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Road network risk analysis considering people flow under ordinary and evacuation situations

机译:考虑人们在普通和疏散情况下流动的道路网络风险分析

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Both pre-disaster approaches, e.g., mitigation and preparedness, and post-disaster approaches, e.g., response and recovery, play important roles to mitigate the damage from large-scale disasters. From the viewpoint of disaster response, there have been studies on evacuation guiding schemes and applications using evacuees' mobile devices, e.g., smart phones. On the other hand, disaster preparedness has also been studied mainly on geographical information analysis, e.g., road blockage probability and people flow data. The road blockage probability is the probability that the corresponding road is blocked due to collapse of roadside buildings when an earthquake occurs. The people flow data express the people flow in usual time. In this paper, with the help of evacuation guiding schemes, road blockage probability, and people flow data, we propose a road network risk analysis approach that considers people flow in both ordinary and evacuation situations, which can be used to as a tool to strengthen the urban fabric for fostering better evacuees' responses in disaster situations. First, the proposed approach derives ordinary road demand, which is the degree of road usage at a certain interval in an ordinary situation, from the people flow data. Then, it calculates evacuation road demand, i.e., the degree of road usage at a certain interval in an evacuation situation, by extending the edge betweenness centrality under the assumption that people located according to the ordinary road demand move to refuges along their evacuation paths. Finally, it detects roads with high risk of encountering blocked road segments by combining the road blockage probability and evacuation road demand. Through numerical experiments under a case study of Arako area of Nagoya city in Japan, we show the proposed approach can detect such high-risk roads. Furthermore, we show the detected roads spatially change according to the people flow in ordinary situations, evacuation behavior, and disaster occurrence time.
机译:灾后预处理,例如,缓解和准备以及灾后方法,例如响应和恢复,发挥重要作用以减轻大规模灾害的损害。从灾害响应的角度来看,已经研究了疏散指导方案和应用使用撤离者的移动设备,例如智能手机。另一方面,也研究了备灾,主要研究了地理信息分析,例如道路阻塞概率和人流量数据。道路堵塞概率是由于道路发生时由于路边建筑物的崩溃而被阻挡的可能性。人们流动数据表达了通常的时间流动。在本文中,在疏散指导方案的帮助下,道路阻断概率和人流量数据,我们提出了一种道路网络风险分析方法,即考虑人们在普通和疏散情况下流动,这可以用作加强的工具城市面料促进更好的撤离灾害情况的回应。首先,拟议的方法导出普通的道路需求,这是在人们流量数据中在普通情况下在一定间隔内使用的道路使用程度。然后,通过在疏散情况下,通过在普通道路需求的假设下延伸到疏散情况,在疏散情况下,在疏散情况下,在疏散情况下,在疏散情况下,在疏散情况下的路径使用程度。最后,通过组合道路堵塞概率和疏散道路需求,它检测具有高风险的道路遇到堵塞的道路段。通过数字实验,在日本名古屋市Arako地区的案例研究中,我们展示了所提出的方法可以检测这种高风险道路。此外,我们在普通情况下流动,疏散行为和灾难发生时间来显示检测到的道路空间地改变。

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