Knowledge-based learning for emergency voltage control

Haomin Ma, Sufang Chen, Yinghui Zhang
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Abstract

A new supervised genetic learning control for maintaining voltage profiles after an emergency in power systems is proposed in this study. Search efficiency is improved after introducing system knowledge into the search process of genetic learning. The optimization of the coordinated voltage control is considered a multi-objective optimal problem. Thus, a set of effective controls can be found, and a knowledge base is formed. Effective controls are stored in a long-term memory and exploited for further application. After an emergency, the stored knowledge is used to provide guidance in addition to an online learning process. The search efficiencies of genetic learning can be significantly improved. A system simulation of the New England 39-bus system shows the efficiency of the proposed genetic learning control.
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基于知识的应急电压控制学习
提出了一种新的有监督遗传学习控制方法,用于电力系统在紧急情况下维持电压分布。在遗传学习的搜索过程中引入系统知识,提高了搜索效率。协调电压控制的优化是一个多目标优化问题。这样,就可以找到一套有效的控制方法,并形成知识库。有效的控制被储存在长期记忆中,以供进一步应用。在紧急情况发生后,除了在线学习过程外,存储的知识还用于提供指导。可以显著提高遗传学习的搜索效率。对新英格兰39路公交系统的系统仿真表明了遗传学习控制的有效性。
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