基于图神经网络的考虑拓扑变化的暂态稳定性评估

Ji Qiao, Xiaohui Wang, Jiawei Ni, Mengjie Shi, Hantao Ren, E. Chen
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引用次数: 3

摘要

基于人工智能的暂态稳定分析已经取得了很大的进展。然而,当电力系统拓扑结构发生变化时,系统的暂态稳定特性将发生很大的变化。同时,现有暂态稳定评估方法的准确性将大大降低,从而影响暂态稳定分析的结果。本文利用图神经网络(GNN)在模型中加入拓扑信息,实现电气信息与电网拓扑信息的结合,构建暂态稳定评价模型。在模型中加入网格拓扑信息,提高对系统拓扑变化的适应性。仿真实例验证了该模型在暂态稳定评估中的可行性,并证明了该模型在电网拓扑结构变化时具有较好的泛化能力。
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Graph Neural Network Based Transient Stability Assessment Considering Topology Changes
The transient stability analysis based on artificial intelligence has made great progress. However, when the power system topology changes, the transient stability characteristics of the system will change greatly. At the same time, the accuracy of the existing transient stability assessment methods will be greatly reduced, which will affect the results of transient stability analysis. This paper uses graph neural network (GNN) to add topology information to the model, and realizes the combination of electrical information and grid topology information to construct a transient stability evaluation model. The information of the grid topology is added to the model to improve the adaptability to changes in the system topology. A simulation example verifies the feasibility of the model in transient stability assessment, and proves that the model has greater generalization capabilities when the power grid topology changes.
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