Scalability and Sample Efficiency Analysis of Graph Neural Networks for
Power System State Estimation
- URL: http://arxiv.org/abs/2303.00105v2
- Date: Thu, 2 Mar 2023 14:05:50 GMT
- Title: Scalability and Sample Efficiency Analysis of Graph Neural Networks for
Power System State Estimation
- Authors: Ognjen Kundacina, Gorana Gojic, Mirsad Cosovic, Dragisa Miskovic,
Dejan Vukobratovic
- Abstract summary: This paper thoroughly evaluates a phasor measurement unit-only state estimator based on graph neural networks (GNNs) applied over factor graphs.
Our results show that the GNN-based state estimator exhibits high accuracy and efficient use of data.
- Score: 1.0499611180329804
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Data-driven state estimation (SE) is becoming increasingly important in
modern power systems, as it allows for more efficient analysis of system
behaviour using real-time measurement data. This paper thoroughly evaluates a
phasor measurement unit-only state estimator based on graph neural networks
(GNNs) applied over factor graphs. To assess the sample efficiency of the GNN
model, we perform multiple training experiments on various training set sizes.
Additionally, to evaluate the scalability of the GNN model, we conduct
experiments on power systems of various sizes. Our results show that the
GNN-based state estimator exhibits high accuracy and efficient use of data.
Additionally, it demonstrated scalability in terms of both memory usage and
inference time, making it a promising solution for data-driven SE in modern
power systems.
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