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基于图神经网络的高效最优潮流模型简化方法
An efficient optimal power flow model reduction method based on graph neural networks
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1 南京邮电大学碳中和先进技术研究院 江苏南京 2 国网电力科学研究院有限公司(南瑞集团有限公司) 江苏南京
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胡松林, 黄煜, 李忠行, 王毅. 基于图神经网络的高效最优潮流模型简化方法 [J]. 电气工程与自动化. 2025; 4; (4). 17 - 25.
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