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引用次数: 0

摘要

在分布式能源不断增长的配电系统中,准确估计网络参数对馈线建模、监控和管理至关重要。尽管现有的最先进的参数估计算法(如物理通知图形学习(GL))具有准确的估计,但由于在大型网络中训练缓慢,它们可能会受到可伸缩性问题的影响。在本文中,我们提出了一种升级的图形学习方法,称为快速图形学习(FGL),以提高计算效率和可扩展性,同时保留了图形学习的优点。我们开发了更快的替代算法来取代GL中基于定点迭代的FORWARD和BACKWARD算法。这些替代算法基于当前注入方法的快速潮流计算和线性化潮流模型的更有效的状态初始化。对IEEE测试馈线和大型现实配电网馈线的综合数值研究表明,FGL在达到最先进算法精度的同时,将大型配电网的计算效率提高了60倍。
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Fast Graphical Learning Method for Parameter Estimation in Large-Scale Distribution Networks
In distribution systems with growing distributed energy resources, accurate estimation of network parameters is crucial to feeder modeling, monitoring and management. Al-though existing state-of-the-art parameter estimation algorithms such as physics-informed graphical learning (GL) have accurate estimation, they can potentially suffer from scalability issues due to slow training in larger networks. In this paper, we propose an upgraded graphical learning method called fast graphical learning (FGL) to improve the computational efficiency and scalability while preserving the merits of GL. In FGL, we develop faster alternative algorithms to replace the fixed-point-iteration-based FORWARD and BACKWARD algorithms in GL. These alternative algorithms are based on fast power flow calculation of the current injection method and more efficient state initialization by the linearized power flow model. A comprehensive numerical study on IEEE test feeders and large-scale real-world distribution feeders shows that FGL improves the computational efficiency by as much as 60 times in larger distribution networks while attaining the accuracy of the state-of-art algorithms.
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