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An online distribution feeder optimal reconfiguration algorithm for resistive loss reduction using a multi-layer perceptron

机译:用于使用多层Perceptron的用于电阻损耗的在线分配馈线最佳重新配置算法

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This paper presents an online distribution feeder optimal reconfiguration algorithm for resistive loss reduction. Artificial neural networks (ANNs) were used to assure the application feasibility in real-time. The demand variation used during the ANN training is represented by samplings via Monte Carlo simulation. A consolidated heuristic algorithm is utilized to obtain the demand topologies. An integer formulation is used to guarantee the solution optimality from the initial solution supplied by the ANN. We also present the application of results to a demonstrative test system, indicating applications in real systems where topological alterations are required.
机译:本文提出了一种用于电阻损耗的在线分配馈线最佳重新配置算法。人工神经网络(ANNS)用于确保实时应用可行性。 ANN培训期间使用的需求变化由通过Monte Carlo仿真的采样代表。利用综合启发式算法来获得需求拓扑。整数配方用于保证来自ANN提供的初始解决方案的解决方案。我们还将结果应用于示范测试系统,指示需要在需要拓扑改建的实际系统中的应用。

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