Abstract
Promptly perceiving distribution system states is challenged by frequent topology changes and uncertain power injections. To address these issues, a Meta-learning enhanced physics-informed graph attention convolutional network (Meta-PIGACN) model is proposed to handle topological variability in distribution system state estimation (DSSE). Specifically, physics information is integrated into the graph convolutional network, enabling a physics-informed edge-weighting process that incorporates physical information to control the aggregation of neighboring nodes. Besides, the graph attention mechanism automatically adjusts the importance of different neighboring nodes, allowing the capture and preservation of inherent system features across varying topologies, thereby improving state estimation accuracy. Furthermore, meta-learning is proposed to acquire empirical knowledge across multiple topologies so that the model can rapidly adapt to new configurations through iterative gradient descent updates even in large-scale systems. The simulation results based on the 33/118/1746-node distribution systems show the high accuracy and efficiency of the proposed model.
Original language | English |
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Pages (from-to) | 1186-1197 |
Number of pages | 12 |
Journal | IEEE Transactions on Network Science and Engineering |
Volume | 12 |
Issue number | 2 |
DOIs | |
Publication status | Published - 10 Jan 2025 |
Keywords
- Distribution system state estimation (DSSE)
- graph attention
- graph convolutional network
- physics aware
- topology change
ASJC Scopus subject areas
- Control and Systems Engineering
- Computer Science Applications
- Computer Networks and Communications