Linear Power System Modeling and Analysis Across Wide Operating Ranges: A Hierarchical Neural State-Space Equation Approach
Weicheng Liu, Di Liu, Songyan Zhang, Chao Lu

TL;DR
This paper introduces a hierarchical neural state-space equation approach for power system modeling that maintains accuracy across wide operating ranges, improving interpretability and adaptability over traditional methods.
Contribution
A novel hierarchical neural state-space model with virtual state observers and multi-stage training, enhancing power system analysis across diverse operating conditions.
Findings
Accurately models power system dynamics with unmeasurable states.
Demonstrates superior stability analysis performance on test systems.
Mitigates curse of dimensionality through hierarchical architecture.
Abstract
Developing a unified small-signal model for modern, large-scale power systems that remains accurate across a wide range of operating ranges presents a formidable challenge. Traditional methods, spanning mechanistic modeling, modal identification, and deep learning, have yet to fully overcome persistent limitations in accuracy, universal applicability, and interpretability. In this paper, a novel hierarchical neural state-space equation approach is proposed to overcome these obstacles, achieving strong representation, high interpretability, and superior adaptability to both system scale and varying operating points. Specifically, we first introduce neural state-space equations integrated with virtual state observers to accurately characterize the dynamics of power system devices, even in the presence of unmeasurable states. Subsequently, a hierarchical architecture is designed to handle…
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