Heterogeneous Graph Neural Networks for Short-term State Forecasting in Power Systems across Domains and Time Scales: A Hydroelectric Power Plant Case Study
Raffael Theiler, Olga Fink

TL;DR
This paper introduces a novel heterogeneous graph neural network approach for short-term power system state forecasting across multiple physical domains, demonstrating significant accuracy improvements over traditional methods.
Contribution
It develops a heterogeneous graph attention network that models inter- and intra-domain relationships in multi-domain energy systems, addressing limitations of existing homogeneous GNNs.
Findings
Achieved 35.5% reduction in normalized root mean square error compared to baselines.
Effectively models multi-domain sensor data with different temporal dynamics.
Outperforms conventional methods in multi-domain, multi-rate power system forecasting.
Abstract
Accurate short-term state forecasting is essential for efficient and stable operation of modern power systems, especially in the context of increasing variability introduced by renewable and distributed energy resources. As these systems evolve rapidly, it becomes increasingly important to reliably predict their states in the short term to ensure operational stability, support control decisions, and enable interpretable monitoring of sensor and machine behavior. Modern power systems often span multiple physical domains - including electrical, mechanical, hydraulic, and thermal - posing significant challenges for modeling and prediction. Graph Neural Networks (GNNs) have emerged as a promising data-driven framework for system state estimation and state forecasting in such settings. By leveraging the topological structure of sensor networks, GNNs can implicitly learn inter-sensor…
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