Multi-objective resilient recovery strategy for urban wind-solar-MPS-EV electric system after disastrous events

The situation in an urban distribution network becomes intricate under high-impact, low-probability events. Furthermore, the growing quantity of components within the urban distribution network renders their analysis more challenging. Thus, the desired recovery strategy should not only meet the requ...

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Veröffentlicht in:Applied energy 2024-09, Vol.369, p.123551, Article 123551
Hauptverfasser: Xu, Yihao, Xing, Yankai, Zhang, Guangdou, Li, Jian, An, Haopeng, Bamisile, Olusola, Huang, Qi
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container_issue
container_start_page 123551
container_title Applied energy
container_volume 369
creator Xu, Yihao
Xing, Yankai
Zhang, Guangdou
Li, Jian
An, Haopeng
Bamisile, Olusola
Huang, Qi
description The situation in an urban distribution network becomes intricate under high-impact, low-probability events. Furthermore, the growing quantity of components within the urban distribution network renders their analysis more challenging. Thus, the desired recovery strategy should not only meet the requirements of restoration rates but also guarantee a stable power supply. To address this issue, this paper proposes a multi-objective decision analysis framework, which consists of EV user requirements, MPS routing, and emergency repair crew schedule, to generate a more precise recovery strategy. These objectives' dynamic behaviors in the transportation network are transformed into spatiotemporal characteristic variables and introduced into inequality constraints. Also, the Wasserstein generative adversarial network with gradient penalty is employed in this framework to characterize solar and wind realistic output. By minimizing the weighted sum composed of MPS operational costs, EV user expenses, load loss, and voltage fluctuation, an optimized recovery strategy is provided to the grid operator. Case studies investigate the effectiveness of recovery strategy in IEEE 33-bus and 123-bus benchmark systems. The results indicate the proposed approach can effectively handle complex scenarios achieving rapid and reliable restoration, while also preserving regular charging behavior and maintaining a stable power voltage supply. •Enhance resilience for urban distribution networks under disaster events.•Coordinate multiple recovery components and renewable energy integration.•Consider public requirements for fast restoration, power quality, and EV charging.•Involve renewable energy uncertainty generation.•Identify the strategy selection in response to energy uncertainty.
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source Elsevier ScienceDirect Journals
subjects behavior
case studies
decision support systems
Distribution system restoration
electric potential difference
Electric vehicles
High-impact and low-probability (HILP) events
operating costs
Power quality
Power system resilience
rendering
wind
title Multi-objective resilient recovery strategy for urban wind-solar-MPS-EV electric system after disastrous events
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