Saved in:
Bibliographic Details
Main Authors: Ma, Qinghua, Biswas, Reetam Sen, Osipov, Denis, Qu, Guannan, Kar, Soummya, Li, Shimiao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.14045
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914387293372416
author Ma, Qinghua
Biswas, Reetam Sen
Osipov, Denis
Qu, Guannan
Kar, Soummya
Li, Shimiao
author_facet Ma, Qinghua
Biswas, Reetam Sen
Osipov, Denis
Qu, Guannan
Kar, Soummya
Li, Shimiao
contents Existing or planned power grids need to evaluate survivability under extreme events, like a number of peak load overloading conditions, which could possibly cause system collapses (i.e. blackouts). For realistic extreme events that are correlated or share similar patterns, it is reasonable to expect that the dominant vulnerability or failure sources behind them share the same locations but with different severity. Early warning diagnosis that proactively identifies the key vulnerabilities responsible for a number of system collapses of interest can significantly enhance resilience. This paper proposes a multi-period sparse optimization method, enabling the discovery of persistent failure sources across a sequence of collapsed systems with increasing system stress, such as rising demand or worsening contingencies. This work defines persistency and efficiently integrates persistency constraints to capture the ``hidden'' evolving vulnerabilities. Circuit-theory based power flow formulations and circuit-inspired optimization heuristics are used to facilitate the scalability of the method. Experiments on benchmark systems show that the method reliably tracks persistent vulnerability locations under increasing load stress, and solves with scalability to large systems (on average taking around 200 s per scenario on 2000+ bus systems).
format Preprint
id arxiv_https___arxiv_org_abs_2510_14045
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-Period Sparse Optimization for Proactive Grid Blackout Diagnosis
Ma, Qinghua
Biswas, Reetam Sen
Osipov, Denis
Qu, Guannan
Kar, Soummya
Li, Shimiao
Systems and Control
Numerical Analysis
Existing or planned power grids need to evaluate survivability under extreme events, like a number of peak load overloading conditions, which could possibly cause system collapses (i.e. blackouts). For realistic extreme events that are correlated or share similar patterns, it is reasonable to expect that the dominant vulnerability or failure sources behind them share the same locations but with different severity. Early warning diagnosis that proactively identifies the key vulnerabilities responsible for a number of system collapses of interest can significantly enhance resilience. This paper proposes a multi-period sparse optimization method, enabling the discovery of persistent failure sources across a sequence of collapsed systems with increasing system stress, such as rising demand or worsening contingencies. This work defines persistency and efficiently integrates persistency constraints to capture the ``hidden'' evolving vulnerabilities. Circuit-theory based power flow formulations and circuit-inspired optimization heuristics are used to facilitate the scalability of the method. Experiments on benchmark systems show that the method reliably tracks persistent vulnerability locations under increasing load stress, and solves with scalability to large systems (on average taking around 200 s per scenario on 2000+ bus systems).
title Multi-Period Sparse Optimization for Proactive Grid Blackout Diagnosis
topic Systems and Control
Numerical Analysis
url https://arxiv.org/abs/2510.14045