WO2014178924A1 - Apparatus and method for selection of fault detection algorithms for a building management system - Google Patents
Apparatus and method for selection of fault detection algorithms for a building management system Download PDFInfo
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- WO2014178924A1 WO2014178924A1 PCT/US2014/012938 US2014012938W WO2014178924A1 WO 2014178924 A1 WO2014178924 A1 WO 2014178924A1 US 2014012938 W US2014012938 W US 2014012938W WO 2014178924 A1 WO2014178924 A1 WO 2014178924A1
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- G05B15/00—Systems controlled by a computer
- G05B15/02—Systems controlled by a computer electric
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- G—PHYSICS
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- G01M—TESTING STATIC OR DYNAMIC BALANCE OF MACHINES OR STRUCTURES; TESTING OF STRUCTURES OR APPARATUS, NOT OTHERWISE PROVIDED FOR
- G01M99/00—Subject matter not provided for in other groups of this subclass
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- G05B—CONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
- G05B23/00—Testing or monitoring of control systems or parts thereof
- G05B23/02—Electric testing or monitoring
- G05B23/0205—Electric testing or monitoring by means of a monitoring system capable of detecting and responding to faults
- G05B23/0208—Electric testing or monitoring by means of a monitoring system capable of detecting and responding to faults characterized by the configuration of the monitoring system
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Definitions
- This invention relates in general to the field of building management systems, and more particularly to an automated fault detection mechanism within facility that is administered by a building management system.
- a building management system is utilized generally in larger facilities to manage and control mechanical, electrical, and plumbing subsystems therein. Often, it is function of a BMS to control energy usage by controlling lights and heating, ventilation, and air conditioning (HVAC) subsystems, security subsystems, alarm su bsystems, and transportation subsystems (e.g., elevators).
- HVAC heating, ventilation, and air conditioning
- security subsystems security subsystems
- alarm su bsystems e.g., elevators
- transportation subsystems e.g., elevators.
- BMS systems are a critical component to managing energy demand. Some skilled in the art estimate that improperly configured BMSs may account for u p to 20 percent of the energy usage in a given facility. However, energy demand management must be considered along with the primary functions of the BMS system, which is to maintain physical comfort, safety, and efficiency of operations within the facility.
- a BMS is a computer-based control system installed in a facility that controls and monitors the aforementioned subsystems mechanical and electrical equipment such as ventilation, lighting, power systems, fire systems, and security systems. Accordingly, the BMS includes both software and hardware. More often than not, the software is typically proprietary to a given man ufacturer, and is provided with interfaces to allow for configuration and access to monitored datapoints.
- BMSs are complex to design, install, and configure. Errors in the operation of BMSs can occur at mu ltiple points: during installation and initial programming, during upgrades and modification, or as a resu lt of equipment degradation and failures. Additionally, a BMS, while functioning according to its configuration, may not achieve required control and occupant comfort in the most energy efficient manner.
- occupant comfort is employed to describe a BMS subsystem or su bsystems together functioning in an optimal manner that facilitates the most productive and accommodating environment for the building occupants. In general, when subsystems are fu nctioning according to their original design specifications, occupant comfort will be optimal.
- a present day AFD system typically processes BMS data non-real time. While this may be sufficient for occasional use, the present inventors have noted that processing data as it is available improves the efficiency and frequency of fault identification for components of subsystems within a facility. Additionally, the present inventors have observed that fault coverage for an AFD may be enhanced when other data, such as meteorological data, site plans, and installer notes are employed in conjunction with BMS-generated data.
- AFD systems either operate man ually (e.g., producing g raphs of data that must be viewed by a hu man) or automatically (e.g., producing less accu rate fault detection based on so-called "raw" data), the present inventors have noted that utilize both methods to select and execute fau lt detection algorith ms improve fault coverage and fau lt detection capabilities of an AFD system.
- the present invention is directed to solving the above-noted problems and addresses other problems, disadvantages, and limitations of the prior art.
- the present invention provides a superior technique for configuring and executing automated fault detection for components and subsystems of a building management system.
- an apparatus for detecting faults of components monitored by a building management system (BMS).
- BMS building management system
- the apparatus includes an automatic fault detection (AFD) element, coupled to the BMS, that monitors, in real time, data samples generated by the BMS indicating operative states of the components, and that employs the data samples to determine if one or more of the components are faulty.
- the AFD element includes a run time modeling element and a fault detection algorithm element.
- the run time modeling element employs the data samples as in puts to execute one or more fault algorithms retrieved from a system configuration model, and generates outputs to the one or more fault algorith ms that indicate if the one or more of the components are faulty.
- the fault detection algorithm element is coupled to the system config uration model, and employs normalized and standardized datapoints representing the data samples to automatically select the one or more fault algorithms for storage in the system configuration model, where the one or more fault algorithms are selected from a standard fault algorithm data base.
- One aspect of the present invention contemplates an apparatus for detecting faults of components.
- the apparatus has a building management system (BMS) and an automatic fault detection (AFD) element.
- BMS building management system
- AFD automatic fault detection
- the BMS controls and monitors operative states of the components, and generates data samples of the operative states.
- the AFD element is coupled to the BMS.
- the AFD element monitors, in real time, the data samples, and employs the data samples to determine if one or more of the components are faulty.
- the AFD element includes a ru n time modeling element and a fault detection algorithm element.
- the run time modeling element employs the data samples as inputs to execute one or more fault algorith ms retrieved from a system configuration model, and generates outputs to the one or more fault algorithms that indicate if the one or more of the components are faulty.
- the fault detection algorithm element is cou pled to the system config uration model, and employs normalized and standardized datapoints representing the data samples to automatically select the one or more fault algorithms for storage in the system configuration model, where the one or more fault algorithms are selected from a standard fault algorithm data base.
- Another aspect of the present invention comprehends a method for detecting faults of components monitored by a building management system (BMS).
- the method includes monitoring, in real time, data samples generated by the BMS indicating operative states of the components, and employing the data samples to determine if one or more of the components are faulty.
- the monitoring includes first using the data samples as inputs to execute one or more fault algorithms retrieved from a system configu ration model, and generating outputs to the one or more fault algorithms that indicate if the one or more of the components are faulty; and second using normalized and standardized datapoints representing the data samples to automatically select the one or more fault algorithms for storage in the system configuration model, where the one or more fault algorithms are selected from a standard fault algorithm data base.
- FIGURE 1 is a block diagram illustrating a present day building management system
- FIGURE 2 is a block diag ram depicting an automatic fault detection system according to the present invention deployed in association with the building management system of FIGURE 1 ;
- FIGURE 3 is a block diagram featuring details of the automatic fault detection element of FIGU RE 2;
- FIGURE 4 is a block diagram showing input/output interfaces of the in put/output interface element of FIGURE 3;
- FIGURE 5 is a flow diagram illustrating a method according to the present invention for generating an initial fault detection configuration for a building management system
- FIGURE 6 is a block diagram detailing creation of an exemplary synthesized datapoint according to the present invention.
- FIGURE 7 is a block diag ram depicting creation of an alternative exemplary synthesized datapoint according to the present invention.
- FIGURE 8 is a flow diagram featuring a method according to the present invention for fault detection algorithm selection and data point synthesis.
- FIGURE 1 In view of the above background discussion on building management systems and associated tech niques employed within present day facilities for the detection of component and system faults therein, a discussion of the disadvantages and limitations of present day fault detection systems will be presented with reference to FIGURE 1. Following this, a discussion of the present invention will be presented with reference to FIGURES 2-9.
- the present invention provides a superior automated fault detection system within a facility administered by a building management system that includes: automatic selection of standard fault detection algorithms, creation and use of virtual datapoints in an automatic fault detection system to improve use of standardized fault detection algorithms and to improve modeling accuracy, reduction of false-positive fault indications (i.e., false alarms) by increasing fault detection algorithm coverage; employing a nu mber of consecutive sensitivity constraints on non-time based filters, and accounting for dropped out data within the fault detection algorithms; and automatic data normalization and standardization in an automated fau lt detection system.
- FIGURE 1 a block diag ram 100 is presented illustrating an exemplary present day building management system (BMS).
- the diag ram 100 shows a typical building 101 (or, "facility" 101 ) that may have a primary space 102 and one or more smaller spaces 103-105 such as offices and the like.
- HVAC heating, ventilation, and air conditioning
- components such as a chiller 1 1 1 , rotating fans 1 12, a controllable damper 1 13, a controllable valves 1 14, a condenser 1 15, an axial fan 1 16, a heater 1 17, a humidifier 1 18, and sensors 133-134.
- the interior lighting system may also be tied into the BMS 130 so, in addition to the HVAC components are lighting fixtures 1 10.
- the facility 101 may also be provided with energy sources including, but not limited to, electricity, water, and natural gas that are metered at a single meter point or at sub points throughout the facility 101. For clarity purposes, these metered points are represented in the diagram 100 as a single energy consumption meter 129.
- the lights 1 10 and HVAC components 1 1 1 -1 18 are distributed throughout the spaces 102-105 within the facility 101 to provide for, among other objectives, occupant comfort, occu pant productivity, and security.
- umerous other components that may be present within a facility such as plumbing, access control equipment, video su rveillance equipment, and special purpose industrial control systems, but although a discussion of such components are beyond the scope of the present disclosu re, the present inventors note that one skilled in the art will be enabled by the present disclosure to adapt the present invention to any building management system component that is not specifically addressed herein.
- a typical BMS element 130 is deployed to provide fo r monitori ng and control of the BMS components 1 10- 1 18 within the facility 101. That is, most of the components 1 10-1 18 shown in the diagram 100 allow for control by the BMS element 130 over one or more wired lin ks 131 or wireless lin ks 132. Further consider that some of the components 1 10-1 18 may include a sensor feedback poi nt 120 that allows the BMS element 130 to determine if a corresponding BMS component 1 10-1 19 is in an operational status as has been directed by the BMS element 130. The corresponding sensor feedback points 133 and 134 may be coupled to the BMS element 130 via one or more conventional wired lin ks 131 and/or wireless lin ks 132.
- the BMS element 130 may be programmed to change the operational status of each of the BMS components 1 10-1 18, respectively or in combination, throughout a scheduled period of time, in order to achieve a desired level of comfort, productivity, secu rity, and the like.
- Sensors 133-134 th roughout the facility 101 will be accessed periodically, according to programming of the BMS element 130, in order to determine that commands to certain components 1 10-1 18 have been actually received by the components 1 10-1 19 and carried out accordingly.
- the BMS element 130 may periodically gather temperature information regarding the facility from one or more temperature sensors 133 and may in response actuate the chiller 1 1 1, the corresponding rotational fan 1 12, the condenser 1 15, and its corresponding axial fan 1 16 to promote cooling of the facility 101.
- the BMS element 130 may also open controllable dampers 1 13 within one of the smaller rooms 103 to promote cooling as well.
- the BMS element 130 may actuate the heater 1 17, the h u midifier 1 18, and corresponding rotational fan 1 12 to provide for heating of the facility 101.
- one or more of the lights 1 10 may be dimmed or turned off to provide for energy reduction du ring a demand response management event.
- BMS elements 130 utilize sensor feedback poi nts 133 and 134 that directly correspond to a BMS component 1 10-1 18 to determine if that component 1 10-1 18 is fu nctioning as directed with little regard to the programmed control sequences.
- the sensed states of the components is all that is employed to determine whether those components are operating correctly or not, and there is not data provided as to whether a system of components, such as the rotating fan 1 12, condenser 1 15, and chiller 1 1 1, together are functioning in an optimal state.
- a temperature sensor 133 is shown as being deployed after the condenser 1 15 and prior to the rotating fan 1 12, in terms of airflow direction.
- Most conventional BMS elements 130 may on ly utilize feedback of operational status from the condenser sensor feedback poi nt 134 to determine that state of the condenser 1 15, irrespective to the order of the components 1 1 2, 1 15, and 133 and to whether they are operating optimally.
- AFD tech niques employ various analytical methods to examine operational logs generated by the BMS element 130 and other energy data in order to identify the components 1 10-1 18 responsible for any negative changes in operation.
- a present day AFD system typically performs the steps exemplified by the following flow to perform AFD analyses: Operational data is gathered, either manually or via a software interface to the BMS element 130. Then rules and equations to evaluate the BMS components 1 10-1 18 are created, generally by a manual process. Finally, an AFD output is generated that presents detected anomalies in an appropriate format.
- the rule sets and equations are typically predefined to apply to all BMS components of a particular component type (e.g., fan or chiller) without regard to configuration placement within the facility 101 or other differentiating criteria such as manufactu rer, capacity, and the like.
- the present invention overcomes the above noted disadvantages and limitations, and others, associated with present day building management systems, by providing mechanisms for automated fau lt detection system within a facility administered by a bui lding management system.
- the automated fau lt detection system provides for automatic selection of standard fau lt detection algorith ms and creation and use of virtual datapoints to improve use of standardized fau lt detection algorithms and to improve modeling accuracy.
- the automated fau lt detection system also provides for reduction of false-positive fau lt indications (i.e., false alarms) by increasing fau lt detection algorithm coverage, employing a n umber of consecutive sensitivity constraints on non-time based filters, and accou nting for dropped out data within the fau lt detection algorithms, and automatic data normalization.
- the present i nvention advances the cu rrent art by enabling selection of standardized, tested, and approved sets of fau lt detection algorithms based on configu ration within a facility, component layout and fu nction, system type, and physical characteristics of a facility.
- the present inventors have analyzed various building systems which are typically controlled and monitored by a BMS element 130.
- Fau lt detection algorith m selection according to the present i nvention is based on an air handler type, components present, and the layout/arrangement of these components within the system, and the sequence of operations (i.e., how the components are programmed to fu nction).
- the present invention additional ly utilizes system interactions, such as terminal u nits feedback to control resets for air handlers, and air handlers feedback to control resets for a chiller plant and/or boiler plant, when selecting fault detection algorithms; this information is taken in as part of the sequence of operations.
- the AFD system more completely models a facility through inclusion of physical environmental data by utilizing synthesized data points; maintaining awareness of the quality, validity, type, and relative value of data being utilized for analysis; maintaining awareness of the operational state of each BMS component (e.g., on, off, idle, active, failed, etc.) to reduced false fault indications; and generating additional valuable output useful for not on ly diagnosing faults, but also improving the operational aspects of the facility.
- the AFD system enables the processing of data from additional data sources such as, but not limited to, geog raphic data, building plans, installer notes, and site surveys, thus improving the opportunity to identify faults that cannot be otherwise identified using on ly data provided by the BMS element 130.
- Another improvement according to the present invention over prior AFD systems is the combined interactive use of both automated and manual fau lt identification methods. While most AFD systems either operate man ually (e.g., producing graphs of data that must be viewed by a h u man) or automatically (e.g., producing less accurate fau lt detection based on so-called "raw" data, which means less manipulated data), the present invention utilizes both methods to improve fau lt detection.
- Another featu re of the present invention is the utilization of information about a system's co mponent configu ration, cause and validity of a detected fau lt, and detailed information about the facility to both improve the standard nu mber and breadth of fau lt detection algorithms, as well as the ability of the AFD system according to the present invention to learn from erroneously identified fau lts (v i a f e e d b a c k ) in order to improve futu re performance.
- Another improvement according to the present invention over prior AFD systems is the ability to more completely identify various data sources, data types, and “tag” or otherwise uniquely identify the data using additional metadata.
- tags in put data, each data field can be normalized both in type and temporal quality, such that the AFD system according to the present invention makes a more accurate determination of faults, while eliminating false errors induced by unalig ned data or inappropriately scaled data.
- Another improvement over prior AFD systems is that the present invention more accurately represents (or "models") the complex behavior of a facility.
- the system can gain a more complete understanding of the facility that wou ld be otherwise impossible by exclusively modeling only the operation of physical devices in the modeled facility. This is accomplished th roug h sequences of operations driven fau lt detection algorith ms that are specific to component arrangement and settings tolerance.
- Present day AFD systems focus primarily on identifyi ng fau lts of equipment or programming of a facility BMS, and the present inventors note that an important aspect of the present invention is the improved ability to identify the base energy consumption "footprint" of a building th roug h building level metering and system su b-meters (if available), and to utilize this information in order to produce actionable steps toward reducing energy use and improvi ng occupant comfort of the facility.
- This information is utilized to reprogram an existi ng BMS element, as well as to provide a path for viable improvements to a facility that will reduce energy use and cost.
- the ability to generate actionable, efficient steps toward improving a facility disting uishes the present invention from simpler AFD systems that focus exclusively on providi ng g raphs or tables of potentially fai ling devices.
- FIGURE 2 a block diagram 200 is presented depicting an automatic fault detection system according to the present invention deployed in association with the building management system of FIGURE 1 .
- the diag ram 200 includes a typical facility 201 that may have a primary space 202 and one or more smaller spaces 203-205 such as offices and the like.
- HVAC heating, ventilation, and air conditioning
- components such as a chiller 21 1 , a rotating fans 212, controllable dampers 213, controllable valves 214, condenser 215, axial fans 216, heaters 217, hu midifiers 218, and sensors.
- sensor types analog in puts/measurements 233 such as temperature, binary inputs 234 such as the actual status of chiller, analog outputs (not shown) such as speed command sent to a rotating fan, and binary outputs (not shown) such as a command to enable a heater.
- the interior lighting system may also be tied into the BMS so in addition to the HVAC components are lig hting fixtures 210.
- the facility 201 may also be provided with energy sou rces including, but not limited to, electricity, water, and natural gas that are metered at a sing le meter point or at sub points throughout the facility 201. For clarity purposes, these metered points are represented in the diagram 200 as a single energy consumption meter 229.
- the lights 210 and HVAC components 21 1 -218 are distributed throughout the spaces 202-205 within the facility 201 to provide for, among other objectives, occupant comfort, occupant productivity, and security.
- there are numerous other components that may be present within a facility such as plumbing, access control equipment, video surveillance equipment, and special purpose industrial control systems.
- a typical BMS element 230 is deployed to provide fo r monitoring and control of the BMS components 210-218 within the facility 201. That is, most of the components 210-218 shown in the diag ram 200 allow fo r control by the BMS element 230 over one or more wired lin ks 231 or wireless lin ks 232. Fu rther consider that some of the components 210-218 may include a sensor feedback point 233 and 234 that allows the BMS element 230 to determine if a corresponding BMS component 200-218 is in an operational status as has been directed by the BMS element 230. The corresponding sensor feedback points 233 and 234 may be coupled to the BMS element 230 via the one or more conventional wired lin ks 231 and/or wireless lin ks 232.
- the BMS element 230 may be prog rammed to change the operational status of each of the BMS components 210-218, respectively or in combination, th roug hout a schedu led period of time, in order to achieve a desired level of comfort, productivity, secu rity, and the like.
- the facility 201 also includes an automated fau lt detection (AFD) element 240 that is coupled to the BMS element 230 via a wired lin k 231 and/or a wireless li nk 232, and that is also coupled to the energy consumption meter 329.
- the AFD element 240 may be collocated with the BMS element 230.
- the AFD element 240 is also cou pled to an analytics server 244 over a wide area network 242 such as the well- known internet 242 by well- known mechanisms of connection.
- the AFD element 240 is config u red to analyze real-time operational data that is generated by the BMS component 230 according to the processes described herein, along with additional data obtained from the analytics server 244 and the energy consu mption meter 229 to provide for more comprehensive fau lt coverage and detection of components 210-218 within the facility 201.
- the AFD element 240 may comprise a general purpose central processing unit and memory within which are disposed one or more application programs that are configured to perform the AFD functions described herein. Other embodiments many comprise a combination of dedicated hardware and software that are configured to perform the functions described herein. In one embodiment, the AFD element 240 may share hardware and/or software resources with the BMS element 230. Alternative embodiments may comprise specific in put/output interfaces that are configured to intercommunicate with both a specific BMS element 230 and the analytics server 244. In a further embodiment, the AFD element 240 may be disposed within the analytics server 244.
- the AFD element 240 may be configu red prior to real-time operation with "tagged" data describing the arrangement of system components for the systems withi n facility 201, along with sequence of operations and other system operational information.
- data may include, but is not limited to, the make and model information of the BMS components 210-218 disposed therein, the order in which the components 210-218 are disposed (e.g., h umidifier 218 first, fol lowed by rotati ng fan 212, followed by heater 217), the locations and associations of sensor feedback points 233 and 234, the locations of sensor elements 233 relative to BMS subsystems with which the sensors provide for optimal operations feedback (e.g., temperature sensor 233 is found after the condenser 215 prior to the heater 217), interactions among components of a BMS su bsystem, and other data that may fu rther facilitate automatic selection of fault detection algorithms, creation of synthesized data points, reduction of false alarms th roug h refinement of selected
- the AFD element 240 will gather BMS status data from the BMS element 230, energy consumption data from the meter 229, and various other data described above, as required, from the analytics server 244 in order to achieve the functions noted herein.
- the AFD element 240 may generate one or more reports comprising, but not limited to, detected fault data, corrective action data, and efficiency improvements data. These reports may be commu nicated via direct display on the AFD element 240 or may be transmitted to the analytics server 244.
- FIGURE 3 a block diagram 300 is presented featu ring details of the AFD element 240 of FIGURE 2.
- the AFD element 240 an in put/output (I/O) interface 302 that is coupled to a data normalizing element 304, a system model buildi ng element 306, a fau lt detection correcting and model updating element 316, and a ru n-time modeling element 318.
- the data normalizing element 304 is also coupled to the system model building element 306 and to a fault detection algorithm element 310.
- the fault detection algorithm element 310 is coupled to a virtual datapoint creating element 308, which is coupled to a model refining element 312.
- the model refining element 312 is cou pled to a system model data base 314 and optionally, in an iterative embodiment, to the virtual data point creating element 308 (via bus 313).
- the fau lt detection correcting and model u pdati ng element 316 is coupled to a ru n time modeling element 318, which is cou pled to the system model data base 314, a system config u ration data base 320, and an output logging element 322.
- the output logging element 322 is coupled to a log data base 324, a presentation element 326, and the fault detection correcting and model updating element 316.
- the presentation element 326 may generate formatted reports 328, corrective actions 330, and efficiency improvements 332.
- configuration of a facility model may begin via the I/O element 302 with selection and consolidation of various data sources available.
- These sources may include structured electronic data, such as that available from the BMS element 230.
- the data may also include unstructured and non-electronic information such as scanned architectural drawings retrieved from the analytics server 244.
- Such data may also be combined with other data sources provided via the analytics server 244, some electronic and some manual, such as notes from BMS configuration and programming teams, photographs of equipment placement, and setup and notes from site surveys and inspections.
- Electronic sources may be incorporated automatically or by personnel by selecting the appropriate input data selection method, and selecting the data to be imported.
- Manual sources are added by selecting the function, data type, and other appropriate criteria from pull-down lists that may be displayed and controlled at either the AFD element 240 or the analytics server 244. Additional data may also be obtained from private and public data sources such as satellite and aerial photographs, meteorological data, building orientation, and utility energy consumption records.
- the data normalizing element 304 performs functions required to capture each type of data in the BMS system and to store the required equations used to normalize the data, along with the properties defined for each data element to assign an appropriate point code.
- Point code is a term that describes a short name used by filter algorithms within the AFD element 240 to reference the data point (e.g., a supply air duct static pressure sensor data is given a point code of "SA_SPres_AI").
- SA_SPres_AI point code of "SA_SPres_AI”
- the hierarchical model may reflect sensor location, type, and function, resulting in assignment of a point code to the data.
- data normalization and standardization is an important part of the configuration process according to the present invention, since normalization and standardization enables use of standardized fault detection algorithms from a fau lt equation database (not shown).
- the system model building element 306 creates a hierarchical order of the components, equipment, and subsystems within the facility 201.
- the hierarchical ordering is employed all the way down to each su bsystem, laying out the system type and component hierarchy for each system.
- the system model is used to represent the su bsystems in the BMS, the components within each subsystem, the connectivity and relation between components in the BMS and components within the subsystems, the location of those devices within the facility 201 , and the operational prog ramming for each component of each su bsystem.
- each room 202-205 in the facility 201 may have similar components 210- 218 and sensors 233 and 234 that monitor temperature, lig ht, airflow, status, and commands that control air dampers, fans, and heating elements.
- These components 210-218, however, will fu nction differently depending on the type and location of windows, heat load from su nlig ht, and differing levels of occu pancy. Representing each component 210-218 in the precise sequential process aligned to its spatially correct placement improves the AFD system's detection accuracy th roug h improved algorith m selection.
- Virtual datapoints 246 are points of measurement that do not exist physically, but which can be accurately modeled based on the known config uration and physical parameters of both the BMS components 210-218 and the arrangement of the components 210-218. These virtual datapoints 246 greatly increase the list of usable fault detection algorithms, and, as a result of this increase fault detection coverage, false-positive indications (i.e., false alarms) are greatly reduced during run time.
- This data is utilized by the model refining element 312, which reduces the initial system model down to the final system model which consists of the ru nnable algorithms list, i.e., a finalized list of all algorithms that can be executed. Only algorithms that have all required data points available within the system model are executed. For example, if an algorithm requires point codes A, B, and C, and C is a real data point collected from the BMS element 230, and A is a data point created in virtual point creation, but C doesn't exist and could't be created th rough point creation, the potential algorithm is removed from the runnable list. Utilization of standardized fault detection algorithms is a distinct and substantial advantage of the present invention over prior art.
- fault detection algorithms are either written manually for each unique system config uration or a lesser set of generalized set of fault detection algorithms are applied regardless of system config uration. According to the present invention, however, fault detection algorithms are selected from a centrally maintained and commissioned list of standardized and tested algorithms, reducing the possibility of error, while also greatly improving the speed, accuracy, and completeness of AFD system configuration process.
- Specific virtual datapoints 246 will be more particularly discussed herein below, with reference to FIGURES 6-7. The present inventors note that the creation of virtual data points 246 according to the present invention represent a marked improvement over prior art AFD systems, since they enable the use of a wider variety of standardized fau lt detection algorith ms.
- the model refining element 312 utilizes the initially created system model, the normalized and standardized data, and the virtual datapoi nts 246 to yield a base system model that is stored, along with all appropriate configu ration parameters, in the system model data base 314.
- the system model includes a dataset of fau lt detection algorith ms that will be used by the AFD element 240 to evaluate the component data provided by the facility's BMS element 230.
- the ru n time modeling element 318 uses the base system model stored within the system model data base 314 and other information from the I/O element 302.
- the data output from the ru n time modeling element 318 is passed to the output logging element 322, which processes and sends the data along for fu rther processing and analysis within the presentation element 326 and for storage in the log data base 324.
- the process is an iterative embodiment, the output logging element feeds into the fau lt detection correcting and model u pdating element 316, which also takes into account person nel-provided information.
- model adjustments can be initiated automatically th rough updates to the data normalizing element 304, system model building element 306, and/or the system model data base 314, which typically involves associated configu ration parameters.
- the feedback may be provided at the AFD component 240 itself or via the I/O interface 302 based u pon data transmitted from the analytics server 244.
- FIG. 400 a block diag ram 400 is presented showing in put/output interfaces of the in put/output interface element 302 of FIGURE 3.
- the diagram 400 depicts a streaming data receiver 402 that receives streaming data such as, but not limited to data from the BMS element 230, data from the meter 229, and meteorological data that may be provided via the analytics server 244.
- the diag ram 400 also shows a static data receiver 404 that is configu red to receive static data such as, but not limited to, geog raphic data, building plans, installer notes, site su rveys, photog raphs, and energy consumption logs, maintained for system configu ration docu mentation pu rposes.
- the diag ram 400 fu rther depicts an analytic server transceiver 406 that is coupled to both the streaming data receiver 402 and the static data receiver 404.
- the analytic server transceiver 406 additionally provides data to the run time modeling element 318, the system model building element 306, and the fau lt detection correcting and model updating element 316.
- streaming data is provided to the streaming data element 402 from both the BMS element 230 and the analytics server 244.
- Static data is provided via the analytics server 244.
- the streaming and static data is employed by the AFD element 240 as is herein described to provide fo r a fau lt detection system that includes automatic selection of fau lt detection algorith ms, synthesis of virtual datapoints, reduction of false alarms via an increase and overlap of fau lt detection coverage, employing nu mber of consecutive sensitivity constraints on non-time based filters, and accou nting for dropped out data within the fau lt detection algorith ms, and normalization and standardization of BMS component data.
- FIGU RE 5 a flow diagram 500 is presented illustrating a method according to the present invention for generating an initial fault detection config uration for a building management system.
- Flow begins at block 502, where initial selection of fault detection algorithms is begun for a described facility, such as the facility 201 of FIGU RE 2. Flow then proceeds to block 504.
- configuration data for the facility is retrieved from a config uration data set 522.
- the configu ration data set 522 may include a diverse set of data from multiple manual and electronic sources, as described above. Flow then proceeds to block 506.
- the retrieved data is then normalized and standardized so that it can be used to automatically select fault equations from a library of predefined equations. Flow then proceeds to block 508.
- a base system model is generated utilizing the normalized and standardized data provided via block 506 and other configuration data via block 504.
- the base system model represents the BMS components 210-218 within the facility 201 u nder eval uation.
- the base system model is built in a sing le pass.
- the base system model is initially built, and then u pdated as required based u pon review in block 518.
- shou ld additional data be provided via the I/O interface 302, the process of generating a base system model will start anew. Flow then proceeds to block 510.
- one or more vi rtual datapoints are automatically created to su pplement the base system model as a fu nction of missi ng datapoi nts, avai lable datapoints, and component arrangement.
- the synthesis of vi rtual data points al lows for maximu m fau lt algorith m coverage. Flow then proceeds to block 514.
- the ru n nable fau lt algorith m list is developed from the base/u pdated system model. Then flow proceeds to block 520.
- a fi nal system model is verified and stored in a system config u ration data base 526. Normalization equations for the data are also stored i n the system config u ration data base 526.
- the data stored i n the system config u ration data base 526 is the data employed by the AFD element 240 to process BMS component data du ring real-time operation.
- the system model can be u pdated with additional i nformation or changes to cu rrent data in puts, which wi ll initiate re-creation of the initial system model. Flow then proceeds to block 516, where the fi nal system model generates outputs.
- fi nal system model outputs are passed for review. Flow then proceeds to decision block 518.
- a review determines if the model requires updating. If so, then flow then proceeds to block 508 where the system model is updated based upon feedback. Otherwise, no update is required and the flow proceeds to block 528, where the method completes.
- a final system model is verified and stored in a system config uration data base 526. Normalization equations for the data are also stored in the system configuration data base 526.
- the data stored in the system config uration data base 526 is the data employed by the AFD element 240 to process BMS component data during real-time operation.
- the system model can be updated with additional information or changes to current data inputs, which will initiate re-creation of the initial system model. Flow then proceeds to block 528, where the method completes.
- FIGURE 6 a block diag ram 600 is presented detailing creation of an exemplary synthesized datapoint according to the present invention, as may be created by the AFD element 240 of FIGU RE 2 via the method described with reference to FIGURE 5.
- the AFD element 240 models the temperature change across the fan 603 along with its airflow calculated using fan speed, thus enabling the AFD element 240 to estimate the temperature at a synthesized datapoint 605 at the discharge from the fan 603 and prior to the heating coil 604.
- This virtual point 605 is used to augment the selection of fault detection algorithms that might otherwise be impossible without the required measuring point 605, in order to detect a faulty valve that is leaking when it is closed.
- the datapoint 605 represents the calculated temperature value based on thermodynamic principles at that point in the plen um 601 , having been modeled by the system model building element 306.
- FIGURE 7 a block diag ram 700 is presented illustrating creation of an alternative synthesized datapoint accordingly to the present invention.
- a mixing plenu m 701 is coupled to outside air plen um 703 and retu rn air plen um 704.
- a first temperatu re sensor 707 is disposed within outside air plen um 703 to measu re outside air temperatu re preceding a first controllable damper 706, and a second temperature sensor 702 is disposed within retu rn air plen um 704 to measu re return air temperatu re preceding a second controllable damper 709.
- Plen ums 703-704 also have airflow sensors 708 for measu ring airflow with regard to direction of airflow. Measu rement of the temperatu re directly after the mixing of the two air plenu ms 703 and 704 is desired by a selected standardized fau lt detection algorith m according to the present invention to, say, enable detection of an economizer damper reacting improperly to building conditions relative to the outside air conditions. There are temperatu re sensors 702 and 707 prior to the mixing of the two air plenu ms 703 and 704 and airflow rates corresponding to plen ums 703-704 are provided by sensors 708.
- the AFD element 240 employs plen u m temperatu res provided by sensors 702 and 707, along with the individual airflow rates provided by sensors 708, to estimate the temperature at a synthesized datapoint 705 after the mixing of the two air plen ums 703-704 within the combined plenu m space 701.
- this virtual point 705 is used to aug ment the selection of fau lt detection algorithms that mig ht otherwise be impossible without the required measu ring point 705.
- the datapoint 705 represents the calculated temperature value based on thermodynamic principles at that poi nt in the plen um 701, having been modeled by the system model bui lding element 306.
- FIGURE 8 a flow diagram 800 is presented featuring a method according to the present invention for fault detection algorithm selection and data point synthesis.
- the diag ram 800 represents the steps taken during config uration of the AFD component 240 in order to select the optimal number and type of fault algorithms.
- the process of steps shown is iterative and occurs for each set of related components within the BMS.
- BMS subsystems are often quite complex, and the relationships between components and subsystems may be overlapping.
- the present invention provides for a hierarchy of component relationships where each set in the hierarchy is represented by unique sets of fault detection algorithms, allowing for overlap and improvement of fault detection capabilities. Further, one or more BMS component may operate in multiple related sets, and, therefore, be represented multiple times, once for each set.
- Flow begins at block 802, where it is desired to select fault algorithms for the facility 201. Flow then proceeds to block 804.
- a su bsystem is selected having interrelated components within the facility 201 and pertinent related and required data is learned through a directed menu driven user inputs.
- a config u ration data set 822 is accessed to load the subsystem type and layout of components therein. Flow then proceeds to block 806.
- the AFD component 240 accesses a component sequence of operations (SOO) data set 824 to load SOO inputs for each component within the selected su bsystem th rough a directed men u driven user input u nique to that subsystem. Flow then proceeds to block 808.
- SOO component sequence of operations
- an initial list of standardized fau lt detection algorith ms is automatically selected for the subsystem base on the SOO inputs obtained. Flow then proceeds to block 810.
- any datapoints that are not physically available are synthesized automatically where possible and using similar tech niques as is described above. Flow then proceeds to block 812.
- the applied algorithms list directs the necessary user applied parameter in puts. Flow then proceeds to block 814.
- the AFD component 240 creates a potential filter list, which is a list of all the filters that can executed for the facility 201 being modeled, providing that all required datapoints exist in the facility 201.
- the ru n nable filter list is created, which is a list of all the filters that can be executed based on the real datapoints coming in from the BMS component 230 and the synthesized datapoints. If an algorith m requires a datapoi nt that does not exist and cou ld not be synthesized, then the filter cannot be executed and it is removed from the ru n nable filter list.
- the AFD component 240 is configured to perform the functions and operations as discussed above.
- the AFD component 240 may comprise logic, circuits, devices, or application prog rams, or a combination of logic, circuits, devices, or application programs, or equivalent elements that are employed to execute the functions and operations according to the present invention as noted.
- the elements employed to accomplish these operations and functions within the AFD component 240 may be shared with other circuits, application programs, etc., that are employed to perform other functions and/or operations within the AFD component 240.
- application program is a term employed to refer to a plurality of instructions executable by one or more CPUs.
- the software implemented aspects of the invention are typically encoded on some form of prog ram storage medium or implemented over some type of transmission medium.
- the program storage medium may be electronic (e.g., read only memory, flash read only memory, electrically programmable read only memory), random access memory magnetic (e.g., a floppy disk or a hard drive) or optical (e.g., a compact disk read on ly memory, or "CD ROM"), and may be read on ly or random access.
- the transmission medium may be metal traces, twisted wire pairs, coaxial cable, optical fiber, or some other suitable transmission medium known to the art. The invention is not limited by these aspects of any given implementation.
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Abstract
An apparatus for detecting component faults monitored by a building management system (BMS), including an automatic fault detection (AFD) element, coupled to the BMS, that monitors samples generated by the BMS indicating operative states of the components, and that employs the data samples to determine if one or more of the components are faulty. The AFD element includes a run time modeling element and a fault detection algorithm element. The modeling element employs the samples as inputs to execute one or more fault algorithms retrieved from a system model, and generates outputs that indicate if the one or more of the components are faulty. The algorithm element is coupled to the system model, and employs normalized/standardized datapoints representing the samples to select the one or more fault algorithms for storage in the system model, where the one or more fault algorithms are selected from a standard fault algorithm data base.
Description
TITLE
APPARATUS AND METHOD FOR SELECTION OF FAULT DETECTION ALGORITHMS FOR A BUILDING MANAGEMENT SYSTEM by
Edward C. Spivey
Lindsay K. Spivey
CROSS-REFERENCE TO RELATED APPLICATIONS
[0001 ] This application claims the benefit of the following U.S. Provisional Applications, each of which is herein incorporated by reference for all intents and purposes.
SERIAL FILING
TITLE NUMBER DATE
APPARATUS AND METHOD FOR AUTOMATIC
61816851
4/29/13 DETECTION OF FAULTS IN A BUILDING
(ENER.0107)
MANAGEMENT SYSTEM
[0002] This application is related to the following co-pending U.S. Patent Applications, each of which has a common assig nee and common inventors.
SERIAL FILING
TITLE NUMBER DATE
VIRTUAL DATA POINT CREATION MECHANISM FOR A BUILDING MANAGEMENT FAULT DETECTION
(ENER.01 12)
SYSTEM
BUILDING MANAGEMENT SYSTEM FALSE-POSITIVE
(ENER.01 13) FAULT INDICATIONS REDUCTION MECHANISM
BUILDING MANAGEMENT SYSTEM DATA NORMALIZATION AND STANDARDIZATION
(ENER.01 14)
MECHANISM
BACKGROUND OF THE INVENTION
FIELD OF THE INVENTION
[0003] This invention relates in general to the field of building management systems, and more particularly to an automated fault detection mechanism within facility that is administered by a building management system.
DESCRIPTION OF THE RELATED ART
[0004] A building management system (BMS) is utilized generally in larger facilities to manage and control mechanical, electrical, and plumbing subsystems therein. Often, it is function of a BMS to control energy usage by controlling lights and heating, ventilation, and air conditioning (HVAC) subsystems, security subsystems, alarm su bsystems, and transportation subsystems (e.g., elevators). Thus, BMS systems are a critical component to managing energy demand. Some skilled in the art estimate that improperly configured BMSs may account for u p to 20 percent of the energy usage in a given facility. However, energy demand management must be considered along with the primary functions of the BMS system, which is to maintain physical comfort, safety, and efficiency of operations within the facility.
[0005] Typically, a BMS is a computer-based control system installed in a facility that controls and monitors the aforementioned subsystems mechanical and electrical equipment such as ventilation, lighting, power systems, fire systems, and security systems. Accordingly, the BMS includes both software and hardware. More often than not, the software is typically proprietary to a given man ufacturer, and is provided with interfaces to allow for configuration and access to monitored datapoints.
[0006] As one skilled in the art will appreciate, BMSs are complex to design, install, and configure. Errors in the operation of BMSs can occur at mu ltiple points: during installation and initial programming, during upgrades and modification, or as a
resu lt of equipment degradation and failures. Additionally, a BMS, while functioning according to its configuration, may not achieve required control and occupant comfort in the most energy efficient manner. For the purposes of this disclosure, the term "occupant comfort" is employed to describe a BMS subsystem or su bsystems together functioning in an optimal manner that facilitates the most productive and accommodating environment for the building occupants. In general, when subsystems are fu nctioning according to their original design specifications, occupant comfort will be optimal.
[0007] There are a n umber of systems presently deployed that utilize data generated by a BMS in order to detect and isolate faulty components or subsystems within a facility. Such systems are commonly referred to as automated fault detection (AFD) systems or BMS analytical systems.
[0008] A present day AFD system typically processes BMS data non-real time. While this may be sufficient for occasional use, the present inventors have noted that processing data as it is available improves the efficiency and frequency of fault identification for components of subsystems within a facility. Additionally, the present inventors have observed that fault coverage for an AFD may be enhanced when other data, such as meteorological data, site plans, and installer notes are employed in conjunction with BMS-generated data. And while most present day AFD systems either operate man ually (e.g., producing g raphs of data that must be viewed by a hu man) or automatically (e.g., producing less accu rate fault detection based on so-called "raw" data), the present inventors have noted that utilize both methods to select and execute fau lt detection algorith ms improve fault coverage and fau lt detection capabilities of an AFD system.
[0009] According ly, what is needed is a technique for automatically selecting fault detection algorith ms for use in an AFD system that employs additional data from multiple sources such as meteorological data, building plans, site survey, and installer notes.
[0010] In addition, what is needed is a mechanism for precisely modeling components and subsystems within a facility controlled by a BMS, and for using a predefined set of criteria to define applicability for automatically selecting fault detection algorith ms from a tested, prequalified list.
[001 1 ] What is further needed is apparatus and methods for generating virtual BMS data for physical points within subsystems for which no data exists by utilizing known characteristics of typical components (e.g., heating coils and fans) to estimate the data.
[0012] Moreover, what is needed is a mechanism for normalizing and standardizing BMS generated data to allow for selection of standard fau lt detection algorith ms for use by an AFD system.
SUMMARY OF THE INVENTION
[0013] The present invention, among other applications, is directed to solving the above-noted problems and addresses other problems, disadvantages, and limitations of the prior art.
[0014] The present invention provides a superior technique for configuring and executing automated fault detection for components and subsystems of a building management system. In one embodiment, an apparatus is provided for detecting faults of components monitored by a building management system (BMS). The apparatus includes an automatic fault detection (AFD) element, coupled to the BMS, that monitors, in real time, data samples generated by the BMS indicating operative states of the components, and that employs the data samples to determine if one or more of the components are faulty. The AFD element includes a run time modeling element and a fault detection algorithm element. The run time modeling element employs the data samples as in puts to execute one or more fault algorithms retrieved from a system configuration model, and generates outputs to the one or more fault algorith ms that indicate if the one or more of the
components are faulty. The fault detection algorithm element is coupled to the system config uration model, and employs normalized and standardized datapoints representing the data samples to automatically select the one or more fault algorithms for storage in the system configuration model, where the one or more fault algorithms are selected from a standard fault algorithm data base.
[0015] One aspect of the present invention contemplates an apparatus for detecting faults of components. The apparatus has a building management system (BMS) and an automatic fault detection (AFD) element. The BMS controls and monitors operative states of the components, and generates data samples of the operative states. The AFD element is coupled to the BMS. The AFD element monitors, in real time, the data samples, and employs the data samples to determine if one or more of the components are faulty. The AFD element includes a ru n time modeling element and a fault detection algorithm element. The run time modeling element employs the data samples as inputs to execute one or more fault algorith ms retrieved from a system configuration model, and generates outputs to the one or more fault algorithms that indicate if the one or more of the components are faulty. The fault detection algorithm element is cou pled to the system config uration model, and employs normalized and standardized datapoints representing the data samples to automatically select the one or more fault algorithms for storage in the system configuration model, where the one or more fault algorithms are selected from a standard fault algorithm data base.
[0016] Another aspect of the present invention comprehends a method for detecting faults of components monitored by a building management system (BMS). The method includes monitoring, in real time, data samples generated by the BMS indicating operative states of the components, and employing the data samples to determine if one or more of the components are faulty. The monitoring includes first using the data samples as inputs to execute one or more fault algorithms retrieved from a system configu ration model, and generating outputs
to the one or more fault algorithms that indicate if the one or more of the components are faulty; and second using normalized and standardized datapoints representing the data samples to automatically select the one or more fault algorithms for storage in the system configuration model, where the one or more fault algorithms are selected from a standard fault algorithm data base.
BRIEF DESCRIPTION OF THE DRAWINGS
[0017] These and other objects, features, and advantages of the present invention will become better understood with regard to the following description, and accompanying drawings where:
[0018] FIGURE 1 is a block diagram illustrating a present day building management system;
[0019] FIGURE 2 is a block diag ram depicting an automatic fault detection system according to the present invention deployed in association with the building management system of FIGURE 1 ;
[0020] FIGURE 3 is a block diagram featuring details of the automatic fault detection element of FIGU RE 2;
[0021 ] FIGURE 4 is a block diagram showing input/output interfaces of the in put/output interface element of FIGURE 3;
[0022] FIGURE 5 is a flow diagram illustrating a method according to the present invention for generating an initial fault detection configuration for a building management system;
[0023] FIGURE 6 is a block diagram detailing creation of an exemplary synthesized datapoint according to the present invention;
[0024] FIGURE 7 is a block diag ram depicting creation of an alternative exemplary synthesized datapoint according to the present invention; and
[0025] FIGURE 8 is a flow diagram featuring a method according to the present invention for fault detection algorithm selection and data point synthesis.
DETAILED DESCRIPTION
[0026] Exemplary and illustrative embodiments of the invention are described below. In the interest of clarity, not all featu res of an actual implementation are described in this specification, for those skilled in the art will appreciate that in the development of any such actual embodiment, n umerous implementation specific decisions are made to achieve specific goals, such as compliance with system- related and business related constraints, which vary from one implementation to another. Furthermore, it will be appreciated that such a development effort might be complex and time-consuming, but would nevertheless be a routine undertaking for those of ordinary skill in the art having the benefit of this disclosure. Various modifications to the preferred embodiment will be apparent to those skilled in the art, and the general principles defined herein may be applied to other embodiments. Therefore, the present invention is not intended to be limited to the particular embodiments shown and described herein, but is to be accorded the widest scope consistent with the principles and novel features herein disclosed.
[0027] The present invention will now be described with reference to the attached fig ures. Various structures, systems, and devices are schematically depicted in the drawings for pu rposes of explanation only and so as to not obscure the present invention with details that are well known to those skilled in the art. Nevertheless, the attached drawings are included to describe and explain illustrative examples of the present invention. The words and phrases used herein should be understood and interpreted to have a meaning consistent with the understanding of those words and phrases by those skilled in the relevant art. No special definition of a term or phrase (i.e., a definition that is different from the ordinary and customary meaning as understood by those skilled in the art) is intended to be implied by consistent usage of the term or phrase herein. To the
extent that a term or phrase is intended to have a special meaning (i.e., a meaning other than that understood by skilled artisans) such a special definition will be expressly set forth in the specification in a definitional manner that directly and unequivocally provides the special definition for the term or phrase.
[0028] In view of the above background discussion on building management systems and associated tech niques employed within present day facilities for the detection of component and system faults therein, a discussion of the disadvantages and limitations of present day fault detection systems will be presented with reference to FIGURE 1. Following this, a discussion of the present invention will be presented with reference to FIGURES 2-9. The present invention provides a superior automated fault detection system within a facility administered by a building management system that includes: automatic selection of standard fault detection algorithms, creation and use of virtual datapoints in an automatic fault detection system to improve use of standardized fault detection algorithms and to improve modeling accuracy, reduction of false-positive fault indications (i.e., false alarms) by increasing fault detection algorithm coverage; employing a nu mber of consecutive sensitivity constraints on non-time based filters, and accounting for dropped out data within the fault detection algorithms; and automatic data normalization and standardization in an automated fau lt detection system.
[0029] Turning to FIGURE 1 , a block diag ram 100 is presented illustrating an exemplary present day building management system (BMS). The diag ram 100 shows a typical building 101 (or, "facility" 101 ) that may have a primary space 102 and one or more smaller spaces 103-105 such as offices and the like. Within the facility are heating, ventilation, and air conditioning (HVAC) systems, such as air handlers, chiller plant, boiler plant, terminal units, and the like which are built u p from components such as a chiller 1 1 1 , rotating fans 1 12, a controllable damper 1 13, a controllable valves 1 14, a condenser 1 15, an axial fan 1 16, a heater 1 17, a
humidifier 1 18, and sensors 133-134. There are four physical sensor types, analog in puts/measurements 133, such as temperature, binary inputs 134, such as the actual status of the chiller 1 1 1 , analog outputs (not shown), such as a speed command sent to a rotating fan 1 12, and binary outputs (not shown), such as a command on sent to a heater 1 17. The interior lighting system may also be tied into the BMS 130 so, in addition to the HVAC components are lighting fixtures 1 10. The facility 101 may also be provided with energy sources including, but not limited to, electricity, water, and natural gas that are metered at a single meter point or at sub points throughout the facility 101. For clarity purposes, these metered points are represented in the diagram 100 as a single energy consumption meter 129. The lights 1 10 and HVAC components 1 1 1 -1 18 are distributed throughout the spaces 102-105 within the facility 101 to provide for, among other objectives, occupant comfort, occu pant productivity, and security. As is alluded to above, there are n umerous other components that may be present within a facility such as plumbing, access control equipment, video su rveillance equipment, and special purpose industrial control systems, but although a discussion of such components are beyond the scope of the present disclosu re, the present inventors note that one skilled in the art will be enabled by the present disclosure to adapt the present invention to any building management system component that is not specifically addressed herein.
[0030] For pu rposes of discussion, consider that a typical BMS element 130 is deployed to provide fo r monitori ng and control of the BMS components 1 10- 1 18 within the facility 101. That is, most of the components 1 10-1 18 shown in the diagram 100 allow for control by the BMS element 130 over one or more wired lin ks 131 or wireless lin ks 132. Further consider that some of the components 1 10-1 18 may include a sensor feedback poi nt 120 that allows the BMS element 130 to determine if a corresponding BMS component 1 10-1 19 is in an operational status as has been directed by the BMS element 130. The corresponding sensor feedback points 133 and 134 may be coupled to the BMS
element 130 via one or more conventional wired lin ks 131 and/or wireless lin ks 132.
[0031 ] Operationally, the BMS element 130 may be programmed to change the operational status of each of the BMS components 1 10-1 18, respectively or in combination, throughout a scheduled period of time, in order to achieve a desired level of comfort, productivity, secu rity, and the like. Sensors 133-134 th roughout the facility 101 will be accessed periodically, according to programming of the BMS element 130, in order to determine that commands to certain components 1 10-1 18 have been actually received by the components 1 10-1 19 and carried out accordingly. For example, throughout the scheduled period the BMS element 130 may periodically gather temperature information regarding the facility from one or more temperature sensors 133 and may in response actuate the chiller 1 1 1, the corresponding rotational fan 1 12, the condenser 1 15, and its corresponding axial fan 1 16 to promote cooling of the facility 101. In concert, the BMS element 130 may also open controllable dampers 1 13 within one of the smaller rooms 103 to promote cooling as well. Du ring other periods, the BMS element 130 may actuate the heater 1 17, the h u midifier 1 18, and corresponding rotational fan 1 12 to provide for heating of the facility 101. Similarly, one or more of the lights 1 10 may be dimmed or turned off to provide for energy reduction du ring a demand response management event.
[0032] The scenarios for control and monitoring of BMS components, such as the ones 1 10-1 18, 133-136 shown in the exemplary facility 101 , are limitless. However, it has been noted by the present inventors that thoug h many present day BMS elements 130 provide prog ramming to monitor the operational status of their corresponding BMS components 1 10-1 18, the algorith ms that are employed to determine status and fau lts are not necessarily suited to provide sufficient coverage for comprehensive fau lt detection. More specifically, the present inventors have observed that virtually
all present day BMS elements 130 utilize sensor feedback poi nts 133 and 134 that directly correspond to a BMS component 1 10-1 18 to determine if that component 1 10-1 18 is fu nctioning as directed with little regard to the programmed control sequences. In addition, it has been noted that the sensed states of the components is all that is employed to determine whether those components are operating correctly or not, and there is not data provided as to whether a system of components, such as the rotating fan 1 12, condenser 1 15, and chiller 1 1 1, together are functioning in an optimal state. For illustrative pu rposes, a temperature sensor 133 is shown as being deployed after the condenser 1 15 and prior to the rotating fan 1 12, in terms of airflow direction. Most conventional BMS elements 130 may on ly utilize feedback of operational status from the condenser sensor feedback poi nt 134 to determine that state of the condenser 1 15, irrespective to the order of the components 1 1 2, 1 15, and 133 and to whether they are operating optimally.
[0033] The present inventors note that, in order to provide a building owner/manager with useful tools to manage, monitor, and correct facility errors and inefficiencies, various tech niques have been developed in recent years, often referred to as fault detection techniques, automated fault detection (AFD) tech niques, and BMS analytics. Such techniques will be henceforth referred to as AFD techniques within the present disclosure. AFD tech niques employ various analytical methods to examine operational logs generated by the BMS element 130 and other energy data in order to identify the components 1 10-1 18 responsible for any negative changes in operation.
[0034] A present day AFD system typically performs the steps exemplified by the following flow to perform AFD analyses: Operational data is gathered, either manually or via a software interface to the BMS element 130. Then rules and equations to evaluate the BMS components 1 10-1 18 are created, generally by a manual process. Finally, an AFD output is generated that presents detected
anomalies in an appropriate format. The rule sets and equations are typically predefined to apply to all BMS components of a particular component type (e.g., fan or chiller) without regard to configuration placement within the facility 101 or other differentiating criteria such as manufactu rer, capacity, and the like.
[0035] According ly, the present invention overcomes the above noted disadvantages and limitations, and others, associated with present day building management systems, by providing mechanisms for automated fau lt detection system within a facility administered by a bui lding management system. The automated fau lt detection system provides for automatic selection of standard fau lt detection algorith ms and creation and use of virtual datapoints to improve use of standardized fau lt detection algorithms and to improve modeling accuracy. The automated fau lt detection system also provides for reduction of false-positive fau lt indications (i.e., false alarms) by increasing fau lt detection algorithm coverage, employing a n umber of consecutive sensitivity constraints on non-time based filters, and accou nting for dropped out data within the fau lt detection algorithms, and automatic data normalization.
[0036] The present i nvention advances the cu rrent art by enabling selection of standardized, tested, and approved sets of fau lt detection algorithms based on configu ration within a facility, component layout and fu nction, system type, and physical characteristics of a facility. At a detailed level, the present inventors have analyzed various building systems which are typically controlled and monitored by a BMS element 130. Consider for example analyzing a si ng le air handler within a facility. Fau lt detection algorith m selection according to the present i nvention is based on an air handler type, components present, and the layout/arrangement of these components within the system, and the sequence of operations (i.e., how the components are programmed to fu nction). The present invention additional ly utilizes system interactions, such as terminal u nits feedback to control resets for air handlers,
and air handlers feedback to control resets for a chiller plant and/or boiler plant, when selecting fault detection algorithms; this information is taken in as part of the sequence of operations.
[0037] In one aspect of the present invention, the AFD system more completely models a facility through inclusion of physical environmental data by utilizing synthesized data points; maintaining awareness of the quality, validity, type, and relative value of data being utilized for analysis; maintaining awareness of the operational state of each BMS component (e.g., on, off, idle, active, failed, etc.) to reduced false fault indications; and generating additional valuable output useful for not on ly diagnosing faults, but also improving the operational aspects of the facility.
[0038] The AFD system according to the present invention enables the processing of data from additional data sources such as, but not limited to, geog raphic data, building plans, installer notes, and site surveys, thus improving the opportunity to identify faults that cannot be otherwise identified using on ly data provided by the BMS element 130.
[0039] Another improvement according to the present invention over prior AFD systems is the combined interactive use of both automated and manual fau lt identification methods. While most AFD systems either operate man ually (e.g., producing graphs of data that must be viewed by a h u man) or automatically (e.g., producing less accurate fau lt detection based on so-called "raw" data, which means less manipulated data), the present invention utilizes both methods to improve fau lt detection. Another featu re of the present invention is the utilization of information about a system's co mponent configu ration, cause and validity of a detected fau lt, and detailed information about the facility to both improve the standard nu mber and breadth of fau lt detection algorithms, as well as the ability of the AFD system according to the
present invention to learn from erroneously identified fau lts (v i a f e e d b a c k ) in order to improve futu re performance.
[0040] Another improvement according to the present invention over prior AFD systems is the ability to more completely identify various data sources, data types, and "tag" or otherwise uniquely identify the data using additional metadata. By "tagging" in put data, each data field can be normalized both in type and temporal quality, such that the AFD system according to the present invention makes a more accurate determination of faults, while eliminating false errors induced by unalig ned data or inappropriately scaled data.
[0041 ] Another improvement over prior AFD systems is that the present invention more accurately represents (or "models") the complex behavior of a facility. By including additional data fields such as meteorological data, occupancy levels, BMS maintenance personnel notes, etc, the system can gain a more complete understanding of the facility that wou ld be otherwise impossible by exclusively modeling only the operation of physical devices in the modeled facility. This is accomplished th roug h sequences of operations driven fau lt detection algorith ms that are specific to component arrangement and settings tolerance.
[0042] Present day AFD systems focus primarily on identifyi ng fau lts of equipment or programming of a facility BMS, and the present inventors note that an important aspect of the present invention is the improved ability to identify the base energy consumption "footprint" of a building th roug h building level metering and system su b-meters (if available), and to utilize this information in order to produce actionable steps toward reducing energy use and improvi ng occupant comfort of the facility. This information is utilized to reprogram an existi ng BMS element, as well as to provide a path for viable improvements to a facility that will reduce energy use and cost. The ability to generate actionable, efficient steps toward improving a facility disting uishes
the present invention from simpler AFD systems that focus exclusively on providi ng g raphs or tables of potentially fai ling devices.
[0043] Referring now to FIGURE 2, a block diagram 200 is presented depicting an automatic fault detection system according to the present invention deployed in association with the building management system of FIGURE 1 . Like the diag ram 100 of FIGURE 1 , the diag ram 200 includes a typical facility 201 that may have a primary space 202 and one or more smaller spaces 203-205 such as offices and the like. Within the facility are heating, ventilation, and air conditioning (HVAC) systems, such as air handlers, chiller plant, boiler plant, terminal units, and the like which are built up from components such as a chiller 21 1 , a rotating fans 212, controllable dampers 213, controllable valves 214, condenser 215, axial fans 216, heaters 217, hu midifiers 218, and sensors. There are four sensor types: analog in puts/measurements 233 such as temperature, binary inputs 234 such as the actual status of chiller, analog outputs (not shown) such as speed command sent to a rotating fan, and binary outputs (not shown) such as a command to enable a heater. The interior lighting system may also be tied into the BMS so in addition to the HVAC components are lig hting fixtures 210. The facility 201 may also be provided with energy sou rces including, but not limited to, electricity, water, and natural gas that are metered at a sing le meter point or at sub points throughout the facility 201. For clarity purposes, these metered points are represented in the diagram 200 as a single energy consumption meter 229. The lights 210 and HVAC components 21 1 -218 are distributed throughout the spaces 202-205 within the facility 201 to provide for, among other objectives, occupant comfort, occupant productivity, and security. As is alluded to above, there are numerous other components that may be present within a facility such as plumbing, access control equipment, video surveillance equipment, and special purpose industrial control systems.
[0044] Like the system of FIGURE 1 , consider that a typical BMS element 230 is deployed to provide fo r monitoring and control of the BMS components 210-218 within the facility 201. That is, most of the components 210-218 shown in the diag ram 200 allow fo r control by the BMS element 230 over one or more wired lin ks 231 or wireless lin ks 232. Fu rther consider that some of the components 210-218 may include a sensor feedback point 233 and 234 that allows the BMS element 230 to determine if a corresponding BMS component 200-218 is in an operational status as has been directed by the BMS element 230. The corresponding sensor feedback points 233 and 234 may be coupled to the BMS element 230 via the one or more conventional wired lin ks 231 and/or wireless lin ks 232.
[0045] Operationally, the BMS element 230 may be prog rammed to change the operational status of each of the BMS components 210-218, respectively or in combination, th roug hout a schedu led period of time, in order to achieve a desired level of comfort, productivity, secu rity, and the like. Sensors 233 and
234 th roug hout the facility 201 will be accessed periodically, according to prog ramming of the BMS element 230, in order to determine that commands
235 and 236 to certain components 210-218 have been actually received by the components 210-218 and carried out acco rding ly.
[0046] However, in contrast to the facility 101 of FIGURE 1 , the facility 201 according to the present invention also includes an automated fau lt detection (AFD) element 240 that is coupled to the BMS element 230 via a wired lin k 231 and/or a wireless li nk 232, and that is also coupled to the energy consumption meter 329. In one embodiment, the AFD element 240 may be collocated with the BMS element 230. The AFD element 240 is also cou pled to an analytics server 244 over a wide area network 242 such as the well- known internet 242 by well- known mechanisms of connection. In one embodiment, the AFD element 240 is config u red to analyze real-time operational data that is
generated by the BMS component 230 according to the processes described herein, along with additional data obtained from the analytics server 244 and the energy consu mption meter 229 to provide for more comprehensive fau lt coverage and detection of components 210-218 within the facility 201.
[0047] In one embodiment, the AFD element 240 may comprise a general purpose central processing unit and memory within which are disposed one or more application programs that are configured to perform the AFD functions described herein. Other embodiments many comprise a combination of dedicated hardware and software that are configured to perform the functions described herein. In one embodiment, the AFD element 240 may share hardware and/or software resources with the BMS element 230. Alternative embodiments may comprise specific in put/output interfaces that are configured to intercommunicate with both a specific BMS element 230 and the analytics server 244. In a further embodiment, the AFD element 240 may be disposed within the analytics server 244.
[0048] The AFD element 240 may be configu red prior to real-time operation with "tagged" data describing the arrangement of system components for the systems withi n facility 201, along with sequence of operations and other system operational information. Such data may include, but is not limited to, the make and model information of the BMS components 210-218 disposed therein, the order in which the components 210-218 are disposed (e.g., h umidifier 218 first, fol lowed by rotati ng fan 212, followed by heater 217), the locations and associations of sensor feedback points 233 and 234, the locations of sensor elements 233 relative to BMS subsystems with which the sensors provide for optimal operations feedback (e.g., temperature sensor 233 is found after the condenser 215 prior to the heater 217), interactions among components of a BMS su bsystem, and other data that may fu rther facilitate automatic selection of fault detection algorithms, creation of synthesized data points, reduction of false alarms th roug h refinement of selected fau lt algorith ms, employing
nu mber of consecutive sensitivity constraints on non-time based filters, and accounting for dropped out data within the fault detection algorith ms, and normalization and standardization of BMS data within the facility. One important aspect of the invention is that it is fully pre-programmed and on ly requires configu ration applicable to the systems on which it is deployed, which is accomplished throug h config uration menus.
[0049] Du ring real-time operation, the AFD element 240 will gather BMS status data from the BMS element 230, energy consumption data from the meter 229, and various other data described above, as required, from the analytics server 244 in order to achieve the functions noted herein. The AFD element 240 may generate one or more reports comprising, but not limited to, detected fault data, corrective action data, and efficiency improvements data. These reports may be commu nicated via direct display on the AFD element 240 or may be transmitted to the analytics server 244.
[0050] Turni ng also now to FIGURE 3, a block diagram 300 is presented featu ring details of the AFD element 240 of FIGURE 2. The AFD element 240 an in put/output (I/O) interface 302 that is coupled to a data normalizing element 304, a system model buildi ng element 306, a fau lt detection correcting and model updating element 316, and a ru n-time modeling element 318. The data normalizing element 304 is also coupled to the system model building element 306 and to a fault detection algorithm element 310. The fault detection algorithm element 310 is coupled to a virtual datapoint creating element 308, which is coupled to a model refining element 312. The model refining element 312 is cou pled to a system model data base 314 and optionally, in an iterative embodiment, to the virtual data point creating element 308 (via bus 313). The fau lt detection correcting and model u pdati ng element 316 is coupled to a ru n time modeling element 318, which is cou pled to the system model data base 314, a system config u ration data base 320, and an output logging element
322. The output logging element 322 is coupled to a log data base 324, a presentation element 326, and the fault detection correcting and model updating element 316. The presentation element 326 may generate formatted reports 328, corrective actions 330, and efficiency improvements 332.
[0051] In operation, configuration of a facility model may begin via the I/O element 302 with selection and consolidation of various data sources available. These sources may include structured electronic data, such as that available from the BMS element 230. The data may also include unstructured and non-electronic information such as scanned architectural drawings retrieved from the analytics server 244. Such data may also be combined with other data sources provided via the analytics server 244, some electronic and some manual, such as notes from BMS configuration and programming teams, photographs of equipment placement, and setup and notes from site surveys and inspections. Electronic sources may be incorporated automatically or by personnel by selecting the appropriate input data selection method, and selecting the data to be imported. Manual sources are added by selecting the function, data type, and other appropriate criteria from pull-down lists that may be displayed and controlled at either the AFD element 240 or the analytics server 244. Additional data may also be obtained from private and public data sources such as satellite and aerial photographs, meteorological data, building orientation, and utility energy consumption records.
[0052] The data normalizing element 304 performs functions required to capture each type of data in the BMS system and to store the required equations used to normalize the data, along with the properties defined for each data element to assign an appropriate point code. "Point code," as used herein, is a term that describes a short name used by filter algorithms within the AFD element 240 to reference the data point (e.g., a supply air duct static pressure sensor data is given a point code of "SA_SPres_AI"). Data extracted from the various sources noted above
may be consolidated and normalized as to data type, size, range, accuracy, resolution, engineering u nits, and any needed correction factors. This data is assigned to an appropriate location within a hierarchical model within the system model building element 306. The hierarchical model may reflect sensor location, type, and function, resulting in assignment of a point code to the data. The present inventors note that data normalization and standardization is an important part of the configuration process according to the present invention, since normalization and standardization enables use of standardized fault detection algorithms from a fau lt equation database (not shown).
[0053] As noted above, the system model building element 306 creates a hierarchical order of the components, equipment, and subsystems within the facility 201. The hierarchical ordering is employed all the way down to each su bsystem, laying out the system type and component hierarchy for each system. This feeds into the fault detection algorithm element 310, which selects from a standard set of fault detection algorith ms those required for coverage in the facility 201 , which resu lts in the development of an initial system model having a list of all the potential filter algorithms that can be applied to the modeled system if all the potential data points existed. The system model is used to represent the su bsystems in the BMS, the components within each subsystem, the connectivity and relation between components in the BMS and components within the subsystems, the location of those devices within the facility 201 , and the operational prog ramming for each component of each su bsystem. For example, each room 202-205 in the facility 201 may have similar components 210- 218 and sensors 233 and 234 that monitor temperature, lig ht, airflow, status, and commands that control air dampers, fans, and heating elements. These components 210-218, however, will fu nction differently depending on the type and location of windows, heat load from su nlig ht, and differing levels of occu pancy. Representing each component 210-218 in the precise sequential
process aligned to its spatially correct placement improves the AFD system's detection accuracy th roug h improved algorith m selection.
[0054] The next step is the creation of "virtual datapoints" 246, which is performed by the virtual data point creating element 308 in order to improve fault detection capabilities. Virtual datapoints 246 are points of measurement that do not exist physically, but which can be accurately modeled based on the known config uration and physical parameters of both the BMS components 210-218 and the arrangement of the components 210-218. These virtual datapoints 246 greatly increase the list of usable fault detection algorithms, and, as a result of this increase fault detection coverage, false-positive indications (i.e., false alarms) are greatly reduced during run time. This data is utilized by the model refining element 312, which reduces the initial system model down to the final system model which consists of the ru nnable algorithms list, i.e., a finalized list of all algorithms that can be executed. Only algorithms that have all required data points available within the system model are executed. For example, if an algorithm requires point codes A, B, and C, and C is a real data point collected from the BMS element 230, and A is a data point created in virtual point creation, but C doesn't exist and couldn't be created th rough point creation, the potential algorithm is removed from the runnable list. Utilization of standardized fault detection algorithms is a distinct and substantial advantage of the present invention over prior art. In prior art AFD systems, fault detection algorithms are either written manually for each unique system config uration or a lesser set of generalized set of fault detection algorithms are applied regardless of system config uration. According to the present invention, however, fault detection algorithms are selected from a centrally maintained and commissioned list of standardized and tested algorithms, reducing the possibility of error, while also greatly improving the speed, accuracy, and completeness of AFD system configuration process. Specific virtual datapoints 246 will be more particularly discussed herein below, with reference to FIGURES 6-7. The present inventors note that the creation of virtual data points 246 according to the present
invention represent a marked improvement over prior art AFD systems, since they enable the use of a wider variety of standardized fau lt detection algorith ms.
[0055] The model refining element 312 utilizes the initially created system model, the normalized and standardized data, and the virtual datapoi nts 246 to yield a base system model that is stored, along with all appropriate configu ration parameters, in the system model data base 314. The system model includes a dataset of fau lt detection algorith ms that will be used by the AFD element 240 to evaluate the component data provided by the facility's BMS element 230.
[0056] The ru n time modeling element 318 uses the base system model stored within the system model data base 314 and other information from the I/O element 302. The data output from the ru n time modeling element 318 is passed to the output logging element 322, which processes and sends the data along for fu rther processing and analysis within the presentation element 326 and for storage in the log data base 324. The process is an iterative embodiment, the output logging element feeds into the fau lt detection correcting and model u pdating element 316, which also takes into account person nel-provided information. If system model improvements or corrections are identified, model adjustments can be initiated automatically th rough updates to the data normalizing element 304, system model building element 306, and/or the system model data base 314, which typically involves associated configu ration parameters. The feedback may be provided at the AFD component 240 itself or via the I/O interface 302 based u pon data transmitted from the analytics server 244.
[0057] Referencing FIGURE 4, a block diag ram 400 is presented showing in put/output interfaces of the in put/output interface element 302 of FIGURE 3. The diagram 400 depicts a streaming data receiver 402 that receives streaming
data such as, but not limited to data from the BMS element 230, data from the meter 229, and meteorological data that may be provided via the analytics server 244. The diag ram 400 also shows a static data receiver 404 that is configu red to receive static data such as, but not limited to, geog raphic data, building plans, installer notes, site su rveys, photog raphs, and energy consumption logs, maintained for system configu ration docu mentation pu rposes. The diag ram 400 fu rther depicts an analytic server transceiver 406 that is coupled to both the streaming data receiver 402 and the static data receiver 404. The analytic server transceiver 406 additionally provides data to the run time modeling element 318, the system model building element 306, and the fau lt detection correcting and model updating element 316.
[0058] In operation, streaming data is provided to the streaming data element 402 from both the BMS element 230 and the analytics server 244. Static data is provided via the analytics server 244. The streaming and static data is employed by the AFD element 240 as is herein described to provide fo r a fau lt detection system that includes automatic selection of fau lt detection algorith ms, synthesis of virtual datapoints, reduction of false alarms via an increase and overlap of fau lt detection coverage, employing nu mber of consecutive sensitivity constraints on non-time based filters, and accou nting for dropped out data within the fau lt detection algorith ms, and normalization and standardization of BMS component data.
[0059] Referring to FIGU RE 5, a flow diagram 500 is presented illustrating a method according to the present invention for generating an initial fault detection config uration for a building management system. Flow begins at block 502, where initial selection of fault detection algorithms is begun for a described facility, such as the facility 201 of FIGU RE 2. Flow then proceeds to block 504.
[0060] At block 504, configuration data for the facility is retrieved from a config uration data set 522. The configu ration data set 522 may include a diverse
set of data from multiple manual and electronic sources, as described above. Flow then proceeds to block 506.
[0061 ] At block 506, the retrieved data is then normalized and standardized so that it can be used to automatically select fault equations from a library of predefined equations. Flow then proceeds to block 508.
[0062] At block 508, a base system model is generated utilizing the normalized and standardized data provided via block 506 and other configuration data via block 504. The base system model represents the BMS components 210-218 within the facility 201 u nder eval uation. In a no n- iterative embodiment the base system model is built in a sing le pass. In an iterative embodiment, the base system model is initially built, and then u pdated as required based u pon review in block 518. In both embodiments, shou ld additional data be provided via the I/O interface 302, the process of generating a base system model will start anew. Flow then proceeds to block 510.
[0063] At block 510, standard fault equations are selected for the base system model generated at block 508. Flow then proceeds to block 512.
[0064] At block 512, one or more vi rtual datapoints are automatically created to su pplement the base system model as a fu nction of missi ng datapoi nts, avai lable datapoints, and component arrangement. The synthesis of vi rtual data points al lows for maximu m fau lt algorith m coverage. Flow then proceeds to block 514.
[0065] At block 514, the ru n nable fau lt algorith m list is developed from the base/u pdated system model. Then flow proceeds to block 520.
[0066] At block 520, a fi nal system model is verified and stored in a system config u ration data base 526. Normalization equations for the data are also stored i n the system config u ration data base 526. The data stored i n the system config u ration data base 526 is the data employed by the AFD element 240 to
process BMS component data du ring real-time operation. As is noted above, the system model can be u pdated with additional i nformation or changes to cu rrent data in puts, which wi ll initiate re-creation of the initial system model. Flow then proceeds to block 516, where the fi nal system model generates outputs.
[0067] At block 516, fi nal system model outputs are passed for review. Flow then proceeds to decision block 518.
[0068] At decision block 518, a review determines if the model requires updating. If so, then flow then proceeds to block 508 where the system model is updated based upon feedback. Otherwise, no update is required and the flow proceeds to block 528, where the method completes.
[0069] At block 520, a final system model is verified and stored in a system config uration data base 526. Normalization equations for the data are also stored in the system configuration data base 526. The data stored in the system config uration data base 526 is the data employed by the AFD element 240 to process BMS component data during real-time operation. As is noted above, the system model can be updated with additional information or changes to current data inputs, which will initiate re-creation of the initial system model. Flow then proceeds to block 528, where the method completes.
[0070] Referring to FIGURE 6, a block diag ram 600 is presented detailing creation of an exemplary synthesized datapoint according to the present invention, as may be created by the AFD element 240 of FIGU RE 2 via the method described with reference to FIGURE 5.
[0071 ] Consider an air plenum 601 that contains a heater 604, a fan 603 that precedes the heater 604 with regard to direction of air flow, a temperatu re sensor 602 preceding the fan 603, and a temperature sensor 602 that follows the heater 604. Measurement of the temperature directly after the fan 603 and before the
heating element 604 may be desired by a selected standardized fault detection algorithm according to the present invention. Such a temperature measurement may be required to improved fault coverage by enabling detection of a leaking heating valve (not shown) for example, but no such physical measuring point exists. There are temperature sensors 602 prior to the fan 603 and at the air outlet from the plenum 601 , however. Accordingly, the AFD element 240 according to the present invention models the temperature change across the fan 603 along with its airflow calculated using fan speed, thus enabling the AFD element 240 to estimate the temperature at a synthesized datapoint 605 at the discharge from the fan 603 and prior to the heating coil 604. This virtual point 605 is used to augment the selection of fault detection algorithms that might otherwise be impossible without the required measuring point 605, in order to detect a faulty valve that is leaking when it is closed. The datapoint 605 represents the calculated temperature value based on thermodynamic principles at that point in the plen um 601 , having been modeled by the system model building element 306. Although this is a simplified example, one skilled in the art can understand that complex environments can be accurately modeled in software, and that this modeling capability generates substantial advantage in both fault detection capabilities as well as improved capability to utilize standardized fault detection algorith ms.
[0072] Attention is now directed to FIGURE 7, where a block diag ram 700 is presented illustrating creation of an alternative synthesized datapoint accordingly to the present invention. In this example, a mixing plenu m 701 is coupled to outside air plen um 703 and retu rn air plen um 704. A first temperatu re sensor 707 is disposed within outside air plen um 703 to measu re outside air temperatu re preceding a first controllable damper 706, and a second temperature sensor 702 is disposed within retu rn air plen um 704 to measu re return air temperatu re preceding a second controllable damper 709. Plen ums 703-704 also have airflow sensors 708 for measu ring airflow with regard to direction of airflow. Measu rement of the temperatu re directly after the mixing of the two air plenu ms
703 and 704 is desired by a selected standardized fau lt detection algorith m according to the present invention to, say, enable detection of an economizer damper reacting improperly to building conditions relative to the outside air conditions. There are temperatu re sensors 702 and 707 prior to the mixing of the two air plenu ms 703 and 704 and airflow rates corresponding to plen ums 703-704 are provided by sensors 708. According ly, the AFD element 240 according to the present invention employs plen u m temperatu res provided by sensors 702 and 707, along with the individual airflow rates provided by sensors 708, to estimate the temperature at a synthesized datapoint 705 after the mixing of the two air plen ums 703-704 within the combined plenu m space 701. As in the example of FIGURE 6, this virtual point 705 is used to aug ment the selection of fau lt detection algorithms that mig ht otherwise be impossible without the required measu ring point 705. The datapoint 705 represents the calculated temperature value based on thermodynamic principles at that poi nt in the plen um 701, having been modeled by the system model bui lding element 306.
[0073] Now referring to FIGURE 8, a flow diagram 800 is presented featuring a method according to the present invention for fault detection algorithm selection and data point synthesis. The diag ram 800 represents the steps taken during config uration of the AFD component 240 in order to select the optimal number and type of fault algorithms. The process of steps shown is iterative and occurs for each set of related components within the BMS. BMS subsystems are often quite complex, and the relationships between components and subsystems may be overlapping. Thus, the present invention provides for a hierarchy of component relationships where each set in the hierarchy is represented by unique sets of fault detection algorithms, allowing for overlap and improvement of fault detection capabilities. Further, one or more BMS component may operate in multiple related sets, and, therefore, be represented multiple times, once for each set.
[0074] Flow begins at block 802, where it is desired to select fault algorithms for the facility 201. Flow then proceeds to block 804.
[0075] At block 804, a su bsystem is selected having interrelated components within the facility 201 and pertinent related and required data is learned through a directed menu driven user inputs. A config u ration data set 822 is accessed to load the subsystem type and layout of components therein. Flow then proceeds to block 806.
[0076] At block 806, the AFD component 240 accesses a component sequence of operations (SOO) data set 824 to load SOO inputs for each component within the selected su bsystem th rough a directed men u driven user input u nique to that subsystem. Flow then proceeds to block 808.
[0077] At block 808, an initial list of standardized fau lt detection algorith ms is automatically selected for the subsystem base on the SOO inputs obtained. Flow then proceeds to block 810.
[0078] At block 810, any datapoints that are not physically available are synthesized automatically where possible and using similar tech niques as is described above. Flow then proceeds to block 812.
[0079] At block 812, any fau lt detection algorith ms which were selected, but for which required datapoints may not be available, are discarded and a ru nnable list of applied fault detection algorithms is generated and added to the system config u ration 822. The applied algorithms list directs the necessary user applied parameter in puts. Flow then proceeds to block 814.
[0080] At block 814, the method completes.
[0081 ] To summarize, based on the selected su bsystem config uration and sequence of operations data in puts, the AFD component 240 creates a potential filter list, which is a list of all the filters that can executed for the facility 201 being modeled, providing that all required datapoints exist in the facility 201.
After creation of the virtual datapoints is complete and added to the system config u ration dataset, the ru n nable filter list is created, which is a list of all the filters that can be executed based on the real datapoints coming in from the BMS component 230 and the synthesized datapoints. If an algorith m requires a datapoi nt that does not exist and cou ld not be synthesized, then the filter cannot be executed and it is removed from the ru n nable filter list.
[0082] Following the process of FIGU RE 8, a list of the synthesized datapoints and the datapoints used in their creation is forwarded to an analyst for evaluation, which may lead to updates to the system model, and which will trigger the recreation of the potential filter algorithm list, virtual datapoints, and runnable algorithm list.
[0083] The AFD component 240 according to the present invention is configured to perform the functions and operations as discussed above. The AFD component 240 may comprise logic, circuits, devices, or application prog rams, or a combination of logic, circuits, devices, or application programs, or equivalent elements that are employed to execute the functions and operations according to the present invention as noted. The elements employed to accomplish these operations and functions within the AFD component 240 may be shared with other circuits, application programs, etc., that are employed to perform other functions and/or operations within the AFD component 240. According to the scope of the present application, application program is a term employed to refer to a plurality of instructions executable by one or more CPUs.
[0084] Portions of the present invention and corresponding detailed description are presented in terms of software, or algorithms and symbolic representations of operations on data bits within a computer memory. These descriptions and representations are the ones by which those of ordinary skill in the art effectively convey the su bstance of their work to others of ordinary skill in the art. An algorithm, as the term is used here, and as it is used generally, is conceived to be a
self-consistent sequence of steps leading to a desired result. The steps are those requiring physical manipulations of physical quantities. Usually, though not necessarily, these quantities take the form of optical, electrical, or mag netic signals capable of being stored, transferred, combined, compared, and otherwise manipulated. It has proven convenient at times, principally for reasons of common usage, to refer to these signals as bits, values, elements, symbols, characters, terms, numbers, or the like.
[0085] It should be borne in mind, however, that all of these and similar terms are to be associated with the appropriate physical quantities and are merely convenient labels applied to these quantities. Unless specifically stated otherwise, or as is apparent from the discussion, terms such as "processing" or "computing" or "calculating" or "determining" or "displaying" or the like, refer to the action and processes of a computer system, a microprocessor, a central processing unit, or similar electronic computing device, that manipulates and transforms data represented as physical, electronic quantities within the computer system's registers and memories into other data similarly represented as physical quantities within the computer system memories or registers or other such information storage, transmission or display devices.
[0086] Note also that the software implemented aspects of the invention are typically encoded on some form of prog ram storage medium or implemented over some type of transmission medium. The program storage medium may be electronic (e.g., read only memory, flash read only memory, electrically programmable read only memory), random access memory magnetic (e.g., a floppy disk or a hard drive) or optical (e.g., a compact disk read on ly memory, or "CD ROM"), and may be read on ly or random access. Similarly, the transmission medium may be metal traces, twisted wire pairs, coaxial cable, optical fiber, or some other suitable transmission medium known to the art. The invention is not limited by these aspects of any given implementation.
[0087] The particular embodiments disclosed above are illustrative only, and those skilled in the art will appreciate that they can readily use the disclosed conception and specific embodiments as a basis for designing or modifying other structures for carrying out the same purposes of the present invention, and that various changes, substitutions and alterations can be made herein without departing from the scope of the invention as set forth by the appended claims.
[0088] What is claimed is:
Claims
1. An apparatus for detecting fau lts of components monitored by a building management system (BMS), the apparatus comprising: an automatic fault detection (AFD) element, cou pled to the BMS, configu red to monitor, in real time, data samples generated by the BMS indicating operative states of the components, and configured to employ said data samples to determine if one or more of the components are faulty, said AFD element comprising: a run time modeling element, configured employ said data samples as inputs to execute one or more fau lt algorithms retrieved from a system configuration model, and config ured to generate outputs to said one or more fault algorithms that indicate if said one or more of the components are faulty; and a fault detection algorithm element, coupled to said system
config uration model, configu red to employ normalized and standardized datapoints representing said data samples to automatically select said one or more fault algorith ms for storage in said system configuration model, wherein said one or more fault algorith ms are selected from a standard fault algorithm data base.
2. The apparatus as recited in claim 1 , wherein said AFD element is also
coupled to one or more energy consumption meters, and wherein said ru n time modeling element additionally employs energy consumption data generated by said one or more energy consumption meters as inputs to said one or more fault algorithms.
3. The apparatus as recited in claim 2, wherein said AFD element is coupled to an analytics server, and wherein said analytics server is configured to provide additional data for use by said fault detection algorithm element in selection of said one or more fault algorithms.
4. The apparatus as recited in claim 3, wherein said additional data comprises meteorological data, a building plan, a site survey, or installer notes.
5. The apparatus as recited in claim 1 , wherein said system config uration
model comprises one or more subsystems of related ones of the
components, and wherein said related ones of the components are tagged according to type, size, and relative location.
6. The apparatus as recited in claim 1 , wherein said AFD element further
comprises: a data normalizing element, configured to generate and store for use by said run time modeling element, equations used to normalize said data samples, along with corresponding properties of said data samples.
7. The apparatus as recited in claim 1 , wherein said AFD element further
comprises: a virtual datapoint creating element, configured to estimate one or more synthesized datapoints that may be required by said one or more fault algorithms du ring execution by said run time modeling element.
An apparatus for detecting faults of components, the apparatus comprising: a building management system (BMS), config ured to control and monitor operative states of the components, and configured to generate data samples of said operative states; an automatic fault detection (AFD) element, cou pled to said BMS, configured to monitor, in real time, said data samples, and configured to employ said data samples to determine if one or more of the components are faulty, said AFD element comprising: a run time modeling element, configured employ said data samples as inputs to execute one or more fault algorithms retrieved from a system configuration model, and config ured to generate outputs to said one or more fault algorithms that indicate if said one or more of the components are fau lty; and a fault detection algorithm element, coupled to said system
config uration model, configured to employ normalized and standardized datapoints representing said data samples to automatically select said one or more fault algorith ms for storage in said system configuration model, wherein said one or more fault algorithms are selected from a standard fault algorithm data base.
The apparatus as recited in claim 8, wherein said AFD element is also coupled to one or more energy consumption meters, and wherein said ru n time modeling element additionally employs energy consumption data generated by said one or more energy consumption meters as inputs to said one or more fault algorithms.
10. The apparatus as recited in claim 9, wherein said AFD element is coupled to an analytics server, and wherein said analytics server is config ured to provide additional data for use by said fault detection algorithm element in selection of said one or more fault algorithms.
1 1. The apparatus as recited in claim 10, wherein said additional data comprises meteorological data, a building plan, a site survey, or installer notes.
12. The apparatus as recited in claim 8, wherein said system configuration
model comprises one or more subsystems of related ones of the
components, and wherein said related ones of the components are tagged according to type, size, and relative location.
13. The apparatus as recited in claim 8, wherein said AFD element further
comprises: a data normalizing element, configured to generate and store for use by said run time modeling element, equations used to normalize said data samples, along with corresponding properties of said data samples.
14. The apparatus as recited in claim 8, wherein said AFD element further
comprises: a virtual datapoint creating element, configured to estimate one or more synthesized datapoints that may be required by said one or more fault algorithms du ring execution by said run time modeling element.
A method for detecting faults of components monitored by a building management system (BMS), the method comprising: monitoring, in real time, data samples generated by the BMS indicating
operative states of the components, and employing the data samples to determine if one or more of the components are faulty, said monitoring comprising: first using the data samples as inputs to execute one or more fault algorithms retrieved from a system configuration model, and generating outputs to the one or more fault algorithms that indicate if the one or more of the components are faulty; and second using normalized and standardized datapoints representing the data samples to automatically select the one or more fault algorithms for storage in the system configuration model, wherein the one or more fault algorithms are selected from a standard fault algorithm data base.
The method as recited in claim 15, wherein said first using comprises: third using energy consumption data generated by the one or more energy consumption meters as inputs to the one or more fault algorithms.
The method as recited in claim 16, further comprising: providing additional data for said second using in selection of the one or more fault algorithms.
The method as recited in claim 17, wherein the additional data comprises meteorological data, a building plan, a site survey, or installer notes.
The method as recited in claim 15, wherein the system config uration model comprises one or more subsystems of related ones of the components, and wherein the related ones of the components are tagged according to type, size, and relative location.
The method as recited in claim 15, further comprising: generating and storing for use by said first using, equations used to
normalize the data samples, along with corresponding properties of the data samples.
The method as recited in claim 15, further comprising: estimating one or more synthesized datapoints that may be required by the one or more fault algorith ms during execution by said first using.
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Families Citing this family (34)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
WO2016101065A1 (en) * | 2014-12-23 | 2016-06-30 | Q-Links Home Automation Inc. | Method and system for determination of false alarm |
US10175686B2 (en) | 2015-10-14 | 2019-01-08 | Honeywell International Inc. | Devices, methods, and systems for a distributed rule based automated fault detection |
CN108351639B (en) * | 2015-11-19 | 2021-08-31 | 开利公司 | Diagnostic system for a chiller and method of evaluating chiller performance |
CN105547730A (en) * | 2016-01-17 | 2016-05-04 | 太原理工大学 | Fault detection system of water-wheel generator set |
US10681027B2 (en) | 2016-01-19 | 2020-06-09 | Honeywell International Inc. | Gateway mechanisms to associate a contractor account |
US10663934B2 (en) * | 2016-01-19 | 2020-05-26 | Honeywell International Inc. | System that retains continuity of equipment operational data upon replacement of controllers and components |
US10545466B2 (en) | 2016-01-19 | 2020-01-28 | Honeywell International Inc. | System for auto-adjustment of gateway poll rates |
US10558182B2 (en) | 2016-01-19 | 2020-02-11 | Honeywell International Inc. | Heating, ventilation and air conditioning capacity alert system |
US9989960B2 (en) | 2016-01-19 | 2018-06-05 | Honeywell International Inc. | Alerting system |
US10429808B2 (en) * | 2016-01-19 | 2019-10-01 | Honeywell International Inc. | System that automatically infers equipment details from controller configuration details |
US10437207B2 (en) | 2016-01-19 | 2019-10-08 | Honeywell International Inc. | Space comfort control detector |
US10216158B2 (en) | 2016-01-19 | 2019-02-26 | Honeywell International Inc. | Heating, ventilation and air conditioning capacity monitor |
JP6350554B2 (en) * | 2016-02-03 | 2018-07-04 | 横河電機株式会社 | Equipment diagnostic device, equipment diagnostic method and equipment diagnostic program |
US10216160B2 (en) | 2016-04-21 | 2019-02-26 | Honeywell International Inc. | Matching a building automation algorithm to a building automation system |
US10146609B1 (en) | 2016-07-08 | 2018-12-04 | Splunk Inc. | Configuration of continuous anomaly detection service |
US10200262B1 (en) | 2016-07-08 | 2019-02-05 | Splunk Inc. | Continuous anomaly detection service |
US10203714B2 (en) | 2016-09-29 | 2019-02-12 | Enel X North America, Inc. | Brown out prediction system including automated validation, estimation, and editing rules configuration engine |
US10291022B2 (en) | 2016-09-29 | 2019-05-14 | Enel X North America, Inc. | Apparatus and method for automated configuration of estimation rules in a network operations center |
US10461533B2 (en) | 2016-09-29 | 2019-10-29 | Enel X North America, Inc. | Apparatus and method for automated validation, estimation, and editing configuration |
US10423186B2 (en) | 2016-09-29 | 2019-09-24 | Enel X North America, Inc. | Building control system including automated validation, estimation, and editing rules configuration engine |
US10566791B2 (en) | 2016-09-29 | 2020-02-18 | Enel X North America, Inc. | Automated validation, estimation, and editing processor |
US10191506B2 (en) | 2016-09-29 | 2019-01-29 | Enel X North America, Inc. | Demand response dispatch prediction system including automated validation, estimation, and editing rules configuration engine |
US10170910B2 (en) * | 2016-09-29 | 2019-01-01 | Enel X North America, Inc. | Energy baselining system including automated validation, estimation, and editing rules configuration engine |
US10298012B2 (en) | 2016-09-29 | 2019-05-21 | Enel X North America, Inc. | Network operations center including automated validation, estimation, and editing configuration engine |
US11281169B2 (en) * | 2017-11-15 | 2022-03-22 | Johnson Controls Tyco IP Holdings LLP | Building management system with point virtualization for online meters |
CN107957949B (en) * | 2017-12-08 | 2020-08-11 | 中广核工程有限公司 | Test method and system for reactor protection system of nuclear power plant |
US11080127B1 (en) * | 2018-02-28 | 2021-08-03 | Arizona Public Service Company | Methods and apparatus for detection of process parameter anomalies |
CN109361650A (en) * | 2018-09-06 | 2019-02-19 | 国网山东省电力公司菏泽供电公司 | A kind of power information system monitoring method |
US20200159376A1 (en) | 2018-11-19 | 2020-05-21 | Johnson Controls Technology Company | Building system with semantic modeling based user interface graphics and visualization generation |
US11927925B2 (en) * | 2018-11-19 | 2024-03-12 | Johnson Controls Tyco IP Holdings LLP | Building system with a time correlated reliability data stream |
CN109933049B (en) * | 2019-03-29 | 2020-10-13 | 国网山东省电力公司费县供电公司 | Power dispatching log fault classification method and system |
CN110428060A (en) * | 2019-06-12 | 2019-11-08 | 南京博泰测控技术有限公司 | A kind of fault information managing method, device and system |
US11762379B2 (en) * | 2019-09-26 | 2023-09-19 | Johnson Controls Tyco IP Holdings LLP | Automatic fault detection and diagnostics in a building management system |
CN112328420A (en) * | 2020-10-26 | 2021-02-05 | 南京燚麒智能科技有限公司 | Method, device and system for detecting equipment fault |
Citations (3)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US20110178977A1 (en) * | 2009-06-22 | 2011-07-21 | Johnson Controls Technology Company | Building management system with fault analysis |
WO2012118550A1 (en) * | 2011-03-02 | 2012-09-07 | Carrier Corporation | Spm fault detection and diagnostics algorithm |
US20140088945A1 (en) * | 2012-09-20 | 2014-03-27 | American Energy Assets, LLC | System and method for an energy management system |
Family Cites Families (26)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US7499842B2 (en) * | 2005-11-18 | 2009-03-03 | Caterpillar Inc. | Process model based virtual sensor and method |
US20080036593A1 (en) * | 2006-08-04 | 2008-02-14 | The Government Of The Us, As Represented By The Secretary Of The Navy | Volume sensor: data fusion-based, multi-sensor system for advanced damage control |
US7957839B2 (en) * | 2006-12-29 | 2011-06-07 | Honeywell International Inc. | HVAC zone controller |
US8346397B2 (en) * | 2008-09-15 | 2013-01-01 | Johnson Controls Technology Company | Airflow adjustment user interfaces |
US8452456B2 (en) * | 2008-10-27 | 2013-05-28 | Lennox Industries Inc. | System and method of use for a user interface dashboard of a heating, ventilation and air conditioning network |
US8600559B2 (en) * | 2008-10-27 | 2013-12-03 | Lennox Industries Inc. | Method of controlling equipment in a heating, ventilation and air conditioning network |
RU2011129703A (en) * | 2008-12-19 | 2013-01-27 | Протектелек Пти Лимитед | PROTECTIVE SYSTEM OF ELECTRIC DISTRIBUTION SYSTEM OF TYPE IT, HAVING A FLOATING SUPPORT CONDUCTOR |
US9606520B2 (en) * | 2009-06-22 | 2017-03-28 | Johnson Controls Technology Company | Automated fault detection and diagnostics in a building management system |
US8731724B2 (en) * | 2009-06-22 | 2014-05-20 | Johnson Controls Technology Company | Automated fault detection and diagnostics in a building management system |
AU2010265883B2 (en) * | 2009-06-25 | 2016-02-11 | Server Technology, Inc. | Power distribution apparatus with input and output power sensing and method of use |
US8606554B2 (en) * | 2009-10-19 | 2013-12-10 | Siemens Aktiengesellschaft | Heat flow model for building fault detection and diagnosis |
US8213074B1 (en) * | 2011-03-16 | 2012-07-03 | Soladigm, Inc. | Onboard controller for multistate windows |
US20130226320A1 (en) * | 2010-09-02 | 2013-08-29 | Pepperdash Technology Corporation | Policy-driven automated facilities management system |
WO2012044946A2 (en) * | 2010-10-01 | 2012-04-05 | Drexel University | Dynamic load modeling of a building's energy consumption for demand response applications |
US20120245968A1 (en) * | 2011-03-21 | 2012-09-27 | Honeywell International Inc. | Building system control and equipment fault and degradation monetization and prioritization |
WO2012158653A2 (en) * | 2011-05-13 | 2012-11-22 | Ietip Llc | System and methods for cooling electronic equipment |
US8819018B2 (en) * | 2011-05-24 | 2014-08-26 | Honeywell International Inc. | Virtual sub-metering using combined classifiers |
US10119718B2 (en) * | 2011-06-20 | 2018-11-06 | Honeywell International Inc. | Methods and systems for monitoring an air filter of an HVAC system |
US9366448B2 (en) * | 2011-06-20 | 2016-06-14 | Honeywell International Inc. | Method and apparatus for configuring a filter change notification of an HVAC controller |
US8892223B2 (en) * | 2011-09-07 | 2014-11-18 | Honeywell International Inc. | HVAC controller including user interaction log |
US9002523B2 (en) * | 2011-12-14 | 2015-04-07 | Honeywell International Inc. | HVAC controller with diagnostic alerts |
US10025337B2 (en) * | 2011-12-16 | 2018-07-17 | Schneider Electric USA, Inc. | Method and system for managing an electrical distribution system in a facility |
US9563182B2 (en) * | 2012-02-06 | 2017-02-07 | Ecorithm, Inc. | Building analysis systems and methods |
US8992074B2 (en) * | 2012-02-17 | 2015-03-31 | Cypress Envirosystems, Inc. | System and method for conducting heating, ventilation, and air conditioning analytics |
US10083255B2 (en) * | 2012-12-14 | 2018-09-25 | Honeywell International Inc. | Equipment fault detection, diagnostics and disaggregation system |
US9395708B2 (en) * | 2013-03-11 | 2016-07-19 | Johnson Controls Technology Company | Systems and methods for adaptive sampling rate adjustment |
-
2014
- 2014-01-24 US US14/162,832 patent/US20140325292A1/en not_active Abandoned
- 2014-01-24 WO PCT/US2014/012955 patent/WO2014178927A1/en active Application Filing
- 2014-01-24 EP EP14704033.1A patent/EP2992389A1/en not_active Withdrawn
- 2014-01-24 WO PCT/US2014/012942 patent/WO2014178925A1/en active Application Filing
- 2014-01-24 WO PCT/US2014/012947 patent/WO2014178926A1/en active Application Filing
- 2014-01-24 US US14/162,853 patent/US20140324387A1/en not_active Abandoned
- 2014-01-24 US US14/162,838 patent/US20140324386A1/en not_active Abandoned
- 2014-01-24 WO PCT/US2014/012938 patent/WO2014178924A1/en active Application Filing
- 2014-01-24 US US14/162,820 patent/US20140325291A1/en not_active Abandoned
Patent Citations (3)
Publication number | Priority date | Publication date | Assignee | Title |
---|---|---|---|---|
US20110178977A1 (en) * | 2009-06-22 | 2011-07-21 | Johnson Controls Technology Company | Building management system with fault analysis |
WO2012118550A1 (en) * | 2011-03-02 | 2012-09-07 | Carrier Corporation | Spm fault detection and diagnostics algorithm |
US20140088945A1 (en) * | 2012-09-20 | 2014-03-27 | American Energy Assets, LLC | System and method for an energy management system |
Non-Patent Citations (2)
Title |
---|
WANG S ET AL: "AUTOMATIC SENSOR EVALUATION IN BMS COMMISSIONING OF BUILDING REFRIGERATION SYSTEMS", AUTOMATION IN CONSTRUCTION, ELSEVIER SCIENCE PUBLISHERS, AMSTERDAM, NL, vol. 11, 1 January 2002 (2002-01-01), pages 59 - 73, XP001093190, ISSN: 0926-5805, DOI: 10.1016/S0926-5805(01)00050-4 * |
XIAO F ET AL: "A diagnostic tool for online sensor health monitoring in air-conditioning systems", AUTOMATION IN CONSTRUCTION, ELSEVIER SCIENCE PUBLISHERS, AMSTERDAM, NL, vol. 15, no. 4, 1 July 2006 (2006-07-01), pages 489 - 503, XP028001225, ISSN: 0926-5805, [retrieved on 20060701], DOI: 10.1016/J.AUTCON.2005.06.001 * |
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WO2014178927A1 (en) | 2014-11-06 |
WO2014178926A1 (en) | 2014-11-06 |
US20140325291A1 (en) | 2014-10-30 |
US20140324386A1 (en) | 2014-10-30 |
US20140325292A1 (en) | 2014-10-30 |
WO2014178925A1 (en) | 2014-11-06 |
EP2992389A1 (en) | 2016-03-09 |
US20140324387A1 (en) | 2014-10-30 |
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