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Community detection in national-scale high voltage transmission networks using genetic algorithms

机译:遗传算法在国家级高压输电网络中的社区检测

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The large-scale interconnection of electricity networks has been one of the most important investments made by electric companies, and this trend is expected to continue in the future. One of the research topics in this field is the application of graph-based analysis to identify the characteristics of power grids. In particular, the application of community detection techniques allows for the identification of network elements that share valuable properties by partitioning a network into some loosely coupled sub-networks (communities) of similar scale, such that nodes within a community are densely linked, while connections between different communities are sparser. This paper proposes the use of competitive genetic algorithms to rapidly detect any number of community structures in complex grid networks. Results obtained in several national- scale high voltage transmission networks, including Italy, Germany, France, the Iberian peninsula (Spain and Portugal), Texas (US), and the IEEE 118 bus test case that represents a portion of the American Electric Power System (in the Midwestern US), show the good performance of genetic algorithms to detect communities in power grids. In addition to the topological analysis of power grids, the implications of these results from an engineering point of view are discussed, as well as how they could be used to analyze the vulnerability risk of power grids to avoid large-scale cascade failures.
机译:电力网络的大规模互连已成为电力公司最重要的投资之一,并且这种趋势有望在未来继续下去。该领域的研究主题之一是基于图形的分析在确定电网特性方面的应用。特别地,社区检测技术的应用允许通过将网络划分为一些规模相似的松散耦合的子网络(社区)来识别共享有价值属性的网络元素,以使社区内的节点紧密链接,而连接不同社区之间是稀疏的。本文提出使用竞争遗传算法来快速检测复杂网格网络中的任何数量的社区结构。在包括意大利,德国,法国,伊比利亚半岛(西班牙和葡萄牙),得克萨斯州(美国)以及代表美国电力系统一部分的IEEE 118总线测试案例的几个国家级高压传输网络中获得的结果(在美国中西部地区)展示了遗传算法在检测电网社区中的良好性能。除了对电网进行拓扑分析之外,还讨论了从工程学角度来看这些结果的含义,以及如何将其用于分析电网的脆弱性风险以避免大规模级联故障。

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