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首页> 外文期刊>International review of electrical engineering >Application of the Co-Evolutionary Algorithm with Memory at the Population Level for Optimisation of the Operation of Real Electric Power Distribution Networks
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Application of the Co-Evolutionary Algorithm with Memory at the Population Level for Optimisation of the Operation of Real Electric Power Distribution Networks

机译:人口共存协同进化算法在优化配电网运行中的应用

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摘要

A solution of the optimisation problem of complex power electric networks post-fault configuration has been proposed. The analysed problem of search for optimal configurations of electric power distribution networks for changing loadings of network elements and for malfunction conditions is a multi-criteria optimisation problem. In this case the sought-after solution is the collection of Pareto-optimal solutions. Scientific methods belonging to the class of artificial intelligence methods (evolutionary algorithms and classifier system) have been used in the paper. Scientific work of the author is presented the co-evolutionary algorithm using memory at the level of organised populations in the form of five subpopulations, the composition of which is changed and organised according to classifying systems' procedures. The process of creating a collection of classifiers describing the substitute network configuration was performed by the author supported by the theoretical genetic basics of self-teaching system. Cooperation of the evolutionary algorithm with the classifier system enables significant reduction of the classification time, reduces the iterative calculation process on average by 40 %. The calculations performed for the mapped real system of the medium voltage municipal distribution network have given satisfactory results, confirming the adequate direction of the research. The method presented in the article enables effective search of optimal configurations of distribution networks for various network loadings and also network malfunction conditions.
机译:提出了复杂电力网络故障后配置优化问题的解决方案。为改变网络元件的负载和故障条件而寻找配电网络的最佳配置的已分析问题是一个多准则优化问题。在这种情况下,寻求的解决方案是帕累托最优解的集合。本文使用了属于人工智能方法(进化算法和分类器系统)类别的科学方法。作者的科学工作是通过五个子种群的形式在有组织的种群级别上使用内存提出的协同进化算法,其组成根据分类系统的程序进行了更改和组织。作者创建了描述替代网络配置的分类器集合,该过程得到了自学系统的理论遗传学基础的支持。进化算法与分类器系统的配合可以显着减少分类时间,平均减少40%的迭代计算过程。对中压市政配电网的实测系统进行的计算已获得令人满意的结果,证实了研究的适当方向。本文中介绍的方法能够针对各种网络负载以及网络故障情况有效搜索配电网络的最佳配置。

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