2023
DOI: 10.1109/tsg.2023.3304134
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A GNN-Based Generative Model for Generating Synthetic Cyber-Physical Power System Topology

Abstract: Synthetic networks aim at generating realistic projections of real-world networks while concealing the actual system information. This paper proposes a scalable and effective approach based on graph neural networks (GNN) to generate synthetic topologies of Cyber-Physical power Systems (CPS) with realistic network feature distribution. In order to comprehensively capture the characteristics of real CPS networks, we propose a generative model, namely Graph-CPS, based on graph variational autoencoder and graph re… Show more

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Cited by 4 publications
(2 citation statements)
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“…Therefore, the graph convolution network with longand short-term network (TGNN) is constructed for the carbon emission prediction. Recently, several studies have evaluated the applications of GNNs in power grids (Boyaci et al, 2022;Liu et al, 2022;Hansen et al, 2023;Liu et al, 2023). The Bayesian optimization utilizes Gaussian process regression to construct a selection function for obtaining the next sample point.…”
Section: Frontiers In Energy Researchmentioning
confidence: 99%
“…Therefore, the graph convolution network with longand short-term network (TGNN) is constructed for the carbon emission prediction. Recently, several studies have evaluated the applications of GNNs in power grids (Boyaci et al, 2022;Liu et al, 2022;Hansen et al, 2023;Liu et al, 2023). The Bayesian optimization utilizes Gaussian process regression to construct a selection function for obtaining the next sample point.…”
Section: Frontiers In Energy Researchmentioning
confidence: 99%
“…There are usually conflicting or noncomparable objectives in a multi-objective problem, so it is not possible to simply find a solution that maximizes or minimizes all the objectives at the same time. The aim of multi-objective optimization is to find a set of solutions that form a nondominated set, called a "Pareto frontier," which outperforms other solutions on all objectives (Boyaci et al, 2022;Liu et al, 2022;Zeng et al, 2023b;Liu et al, 2023).…”
Section: Introductionmentioning
confidence: 99%