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Graph-based Simulation Framework for Power Resilience Estimation and Enhancement

Authors :
Wang, Xuesong
Yuan, Shuo
Magableh, Sharaf K.
Dawaghreh, Oraib
Wang, Caisheng
Wang, Le Yi
Publication Year :
2024

Abstract

The increasing frequency of extreme weather events poses significant risks to power distribution systems, leading to widespread outages and severe economic and social consequences. This paper presents a novel simulation framework for assessing and enhancing the resilience of power distribution networks under such conditions. Resilience is estimated through Monte Carlo simulations, which simulate extreme weather scenarios and evaluate the impact on infrastructure fragility. Due to the proprietary nature of power networks topology, a distribution network is synthesized using publicly available data. To generate the weather scenarios, an extreme weather generation method is developed. To enhance resilience, renewable resources such as solar panels and energy storage systems (batteries in this study) are incorporated. A customized Genetic Algorithm is used to determine the optimal locations and capacities for solar and battery installations, maximizing resilience while balancing cost constraints. Experiment results demonstrate that on a large-scale synthetic distribution network with more than 300,000 nodes and 300,000 edges, distributed energy resources (DERs) can significantly improve resilience metrics, providing utilities with valuable insights for community-level power system resilience enhancement.<br />Comment: Submitted to 2025 IEEE PES General Meeting

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.16909
Document Type :
Working Paper