Research on two‐level energy management based on tiered demand response and energy storage systems

Author:

Wang Danhao1ORCID,Peng Daogang2,Huang Dongmei1,Ren Lan3ORCID

Affiliation:

1. College of Electric Power Engineering Shanghai University of Electric Power Shanghai China

2. College of Automation Engineering Shanghai University of Electric Power Shanghai China

3. Institute of Computing and Applications State Grid Smart Grid Research Institute Company Limited Beijing China

Abstract

AbstractIn response to the escalating demands of the electricity market for load dispatch optimization and the stable operation of power systems, the design of effective incentive mechanisms to guide user electricity consumption behaviour has become an urgent task. This study addresses the complexity of the power load dispatch system by analysing the characteristics and interrelations of large‐scale user load demand responses. A dual‐layer energy management model was constructed, and a demand response incentive mechanism was designed. Adaptive incentive strategies were formulated according to different electric power user demand response scenarios. Furthermore, an optimal incentive decision‐making technology oriented towards user comfort was proposed, achieving an integrated function of strategy formulation, implementation, analysis, and optimization for power demand response. Through typical applications in core business scenarios such as elasticity of power user demand response, tiered incentive mechanisms, and comprehensive user utility, the model and strategies have been confirmed to optimize the economic benefits of virtual power plants and demand‐side electricity users under the premise of ensuring user comfort. This provides a novel solution for the efficient operation of the power market.

Funder

National Natural Science Foundation of China

Publisher

Institution of Engineering and Technology (IET)

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