2024
DOI: 10.1088/1742-6596/2757/1/012019
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State inference for low-observable distribution system based on graph convolutional network

Yi Xuan,
Zhiqing Sun,
Qizhou Li
et al.

Abstract: Distribution network state inference refers to the process of calculating the state variables of each node by using measurement data and network models in the operation of the distribution system. However, the uneven measurement layout and insufficient measurement accuracy in the distribution network have brought great challenges to the state inference of the distribution network. This paper proposes a low-observable distribution network state inference method based on a graph convolution network (GCN), which … Show more

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