Residential Demand Response Algorithms: State-of-the-Art, Key Issues and Challenges

@inproceedings{Batchu2015ResidentialDR,
  title={Residential Demand Response Algorithms: State-of-the-Art, Key Issues and Challenges},
  author={Rajasekhar Batchu and Naran M. Pindoriya},
  booktitle={WISATS},
  year={2015}
}
Demand Response (DR) in residential sector is considered to play a key role in the smart grid framework because of its disproportionate amount of peak energy use and massive integration of distributed local renewable energy generation in conjunction with battery storage devices. In this paper, first a quick overview about residential demand response and its optimization model at single home and multi-home level is presented. Then a description of state-of-the-art optimization methods addressing… 
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