WO2018022627A1 - Cloud device system - Google Patents
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- WO2018022627A1 WO2018022627A1 PCT/US2017/043742 US2017043742W WO2018022627A1 WO 2018022627 A1 WO2018022627 A1 WO 2018022627A1 US 2017043742 W US2017043742 W US 2017043742W WO 2018022627 A1 WO2018022627 A1 WO 2018022627A1
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L12/00—Data switching networks
- H04L12/28—Data switching networks characterised by path configuration, e.g. LAN [Local Area Networks] or WAN [Wide Area Networks]
- H04L12/46—Interconnection of networks
- H04L12/4604—LAN interconnection over a backbone network, e.g. Internet, Frame Relay
- H04L12/462—LAN interconnection over a bridge based backbone
- H04L12/4625—Single bridge functionality, e.g. connection of two networks over a single bridge
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L41/00—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
- H04L41/08—Configuration management of networks or network elements
- H04L41/0803—Configuration setting
- H04L41/084—Configuration by using pre-existing information, e.g. using templates or copying from other elements
- H04L41/0843—Configuration by using pre-existing information, e.g. using templates or copying from other elements based on generic templates
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06F—ELECTRIC DIGITAL DATA PROCESSING
- G06F9/00—Arrangements for program control, e.g. control units
- G06F9/06—Arrangements for program control, e.g. control units using stored programs, i.e. using an internal store of processing equipment to receive or retain programs
- G06F9/44—Arrangements for executing specific programs
- G06F9/445—Program loading or initiating
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- G—PHYSICS
- G06—COMPUTING; CALCULATING OR COUNTING
- G06N—COMPUTING ARRANGEMENTS BASED ON SPECIFIC COMPUTATIONAL MODELS
- G06N20/00—Machine learning
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L12/00—Data switching networks
- H04L12/28—Data switching networks characterised by path configuration, e.g. LAN [Local Area Networks] or WAN [Wide Area Networks]
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L41/00—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
- H04L41/02—Standardisation; Integration
- H04L41/0246—Exchanging or transporting network management information using the Internet; Embedding network management web servers in network elements; Web-services-based protocols
- H04L41/0273—Exchanging or transporting network management information using the Internet; Embedding network management web servers in network elements; Web-services-based protocols using web services for network management, e.g. simple object access protocol [SOAP]
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L41/00—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks
- H04L41/16—Arrangements for maintenance, administration or management of data switching networks, e.g. of packet switching networks using machine learning or artificial intelligence
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L63/00—Network architectures or network communication protocols for network security
- H04L63/10—Network architectures or network communication protocols for network security for controlling access to devices or network resources
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L67/00—Network arrangements or protocols for supporting network services or applications
- H04L67/01—Protocols
- H04L67/12—Protocols specially adapted for proprietary or special-purpose networking environments, e.g. medical networks, sensor networks, networks in vehicles or remote metering networks
- H04L67/125—Protocols specially adapted for proprietary or special-purpose networking environments, e.g. medical networks, sensor networks, networks in vehicles or remote metering networks involving control of end-device applications over a network
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L67/00—Network arrangements or protocols for supporting network services or applications
- H04L67/01—Protocols
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- H—ELECTRICITY
- H04—ELECTRIC COMMUNICATION TECHNIQUE
- H04L—TRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
- H04L67/00—Network arrangements or protocols for supporting network services or applications
- H04L67/01—Protocols
- H04L67/02—Protocols based on web technology, e.g. hypertext transfer protocol [HTTP]
Definitions
- a Cloud Device is a network-connected Cloud-enabled software service node representing the internal process flow as a machine-state or combination of machine- states.
- the present embodiments provide methods and techniques that enable creation and then replacement of a physical device or a plurality of devices on a connected network with a fully functional standalone software service application programming interface (API) or a combination of plurality of software services APIs, that work as at least one remote Cloud Device or a plurality of Cloud Devices.
- API application programming interface
- Another embodiment provides techniques that enable embedding of at least one software process or an application, or a plurality of processes or applications, inside a fully functional standalone software services API, or a combination of plurality of software services APIs, that function as a remote Cloud Device or a plurality of Cloud Devices.
- Another embodiment provides an
- Cloud-enabled network nodes can be transported or transmitted across machine boundaries or software applications processes, and are Operating System (OS) agnostic.
- OS Operating System
- these triggers provide machine- state- altering mechanisms in a Cloud Device to provide a novel and unique approach for dynamic discovery, provisioning, management and operation of a Cloud Device or a plurality of the Cloud Devices as machine-state transitions.
- Cloud enabled network devices enable the definition and achievement of a set of calibrations of environmental, health and physical standards, in its singularity or a plurality, that represent a myriad of healthy living conditions.
- a Cloud Device with its machine-state reflecting the current calibration of various environmental factors can represent one or a
- Cloud-enabled trigger nodes and machine- states, thereby creating a new and unique Cloud Device that, in effect, causes state transitions in and of itself or through other Cloud enabled network nodes that, in turn, can generate machine- state- altering actions to pass onto various other Cloud-enabled network nodes representing environment controlling equipment, thus bringing about a change in the calibration of various environmental factors to conform with yet another set of Cloud-enabled network nodes with machine states that represent computer models regarding living conditions.
- a Thing may be, for example: a person with a wearable device with a built-in sensor or a plurality of sensors, a collection of physical sensors in a home security system, an automobile with a built-in location sensor or a tire pressure sensor, a software program running as a service, or any other natural or man-made object that can be assigned an IP address and provided with the ability to transfer collected data over a network.
- IP addresses the first version of IOT
- computers have increased computing power in inverse proportion to physical size, and this has led to IOT becoming mainstream.
- the general industry has not realized the concept that IOT leverages the computing power of the Cloud and becomes even more powerful in what it can do, on its own, even after extracting all of the computing power that can be utilized inside that Thing.
- IOT is the convergence of interconnected sensors comprising of transducers and the accompanying micro-controller and wireless technologies; this can include smartphones, tablets, laptops, PCs, wearables, data collectors, a software program running as a service, or a data-ingesting Cloud with the ability to store and compute unstructured data along with a network connected controller for transmitting actions to third party systems or equipment.
- the embodiments described herein provide methods and techniques for a unique and innovative approach that creates an ability to either replace physical aspects of any and all of the above components or functionalities of an IOT with Cloud-enabled software services, or generate brand new services that further this convergence and tear down the silo walls between Mobile Apps, Application Server Software, Hardware, Middleware, etc., to deliver data into a horizontal Cloud comprised of disparate Cloud-enabled services thereby representing a single, seamless offering.
- An aspect of the present embodiments provides a process that allows unstructured machine-generated data to be stored, analyzed, and computed in a way that was not possible before; and as a consequence, this provides an opportunity to define and build new markets and explore and monetize the business opportunities therein.
- the present embodiments define a Cloud Device as a software service representing partial or complete functionality of a network node in a computer network.
- This capability provides one skilled in the art with the ability to replace a physical device on a connected network, a software program, or a plurality of these programs running on a single or plurality of devices, with a software program (or an application) running as an API-accessible software service that mimics the entire functionality provided by the software program (application), physical device, or plurality of physical devices, with 100% compatibility.
- This provides the capability to combine and then run a plurality of these services on a single physical device as opposed to running multiple physical devices; this has the benefit of reducing network 10 clutter, thereby significantly improving throughput.
- This unique approach creates a myriad of possibilities and opportunities for a new generation ecosystem that can use Cloud Devices, supported by the Cloud, thereby adding new features to the ecosystem not possible before, such as data normalization from disparate sources for data ingestion into the Cloud, dynamic discovery and configuration of Cloud Devices, dynamic provisioning and customization of Cloud Devices, remote administration and management, hierarchical- (role-) and location-based data access, acquisition and transmission, all with encryption.
- FIG. 1A and FIG. IB are schemes of a traditional IOT layout.
- FIG. 2 is a scheme of a traditional IOT ecosystem as an IOT hub.
- FIG. 3 is a scheme depicting an embodiment of an enterprise and consumer building structure service.
- FIG. 4 is a flowchart showing an embodiment of a space configuration flow for servicing.
- FIG. 5 is a flowchart depicting an embodiment of a space configuration flow for floor plan analysis.
- FIG. 6 is a flowchart of an embodiment of an IOT device authentication.
- IOT in its truest sense, is an ecosystem that encompasses and connects all of these devices individually or as embedded as part of another device (equipment, appliances, etc.), along with controller functions that act as a separate device or is an embedded part of a larger device.
- This ecosystem architecture is extremely complex and challenging to build, maintain, and manage.
- IOT ecosystems are the collections of devices that collect data from the indoor or outdoor environment or from portable and wearable devices that users carry around with them (data producers); or provide output that can be consumed by one of the sensory modalities of a human being, such as a physical display, audio speaker, or a device that performs one of the predetermined mechanical or electrical functions (data consumers).
- data producers and data consumers lie various types of intermediary devices, such as data collectors, routers, action controllers, gateways, computing engines, storage mechanisms, relays, and switches, just to name a few.
- each device has a specialized physical connector that may or may not be compatible with another; devices currently make use of a myriad of network connection protocols, such as, WiFi, MQTT, Ethernet, LPBT, Cellular, 3G, 4G, LTE, any and all of which may have interconnectivity issues.
- network connection protocols such as, WiFi, MQTT, Ethernet, LPBT, Cellular, 3G, 4G, LTE, any and all of which may have interconnectivity issues.
- each device usually requires a separate power source, which, in the end, creates a mangled mesh of wires and requires enormous amounts of power with a high cost of maintenance. Additionally, these many devices may have data models that may be proprietary, thereby creating conflict with other devices in the ecosystem.
- the sensors for the IOT market have matured over the past few years due to the multifold increase in computing power that has provided an opportunity to embed sensors or "smart sensors", as they are called, into equipment of all sizes: from the largest ocean liners to tiniest of wearables devices to even micro-sensors in environmental cleaning equipment.
- This increase in computing power is further complemented by a robust mobile data network.
- Leading players in the mobile marketplace are expecting a renaissance in the form of over a billion mobile devices with multiples of trillions of data points being generated by their use.
- Various embodiments described herein provide methods and techniques to create a single seamless ecosystem at one or a plurality of locations for dynamic discovery, provisioning, management and operation of a network resource using an event, data synchronization, state transition, configuration, device density, orientation, location, and time based scheduler as state controlling triggers.
- the components in an IOT system can be broadly categorized as Data Producer (DP), Data Collector (DC), Data Transporter (DT), Data Ingestor (DI), Data Controller (DN), Action Executor (AE), and Message Notifier (MN).
- DP Data Producer
- DC Data Collector
- DT Data Transporter
- DI Data Ingestor
- DN Data Controller
- AE Action Executor
- MN Message Notifier
- methods and techniques describe a unique approach to create a fully functional standalone software service with an API for external clients to access the service as a network-enabled software service node, thereby enabling the deployment in the Cloud as a Cloud Device.
- the main difference between a Cloud Device and a traditional standard software service is that the Cloud Device, on its own, implements only a limited-to-partial, lightweight functionality provided by a physical device, running in a self- contained OS container, such as Docker.
- the rest of the needed functionality, which requires robust computing, is taken away from the Cloud Device and implemented on the backend Cloud infrastructure.
- the data is then accessed by the Cloud Device via a low latency Cloud Client Access API (CAPI) that is internal to the Cloud Device and inaccessible to the external client except where such functionality is implemented purposefully for additional benefits to the IOT ecosystem.
- CAI Cloud Client Access API
- Certain embodiments exemplify in detail this low latency CAPI access mechanism that is implemented by using an event-based mechanism that uses a TCP/IP socket.
- the Cloud Device connects to the backend Cloud by using this dedicated TCP/IP socket or a socket over http or through a low latency responsive REST (representational state transfer) API.
- REST representational state transfer
- Only a context switching event-based backend Cloud can support this kind of low latency functionality required to partition the functionality into two distinct processes: one in the Cloud Device and the other on the backend Cloud.
- methods and techniques make use of this low latency connection, and enable Cloud Devices that run on significantly reduced computing power and memory requirements as compared with known systems.
- the embodiments provide methods and techniques that enable Cloud Devices that can replace any of the physical devices connected to a network, such as Data Producer (DP), Data Collector (DC), Data Transporter (DT), Data Ingestor (DI), Data Controller (DN), Action Executor (AE), and Message Notifier (MN).
- DP Data Producer
- DC Data Collector
- DT Data Transporter
- DI Data Ingestor
- DN Data Controller
- AE Action Executor
- MN Message Notifier
- business context may justify embedding the functionality of a plurality of physical devices, and the techniques described herein enable this approach.
- a self-contained OS container runs on a more traditional OS and hardware that has the capacity to run a plurality of these Cloud Devices inside of a single OS space on a single physical machine.
- Cloud Devices make internal use of machine- states to represent behavior to internal and external actions or triggers from other Cloud Devices or third party systems.
- Self- or third party-generated triggers are the most common way for Cloud Devices to communicate with one another.
- the present embodiments separate the full- functional specifications of a physical device into two distinct software programs running in separate process spaces: the lightweight Cloud Device supported by the massive computing capacity of the Cloud backend.
- the lightweight Cloud Device supported by the massive computing capacity of the Cloud backend.
- methods and techniques make use of the massive computing and storage power of the backend Cloud to empower the low powered Cloud Devices to be more powerful, more economical to operate, vastly durable, and more functionally capable than what they would be in a
- the present embodiments provide a unique approach for dynamic discovery, provisioning, management, and operation of Cloud
- these techniques allow for the dynamic runtime update of, for example, firmware, software, business rules, machine learning algorithms, action maps, and computer generated data models that control the state transitions of various services based upon both external and internal inputs.
- a Cloud Device can operate in the context of: a self-contained embedded OS container; or as one of the processes in an operating system (OS) of a physical machine; or as a process running in a separate Virtual Machine (VM).
- a Cloud Device on its own or in plurality, can support one or more network protocols at the same time for communication between various Cloud Devices.
- these Cloud Devices have the ability to run on any networked computing device with an OS that supports the Cloud Device container.
- Cloud Devices can communicate with each other via wired or wireless channels using any standard transport protocol, for example, Ethernet, Wi-Fi, Bluetooth, Bluetooth LE, ZigBee, MQTT, Bacnet, etc.
- FIG. 1A and FIG. IB show an example of a current, traditional building environment for building automation.
- FIG. 1A shows a typical IOT ecosystem setup for a building environment wherein the building environment can be an office workspace or a single-family home dwelling.
- the setup consists of the following: plurality of sensor devices 002 through 003, plurality of stationary, portable and wearable consumer devices, appliances, heavy duty equipment 005, 006, and 007, together acting as data emitters 001; data accessories 021 that either output notifications to the consumer in some form of an output that appeals to the sensory modality of a human being, or interact with some form of a singular action or a plurality of actions as instructions to be executed by an electronic or mechanical actions by external devices 032-035, collectively referred to as external devices 031 connected to the ecosystem; a gateway device 041 which provides a network connection facility for all components in the ecosystem to the backend system 071 ; protocol specific collector devices 052-055, collectively referred to as collector devices
- a generic user data flow has data emitters 001 emit data to a singular or a plurality of collector devices 051, which in turn, either transmit the data to the backend system 071 using the Gateway device 041, or alternatively, to a controller device 031 that is located locally.
- data emitters 001 connect directly to the backend system 071 for storage and/or directly to the accessories 021 that are connected locally to the gateway device 041.
- accessories 021 may act as both a data emitter 001 and as a data display accessory component 021, on the data collector 001 front; some devices currently offer a function wherein a single device is able to collect data from various protocols in a single device and therefore acts as both the collector 051 and the controller 031, however, no universal standard exists in the market today.
- Some systems do provide storing and reporting functionality via the Cloud via a web and/or an App client 100.
- FIG. IB provides additional details of this example.
- the methods and techniques described herein provide a unique set of methods and techniques to define, model and implement a traditional IOT ecosystem as an IOT hub, which is comprised of a single Cloud Device or a plurality of connected Cloud Devices for building/home automation.
- building/home automation can mean a myriad of things that pertain to various configurations and environments, as well as combinations thereof.
- the methods and techniques described herein provide for a unique approach that with minimal effort defines, models, and then implements these varied configurations using a single software application by using configurable parameters programmed through an application API.
- the methods and techniques described herein allow for machine learning algorithms to automatically create, configure, and deploy optimal configurations of an IOT ecosystem for a building/home, based on the physical characteristics of a given subject
- Enterprise building structures can be, for example, shops, malls, commercial office spaces, concert and event halls, hospitals, warehouses, community environments, etc.
- consumer home structure can be, for example, a residential building structure, such as single and multi-family homes, apartment complexes, community living facilities, etc.
- a single application or a software configuration of the application can serve both segments, the enterprise and the consumer, typically referred to herein as Building Structures, as exemplified by the embodiment depicted in FIG. 2, which represents combinations of a singular or a plurality of Cloud Devices (i.e., at least one Cloud Device), thereby creating a unique IOT ecosystem for all facets of automation such as, but not limited to, comfort control, healthy living standards compliance, security, power consumption efficiency, unique custom controls, etc.
- various components of the IOT ecosystem require services of various kinds, such as, but not limited to, design, configuration, installation, post installation, ongoing maintenance, repair, optimal configuration and conformance services that control and conform various environmental factors to building standards for comfort and healthy living.
- Certain embodiments provide a unique approach along with the methods and techniques that enable the replacing of physical devices, protocols or standards with a single low-powered device running a singular or a plurality of Cloud Devices as depicted in FIG. 2.
- creating low-powered lightweight Cloud Devices powered by the compute and storage power of the backend Cloud to replace various physical components of a traditional IOT ecosystem such as, collectors, controllers, accessories (051, 031, and 021 in FIG. 1A, respectively), among other components and services makes the complex IOT ecosystem extremely easy to design, implement, deploy, configure and maintain.
- Cloud Devices that are capable of providing additional functionality that does not currently exist in the marketplace: the ability to service certain aspects of the IOT ecosystem with minimal to no manual intervention.
- This functionality requires the Cloud Devices to posses a massive compute and storage power that is not possible with traditional physical devices that cannot provide this functionality locally; current devices do not posses massive compute and storage power locally to run self diagnosing or to schedule routines that first analyze the data points and then apply various rule based and machine learning algorithm derived actions.
- Cloud Devices with their low latency connection to the backend Cloud behave as though they possess the massive compute and storage power locally even though they do not.
- This unique and novel approach eliminates the need to acquire, connect and deploy separate devices, which can only individually service one aspect of the IOT ecosystem.
- Functionally, transferring the heavy computing functionality to the Cloud makes these Cloud Devices, although more lightweight in comparison to their physical counterparts, even more powerful.
- An example of this unique approach is when we allow for the Cloud Devices to access machine learning algorithms for rule based learning and create an action framework for all facets of the IOT ecosystem from the backend Cloud; with the Cloud Devices' low latency, they can exhibit the behavior of having the machine learning algorithms appear resident even though they are located on the backend Cloud.
- a physical machine without the low latency connection to the backend Cloud that contains the client functionality interface is incapable of executing machine learning algorithms locally.
- FIG. 2 Making use of a singular Cloud Device or a plurality of these Cloud Devices in a traditional IOT ecosystem is represented in FIG. 2. As compared to the mangled mess of connections and rigid physical devices, FIG. 2 depicts the use of the Cloud Devices, which minimizes and simplifies the implementation, installation and maintenance of such IOT ecosystem.
- the IOT hub has a Cloud Device, "Action Event Dispatcher” (AED).
- AED Application Event Dispatcher
- the backend Cloud is able to create or receive a list of tasks to be executed in response to a user interaction or a trigger that is generated because of an external or internal machine event, data synchronization, state transition, configuration, device density change, device orientation change, location change and/or a time based scheduler event.
- AED is able to convert the received or newly created tasks and change them into machine instructions to be dispatched to the backend systems through one of the controller Cloud Devices, such as bacnet, HVAC, HUE, custom controller, etc.
- AED sends a machine instruction or a plurality of instructions as state altering triggers to the desired Cloud Device controller, which then takes the instructions and executes routines that are internal to it; however, these internal actions can affect third party systems connected to the Cloud Device.
- the Cloud backend is able to receive, normalize and store data from third party interfaces in the storage. Once in the data store, the application can interact with the data as if it was created natively within the system, and the application is able to perform any type of operations on it and generate machine state altering triggers from it.
- the Application has a Cloud Device that resides in the IOT Hub and represents the local compute component.
- This is a miniaturized version of its larger counterpart, again, implemented using a Cloud Device that resides on the Cloud backend.
- IOT Hub is built to account for the loss of connectivity to the Cloud. In such an instance, a local compute and storage engine would kick in and act as the end point for issuing commands.
- the local compute Cloud Device residing in the IOT Hub ecosystem is constantly in communication with its Cloud Device counterpart on the server side.
- Computer cluster with its massive compute and storage power is able to create calibration curves, drift correction curves for individual devices, and then dynamically push these rules, updates and enhancements to the local compute on the IOT Hub and then onto the devices attached to the IOT Hub locally.
- certain embodiments allow for remote devices connected to the IOT Hub locally to be visible and accessible as local devices for the Cloud Device representing the server side compute residing on the backend Cloud.
- Each IOT Hub upon activation, through a session managed authentication handshake as depicted in FIG. 6, is able to create a unique channel with a unique channel ID for communication with the backend Cloud (see FIG. 3).
- the backend server Cloud is able to maintain an unlimited number of unique IOT Hub specific communication channels. In certain embodiments, this unique ID based communication channel allows for deploying and identifying the IOT hub as a backup for the primary IOT Hub.
- both the primary and the secondary Hubs can be in an online mode at the same time without having to account for any additional functionality; this is possible only using a data replication mechanism on the backend Cloud that is communicating and interacting with the Cloud Devices, as opposed to actual physical devices in a traditional setup, which are improved upon by the present embodiments.
- the Cloud backend has a full-fledged calendar and scheduling functionality available in the form of a Cloud Device.
- methods and techniques make use of the Cloud Device calendar functionality to schedule events and calendars specific to the Hub itself or to an individual device, including Cloud Devices built for User Interface Actors, thereby allowing for scheduling both human and physical resources when required.
- Some of the Cloud Device controllers such as barnet, allow a limited amount of functionality as to the schedule of the devices that are registered using the barnet protocol.
- methods and techniques can be used to wrap these devices inside of a Cloud Device; then using the full-fledged scheduling functionality of the Cloud Device, we can fully sync with the standard scheduling functionality provided by the barnet device. A traditional device without this wrapper is incapable of doing this sync.
- the same functionality may be achieved by putting the device inside of a barnet capable device, however, such a solution is extremely cost prohibitive and impractical to scale at any Cloud level.
- FIG. 3 depicts an IOT Hub supporting a generic building type with relation to area measurements, zones, device heat-map, structure heat-map, geolocation, orientation, user roles, and session management.
- Certain embodiments describe the methods and techniques that provide a unique approach for creating Cloud Devices that form the foundation of the servicing aspect of the IOT ecosystem by leveraging underlying services provided by the backend Cloud, i.e., the need to service, maintain, and monitor the IOT Hub.
- These services can be as follows, but are not limited to: a platform and Operating System; an agnostic chat/text messaging service to send out alerts or notifications to the consumers via an interactive chat message interface thereby allowing for consumers to interact with the alerts or notifications without switching to a dedicated Application; an automatic ticket generation service for reporting erroneous conditions, such as electrical or technical breakdowns, equipment failures; the delivering of notifications and alerts that are triggered and generated by a rule based algorithms; an error preventive action ticket generation service; an automatic ticket generation service for replenishing supplies for various accessories and equipment; notifications and alerts service to deal with drift and automatic corrections; the recalibration for drift correction alerts and updates;
- Certain embodiments provide techniques and methods that allow for the implementation of these example services as they are programmed into Cloud Devices by leveraging the messaging service provided through an API to the users of the IOT Hub. This interface can be accessed locally from the IOT Hub or directly from the Internet (Cloud), as depicted in FIG. 3.
- the core components of the IOT ecosystem as depicted in FIG. 3 are common to both the enterprise and the consumer environment spaces; the difference between the two is the User Interface actors needed for the servicing aspect of the two environments, which could't be more different from one another.
- the servicing aspect of these two disparate environments is made extremely simple to implement and maintain by merely adding yet another type of individual Cloud Device in the form of User Interface actors.
- Capturing the entire functionality of the consumer interaction within the IOT ecosystem can be defined by the role they play in the ecosystem, such as, but not limited to, home owner, head of the household at home, family member, real estate company owner, real estate agent, building supervisor, building owner, building administrator, hotel concierge, human resources personnel in a corporate office building setting, etc.
- a parameterized based API is provided to further customize these generic Cloud Devices to conform to any additional specific rules for one of the above mentioned roles.
- new roles can be created or defined as new Cloud Devices.
- methods and techniques further provide the ability to create groups or subgroups of users for managing extremely large user/role numbers. This is an extremely useful feature that allows for the allocation and management of hierarchal data access permissions to read/write data.
- Certain embodiments provide techniques and methods that allow for consumers or users attached to Cloud Devices to customize or configure user roles to access the session management part of the Cloud Device. This is a powerful feature, making the Cloud Device system location agnostic (web/App client or a server), and therefore allowing the ability to dynamically grant, revoke, or customize user permissions, synchronize data between the web/App client and persistent storage on the server, and deliver notifications and alerts, among other things.
- Certain embodiments provide techniques and methods that control the ability to service various types of building structures/environments, including but not limited to, the enterprise and the consumer environments. This is done by first treating any building structure as a single contiguous space, regardless of the size or the characteristics of the building structure or any designated open space. Then depending on the size of the building structure or open space, it is broken down into smaller spaces called Zones as shown in FIG. 3.
- a given Zone can have a standalone IOT ecosystem of its own or multiple Zones that share a single IOT ecosystem; the determination of this is dictated by a multitude of factors, such as cost, type of space (hospital room, kitchen in a restaurant or a garbage room for a large building), etc.
- certain embodiments provide techniques and methods that make use of machine learning algorithms and rule based expert systems that enable the consumer of the application to upload a floor plan for any building structure or any open environment location into the application using any device agnostic interface.
- the backend Cloud then analyzes the floor plan or open space specifications and then builds a Cloud Device that represents said building structure or open space as a customized Cloud Device.
- the machine learning algorithm then works in conjunction with the product catalog to generate proprietary tags for an optimal IOT ecosystem that is customized for the uploaded building and/or space.
- the backend Cloud then creates a sensor package configuration by selecting appropriate sensors that match the tags created specifically for the optimal configuration along with suggestions for other optional accessories, equipment and appliances (again using appropriate tags).
- a set of characteristics, configurations, and physical locations are determined for single or multiple devices (i.e., at least one device) connected via a computer network.
- a set of requirements for discovering and provisioning one or more networked connected devices are then identified.
- a set of policies and a set of best practices will then be used to identify an optimum configuration and/or physical location of the device for provisioning one or more of said devices on the network according to the set of requirements.
- a plan is generated that indicates a data flow through which the set of computing resources that minimizes the potential for error in provisioning and configuring one or more of the devices on the network.
- a set of static and transient physical locations of the devices is used in configuring and determining an optimal and permanent final physical location of the device for optimal operation and maintenance of the provisioned and configured single or multiple devices for the purposes of obtaining highly accurate and precise data points at a maximum throughput.
- a set of time- scheduled based configuration policies and a set of best practices is used in the operation and maintenance of the provisioned and configured device(s), for optimal and efficient operation of the connected device(s).
- multiple sets of alternate physical device locations and orientation policies are used in locating and relocating said devices to utilize alternate physical locations for highly accurate and maximum throughput for the devices being configured.
- these network protocol agnostic devices can change their appearance on a network, such as from being an active to de-active, from being unregistered to registered, or from being unauthenticated to authenticated.
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US10873503B2 (en) | 2016-07-25 | 2020-12-22 | Ajay JADHAV | Cloud device system |
US20240340217A1 (en) * | 2021-12-21 | 2024-10-10 | Elisa Oyj | System and method for optimizing fault detection in internet of things network |
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CN111857786A (en) * | 2020-06-10 | 2020-10-30 | 华帝股份有限公司 | Firmware upgrading method and system based on cloud |
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US20150169340A1 (en) * | 2013-12-18 | 2015-06-18 | Telefonaktiebolaget L M Ericsson (Publ) | System and method for virtualizing a remote device |
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US10873503B2 (en) | 2016-07-25 | 2020-12-22 | Ajay JADHAV | Cloud device system |
US20240340217A1 (en) * | 2021-12-21 | 2024-10-10 | Elisa Oyj | System and method for optimizing fault detection in internet of things network |
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AU2017301617B2 (en) | 2021-11-18 |
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US10873503B2 (en) | 2020-12-22 |
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