The present disclosure generally relates to a method and system for monitoring load characteristics of electric loads in a residential or commercial setting through the use of an electricity meter and identifying the specific types of loads and their respective operating conditions. More specifically, the present disclosure relates to a method and system that monitors the load characteristics of electrical loads and communicates the identification information related to each of the loads to a system operator or a third party for review, analysis and possible direct communication to the owner/operator of the electrical load.
Electric utilities in commercial facilities are interested in monitoring detailed electric power consumption profiles of their customers to analyze the amount of energy being utilized and for monitoring peak load levels and the time of such peaks. Typically, this energy consumption is monitored for the complete residence or commercial facility, since monitoring the energy consumption of each individual appliance contained within the residence or facility typically requires placing a monitoring device on each of the electric loads within the facility. However, acquiring knowledge of the energy consumption of each individual load within the facility would provide additional information for both the owner and the utility in monitoring energy consumption.
In an attempt to monitor energy consumption by each individual electric load within the facility, systems and methods have been developed to track the energy consumption of electric loads within the facility without requiring separate monitoring of each of the loads. One technique to carry out this type of monitoring is referred to as non-intrusive load monitoring. Non-intrusive load monitors (NILM) are devices intended to determine the operating schedule of major electrical loads in a building from measurements made outside of the building. Non-intrusive load monitoring has been known since the 1980's (see Hart U.S. Pat. No. 4,858,141). Non-intrusive load monitoring is generally a process for analyzing the changes in the voltage and currents going into a house and, from these changes, deducing what appliances are used in the house as well as their individual energy consumption. The NILM compares the energy consumption information from the home, such as recorded at an electric meter, and compares the energy consumption information to known load profiles for different types of electrical loads.
Although non-intrusive load monitoring has been known for many years, utilities and other interested parties have been unable to leverage the information obtained from a non-intrusive load monitor.
The present disclosure relates to a system and method for the non-intrusive monitoring and identification of one or more electrical loads located within a facility. The system generally includes an electricity meter positioned to monitor the load characteristics, such as voltage, current and phase, of a series of loads in a residential or commercial setting. The electricity meter includes both a current monitor and a voltage monitor that receive the load characteristics for the facility and convert the load characteristics to a digital voltage signal and a digital current signal.
In one embodiment of the disclosure, a correlator is contained within the electricity meter and is configured to receive the digital voltage signal and the digital current signal and compare select attributes of the signals to a plurality of representative load signatures also stored within the electricity meter. Based up on the comparison between the digital voltage signal and the digital current signal and the stored, representative load signatures, the correlator within the electricity meter identifies a particular model (e.g., manufacturer model) and/or type (e.g., type of appliance) of various electrical loads operating within the monitored facility.
The load identification information, as well as time of day usage information, is relayed from the electricity meter to a remote location, such as a back end server provided by the utility or a separate data aggregator. The load identification information could be stored for a period of time in the electricity meter before being relayed to the remote location or could be relayed in near real-time. In an alternate embodiment, the remote utility back end or data aggregator includes the load profile storage device, such as non-volatile memory, as well as the correlator such that the load identification step is performed outside of the electricity meter. In each case, the correlator and load profile storage device combine to identify the specific type and/or of electric load operating at the monitored facility.
Once the specific type and/or model of electric load has been identified by a comparison between the operating load profile(s) for the facility and the stored load signatures, the system and method of the present disclosure can send email or other types of messages to the home/business owner regarding the specific operation of the electric loads within the facility. As an example, messages may be sent to the home/business owner suggesting a change in the time of operation of the electric loads to reduce the home/business owner's electric utility bill by operating the loads during off-peak periods. Additionally, information can be sent to the home/business owner suggesting replacement of electric loads or suggesting service that needs to be performed on the electric loads to have the electric loads operating in a more efficient manner.
In yet another contemplated embodiment, the electric load identification information can be relayed to a third party for a subscription fee paid to the utility. The third party may be a product manufacturer, a product distributor, a product retailer or a third party data provider. A third party data provider, in turn, could contract with the product manufacturer, product distributor or product retailer to provide service leads at a fee.
Various other features, objects and advantages of the invention will be made apparent from the following description taken together with the drawings.
The drawings illustrate the one mode presently contemplated of carrying out the disclosure. In the drawings:
Non-intrusive load monitoring can be used to determine the operating schedule of individual electric loads contained within a facility by monitoring and analyzing the energy consumption for the entire facility. In the embodiment shown in
In the embodiment shown in
In addition to the voltage monitor 18, the meter 12 includes a current monitor 22 that also feeds an analog to digital converter 24. The analog to digital converter 24 samples the analog current signal at, for example, 20 ks/s. Although sampling rates for both the A/D converters 20, 24 are described, it should be understood that the A/D converters could sample the signals at different sampling rates.
In the embodiment shown in
Load type I, shown by reference numeral 30, is a first level of a memory tree structure. The memory tree structure includes a series of specific model types 32-38 that fall within the general category of load type I. As an example, Model A could be a specific model provided by a first air conditioner manufacturer. Model B, illustrated by reference numeral 34, could be a different model number also from the first manufacturer. Model C, referred to by reference numeral 36, could be a model from a second air conditioner manufacturer.
The primary profile 32 for Model A is shown as one of the load signatures stored in the memory of the electricity meter. In addition to the general operating signature, the database could also store a startup signature 40, a first fault/failure signature 42, a second fault/failure signature 44 and possibly a third fault/failure signature 46 (or more). Each of these load signatures is provided by the manufacturer of the electricity-consuming appliance or a third-party profile generator. The fault/failure signatures 42-46 can represent various different common failure modes for the electrical load, such as the failure of a compressor in an air conditioner, the failure of a starting capacitor, or any other fault mode for the electrical load and can be detected through a monitored load profile. It should be understood that under each of the model types, various different startup signatures, fault signatures and failure signatures can be provided depending upon the specific manufacturer for the appliance. The use of both the startup signature and the various fault/failure signatures allows the non-intrusive load monitoring system of the present disclosure to not only identify the particular type and model of the electrical load, but also to diagnose operating problems that may occur or are present during operation of the electrical load. The significance of this monitoring feature will be described in detail below.
Referring back to
The signature profiles stored in the table of signature profiles 28 are provided by manufacturers and identify key attributes in the activation and/or operation of the electric load that are utilized to compare a load profile from the facility to stored information. Although in the illustrative example the correlator compares between ten to twelve key attributes, it should be understood that different numbers of attributes could be utilized while operating within the scope of the present disclosure. In general, the larger the number of attributes compared between the measured load profile from the facility and the signature profiles stored in the table of signature profiles 28 will increase the accuracy of the comparison process. However, the larger number of key attributes that are compared will also increase the processing requirements for the electricity meter and the volume of information that must be stored for each of the load profiles from the facility. It is contemplated that a comparison of between ten to twelve key attributes will typically be adequate to perform the comparison process of the present disclosure. In some cases, less than ten to twelve key attributes will be sufficient, depending upon the load.
Based upon the comparison of the load profile from the meter 12 to the series of load signatures stored in the table of signature profiles 28, the correlator 26 can identify what type of load is being activated and/or operating at the facility. Alternatively, the correlator 26 can instead initially determine the specific model of the electric load at the facility without having to first identify the type of load. In some embodiments, the correlator 26 can determine both the type and model of the load.
In some embodiments, the correlator 26 calculates a confidence indicator that is based upon the degree of matching between the analyzed profile and the signature profiles contained within the table of signature profiles 28 (e.g., the number of attributes used or matched, how well the attributes from the analyzed profile align with those of the signature profiles, etc.). The confidence value can range, for example, between 0-100 depending upon the level of matching detected. It is contemplated that a particular load profile from the facility may correspond to a signature profile for different models of a certain type of load. As an example, a measured load profile may correspond to different models of an air conditioner from the same manufacturer or different models of air conditioners from different manufacturers. After each measurement cycle, the correlator selects the identified type of load and specific model that has the highest confidence value as the most likely type of electric load being operated within the monitored facility. The correlator 26 provides a confidence value during each measurement cycle and, over time, can more accurately determine and estimate the type of load at the facility based upon a history of analysis.
As illustrated in
The electricity meter 12 includes a data compressor 54 that compresses data prior to transmitting the data over the wireless connection 52. It is contemplated that the data compressor could be utilized to compress information before the information is transmitted in various different manners. In one contemplated embodiment, the utility meter 12 compresses all of the measured voltage and current information, as well as the analysis generated by the correlator 26. In such an embodiment, the compressor 54 is required due to the large amount of data as a result of the high sampling rate of both the A/D converters 20, 24.
In an alternate embodiment, the data compressor 54 compresses only the selected attributes of the current and voltage information from the facility as determined by the correlator 26 in combination with the algorithm database 48. In this embodiment, the amount of information transmitted from the meter to the utility 50 is reduced relative to the transmission of the entire load profile such that different types of compression techniques can be utilized.
In each type of data compression technique, the information from the meter 12 also includes time stamps such that the consumption information is relayed to the utility 50 with the specific time of day in which the energy consumption occurred. The time of use information is useful to the utility in analyzing the energy consumption and providing information and suggestions to the home/business owner.
Once the utility 50 receives the information from the electricity meter 12, the utility stores the received information in a database 56 for each of the homes/businesses being served by the utility. The database 56 is typically a hardware-based database contained at the utility 50.
An analysis module 58 contained as a processor or processors at the utility 50 accesses the information contained on the database 56 for each individual residence/business served by the utility. The analysis module 58 analyzes the current and voltage information received from the meter 12, the time of use information and the identified electrical load types and/or models as identified by the correlator 26. As discussed, the voltage and current information sent from the meter 12 includes time stamping such that the analysis module 58 can determine the amount of energy consumed by each of the identified loads and the time of day of such consumption. As an illustrative example, the analysis module 58 may determine that the homeowner operated an electric washing machine, having a specific model number and manufacturer, from 2 p.m. to 4 p.m. on Wednesday afternoon. Based upon this time of operation and the increase in the energy consumption for the facility at that time, the analysis module 58 can determine the cost of electricity for operating the identified load at the specific time.
The processors at the utility 50 further include an advice module 60 that processes the analysis results created by the analysis module 58 to generate different advice recommendations to the home/business owner based upon the amount of time each of the identified electrical loads was operated and suggest improvements in the use of their electrical appliances to save energy costs. As an example, the advice module 60 can generate a message to a homeowner that advises the homeowner that if they operate their washing machine at 9 p.m. on Wednesday night instead of 3 p.m., the energy savings will be approximately $8.00 per month. It should be understood that the advice module 60 can include various different algorithms that allow the advice module 60 to generate different messages to the home/business owner. As an illustrative example, the advice module can use historical rate information to generate the cost difference for operation of the load at different times and generate a maximum cost savings in a time window.
As discussed previously with reference to
In addition to messages sent to the home/business owner, the advice module 60 can contact different manufacturers, retailers, distributors, or other interested personnel to provide electric load information to this third party provider. As an example, if the analysis module 58 determines that a homeowner has a particular brand and model of air conditioner that is either old or operating improperly (based on the matching to a certain signature profiles), the advice module 60 can send a message to a subscribing manufacturer/distributor/retailer with information regarding the electric load operation or condition. The manufacturer/distributor/retailer can then tailor a particular email or other type of message to the homeowner that their particular air conditioner is operating improperly. It is contemplated that such a message may also include purchasing information for a new model that operates more efficiently.
In such a configuration, the utility 50 can obtain revenue from the manufacturer/distributor/retailer to provide the model and operating parameters of electric load(s) at each individual home or business. By selling this information to a manufacturer/distributor/retailer, the utility 50 can recover costs associated with the system as well as generate additional revenue.
In yet another alternate configuration, the utility 50 can provide load identification information for each individual home/business being monitored to a third party data provider, such as online search engine providers. In such an embodiment, the third party data provider could then, in turn, use such information for targeted advertising. It is contemplated that interested parties may include manufacturers, distributors and/or retailers of electrical appliances. Third party data providers can serve as an intermediate party between the utility 50 and the third party interested in contacting the home owner or business. The third party receiving information from the data provider could then contact the home owner to advertise replacement products where the replacement products are specifically tailored to the current products contained within the home. The information from the data provider would serve as a sales lead to the third party manufacturer/distributor/retailer and would be valued by the data provider as demanded.
In addition to selling information to product manufacturers/distributors/retailers, it is also contemplated that the analysis module 58 and the advice module 60 can be utilized by the utility to suggest updates/changes to the homeowner's electric loads to reduce energy consumption or to otherwise tailor energy consumption profiles as desired by the utility.
As part of the information provided to the homeowner to reduce or optimize energy consumption, it is contemplated that the electricity meter 12 may include a temperature sensor such that the information received by the utility 50 will include the current temperature at the business/home. Alternatively, the utility 50 can obtain temperature information for the area and correlate the obtained temperature data with the time stamp on the energy consumption. Temperature information is particularly desirable to determine whether air cooling devices or heaters are operating efficiently. In addition, the utility 50 can also obtain information about the home through commercially available channels, such as online maps or the equivalent thereof. The home-type information will allow the utility 50 to generate a profile for the home which will allow the utility 50 to better analyze the energy consumption information provided from the electricity meter 12.
Based upon all of the information acquired by the utility 50, the utility 50 can contact the homeowner and provide messages to the homeowner related to the operating efficiency of the home. Such messages may suggest additional insulation for the home to reduce heating or cooling costs, replacement of inefficiently operating electric loads or changes in the operating schedule of energy consuming loads which may result in energy savings, and hence cost savings, for the homeowner.
Referring now to
In the embodiment shown in
In the embodiment of
The results of the correlator 74 are fed to a similar analysis module 58 and advice module 60 in the same manner as previously described.
Referring now to
As illustrated in step 100, the system initially receives the current and voltage profile from the facility. In the embodiment shown in
Once the current and voltage profiles are received from the facility being monitored, the operating components within the electricity meter 12 identify a triggering event, as illustrated in step 101. As described with reference to
In both of the embodiments shown in
In step 104, the identified key attributes are compared to a database of stored load signatures. In the embodiment shown in
In step 106, the correlator 26 of
Once the load type has been identified in step 106, the load type is relayed to an analysis and advice module such as analysis module 58 and advice module 60. The analysis and advice modules prepare and forward messages to the owner regarding the usage and health of the electric load identified, as indicated in step 108. As previously described, the message sent by the utility can provide various different types of information to the home/business owner, such as a suggestion to the owner to modify operation of the electric load, a health report of the load, or any other type of information that the utility wishes to direct to the home/business owner.
In step 110, the system can additionally relay the identified load type and consumption profile information to a third party subscriber, such as a product retailer, product distributor or manufacturer. It is contemplated that the product manufacturer, product distributor or retailer can contract with the utility to receive messages from the utility regarding use of various different electric loads.
In step 110, the system determines whether the identified load is one type of load in which the system will send a report to a third party subscriber, such as the manufacturer, distributor, retailer or data provider identified above. If it is not one of the selected types, the system returns to step 100 and continues to monitor the current and voltage profile from each electricity meter.
It is contemplated that the system will allow a user the ability to opt in/out of the data analysis procedure and the relay of usage information to third party subscribers. If the user does not want their information relayed to the third party subscriber, the user can inform the utility and be removed from the program.
However, if in step 110 the system identifies that the load is one of the types in which a subscriber is interested in receiving information, the system relays this information to the subscriber in step 112. Once this information is received, the subscriber can send information to the homeowner/business owner regarding information and potential sales information for the homeowner. As an example, if the system identifies that a home occupant has a model A refrigerator that is no longer operating efficiently, the system may send the information to a retailer of model A refrigerators. The retailer would then contact the homeowner to tell the homeowner that the current refrigerator in their home is not operating properly and/or is out of date, and may include information about the possibility of purchasing an updated product and the energy savings that may result. As previously described, each subscriber would pay a fee to the utility to receive information from the utility customers.
The present application is based on and claims priority to U.S. Provisional Patent Application Ser. No. 61/351,484 filed Jun. 4, 2010.
Number | Date | Country | |
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61351484 | Jun 2010 | US |