Research on load aggregator optimal scheduling based on demand response potential evaluation

Yu Long, Yongli Wang, Wenjun Ruan, Yunfei Zhang, Xiaoping Zhou, Mingyang Zhu, Meimei Duan
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Abstract

In this paper, an evaluation model of demand response potential is constructed and based on this model, an optimal scheduling model of load aggregators is proposed to mitigate the impact of different user demand response capabilities and uncertain response behaviors on the response characteristics of load aggregators. First, three indicators are designed and used to establish a refined evaluation model of demand response potential based on users' historical electricity consumption data, and study the demand response potential of users and equipment under different economic incentives. Then the demand potential evaluation model is combined with the optimal scheduling model of load aggregators to obtain the optimal scheduling results. The simulation results show that the combination of this model and the optimal scheduling model of load aggregators can give full play to the demand response ability of users, improve user satisfaction, mobilize the enthusiasm of users, and thus improve the reliability and overall economy of load aggregators.
基于需求响应潜力评价的负荷集成器优化调度研究
本文构建了需求响应潜力评价模型,并在此基础上提出了负荷聚合器的最优调度模型,以减轻不同用户需求响应能力和不确定响应行为对负荷聚合器响应特性的影响。首先,设计并利用三个指标,基于用户历史用电量数据,建立精细化的需求响应潜力评价模型,研究不同经济激励下用户和设备的需求响应潜力。然后将需求潜力评价模型与负荷集成器最优调度模型相结合,得到最优调度结果。仿真结果表明,该模型与负荷聚合器最优调度模型相结合,可以充分发挥用户的需求响应能力,提高用户满意度,调动用户积极性,从而提高负荷聚合器的可靠性和整体经济性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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