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Power system resilience has become a critical topic in recent years because of the increasing trend of extreme events and the growing integration of intermittent renewable energy sources. To enhance grid resilience against high-impact, low-frequency events, two questions should be answered: how to quantify the resilience of a given grid and how to incorporate the quantification into power system planning, operation, and restoration. This paper develops a new set of quantitative metrics with clear physical interpretation to comprehensively evaluate power system resilience. Using microgrids as an example, an event-based corrective scheduling (ECS) model and an online model predictive control (OMPC) model are developed to integrate the proposed quantitative resilience metrics into power system optimization models for resilience enhancement. The ECS model employs extreme event data to investigate the optimal restoration solution and to help microgrid operators prepare to respond to similar events. The OMPC model provides online decision-making support for operators to handle ongoing outages in the most resilient fashion. The effectiveness and superiority of the proposed quantitative resilience metrics and the resilience enhancement models are demonstrated through simulations and comparative studies on an IEEE test feeder and a real distribution feeder in Southern California.
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Yiyun Yao
National Renewable Energy Laboratory
Weijia Liu
Australian National University
Rishabh Jain
Indian Institute of Technology Ropar
IEEE Transactions on Sustainable Energy
National Renewable Energy Laboratory
Southern Methodist University
University of North Carolina at Charlotte
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Yao et al. (Mon,) studied this question.
synapsesocial.com/papers/69debe767702a00918b0ca42 — DOI: https://doi.org/10.1109/tste.2022.3230019