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Spatial Risk Analysis of Power Systems Resilience During Extreme Events

机译:极端事件期间电力系统弹性的空间风险分析

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摘要

The increased frequency of extreme events in recent years highlights the emerging need for the development of methods that could contribute to the mitigation of the impact of such events on critical infrastructures, as well as boost their resilience against them. This article proposes an online spatial risk analysis capable of providing an indication of the evolving risk of power systems regions subject to extreme events. A Severity Risk Index (SRI) with the support of real-time monitoring assesses the impact of the extreme events on the power system resilience, with application to the effect of windstorms on transmission networks. The index considers the spatial and temporal evolution of the extreme event, system operating conditions, and the degraded system performance during the event. SRI is based on probabilistic risk by condensing the probability and impact of possible failure scenarios while the event is spatially moving across a power system. Due to the large number of possible failures during an extreme event, a scenario generation and reduction algorithm is applied in order to reduce the computation time. SRI provides the operator with a probabilistic assessment that could lead to effective resilience-based decisions for risk mitigation. The IEEE 24-bus Reliability Test System has been used to demonstrate the effectiveness of the proposed online risk analysis, which was embedded in a sequential Monte Carlo simulation for capturing the spatiotemporal effects of extreme events and evaluating the effectiveness of the proposed method.
机译:近年来,极端事件的频率不断增加,这凸显了对开发方法的新兴需求,这些方法可能有助于减轻此类事件对关键基础设施的影响,并增强其抵御能力。本文提出了一种在线空间风险分析,该分析能够提供遭受极端事件影响的电力系统区域不断发展的风险的指示。具有实时监控支持的严重性风险指数(SRI)可评估极端事件对电力系统弹性的影响,并将其应用于暴风雨对输电网络的影响。该指数考虑了极端事件的时空演变,系统运行状况以及事件期间性能下降的情况。 SRI基于概率风险,通过浓缩事件在整个电源系统中的空间移动过程中可能发生的故障场景的可能性和影响来确定。由于极端事件期间可能发生的大量故障,因此应用了方案生成和归约算法以减少计算时间。 SRI为操作员提供了概率评估,该评估可能会导致基于有效的恢复力决策来降低风险。 IEEE 24总线可靠性测试系统已用于演示所建议的在线风险分析的有效性,该系统已嵌入顺序蒙特卡罗模拟中,以捕获极端事件的时空效应并评估所提出方法的有效性。

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