International Journal of Scientific Engineering and Research (IJSER)
Call for Papers | Fully Refereed | Open Access | Double Blind Peer Reviewed | ISSN: 2347-3878


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China | Computers Electrical Engineering | Volume 12 Issue 3, March 2024 | Pages: 1 - 8


Electric Energy Demand Response Algorithm based on Deep Reinforcement Learning

Yun Ju, Weixing Gao, Xiaoqi Shao

Abstract: With the rapid development of smart grid and renewable energy, demand response mechanism has become a key means to balance microgrid supply and demand and improve energy efficiency. As the traditional power demand response algorithm is difficult to deal with the uncertainty of power demand and the adverse effects caused by customers, this paper proposes a power demand response algorithm based on deep reinforcement learning. Firstly, we study and design a price - based layered electricity energy demand response model. Then, the dynamic optimal pricing decision of power trading market is described as Markov decision process, and the learning mechanism under the framework of deep reinforcement learning is expounded. Finally, a solution algorithm based on deep reinforcement learning is designed. The simulation results show that the proposed algorithm can adjust the electricity price adaptively according to the load demand, which can reduce the cost of users by about 17% and reduce the peak load demand.

Keywords: Demand response, Deep reinforcement, Smart grid, electric energy



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