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Bibliographic Details
Main Authors: Wu, Shengyang, Dvorkin, Vladimir
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.24725
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author Wu, Shengyang
Dvorkin, Vladimir
author_facet Wu, Shengyang
Dvorkin, Vladimir
contents Dynamic models of power systems are critical for analyzing grid response to disturbances and blackouts, but the release of real-world dynamic models is hindered by privacy and cybersecurity concerns, as such models carry sensitive information about transmission, generation, and load parameters. We develop an algorithm for synthesizing dynamic grid models from real-world power grids balancing two objectives: the privacy of the source grid, quantitatively measured using the notion of differential privacy, and the fidelity of the synthesized model. The algorithm applies privacy-preserving noise to obfuscate the original grid parameters, but then optimizes the perturbed parameters to ensure that the resulting model dynamics are statistically consistent with those observed in the source grid. Application to the frequency dynamics of the IEEE 30-bus system reveals the inherent privacy-fidelity trade-off: stricter privacy requirements degrade modeling fidelity, yet optimization significantly improves the quality of the synthesized models.
format Preprint
id arxiv_https___arxiv_org_abs_2605_24725
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Differentially Private Obfuscation of Power Grid Dynamics
Wu, Shengyang
Dvorkin, Vladimir
Systems and Control
Dynamic models of power systems are critical for analyzing grid response to disturbances and blackouts, but the release of real-world dynamic models is hindered by privacy and cybersecurity concerns, as such models carry sensitive information about transmission, generation, and load parameters. We develop an algorithm for synthesizing dynamic grid models from real-world power grids balancing two objectives: the privacy of the source grid, quantitatively measured using the notion of differential privacy, and the fidelity of the synthesized model. The algorithm applies privacy-preserving noise to obfuscate the original grid parameters, but then optimizes the perturbed parameters to ensure that the resulting model dynamics are statistically consistent with those observed in the source grid. Application to the frequency dynamics of the IEEE 30-bus system reveals the inherent privacy-fidelity trade-off: stricter privacy requirements degrade modeling fidelity, yet optimization significantly improves the quality of the synthesized models.
title Differentially Private Obfuscation of Power Grid Dynamics
topic Systems and Control
url https://arxiv.org/abs/2605.24725