基于快速池化的多尺度图神经网络及其在电力系统中的应用

Zhenyuan Ma, Yuanpeng Tan, Zhijian Li, Huifang Xu, Liqing Liu, Kejia He
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引用次数: 0

摘要

随着电力系统智能化的发展,电力系统中的数据呈现出高度的复杂性和不确定性。因此,知识图(KG)在电网的各种应用中得到了广泛的应用。知识图通过与机器学习、深度学习等图计算技术相结合,可以有效地找出数据中有用的信息,并利用现有的数据信息来优化业务流程,帮助决策。然而,电力系统中的知识图谱存在节点多、边缘异构、结构复杂等问题,在知识图谱上的应用还比较浅。传统的图神经网络模型没有充分考虑输入图的拓扑结构,存在效率低、复杂度高的问题。为了解决上述问题,本文提出了一种快速池化的多尺度图神经网络。该模型通过池化层的快速计算来提高计算效率,并通过引入多尺度网络结构来防止测试精度的下降。此外,该模型可以适应不同大小的输入图,其中池化层给出固定大小的输出,而不管输入大小。在流行的基准数据集PROTEINS和自建数据集CEPRI-Transmission上的实验结果表明,该模型在准确率和效率两方面都优于基准模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Pooling Based Multi-Scale Graph Neural Network and Its Application in Electric Power System
With the development of power system intelligence, data in the electric power system has shown high complexity and uncertainty. For this reason, the knowledge graph (KG) has been applied in various applications in the power grid. By combining with machine learning, deep learning, and other graph computing technologies, the knowledge graph can effectively find out the useful information in the data, and use the existing data information to optimize the business process and help in decision-making. However, the knowledge graph in the electric power system has multiple nodes, heterogeneous edges, and complex structures, and the applications on the knowledge graph are shallow. The traditional graph neural network models do not consider much on the topological structure of input graphs, and thus the problems of low efficiency and high complexity come out. In order to solve the problems mentioned above, we proposed a multi-scale graph neural network with fast pooling in this paper. This model could improve the computing efficiency through the fast calculation of the pooling layer, and prevent the decrease of the test accuracy by introducing a multi-scale network structure. Also, the model could adapt to different sizes of input graphs, where the pooling layer gave a fixed size of output regardless of the input size. According to the experimental results on the popular benchmark dataset PROTEINS and the self-built dataset CEPRI-Transmission, the proposed model outperforms baseline models when considering both accuracy and efficiency.
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