蒙特卡罗方法
暴发洪水
闪光灯(摄影)
强化学习
计算机科学
功率(物理)
分布(数学)
钢筋
模拟
环境科学
人工智能
工程类
大洪水
地理
数学
统计
物理
结构工程
量子力学
光学
数学分析
考古
作者
Suhail Afzal,Hazlie Mokhlis,Hazlee Azil Illias,Abdullah Akram Bajwa,Hasmaini Mohamad,Nurulafiqah Nadzirah Mansor,Lilik Jamilatul Awalin,Agileswari K. Ramasamy
标识
DOI:10.1016/j.asej.2025.103325
摘要
Flash floods are recognized as a major threat to power distribution systems. Thus, enhancing distribution system resilience against this catastrophic natural hazard is essential and imperative. Commonly researchers have used two-dimensional (2D) surface flow models to evaluate flood risk on power systems. Though these 2D models can provide descriptions of overland flow propagation, they fail to provide overflow locations which are crucial in flash flood modelling. Furthermore, these models are computationally expensive, hence not suitable for real-time analysis. Therefore, this study presents a probabilistic flood model that is easy to develop and can handle heavy uncertainties related to urban flash flooding. In this respect, the Monte Carlo technique is employed to predict overflow locations in a grid-based environment. Considering rainfall intensity, soil moisture, and curvature of the surface, reinforcement learning is then leveraged to trace the flow path of floodwater from these overflow locations, to identify distribution substations at the risk of inundation. The proposed flood model is applied to IEEE 33-bus and a real 23-bus distribution systems considering a hypothetical terrain and validated on a real urban area. This work will assist decision-makers and utility operators in enhancing power system resiliency to urban flash floods while overcoming the barriers of limited data and time.
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