Research on Distribution Substation Topology Identification Methods

Weidong Hu, Zhao Bo, Chen Jie
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Abstract

With the advancement of digital transformation in distribution substations, a large number of smart devices are being integrated into substations. Addressing the challenges of automatic topology recognition and the issue of unstable recognition accuracy in distribution substations has become crucial. This paper proposes a substation topology recognition method based on an improved matrix approach and the Minimum Conditional Probability of Packet Loss Theorem. The improved matrix approach is utilized to calculate the topological signals, enabling automatic bottom-up topology recognition within the substation. The application of the Minimum Conditional Probability of Packet Loss Theorem in processing topological data significantly enhances the accuracy of substation topology recognition, reducing the impact of external factors on recognition accuracy. Experimental validation demonstrates that the proposed method is highly feasible and exhibits fault tolerance, indicating practical engineering applications.
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配电变电站拓扑识别方法研究
随着配电变电站数字化转型的推进,大量智能设备被集成到变电站中。解决配电变电站拓扑自动识别的挑战和识别精度不稳定的问题变得至关重要。本文提出了一种基于改进矩阵方法和丢包最小条件概率定理的变电站拓扑识别方法。改进矩阵法用于计算拓扑信号,从而实现变电站内自下而上的自动拓扑识别。在处理拓扑数据时应用丢包最小条件概率定理,可显著提高变电站拓扑识别的准确性,减少外部因素对识别准确性的影响。实验验证表明,所提出的方法具有很高的可行性和容错性,可应用于实际工程中。
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