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Bibliographic Details
Main Authors: Huang, Yue, Sapkota, Dixant B., Singh, Manish K.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.22728
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author Huang, Yue
Sapkota, Dixant B.
Singh, Manish K.
author_facet Huang, Yue
Sapkota, Dixant B.
Singh, Manish K.
contents Power systems are globally experiencing an unprecedented growth in size and complexity due to the advent of nonconventional generation and consumption technologies. To navigate computational complexity, power system dynamic models are often reduced using techniques based on singular perturbation. However, several technical assumptions enabling traditional approaches are being challenged due to the heterogeneous, and often black-box, nature of modern power system component models. This work proposes two singular perturbation approaches that aim to optimally identify fast states that shall be reduced, without prior knowledge about the physical meaning of system states. After presenting a timescale-agnostic formulation for singular perturbation, the first approach uses greedy optimization to sequentially select states to be reduced. The second approach relies on a nonlinear optimization routine allowing state transformations while obtaining an optimally reduced model. Numerical studies on a test system featuring synchronous machines, inverters, and line dynamics demonstrate the generalizability and accuracy of the developed approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2511_22728
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Optimal Singular Perturbation-based Model Reduction for Heterogeneous Power Systems
Huang, Yue
Sapkota, Dixant B.
Singh, Manish K.
Systems and Control
Power systems are globally experiencing an unprecedented growth in size and complexity due to the advent of nonconventional generation and consumption technologies. To navigate computational complexity, power system dynamic models are often reduced using techniques based on singular perturbation. However, several technical assumptions enabling traditional approaches are being challenged due to the heterogeneous, and often black-box, nature of modern power system component models. This work proposes two singular perturbation approaches that aim to optimally identify fast states that shall be reduced, without prior knowledge about the physical meaning of system states. After presenting a timescale-agnostic formulation for singular perturbation, the first approach uses greedy optimization to sequentially select states to be reduced. The second approach relies on a nonlinear optimization routine allowing state transformations while obtaining an optimally reduced model. Numerical studies on a test system featuring synchronous machines, inverters, and line dynamics demonstrate the generalizability and accuracy of the developed approaches.
title Optimal Singular Perturbation-based Model Reduction for Heterogeneous Power Systems
topic Systems and Control
url https://arxiv.org/abs/2511.22728