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Gridtopo-GAN for Distribution System Topology Identification

Huayi Wu, Zhao Xu, Jian Zhao, Songjian Chai

2022IEEE Transactions on Industrial Informatics40 citationsDOI

Abstract

Due to the limited presence of monitoring and measurement devices, timely identification of distribution grid topology has been challenging. Therefore, this article proposes a power grid topological generative adversarial network (Gridtopo-GAN) model to identify the distribution grid topology of either meshed or radial structure with limited measurements. By leveraging the topology preserved node embedding architecture, this model can efficiently handle large-scale systems with different topological configurations. Because of the generative capability of GAN, the model is robust enough when fed with bad measurement data, including missing data, commonly encountered in practical applications. Numerical simulations are carried out on the IEEE 33-node system, 118-node, 415-node, and real 76-node distribution systems to demonstrate the effectiveness and efficiency of the proposed topology identification model.

Topics & Concepts

Topology (electrical circuits)Computer scienceNode (physics)Network topologyGridEmbeddingIdentification (biology)Distributed computingComputer networkEngineeringMathematicsArtificial intelligenceBotanyStructural engineeringGeometryBiologyElectrical engineeringPower System Optimization and StabilityOptimal Power Flow DistributionComputational Physics and Python Applications
Gridtopo-GAN for Distribution System Topology Identification | Litcius