随机灾前规划和灾后恢复,以增强台风期间配电系统的抵御能力

Hui Hou, Junyi Tang, Zhiwei Zhang, Xixiu Wu, Ruizeng Wei, Lei Wang, Huan He
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引用次数: 0

摘要

近年来,台风等极端天气事件导致配电系统大规模停电。因此,制定增强分销系统弹性的战略已成为当务之急。本文提出了一个两阶段随机规划模型,旨在增强这种弹性。台风来临前,第一阶段建立了一个基于极值分布的综合风场模型,用于准确预测风速。同时,使用精细的应力-强度干扰模型来确定配电线路故障的可能性。考虑到线路损坏的不确定性,维修人员和移动应急发电机将战略性地安置在中转站。台风过后,第二阶段协调网络重组,派遣维修人员,并调动移动应急发电机,以最大限度地减少负荷并加快维修。该模型在IEEE 33总线配电系统上进行了验证,并结合了相应的交通网络,利用了2018年中国超强台风“曼克胡特”的数据。仿真表明,我们的方法可以有效地减少甩负荷和停电时间,从而提高配电系统的弹性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Stochastic pre-disaster planning and post-disaster restoration to enhance distribution system resilience during typhoons

In recent years, extreme weather events, such as typhoons, have led to large-scale power outages in distribution systems. As a result, developing strategies to bolster distribution system resilience has become imperative. This paper proposes a two-stage stochastic programming model aimed at enhancing this resilience. Prior to a typhoon, the first stage establishes a comprehensive wind field model based on extreme value distribution for accurate wind speed predictions. Simultaneously, a refined stress–strength interference model is used to determine the likelihood of distribution line failures. Taking into account the uncertainty of line damage, repair crews and mobile emergency generators are then strategically positioned at staging depots. Following the typhoon, the second stage coordinates network reconfiguration, dispatches repair crews, and mobilizes mobile emergency generators to minimize load shedding and expedite repairs. This model was validated on the IEEE 33-bus distribution system, coupled with a corresponding transportation network, utilizing data from the 2018 super typhoon Mangkhut'' in China. Simulations indicate that our approach can effectively reduce load shedding and power outage durations, thereby enhancing the resilience of distribution systems.

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