利用分布式GPU计算实现广义图卷积网络在电网可靠性评估中的应用

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Somayajulu L.N. Dhulipala , Nicholas Casaprima , Audrey Olivier , Bjorn C. Vaagensmith , Timothy R. McJunkin , Ryan C. Hruska
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引用次数: 0

摘要

虽然机器学习(ML)已经成为快速评估网格突发事件的强大工具,但之前的研究在分析中主要考虑静态网格拓扑。这限制了它们的应用,因为它们需要为每个新的拓扑重新训练。本文探讨了广义图卷积网络(GCN)模型的发展,通过在广泛的网格拓扑和偶然性类型上对它们进行预训练。我们发现,具有自回归移动平均(ARMA)层的GCN模型在预测电压幅值(VM)和电压角(VA)方面具有最佳的预测性能。我们引入了幻影节点的概念,以考虑具有不同数量节点和线的不同网格拓扑。对于跨各种拓扑的GCN ARMA模型的预训练,分布式图形处理单元(GPU)计算为我们提供了显著的训练可扩展性。该模型对作为训练数据一部分的网格拓扑的预测性能大大优于直流近似。虽然将预先训练好的模型直接应用到不属于网格的拓扑上不是特别令人满意,但是对来自感兴趣的特定拓扑的少量数据进行微调可以显著提高预测性能。在ML基础模型的背景下,本文强调了通过考虑各种网格拓扑和偶然性类型来训练大规模GNN模型来评估电网可靠性的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Harnessing distributed GPU computing for generalizable graph convolutional networks in power grid reliability assessments

Harnessing distributed GPU computing for generalizable graph convolutional networks in power grid reliability assessments
Although machine learning (ML) has emerged as a powerful tool for rapidly assessing grid contingencies, prior studies have largely considered a static grid topology in their analyses. This limits their application, since they need to be re-trained for every new topology. This paper explores the development of generalizable graph convolutional network (GCN) models by pre-training them across a wide range of grid topologies and contingency types. We found that a GCN model with auto-regressive moving average (ARMA) layers with a line graph representation of the grid offered the best predictive performance in predicting voltage magnitudes (VM) and voltage angles (VA). We introduced the concept of phantom nodes to consider disparate grid topologies with a varying number of nodes and lines. For pre-training the GCN ARMA model across a variety of topologies, distributed graphics processing unit (GPU) computing afforded us significant training scalability. The predictive performance of this model on grid topologies that were part of the training data is substantially better than the direct current (DC) approximation. Although direct application of the pre-trained model to topologies that are not part of the grid is not particularly satisfactory, fine-tuning with small amounts of data from a specific topology of interest significantly improves predictive performance. In the context of foundational models in ML, this paper highlights the feasibility of training large-scale GNN models to assess the reliability of power grids by considering a wide variety of grid topologies and contingency types.
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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