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Increasing resilience of power systems using intentional islanding; a comparison of Binary genetic algorithm and deep learning based method

机译:使用有意孤岛提高电力系统的恢复能力;二进制遗传算法与深度学习方法的比较

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Several algorithms combining qualitative and quantitative components are currently used for splitting a large interconnected power grid into islands as a measure to provide the best reconfiguration option when a fault appears. The aim of this article is to compare the clustering results of a binary genetic algorithm and a deep learning based method in order to identify the differences and to find in which cases it is rather better applicable each of the techniques.
机译:目前,将定性和定量组件相结合的几种算法被用于将大型互联电网拆分为孤岛,作为在出现故障时提供最佳重新配置选项的一种措施。本文的目的是比较二进制遗传算法和基于深度学习的方法的聚类结果,以确定差异,并找出在哪些情况下,它更适用于每种技术。

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