Comprehensive Diagnosis Method of Large Power Grid Based on Multi-agent Perception of Local Computer-Visualized Power Flow

X. Liu, Shixiong Fan, Yanpin Wang, Jingrui Zhang, Song-yan Wang
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引用次数: 1

Abstract

For the large grid, a comprehensive fault diagnosis method based on multi-agent perception of the local computer-visualized power flow (CVPF) is proposed. This method first splits the entire network into a number of small sub-networks, and then transforms them into a local CVPFs. Local CVPF is then used to train the convolutional neural networks separately, and finally a multi-agent cluster is formed for comprehensive consultation. First, the retrieval and generation of the radial network was accomplished by defining nodes and branches at all levels. Then, using the fluctuation of the power flow on the branch as an indicator, the multi-agent diagnosis startup strategy was designed. The case study highlighted the problem of false starts of agents in a small observation range, and verified the feasibility of using multi-agent clusters to perceive local CVPF to achieve a comprehensive diagnosis within the jurisdiction and across the jurisdiction. In this process, the precision was used to evaluate the agent's online cross-jurisdiction diagnosis.
基于局部计算机可视化潮流多智能体感知的大电网综合诊断方法
针对大型电网,提出了一种基于多智能体感知的局部计算机可视化潮流综合故障诊断方法。该方法首先将整个网络划分为多个小的子网,然后将它们转换成一个本地cvpf。然后利用局部CVPF分别对卷积神经网络进行训练,最后形成多智能体聚类进行综合会诊。首先,通过定义各级节点和分支,完成径向网络的检索和生成;然后,以支路潮流波动为指标,设计了多智能体诊断启动策略;案例研究突出了小观测范围内智能体误启动的问题,验证了利用多智能体集群感知局部CVPF实现辖区内和跨辖区综合诊断的可行性。在此过程中,使用精度来评估代理的在线跨权限诊断。
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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