Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Univ. of Tennessee (UT), Knoxville, TN, USA
Abstract :
The smart grid initiative and electricity market operation drive the development known as demand-side management or controllable load. Home energy management has received increasing interest due to the significant amount of loads in the residential sector. This paper presents a hardware design of smart home energy management system (SHEMS) with the applications of communication, sensing technology, and machine learning algorithm. With the proposed design, consumers can easily achieve a real-time, price-responsive control strategy for residential home loads such as electrical water heater (EWH), heating, ventilation, and air conditioning (HVAC), electrical vehicle (EV), dishwasher, washing machine, and dryer. Also, consumers may interact with suppliers or load serving entities (LSEs) to facilitate the load management at the supplier side. Further, SHEMS is designed with sensors to detect human activities and then a machine learning algorithm is applied to intelligently help consumers reduce total payment on electricity without or with little consumer involvement. Finally, simulation and experiment results are presented based on an actual SHEMS prototype to verify the hardware system.
Keywords :
demand side management; domestic appliances; energy management systems; learning (artificial intelligence); power control; power markets; HVAC; controllable load; demand side management; dishwasher; dryer; dynamic price response; electrical vehicle; electrical water heater; electricity market operation; hardware design; heating ventilation and air conditioning; load serving entities; machine learning algorithm; price responsive control strategy; real time control strategy; smart home energy management system; washing machine; Electricity; Hardware; Hidden Markov models; Machine learning algorithms; Real-time systems; Temperature sensors; Controllable load; demand response; dynamic pricing; embedded system; machine learning; optimal control strategies; peak shaving; remote operation; smart home energy management system (SHEMS);