利用 "伊恩 "飓风期间大规模移动设备定位数据进行飓风疏散分析

Luyu Liu, Xiaojian Zhang, Shangkun Jiang, Xilei Zhao
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引用次数: 0

摘要

飓风伊恩是佛罗里达州历史上死亡人数最多、损失最大的飓风,250 万人被命令撤离。在气候变化的背景下,我们目睹了越来越严重的飓风,移动设备定位数据为研究飓风疏散行为提供了前所未有的机会。我们利用字节级 GPS 数据集,以伊恩为案例,介绍了一种全面的飓风疏散行为算法:我们推断出疏散人员的离开时间,并将他们分为不同的行为群体,包括自我疏散、自愿疏散、强制疏散、影子疏散和区域内疏散。结果显示,着陆区(李县迈尔斯堡)的区外疏散率较低,但超区疏散率较高,而预测的着陆区(希尔斯伯勒县坦帕)则相反,这表明延迟疏散命令会产生影响。这些见解对加强未来的灾害规划和管理很有价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hurricane Evacuation Analysis with Large-scale Mobile Device Location Data during Hurricane Ian
Hurricane Ian is the deadliest and costliest hurricane in Florida's history, with 2.5 million people ordered to evacuate. As we witness increasingly severe hurricanes in the context of climate change, mobile device location data offers an unprecedented opportunity to study hurricane evacuation behaviors. With a terabyte-level GPS dataset, we introduce a holistic hurricane evacuation behavior algorithm with a case study of Ian: we infer evacuees' departure time and categorize them into different behavioral groups, including self, voluntary, mandatory, shadow and in-zone evacuees. Results show the landfall area (Fort Myers, Lee County) had lower out-of-zone but higher overall evacuation rate, while the predicted landfall area (Tampa, Hillsborough County) had the opposite, suggesting the effects of delayed evacuation order. Out-of-zone evacuation rates would increase from shore to inland. Spatiotemporal analysis identified three evacuation waves: during formation, before landfall, and after landfall. These insights are valuable for enhancing future disaster planning and management.
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