User-preference-driven model predictive control of residential building loads and battery storage for demand response

2017 AMERICAN CONTROL CONFERENCE (ACC)(2017)

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摘要
This paper presents a user-preference-driven home energy management system (HEMS) for demand response (DR) with residential building loads and battery storage. The HEMS is based on a multi-objective model predictive control algorithm, where the objectives include energy cost, thermal comfort, and carbon emission. A multi-criterion decision making method originating from social science is used to quickly determine user preferences based on a brief survey and derive the weights of different objectives used in the optimization process. Besides the residential appliances used in the traditional DR programs, a home battery system is integrated into the HEMS to improve the flexibility and reliability of the DR resources. Simulation studies have been performed on field data from a residential building stock data set. Appliance models and usage patterns were learned from the data to predict the DR resource availability. Results indicate the HEMS was able to provide a significant amount of load reduction with less than 20% prediction error in both heating and cooling cases.
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关键词
user-preference-driven model predictive control,residential building loads,battery storage,demand response,user-preference-driven home energy management system,HEMS,multiobjective model predictive control algorithm,energy cost,thermal comfort,carbon emission,multicriterion decision making method,social science,optimization process,DR programs,residential appliances,home battery system,DR resource reliability,residential building stock data set,DR resource availability prediction
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