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Line Selection and Algorithm Selection for Transmission Switching by Machine Learning Methods

机译:基于机器学习方法的变速箱换乘线路选择和算法选择

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Since the initial proposal of the Optimal Transmission Switching problem, a mixed integer program and different heuristics have been presented to achieve considerable cost reduction within a practical time frame. This paper proposes two machine learning based methods to further reduce the computation time as well as cutting down the generation cost. The first method is to apply machine learning algorithms to prioritize the possible line switching actions. The second method is to use machine learning to develop effective algorithm selectors among transmission switching algorithms suggested in the literature. The proposed methods are tested on IEEE 118-bus test case and FERC 13867-bus test case. The results demonstrated that both line selection and algorithm selection offer performance benefits over using the single transmission switching algorithm in the previous literature.
机译:自从最初提出最佳传输切换问题以来,已经提出了混合整数程序和不同的启发式方法,以在实际时间内降低成本。本文提出了两种基于机器学习的方法,以进一步减少计算时间并降低生成成本。第一种方法是应用机器学习算法来优先考虑可能的线路切换动作。第二种方法是使用机器学习在文献中建议的传输切换算法中开发有效的算法选择器。所提出的方法在IEEE 118总线测试用例和FERC 13867总线测试用例上进行了测试。结果表明,相比于先前文献中的单传输切换算法,线路选择和算法选择均具有性能优势。

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