Economic Dispatch of Smart Grid with Unknown Cost Functions and Switching Network Topology

G. Wen, Xinghuo Yu, Pengcheng Dai, Wenwu Yu
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Abstract

The capability of economic dispatch (ED) algorithms to address the power dispatch problem with unknown cost functions and switching network topology is an important feature for practical applications of power dispatch algorithms in smart grid. Inspired by distributed fast consensus technique and reinforcement learning (RL) approach, this research presents a kind of ED strategy consisting of a fixed-time consensus tracking (FCT) algorithm and a distributed RL-based power dispatch algorithm to address the economic dispatch problem (EDP) with unknown cost functions and switching network topology. Different with existing results on EDP of smart grid where the feasible power outputs are calculated from centralized algorithm, a distributed FCT algorithm is utilised to balance the power demand and output for each dispatch duration, where the achievement of such a consensus leads to feasible power outputs and secures the system performance against switching interaction topology. Then, a distributed RL-based power dispatch algorithm is developed to train a policy for solving EDP with unknown cost functions through the technique of distributed training with distributed execution (DTDE). Finally, case studies are presented to demonstrate the effectiveness of the proposed ED algorithms.
具有未知成本函数和交换网络拓扑的智能电网经济调度
经济调度算法解决成本函数和交换网络拓扑未知的电力调度问题的能力是智能电网中电力调度算法实际应用的一个重要特征。受分布式快速共识技术和强化学习(RL)方法的启发,提出了一种由固定时间共识跟踪(FCT)算法和基于分布式强化学习的电力调度算法组成的ED策略,以解决具有未知成本函数和交换网络拓扑结构的经济调度问题。与现有智能电网的EDP结果采用集中式算法计算可行输出功率不同,本文采用分布式FCT算法平衡各调度时段的电力需求和输出功率,这种一致性的达成导致了可行输出功率,并保证了系统在切换交互拓扑下的性能。然后,利用分布式训练与分布式执行(DTDE)技术,提出了一种基于分布式学习学习的电力调度算法,训练出求解成本函数未知的电力调度策略。最后,通过实例验证了所提ED算法的有效性。
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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