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Physics Embedded Graph Convolution Neural Network for Power Flow Calculation Considering Uncertain Injections and Topology

Maosheng Gao, Juan Yu, Zhifang Yang, Junbo Zhao

2023IEEE Transactions on Neural Networks and Learning Systems44 citationsDOI

Abstract

Probabilistic analysis tool is important to quantify the impacts of the uncertainties on power system operations. However, the repetitive calculations of power flow are time-consuming. To address this issue, data-driven approaches are proposed but they are not robust to the uncertain injections and varying topology. This article proposes a model-driven graph convolution neural network (MD-GCN) for power flow calculation with high-computational efficiency and good robustness to topology changes. Compared with the basic graph convolution neural network (GCN), the construction of MD-GCN considers the physical connection relationships among different nodes. This is achieved by embedding the linearized power flow model into the layer-wise propagation. Such a structure enhances the interpretability of the network forward propagation. To ensure that enough features are extracted in MD-GCN, a new input feature construction method with multiple neighborhood aggregations and a global pooling layer are developed. This allows us to integrate both global features and neighborhood features, yielding the complete features representation of the system-wide impacts on every single node. Numerical results on the IEEE 30-bus, 57-bus, 118-bus, and 1354-bus systems demonstrate that the proposed method achieves much better performance as compared to other approaches in the presence of uncertain power injections and system topology.

Topics & Concepts

InterpretabilityTopology (electrical circuits)Robustness (evolution)Computer scienceProbabilistic logicGraphNetwork topologyArtificial neural networkConvolution (computer science)Electric power systemAlgorithmTheoretical computer sciencePower (physics)MathematicsArtificial intelligenceComputer networkQuantum mechanicsCombinatoricsPhysicsBiochemistryGeneChemistryOptimal Power Flow DistributionPower System Optimization and StabilityEnergy Load and Power Forecasting
Physics Embedded Graph Convolution Neural Network for Power Flow Calculation Considering Uncertain Injections and Topology | Litcius