Strong Force Iot Portfolio 2016, Llc Methods and systems for adaption of data storage and communication in an internet of things downstream oil and gas environment
US11156998B2 (en) 2016-05-09 2021-10-26 Strong Force Iot Portfolio 2016, Llc Methods and systems for process adjustments in an internet of things chemical production process
US11169511B2 (en) 2016-05-09 2021-11-09 Strong Force Iot Portfolio 2016, Llc Methods and systems for network-sensitive data collection and intelligent process adjustment in an industrial environment
US11609552B2 (en) 2016-05-09 2023-03-21 Strong Force Iot Portfolio 2016, Llc Method and system for adjusting an operating parameter on a production line
US11181893B2 (en) 2016-05-09 2021-11-23 Strong Force Iot Portfolio 2016, Llc Systems and methods for data communication over a plurality of data paths
US11194318B2 (en) 2016-05-09 2021-12-07 Strong Force Iot Portfolio 2016, Llc Systems and methods utilizing noise analysis to determine conveyor performance
US11194319B2 (en) 2016-05-09 2021-12-07 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection in a vehicle steering system utilizing relative phase detection
US11199835B2 (en) 2016-05-09 2021-12-14 Strong Force Iot Portfolio 2016, Llc Method and system of a noise pattern data marketplace in an industrial environment
US11609553B2 (en) 2016-05-09 2023-03-21 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection and frequency evaluation for pumps and fans
US11586181B2 (en) 2016-05-09 2023-02-21 Strong Force Iot Portfolio 2016, Llc Systems and methods for adjusting process parameters in a production environment
US11215980B2 (en) 2016-05-09 2022-01-04 Strong Force Iot Portfolio 2016, Llc Systems and methods utilizing routing schemes to optimize data collection
US11221613B2 (en) 2016-05-09 2022-01-11 Strong Force Iot Portfolio 2016, Llc Methods and systems for noise detection and removal in a motor
US11586188B2 (en) 2016-05-09 2023-02-21 Strong Force Iot Portfolio 2016, Llc Methods and systems for a data marketplace for high volume industrial processes
US11573557B2 (en) 2016-05-09 2023-02-07 Strong Force Iot Portfolio 2016, Llc Methods and systems of industrial processes with self organizing data collectors and neural networks
US11243528B2 (en) 2016-05-09 2022-02-08 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection utilizing adaptive scheduling of a multiplexer
US11573558B2 (en) 2016-05-09 2023-02-07 Strong Force Iot Portfolio 2016, Llc Methods and systems for sensor fusion in a production line environment
US11243521B2 (en) 2016-05-09 2022-02-08 Strong Force Iot Portfolio 2016, Llc Methods and systems for data collection in an industrial environment with haptic feedback and data communication and bandwidth control
US11256242B2 (en) 2016-05-09 2022-02-22 Strong Force Iot Portfolio 2016, Llc Methods and systems of chemical or pharmaceutical production line with self organizing data collectors and neural networks
US11256243B2 (en) 2016-05-09 2022-02-22 Strong Force loT Portfolio 2016, LLC Methods and systems for detection in an industrial Internet of Things data collection environment with intelligent data collection and equipment package adjustment for fluid conveyance equipment
US11770196B2 (en) 2016-05-09 2023-09-26 Strong Force TX Portfolio 2018, LLC Systems and methods for removing background noise in an industrial pump environment
US11507064B2 (en) 2016-05-09 2022-11-22 Strong Force Iot Portfolio 2016, Llc Methods and systems for industrial internet of things data collection in downstream oil and gas environment
US10754334B2 (en) 2016-05-09 2020-08-25 Strong Force Iot Portfolio 2016, Llc Methods and systems for industrial internet of things data collection for process adjustment in an upstream oil and gas environment
US11281202B2 (en) 2016-05-09 2022-03-22 Strong Force Iot Portfolio 2016, Llc Method and system of modifying a data collection trajectory for bearings
US11307565B2 (en) 2016-05-09 2022-04-19 Strong Force Iot Portfolio 2016, Llc Method and system of a noise pattern data marketplace for motors
US11327475B2 (en) 2016-05-09 2022-05-10 Strong Force Iot Portfolio 2016, Llc Methods and systems for intelligent collection and analysis of vehicle data
US20180284743A1 (en) * 2016-05-09 2018-10-04 StrongForce IoT Portfolio 2016, LLC Methods and systems for industrial internet of things data collection for vibration sensitive equipment
US11334063B2 (en) 2016-05-09 2022-05-17 Strong Force Iot Portfolio 2016, Llc Systems and methods for policy automation for a data collection system
US11340589B2 (en) 2016-05-09 2022-05-24 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial Internet of Things data collection environment with expert systems diagnostics and process adjustments for vibrating components
US11347205B2 (en) 2016-05-09 2022-05-31 Strong Force Iot Portfolio 2016, Llc Methods and systems for network-sensitive data collection and process assessment in an industrial environment
US11347215B2 (en) 2016-05-09 2022-05-31 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial internet of things data collection environment with intelligent management of data selection in high data volume data streams
US11347206B2 (en) 2016-05-09 2022-05-31 Strong Force Iot Portfolio 2016, Llc Methods and systems for data collection in a chemical or pharmaceutical production process with haptic feedback and control of data communication
US11353850B2 (en) 2016-05-09 2022-06-07 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection and signal evaluation to determine sensor status
US11353851B2 (en) 2016-05-09 2022-06-07 Strong Force Iot Portfolio 2016, Llc Systems and methods of data collection monitoring utilizing a peak detection circuit
US11353852B2 (en) 2016-05-09 2022-06-07 Strong Force Iot Portfolio 2016, Llc Method and system of modifying a data collection trajectory for pumps and fans
US11360459B2 (en) 2016-05-09 2022-06-14 Strong Force Iot Portfolio 2016, Llc Method and system for adjusting an operating parameter in a marginal network
US11366455B2 (en) 2016-05-09 2022-06-21 Strong Force Iot Portfolio 2016, Llc Methods and systems for optimization of data collection and storage using 3rd party data from a data marketplace in an industrial internet of things environment
US11366456B2 (en) 2016-05-09 2022-06-21 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial internet of things data collection environment with intelligent data management for industrial processes including analog sensors
US11372395B2 (en) 2016-05-09 2022-06-28 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial Internet of Things data collection environment with expert systems diagnostics for vibrating components
US11372394B2 (en) 2016-05-09 2022-06-28 Strong Force Iot Portfolio 2016, Llc Methods and systems for detection in an industrial internet of things data collection environment with self-organizing expert system detection for complex industrial, chemical process
US11378938B2 (en) 2016-05-09 2022-07-05 Strong Force Iot Portfolio 2016, Llc System, method, and apparatus for changing a sensed parameter group for a pump or fan
US11507075B2 (en) 2016-05-09 2022-11-22 Strong Force Iot Portfolio 2016, Llc Method and system of a noise pattern data marketplace for a power station
US11385622B2 (en) 2016-05-09 2022-07-12 Strong Force Iot Portfolio 2016, Llc Systems and methods for characterizing an industrial system
US11385623B2 (en) 2016-05-09 2022-07-12 Strong Force Iot Portfolio 2016, Llc Systems and methods of data collection and analysis of data from a plurality of monitoring devices
US11392116B2 (en) 2016-05-09 2022-07-19 Strong Force Iot Portfolio 2016, Llc Systems and methods for self-organizing data collection based on production environment parameter
US11392111B2 (en) 2016-05-09 2022-07-19 Strong Force Iot Portfolio 2016, Llc Methods and systems for intelligent data collection for a production line
US11392109B2 (en) 2016-05-09 2022-07-19 Strong Force Iot Portfolio 2016, Llc Methods and systems for data collection in an industrial refining environment with haptic feedback and data storage control
US11493903B2 (en) 2016-05-09 2022-11-08 Strong Force Iot Portfolio 2016, Llc Methods and systems for a data marketplace in a conveyor environment
US11397422B2 (en) 2016-05-09 2022-07-26 Strong Force Iot Portfolio 2016, Llc System, method, and apparatus for changing a sensed parameter group for a mixer or agitator
US11397421B2 (en) 2016-05-09 2022-07-26 Strong Force Iot Portfolio 2016, Llc Systems, devices and methods for bearing analysis in an industrial environment
US11402826B2 (en) 2016-05-09 2022-08-02 Strong Force Iot Portfolio 2016, Llc Methods and systems of industrial production line with self organizing data collectors and neural networks
US11409266B2 (en) 2016-05-09 2022-08-09 Strong Force Iot Portfolio 2016, Llc System, method, and apparatus for changing a sensed parameter group for a motor
US11415978B2 (en) 2016-05-09 2022-08-16 Strong Force Iot Portfolio 2016, Llc Systems and methods for enabling user selection of components for data collection in an industrial environment
US11237546B2 (en) 2016-06-15 2022-02-01 Strong Force loT Portfolio 2016, LLC Method and system of modifying a data collection trajectory for vehicles
US11379091B2 (en) * 2017-04-27 2022-07-05 Hitachi, Ltd. Operation support device and operation support method
US10908602B2 (en) 2017-08-02 2021-02-02 Strong Force Iot Portfolio 2016, Llc Systems and methods for network-sensitive data collection
US11175653B2 (en) 2017-08-02 2021-11-16 Strong Force Iot Portfolio 2016, Llc Systems for data collection and storage including network evaluation and data storage profiles
US10795350B2 (en) 2017-08-02 2020-10-06 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection including pattern recognition
US11131989B2 (en) 2017-08-02 2021-09-28 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection including pattern recognition
US11231705B2 (en) 2017-08-02 2022-01-25 Strong Force Iot Portfolio 2016, Llc Methods for data monitoring with changeable routing of input channels
US11209813B2 (en) 2017-08-02 2021-12-28 Strong Force Iot Portfolio 2016, Llc Data monitoring systems and methods to update input channel routing in response to an alarm state
US11199837B2 (en) 2017-08-02 2021-12-14 Strong Force Iot Portfolio 2016, Llc Data monitoring systems and methods to update input channel routing in response to an alarm state
US11397428B2 (en) 2017-08-02 2022-07-26 Strong Force Iot Portfolio 2016, Llc Self-organizing systems and methods for data collection
US11442445B2 (en) 2017-08-02 2022-09-13 Strong Force Iot Portfolio 2016, Llc Data collection systems and methods with alternate routing of input channels
US11144047B2 (en) 2017-08-02 2021-10-12 Strong Force Iot Portfolio 2016, Llc Systems for data collection and self-organizing storage including enhancing resolution
US11126173B2 (en) 2017-08-02 2021-09-21 Strong Force Iot Portfolio 2016, Llc Data collection systems having a self-sufficient data acquisition box
US11067976B2 (en) 2017-08-02 2021-07-20 Strong Force Iot Portfolio 2016, Llc Data collection systems having a self-sufficient data acquisition box
US11036215B2 (en) 2017-08-02 2021-06-15 Strong Force Iot Portfolio 2016, Llc Data collection systems with pattern analysis for an industrial environment
US10824140B2 (en) 2017-08-02 2020-11-03 Strong Force Iot Portfolio 2016, Llc Systems and methods for network-sensitive data collection
US10678233B2 (en) 2017-08-02 2020-06-09 Strong Force Iot Portfolio 2016, Llc Systems and methods for data collection and data sharing in an industrial environment
US10921801B2 (en) 2017-08-02 2021-02-16 Strong Force loT Portfolio 2016, LLC Data collection systems and methods for updating sensed parameter groups based on pattern recognition
US10983897B2 (en) 2018-01-30 2021-04-20 International Business Machines Corporation Testing embedded systems and application using hardware-in-the-loop as a service (HILAAS)
CN109782629A (en) * 2019-03-22 2019-05-21 中国东方电气集团有限公司 Variable speed constant frequency pump-storage generator controller hardware assemblage on-orbit test platform

Also Published As

Publication number Publication date
CA2776376A1 (en) 2011-04-07
US20110082597A1 (en) 2011-04-07
EP2483794A2 (en) 2012-08-08
AU2010300341A1 (en) 2012-05-10
US20180210479A1 (en) 2018-07-26
US10962999B2 (en) 2021-03-30
WO2011041741A2 (en) 2011-04-07
WO2011041741A3 (en) 2011-07-21

Similar Documents

Publication Publication Date Title
US10962999B2 (en) Microgrid model based automated real time simulation for market based electric power system optimization
US8321194B2 (en) Real time microgrid power analytics portal for mission critical power systems
US20200220351A1 (en) Systems and Methods for Model-Driven Demand Response
US8401833B2 (en) Method for predicting power usage effectiveness and data center infrastructure efficiency within a real-time monitoring system
US20210241126A1 (en) Systems and Methods for Real-Time Forecasting and Predicting of Electrical Peaks and Managing the Energy, Health, Reliability, and Performance of Electrical Power Systems Based on an Artificial Adaptive Neural Network
US8155908B2 (en) Systems and methods for real-time system monitoring and predictive analysis
US9846839B2 (en) Systems and methods for real-time forecasting and predicting of electrical peaks and managing the energy, health, reliability, and performance of electrical power systems based on an artificial adaptive neural network
US20180373824A1 (en) Systems and Methods for Automated Model-Based Real-Time Simulation of a Microgrid for Market-Based Electric Power System Optimization
US8170856B2 (en) Systems and methods for real-time advanced visualization for predicting the health, reliability and performance of an electrical power system
US7844439B2 (en) Systems and methods for real-time protective device evaluation in an electrical power distribution system
CA2657038C (en) Systems and methods for real-time advanced visualization for predicting the health, reliability and performance of an electrical power system
CA2706713A1 (en) A real-time system for verification and monitoring of protective device settings within an electrical power distribution network and automatic correction of deviances found

Legal Events

Date Code Title Description
AS Assignment

Owner name: PACIFIC WESTERN BANK, NORTH CAROLINA

Free format text: SECURITY INTEREST;ASSIGNOR:POWER ANALYTICS CORPORATION;REEL/FRAME:039820/0257

Effective date: 20160727

AS Assignment

Owner name: EDSA MICRO CORPORATION, CALIFORNIA

Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNOR:MEAGHER, KEVIN;REEL/FRAME:042376/0959

Effective date: 20101216

Owner name: POWER ANALYTICS CORPORATION, NORTH CAROLINA

Free format text: CHANGE OF NAME;ASSIGNOR:EDSA MICRO CORPORATION;REEL/FRAME:042463/0890

Effective date: 20110218

AS Assignment

Owner name: POWER ANALYTICS CORPORATION, NORTH CAROLINA

Free format text: RELEASE BY SECURED PARTY;ASSIGNOR:PACIFIC WESTERN BANK;REEL/FRAME:043133/0976

Effective date: 20170725

STCB Information on status: application discontinuation

Free format text: ABANDONED -- FAILURE TO RESPOND TO AN OFFICE ACTION

AS Assignment

Owner name: WAVETECH GLOBAL INC., NEW JERSEY

Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNOR:POWER ANALYTICS CORPORATION;REEL/FRAME:049321/0296

Effective date: 20190529