Deep Statistical Solver for Distribution System State Estimation
Benjamin Habib, Elvin Isufi, Ward van Breda, Arjen Jongepier, Jochen, L. Cremer

TL;DR
The paper introduces DSS$^2$, a deep learning GNN-based model for distribution system state estimation that respects physical laws, handles noisy data, and outperforms traditional methods in accuracy and robustness.
Contribution
It proposes a physics-informed, weakly supervised GNN model for DSSE that effectively manages noisy data without requiring labeled training data.
Findings
DSS$^2$ outperforms Weighted Least Squares in accuracy and robustness.
The model converges faster and is more computationally efficient.
It maintains good performance even with noisy, erroneous, or missing measurements.
Abstract
Implementing accurate Distribution System State Estimation (DSSE) faces several challenges, among which the lack of observability and the high density of the distribution system. While data-driven alternatives based on Machine Learning models could be a choice, they suffer in DSSE because of the lack of labeled data. In fact, measurements in the distribution system are often noisy, corrupted, and unavailable. To address these issues, we propose the Deep Statistical Solver for Distribution System State Estimation (DSS), a deep learning model based on graph neural networks (GNNs) that accounts for the network structure of the distribution system and for the physical governing power flow equations. DSS leverages hypergraphs to represent the heterogeneous components of the distribution systems and updates their latent representations via a node-centric message-passing scheme. A…
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Taxonomy
TopicsOptimal Power Flow Distribution · Energy Load and Power Forecasting · Power System Optimization and Stability
