LGSYSOC-PHFeb 12, 2021

Physics-Informed Graphical Neural Network for Parameter & State Estimations in Power Systems

arXiv:2102.06349v161 citations
Originality Incremental advance
AI Analysis

This addresses the need for reliable and explainable real-time predictions in power system operations, particularly in data-scarce regimes, though it is an incremental improvement over existing deep learning approaches.

The paper tackles the challenge of parameter and state estimation in power systems by embedding physics modeling into graphical neural networks, resulting in a method called Power-GNN that outperforms vanilla neural networks in realistic power networks with thousands of loads and hundreds of generators.

Parameter Estimation (PE) and State Estimation (SE) are the most wide-spread tasks in the system engineering. They need to be done automatically, fast and frequently, as measurements arrive. Deep Learning (DL) holds the promise of tackling the challenge, however in so far, as PE and SE in power systems is concerned, (a) DL did not win trust of the system operators because of the lack of the physics of electricity based, interpretations and (b) DL remained illusive in the operational regimes were data is scarce. To address this, we present a hybrid scheme which embeds physics modeling of power systems into Graphical Neural Networks (GNN), therefore empowering system operators with a reliable and explainable real-time predictions which can then be used to control the critical infrastructure. To enable progress towards trustworthy DL for PE and SE, we build a physics-informed method, named Power-GNN, which reconstructs physical, thus interpretable, parameters within Effective Power Flow (EPF) models, such as admittances of effective power lines, and NN parameters, representing implicitly unobserved elements of the system. In our experiments, we test the Power-GNN on different realistic power networks, including these with thousands of loads and hundreds of generators. We show that the Power-GNN outperforms vanilla NN scheme unaware of the EPF physics.

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