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Exploiting network topology optimization and demand side management to improve bulk power system resilience under windstorms

机译:利用网络拓扑优化和需求侧管理来提高大功率系统在暴风雨下的适应能力

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摘要

Natural hazards are great threats to the safe and reliable operation of electric power systems. Some high-impact low-probability (HILP) events usually cause severe load losses to the power grid. Therefore, the enhancement of power system resilience appears to be particularly important. Nowadays, novel smart grid technologies provide more flexible ways for the power system operation. However, these technologies are not comprehensively incorporated in the resilience assessment framework to quantify their contribution for resilience enhancement. In this paper, fragility models for transmission lines and towers and sequential wind data are applied to simulate the operational states of power system under windstorm events. Then, a demand side management (DSM) program termed weather condition based real time pricing (WCRTP) framework is proposed to regulate the customer's electricity consumption behavior according to the extreme weather conditions. A network topology optimization (NTO) operation strategy is applied to mitigate the transmission congestion and realize the potential of transmission capacity by optimizing the network topology. The sequential Monte Carlo Simulation (MCS) method based resilience enhancement evaluation framework is developed to incorporate WCRTP and NTO. Numerical case studies are performed on modified RTS-79 systems. Both methods are proved to be effective self-adaptive measures for power systems in both customer behavior regulation aspect and transmission strategy aspect to boost the system resilience, which could eventually help power system operators to deal with the natural hazards in a more flexible, resourceful, and reliable manner.
机译:自然灾害是对电力系统安全可靠运行的巨大威胁。一些高影响力的低概率(HILP)事件通常会给电网造成严重的负载损失。因此,增强电力系统的弹性显得尤为重要。如今,新颖的智能电网技术为电力系统的运行提供了更为灵活的方式。但是,这些技术并未全面纳入弹性评估框架中,无法量化其对增强弹性的贡献。本文采用输电线路和铁塔的脆弱性模型以及顺序风数据来模拟暴风事件下电力系统的运行状态。然后,提出了一种需求侧管理(DSM)程序,该程序称为基于天气状况的实时定价(WCRTP)框架,用于根据极端天气状况调节客户的用电行为。应用网络拓扑优化(NTO)操作策略通过优化网络拓扑来减轻传输拥塞并实现传输容量的潜力。开发了基于顺序蒙特卡洛模拟(MCS)方法的弹性增强评估框架,以结合WCRTP和NTO。在改进的RTS-79系统上进行了数值案例研究。在客户行为调节方面和传输策略方面,这两种方法均被证明是电力系统的有效自适应措施,可以提高系统的弹性,最终可以帮助电力系统运营商以更加灵活,足智多谋的方式应对自然灾害。可靠的方式。

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