From Delaunay triangulation to topological data analysis: generation of more realistic synthetic power grid networks

Asim K Dey, Stephen J Young, Yulia R Gel
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引用次数: 2

Abstract

Assessing novel methods for increasing power system resilience against cyber-physical hazards requires real power grid data or high-quality synthetic data. However, for security reasons, even basic connection information for real power grid data are not publicly available. We develop a randomised model for generating realistic synthetic power networks based on the Delaunay triangulation and demonstrate that it captures important features of real power networks. To validate our model, we introduce a new metric for network similarity based on topological data analysis. We demonstrate the utility of our approach in application to IEEE test cases and European power networks. We identify the model parameters for two IEEE test cases and two European power grid networks and compare the properties of the generated networks with their corresponding benchmark networks.
从德劳内三角剖分到拓扑数据分析:生成更真实的综合电网
评估提高电力系统抵御网络物理危害能力的新方法需要真实的电网数据或高质量的综合数据。然而,出于安全原因,即使是真实电网数据的基本连接信息也不会公开。我们开发了一个基于Delaunay三角剖分的随机模型,用于生成现实的综合电网,并证明它捕获了实际电网的重要特征。为了验证我们的模型,我们引入了一种新的基于拓扑数据分析的网络相似度度量。我们展示了我们的方法在IEEE测试用例和欧洲电网应用中的实用性。我们确定了两个IEEE测试用例和两个欧洲电网的模型参数,并将生成的网络与相应的基准网络的特性进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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