分布式无功功率控制

Yinliang Xu, Wei Zhang, Wenxin Liu, Wenbin Yu
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引用次数: 0

摘要

本章讨论了两种无功控制方法。第一种方法是基于众所周知的人工智能算法——Q学习算法。第二种方法是基于分布式次梯度算法。在强化学习方法中,两个智能体只有在各自的总线电耦合的情况下才能相互交换信息。为了在满足运行约束的前提下使有功功率损耗最小化,实现了分布式Q -学习算法。Q - learning算法解决了分析复杂电力系统模型的难题。基于分布式亚梯度算法的多智能体分布式无功最优控制方案适用于分布式计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Reactive Power Control
This chapter discusses two types of the reactive power control methods. The first method is based on the well‐known artificial intelligence algorithm, Q‐learning algorithm. The second method is based on the distributed sub‐gradient algorithm. In reinforcement learning method, two agents exchange information with each other only when their own buses are electrically coupled. In order to reach the goal of minimizing the active power loss and satisfy operational constraints at the same time, a distributed Q‐learning algorithm is implemented. Q‐learning algorithm circumvents the dilemma to analyze complicated power system models. Multi‐agent system‐based distributed solution for optimal reactive power control, which is based on a distributed sub‐gradient algorithm, is appropriate for distributed computing.
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