Identifying optimal earthquake evacuation routes using genetic algorithm

Bea Barolo Artuz, Kathleen Mae M. Juadiong, Rhenish C. Simon, Astrid Korina S. Gabo
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Abstract

The disaster response team of Metropolitan Manila prepares for the 'Big One,' focusing on information dissemination as to what must be done when the earthquake happens. In order to make a quick and safe evacuation, it is necessary to formulate a clear-cut evacuation plan, specifically, to create evacuation routes. In this study, earthquake evacuation was simulated from Philippine General Hospital (PGH) to Rizal Park to identify optimal evacuation routes quantitatively using genetic algorithm (GA) and geospatial data. The problem was treated as a multi-objective optimization problem wherein the evacuation distance was minimized and the arrival probability maximized. Road networks were mapped using Geographical Information System (GIS) and information on road lengths and road blockage probability were imported to python. GA was used to search for optimal evacuation routes. The algorithm yielded a front of Pareto-optimal solutions. Subsequently, analytic hierarchical process (AHP) was applied to select the best optimal evacuation route according to preference. The best route identified has a distance of 1089.32 m and an arrival probability of 0.504. The model contributes to the preparation and planning of evacuation in the event of the 'Big One' ensuring the safest and most efficient evacuation route.
利用遗传算法确定最佳地震疏散路线
马尼拉大都会的灾难反应小组正在为“大地震”做准备,重点是发布地震发生时必须采取的措施的信息。为了快速、安全的进行疏散,需要制定明确的疏散计划,具体来说就是制定疏散路线。本研究模拟了从菲律宾总医院(PGH)到黎萨尔公园(Rizal Park)的地震疏散,利用遗传算法(GA)和地理空间数据定量确定最佳疏散路线。将该问题视为一个以疏散距离最小、到达概率最大为目标的多目标优化问题。使用地理信息系统(GIS)绘制道路网,并将道路长度和道路阻塞概率信息导入python。采用遗传算法搜索最优疏散路线。该算法产生了一系列帕累托最优解。随后,运用层次分析法(AHP),根据偏好选择最优疏散路线。确定的最佳路线距离为1089.32 m,到达概率为0.504。该模型有助于在“大地震”发生时准备和规划疏散,确保最安全和最有效的疏散路线。
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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