The present disclosure pertains to energy management and control. Particularly, the disclosure pertains to demand response events in energy management and control.
The disclosure reveals management and monitoring of automated demand response in a multi-site enterprise. The approach may provide awareness of upcoming demand response events, monitoring an actual response to a demand response event, analysis of energy management and control system performance and cost benefits of automated demand response program participation, an ability to opt-out of a demand response event, and management and control of the demand response strategy by not just defining the load shed strategy but also deploying the load shed strategy to each site. For management and monitoring of automated demand response to be efficient and economical, solutions may need to be available at the enterprise level. At the enterprise level, the automated demand response supervisor may be enhanced to add management and monitoring functionality. The added capabilities may include message exchange with the site-level automated demand response service to enable management and monitoring activities, support for user interfaces that allow event monitoring and enable management actions such as opting-out of an event, and integration of a batch service to facilitate bulk updates of a demand response strategy across the enterprise. At the site level, the new functionality may be an extension to the automated demand response service. The added capabilities may consist of a message exchange with the enterprise-level automated demand response supervisor service to facilitate management and monitoring activities, and an event response mechanism and user interface that enable a management decision to opt-out an event. The new capabilities may allow the two services to exchange messages related to automated demand response activity. Messaging may facilitate a shift of demand response monitoring and management to the enterprise level. It is no longer necessary to perform these tasks on a site-by-site basis. Automated demand response may be a platform for achieving more reliable and consistent performance of demand response programs by removing the need for human intervention.
a is an example program of a sample automated demand response event;
b is another example program of a sample automated demand response event;
Patent application Ser. No. 13/016,265 entitled “An Approach for Managing Distribution of Automated Demand Response Events in a Multi-Site Enterprise”, and patent application Ser. No. 13/016,181 entitled “An Approach for Normalizing Automated Demand Response Events in Energy Management and Control Systems”, may be relevant to the present application.
A first approach may be for normalizing automated demand response events in energy management and control systems. Automated demand response (auto DR) may be a platform for achieving reliable, consistent performance of demand response programs by removing a need for human intervention. Several issues may be encountered when implementing auto DR. First, there may be a wide array of electricity providers, energy operators, independent system operators (ISOs), and aggregators (i.e., energy entities). Each of these entities may communicate with the energy management and control system (EMCS) using a different communication protocol and/or data format. Second, in a multi-site enterprise, sites may be distributed across a large geographic area. As a result, the enterprise may be serviced by, for example, multiple electricity providers. Implementing auto DR across the enterprise may necessitate supporting the auto DR system of each provider.
Also, supporting the data formats of multiple auto DR systems may increase the complexity and cost of deploying a demand response strategy across the enterprise. Any variation in data content may require customization of the interface to the demand response strategy. As a result, the enterprise should support a custom site configuration for each unique data format.
Portions of the approaches and/or apparatus noted herein may be referred to as systems, subsystems, entities, mechanisms, modules, and/or the like.
The first approach may be for normalizing the auto DR events of disparate communication protocols and data formats. Support for auto DR events may be provided by an auto DR service. The service may include a processing engine for each unique protocol or data format. Each processing engine may provide a communication mechanism for receiving and acknowledging auto DR events and a mechanism for transmitting EMCS feedback regarding load shed results.
When event data are received, they may be normalized into a standard format which can be utilized by the EMCS to initiate a preprogrammed demand response strategy. Normalizing the data may allow the enterprise to define a standard demand response strategy which can be deployed to any site, regardless of the auto DR system servicing the site. Using the auto DR service with its normalized event information, standard demand response strategies may be developed. These standard strategies may then be deployed across an entire multi-site enterprise regardless of the auto DR system provider servicing a particular site. There is no necessary need to modify the demand response strategy because the auto DR service may handle the normalization of the auto DR system's event data.
Normalization may resolve the issues faced when implementing support for automated demand response. The complexities of interfacing with the numerous auto DR systems encountered by a multi-site enterprise may be eliminated; any protocol or data format may be integrated into the auto DR service through a processing engine. The development and maintenance costs associated with deploying and supporting demand response strategies may be reduced; a standard set of demand response strategies, based on normalized demand response event data, may be deployed across an entire multi-site enterprise.
Demand response may be a mechanism of compelling customers to reduce consumption of electricity in response to changes in supply conditions; these changes may be critical periods of peak demand or fluctuations in market price. Implementation of demand response strategies may usually involve the energy management and control system (EMCS) shedding electrical load by dimming or turning off lights, or by adjusting temperature setpoints. The present approaches may be applicable to other forms of energy. Electricity is an illustrative example used herein. Other items may be may be used in the present approaches.
A very basic application may be a manual demand response. Site personnel may receive a signal (phone call, text message, or email) and manually reduce demand. Auto DR systems may handle the generation, management, and monitoring of demand response signals between, for instance, the electricity service providers and the EMCS. The auto DR may rely on pre-programmed demand response strategies in the EMCS. Execution of these strategies may be triggered by receipt of an external signal from the auto DR system.
The auto DR system may be a computing platform designed to facilitate communications between, for example, electricity providers (i.e., electric utilities, independent system operators) and electricity consumers. Providers may define demand response programs based on expected periods of peak demand and/or periods of fluctuating price. Consumers may participate in these demand response programs by agreeing to reduce electrical demand. Based on the providers' defined demand response program, the auto DR system may transmit auto DR events to the participating consumers' EMCS. Integrated into the EMCS, the auto DR service may be responsible for virtually all interaction with the auto DR system.
An auto DR event may contain the information required to alter electrical load usage within the EMCS. The content of the event may be different for each auto DR system. The information may include the start time and end time of the event. Additionally, this event may include an indication of the expected level of load shed, possibly represented as a numeric value (i.e., 0 to 10) or as an enumeration (i.e., low, medium, and high). Or, the event may contain a schedule which defines a series of time slots; each time period having an associated shed level (either numeric or enumeration).
The auto DR service may consist of the processing engines, a protocol selector, demand response client (auto DR Client), current event information, event feedback, and a list of received events.
The protocol selector may allow the user to choose the processing engine applicable to the auto DR system. The engine may interact with the auto DR system to receive and acknowledge auto DR events and provide demand response feedback. The engine may implement the logic necessary to interpret the system's event information and translate that information into the normalized current event information. Additionally, the engine may translate EMCS feedback into a format that is compatible with the auto DR system.
The demand response client (auto DR client) may contain the properties required to configure the service's connection with the auto DR system. The interface between the client and the auto DR system may be either a push or a pull model. In the push model, the auto DR system may send events to the client as they occur. Conversely, the pull model may require the client to poll the auto DR system for event information at some defined frequency.
Current event information may be the normalized event data. As the processing engine decodes and interprets the received event, values in current event information may be set. These values may contain part of the interface to the EMCS control strategies.
Event feedback may provide the other piece of the EMCS control strategies interface. This may allow a facility to supply performance metrics to the auto DR system. Data regarding the control system's demand response effort may be calculated and reported to the feedback component. The processing engine may transform the feedback data into the format compatible with the auto DR system and transmit a communications packet in the required protocol.
In one version, the first approach may be built as in the following. 1) Add the auto DR service component to the EMCS. 2) Configure the auto DR client. This may consist of setting the parameters needed to communicate with the auto DR system. These parameters may contain the communication type (PUSH or PULL), the location of the auto DR system, the authentication credentials, and the auto DR system protocol. The selected protocol may determine which processing engine will interact with the auto DR system. 3) Link the current event information parameters to the EMCS demand response strategy. 4) Link the EMCS demand response performance metrics data to the event feedback parameters.
Based on the configuration of the auto DR client, the selected processing engine may either request auto DR events at a programmed interval (i.e., ˜pull) or wait for events to be transmitted by the auto DR system (i.e., ˜push).
When the engine obtains an event, the data may be decoded into the normalized elements of the client's current event information component. The normalized event details may then be propagated to the EMCS according to the previously defined linkage.
As the EMCS responds to the demand response event, electrical loads may be shed; this may involve adjustments to temperature setpoints, dimming or turning off lights, and/or other modifications to building systems which reduce the demand of electrical loads. During the auto DR event, information about electrical load usage levels, the amount of electrical load being shed or other demand response metrics may be propagated to the client's event feedback component using the previously defined linkage. The selected processing engine may encode this feedback information and transmit a message to the auto DR system.
The second approach may be for managing the distribution of automated demand response events in a multi-site enterprise. Here, automated demand response (auto DR) may be a platform for achieving more reliable and consistent performance of demand response programs by removing the need for human intervention.
Several issues may be encountered when implementing support for auto DR. First, there may be the wide array of electricity providers, independent system operators, and aggregators (i.e., energy entities). Each of these entities may communicate with the EMCS using a different communication protocol and/or data format. Second, in a multi-site enterprise, sites may be distributed across a large geographic area. As a result, the enterprise may be serviced by multiple electricity providers. Implementing auto DR across the enterprise may necessitate supporting the auto DR system of each provider. Lastly, supporting the data formats of multiple auto DR systems may increase the complexity and cost of deploying a demand response strategy across the enterprise. Any variation in data content may require customization of the interface to the demand response strategy. As a result, the enterprise should support a custom site configuration for each unique data format.
The first approach, for normalizing automated demand response events in energy management and control systems, may resolve these issues with a site-level solution. While addressing the normalization issue, the first approach may ignore a critical issue faced by the enterprise.
The auto DR system may need a network connection to each EMCS site controller. This means that there may be multiple, external points of access inside the enterprise's network firewall. Larger sites may require multiple EMCS controllers which increases the number of auto DR access points and thereby compounds the vulnerability of the network. Enterprise information technology (IT) personnel may minimize this vulnerability through firewall configuration and monitoring. However, this may add to the cost and overhead of managing the enterprise network, especially in enterprises with hundreds or thousands of sites. In an enterprise with sites located across a large geographic area, the IT department should manage and monitor the external network access of numerous auto DR systems. The second approach may be for managing the distribution of automated demand response events (auto DR events) in a multi-site enterprise.
Event distribution may be controlled by an auto DR gateway. At the enterprise level, the auto DR gateway may be implemented as a supervisor service. The gateway may be configured to connect with an auto DR system. This may allow the supervisor service to receive events from the auto DR system and route them to virtually all registered EMCS site controllers. Also, the service may forward confirmation and feedback messages from the site controller to the auto DR system.
At the site level, event distribution may be managed in two ways. First, the auto DR service (shown relative to in the first approach) may be configured to utilize a gateway connection rather than a direct connection to an auto DR system. The service's auto DR client settings may be modified to select the site's EMCS supervisor as the host station. The site service may register with the selected supervisor gateway for auto DR events. When an event is received by the site controller's auto DR service, a confirmation message may be sent to the gateway for forwarding to the auto DR system. During the demand response event, information about electrical load usage levels, amount of load being shed, and other demand response metrics may be sent to the auto DR system through the gateway.
Second, the auto DR gateway functionality may be added to the auto DR service shown relative to the first approach. When this functionality is enabled, the service may route events to other EMCS site controllers within a facility. Likewise, the service may route auto DR related messages from the other site controllers back to the auto DR system.
Auto DR systems may handle the generation, management, and monitoring of demand response signals between electricity service providers and the energy management and control system (EMCS). The auto DR may rely on pre-programmed demand response strategies in the EMCS. Execution of these strategies may be triggered by receipt of an external signal from the auto DR system.
Event distribution may be controlled by an auto DR gateway. This gateway concept may be implemented as two components, the enterprise level and the site level. At the enterprise level, the auto DR gateway may be an extension to the EMCS supervisor. This gateway may perform two primary tasks: 1) Route auto DR events from an auto DR system to EMCS site controllers; and 2) Route auto DR-related messages from EMCS site controllers to an auto DR system.
At the site level, auto DR gateway functionality may be an extension to the auto DR service shown relative to the first approach. This gateway may perform two primary tasks: 1) Route auto DR events from an auto DR system or enterprise-level auto DR gateway to other EMCS site controllers within a single site; and 2) Route auto DR-related messages from other EMCS site controllers to an auto DR system or enterprise-level auto DR gateway. If a message is routed to an enterprise-level gateway, it may be the task of that gateway to forward the message to an auto DR system.
The EMCS supervisor may be a framework for managing a multi-site enterprise of EMCS site controllers. (One may note enterprise model extensions to Niagara AX.) U.S. patent application Ser. No. 12/260,046, filed Oct. 28, 2008, and entitled “A Building Management Configuration System”, may be relevant. U.S. patent application Ser. No. 12/260,046, filed Oct. 28, 2008, is hereby incorporated by reference.
The following patent documents may also be relevant. One may note U.S. patent application Ser. No. 12/703,476, filed Feb. 10, 2010, and entitled “A Multi-Site Controller Batch Update System”. U.S. patent application Ser. No. 12/703,476, filed Feb. 10, 2010, is hereby incorporated by reference. One may note U.S. patent application Ser. No. 12/896,842, filed Oct. 1, 2010, and entitled “Building Management System Site Categories”. U.S. patent application Ser. No. 12/896,842, filed Oct. 1, 2010, is hereby incorporated by reference. One may note U.S. patent application Ser. No. 12/895,640, filed Sep. 30, 2010, and entitled “A User Interface List Control System”. U.S. patent application Ser. No. 12/895,640, filed Sep. 30, 2010, is hereby incorporated by reference.
The auto DR system may be a computing platform designed to facilitate communications between electricity providers (i.e., electric utilities, independent system operators) and electricity consumers. Providers may define demand response programs based on expected periods of peak demand and/or periods of fluctuating price. Consumers may participate in these demand response programs by agreeing to reduce electrical demand. Based on the providers' defined demand response program, the auto DR system may transmit auto DR events to the participating consumers' EMCS site controller. Integrated into the site controller, the auto DR service of the first approach may be responsible for virtually all interaction with the auto DR system. The second approach may shift that interaction to the EMCS supervisor.
An auto DR event may contain the information required to alter electrical load usage within the EMCS. The content of the event may be different for each auto DR system. The information may include the start time and end time of the event. Additionally, this event may include an indication of the expected level of load shed, possibly represented as a numeric value (i.e., 0 to 10) or as an enumeration (i.e., low, medium, and high). Or, the event may contain a schedule which defines a series of time slots; each time period having an associated shed level (either numeric or enumeration).
The auto DR supervisor service may be an extension to the EMCS supervisor's functionality. This service may support one or more auto DR gateways. A gateway may be created for each auto DR system that is an electricity service provider to the enterprises' sites.
The auto DR gateway may contain the properties required to configure a connection with an auto DR system. The interface between the gateway and the auto DR system may be either a push or a pull model. In the push model, the auto DR system may send events to the gateway as they occur. Conversely, the pull model may require the gateway to poll the auto DR system for event information at some defined frequency. The ability to support the auto DR system's protocol as shown relative to the first approach may be implemented in the supervisor's auto DR gateway.
A gateway may support one or more demand response clients; each client representing an enrollment in a demand response program.
The demand response client (auto DR client) may contain the credentials needed to access the auto DR system.
The auto DR service of the first approach may be extended to add gateway functionality. When this functionality is enabled, the service may route events to other EMCS site controllers within a facility. Likewise, the service may route auto DR-related messages from the other site controllers back to the auto DR system.
At the enterprise level, an auto DR gateway may be added to the supervisor service. The gateway may be configured to connect with an auto DR system using the specified client credentials. This may allow the supervisor service to receive events from the auto DR system and route them to virtually all registered EMCS site controllers. Also, the service may forward confirmation and feedback messages from the site controllers to the auto DR system.
At the site level, the auto DR service may be configured to utilize a gateway connection rather than a direct connection to an auto DR system. The service's auto DR client settings may be modified to select the site's EMCS supervisor as the host station. An appropriate gateway and the gateway client should also be configured. Using these parameters, the site service may register with the selected supervisor gateway for auto DR events. When an event is received by the site controller's auto DR service, a confirmation message may be sent to the gateway for forwarding to the auto DR system. During the demand response event, information about electrical load usage levels, amount of load being shed, and other demand response metrics may be sent to the auto DR system through the gateway.
Optionally, a site controller's auto DR service may be configured to function as a gateway. If this functionality is enabled, the site controller's service may use a received event to initiate the execution of a demand response strategy; and the service's gateway may route the event to virtually all site controllers within the same site that have registered with the gateway.
When a site controller's auto DR service is configured to receive events from a local gateway connection, the client may be assigned a local EMCS site controller as its host station. The service may then register with the gateway of the selected local site controller.
In a first version of the second approach, it may be built as in the following. 1) Configure the EMCS supervisor. 2) Add the auto DR service component to the EMCS supervisor. 3) Add an auto DR gateway to the service's gateway container (auto DR gateway list). 4) Configure the gateway. This may consist of setting the parameters needed to communicate with the auto DR system. These parameters may incorporate the communication type (push or pull), the location of the auto DR system, and the auto DR system protocol. The selected protocol may determine which processing engine will interact with the auto DR system to receive and transmit auto DR messages (as shown relative to the first approach). 5) Add an auto DR client to the gateway and assign the authentication credentials. 6) Configure the EMCS site controller. 7) Add the auto DR service component to the site controller. 8) Configure the auto DR client. This may consist of setting the parameters needed to communicate with the supervisor service. These parameters may include the host station, the gateway, the client, and the auto DR system protocol. The selected protocol may determine which processing engine will decode and encode the auto DR messages (as shown relative to the first approach). The host station assignment may be based on the type of gateway being used. If the site controller will receive and transmit message using a supervisor gateway, the EMCS supervisor may be selected. 8) Select the appropriate local site controller if messages will be communicated through a local gateway. 9) Link the current event information parameters to the EMCS demand response strategy. 10) Link the EMCS demand response performance metrics data to the event feedback parameters.
If the site controller's auto DR service needs to support other site controllers within the facility, the “XCM as Gateway” functionality may be enabled.
Based on the configuration of the auto DR gateway, the selected processing engine may either request auto DR events at a programmed interval or wait for events to be transmitted by the auto DR system.
When the engine obtains an event, the supervisor service may route the message to virtually all site controllers which have registered with the gateway.
When the EMCS site controller's auto DR service receives the event message, the appropriate processing engine may decode the data into the normalized elements of the client's current event information component. The normalized event details may then be propagated to the EMCS according to the previously defined linkage.
As the EMCS site controller responds to the demand response event, electrical loads may be shed; this may involve adjustments to temperature setpoints, dimming or turning off lights, or other modifications to building systems which reduce the demand of electrical loads. During the auto DR event information about electrical load usage levels, an amount of electrical load being shed or other demand response metrics may be propagated to the client's event feedback component using the previously defined linkage. The selected processing engine may encode this feedback information and transmit a message to the assigned gateway.
A third approach may be for management and monitoring of an automated demand response in a multi-site enterprise. The first approach, for normalizing automated demand response events in energy management and control systems, may provide a site-level solution for the issues a multi-site enterprise encounters when interfacing to auto DR systems. The second approach, for managing the distribution of automated demand response events in a multi-site enterprise, may resolve the enterprise networking issues which may occur when implementing support for automated demand response. Key auto DR issues not addressed by the first and second approaches may incorporate the following: 1) Awareness of upcoming demand response events; 2) Monitoring the actual response to a demand response event; 3) Analyzing EMCS performance and cost benefits of auto DR program participation; 4) The ability to opt-out of a demand response event; 5) Managing and controlling the demand response strategy; not only defining the load shed strategy, but also deploying that strategy to each site.
The complexity and cost of these issues may be directly related to the scale of the multi-site enterprise. Addressing these items at the site-level may be too burdensome and time consuming. Managing and monitoring at the site-level may necessitate connecting to each site's EMCS to check event status, view demand response performance metrics, opt-out of an event, or update demand response control strategies.
For management and monitoring of automated demand response to be efficient and economical, solutions should be available at the enterprise level.
The third approach may be a solution for the issues associated with managing and monitoring automated demand response events (auto DR events) in a multi-site enterprise. Enterprise-level and site-level enhancements may be implemented to resolve these issues.
At the enterprise level, the auto DR supervisor service shown relative the second approach may be enhanced to add management and monitoring functionality. The added capabilities may be as in the following: 1) Message exchange with the site-level auto DR service to enable management and monitoring activities; 2) Support for user interfaces that allow event monitoring and enable management actions such as opting-out of an event; and 3) Integration with a batch service to facilitate bulk updates of demand response strategy across the enterprise. One or more certain kinds of batch service approaches may be noted in U.S. patent application Ser. No. 12/703,476, filed Feb. 10, 2010, and entitled “A Multi-Site Controller Batch Update System”. U.S. patent application Ser. No. 12/703,476, filed Feb. 10, 2010, is hereby incorporated by reference.
At the site level, new functionality may be an extension to the auto DR service as shown relative to the first approach. The added capabilities may be as in the following: 1) Message exchange with the enterprise-level auto DR supervisor service to facilitate management and monitoring activities; and 2) Event response mechanism and user interface that enable management decision to opt-out of an event.
These new capabilities may allow the two services to exchange messages related to auto DR activity. Messaging may facilitate a shift of demand response monitoring and management to the enterprise level. It is no longer necessary to perform these tasks on a site-by-site basis.
The EMCS supervisor may be a framework for managing a multi-site enterprise of EMCS site controllers. (One may note enterprise model extensions to Niagara AX.) U.S. patent application Ser. No. 12/260,046, filed Oct. 28, 2008, and entitled “A Building Management Configuration System”, may be relevant. U.S. patent application Ser. No. 12/260,046, filed Oct. 28, 2008, is hereby incorporated by reference.
The auto DR system may be a computing platform designed to facilitate communications between energy providers, for instance, electric utilities, independent system operators, aggregators and electricity consumers (i.e., energy entities). Providers may define demand response programs based on expected periods of peak demand and/or periods of fluctuating price. Consumers may participate in these demand response programs by agreeing to reduce electrical demand. Based on the providers' defined demand response program, the auto DR system may transmit auto DR events to the participating consumers' EMCS site controller.
An auto DR event may have the information required to alter electrical load usage within the EMCS. The content of the event may be different for each auto DR system. The information may incorporate the start time and end time of the event. Additionally, the event may incorporate an indication of the expected level of load shed, possibly represented as a numeric value (i.e., 0 to 10) or as an enumeration (i.e., low, medium, and high). Or, the event may incorporate a schedule which defines a series of time slots; each time period having an associated shed level (either numeric or enumeration).
The auto DR supervisor service of the second approach may be enhanced to add management and monitoring capability at the enterprise level. An auto DR Monitor component may allow the supervisor service to exchange messages with EMCS site controllers.
The auto DR service of the first approach may be enhanced, allowing the site-level EMCS controller to support management and monitoring at the enterprise supervisor. A property may be added to allow user selection of the EMCS supervisor which may monitor this controller's activity.
These new capabilities may allow the two services to exchange messages related to auto DR activity. Messaging may facilitate a shift of demand response monitoring and management to the enterprise level. It is no longer necessary to perform these tasks on a site-by-site basis.
Each site controller may transmit updates to the EMCS supervisor concerning: 1) auto DR events received from an auto DR system; 2) Changes in event status (i.e., when an event transitions from pending to active); and 3) EMCS performance during an auto DR event (i.e., actual electrical load being shed).
By receiving these updates, the EMCS supervisor may be able to collect auto DR activity data for the entire enterprise. This data may then be available for viewing in a format appropriate to a particular user's needs.
A user might view all automated demand response programs in which sites are participating. The program view may show the cumulative performance of all participating sites; this may allow the user to easily note the energy and cost savings being realized from participation in a particular auto DR program. Each program may be expanded to show the enrolled sites as well as the latest event status (i.e., the currently active event and/or pending events). Viewing the individual sites may allow the user to easily detect any site which is not meeting the expected levels of reduction in electricity usage.
Collection of the auto DR performance data may enable not only real-time monitoring but also more advanced data analysis. Energy and financial analytics may be performed for auto DR programs, geographic regions, or individual sites over various time periods (i.e., daily, weekly, monthly, and so forth). Possible metrics may include realized energy savings and cost benefits of program participation.
Additionally, the EMCS supervisor may provide several options for managing event response. A view of the programs in which sites are enrolled may allow a user to see upcoming demand response events. At the user's discretion, the enterprise may elect not to participate in a scheduled event. If an event opt-out action is initiated, the supervisor may have the ability to send a notification to each enrolled site. Some circumstances may require that an individual site not reduce electrical load. In this case, the user may invoke a site opt-out and the supervisor may send a notification only to the affected site.
In the first and second approaches, a demand response strategy may be deployed to each EMCS site controller. Execution of that strategy may be triggered by an auto DR event. To reduce demand, this strategy may involve controlling HVAC equipment to higher setpoints. Supporting automated demand response in this manner may increase the complexity and cost of maintaining the enterprise EMCS. Any changes to the demand response strategy may require re-programming of each EMCS site controller. The batch service may reduce the complexity of making the setpoint change and the time required to deploy the change across the enterprise. One may note U.S. patent application Ser. No. 12/703,476, filed Feb. 10, 2010, and entitled “A Multi-Site Controller Batch Update System”. U.S. patent application Ser. No. 12/703,476, filed Feb. 10, 2010, is hereby incorporated by reference.
A first version of the third approach may be built as in the following. 1) Configure the EMCS supervisor. 2) Add the auto DR supervisor service component to the EMCS supervisor. The auto DR monitor component may now be available.
An additional configuration of the supervisor service may be shown relative to the second approach. 3) Configure the EMCS site controller. 4) Add the auto DR service component to the site controller. 5) Configure the monitor host. This may identify the EMCS supervisor which will receive auto DR-related messages from the site controller.
An additional configuration of the service may be shown relative to the first and second approaches.
When the EMCS site controller's auto DR service receives an event message, the event may be communicated to the selected EMCS supervisor. At the supervisor, the event may be added to the activity monitor where the event details are available for viewing and management decision-making.
If a user elects to opt-out of an event for all participants or individual sites, the appropriate notification may be sent to the affected site controllers. Upon receipt of the opt-out notice, the site service may respond accordingly and send a feedback message to the supervisor.
As the EMCS site controller responds to a demand response event, electrical loads may be shed; this may involve adjustments to temperature setpoints, dimming or turning off lights, or other modifications to the building systems which reduce the demand of electrical loads. During the auto DR event, information about electrical load usage levels, the amount of electrical load being shed or other demand response metrics may be propagated to the client's event feedback component (shown relative to the first approach). This feedback may be transmitted to the selected EMCS supervisor. The supervisor may use the feedback data to update both site and program performance metrics.
a is an example program 198 of a sample auto DR event.
The participant enterprise management at symbol 63 may be connected to a participant site 1 at symbol 64, a participant site 2 at symbol 65 and a participant site X at symbol 66. “X” means that management at symbol 63 may be connected to virtually any number of participant sites. Each participant site may consist of an EMCS with auto DR service.
In
The participant enterprise management at symbol 93 may be connected to a participant site 1 at symbol 94, a participant site 2 at symbol 95 and a participant site X at symbol 96. “X” may represent a number means that management at symbol 93 may be connected to virtually any number, not just the three in the Figure, of participant sites. Each participant site may consist of an EMCS with auto DR service.
In the present specification, some of the matter may be of a hypothetical or prophetic nature although stated in another manner or tense.
Although the present system and/or approach has been described with respect to at least one illustrative example, many variations and modifications will become apparent to those skilled in the art upon reading the specification. It is therefore the intention that the appended claims be interpreted as broadly as possible in view of the prior art to include all such variations and modifications.
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