MobiRescue: Reinforcement Learning based Rescue Team Dispatching in a Flooding Disaster

Li Yan, Shohaib Mahmud, Haiying Shen, N. Foutz, Joshua Anton
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引用次数: 4

Abstract

The effectiveness of dispatching rescue teams under a flooding disaster is crucial. However, previous emergency vehicle dispatching methods cannot handle flooding disaster situations, and previous rescue team dispatching methods cannot accurately estimate the positions of potential rescue requests or dispatch the rescue teams according to the real-time distribution of rescue requests. In this paper, we propose MobiRescue, a human Mobility based Rescue team dispatching system, that aims to maximize the total number of fulfilled rescue requests, minimize the rescue teams’ driving delay to the rescue requests’ positions and also the number of dispatched rescue teams. We studied a city-scale human mobility dataset for the Hurricane Florence, and found that the disaster impact severities are quite different in different regions, and people’s movement was significantly affected by the disaster, which means that the rescue teams’ driving routes should be adaptively adjusted. Then, we propose a Support Vector Machine (SVM) based method to predict the distribution of potential rescue requests on each road segment. Based on the predicted distribution, we develop a Reinforcement Learning (RL) based rescue team dispatching method to achieve the aforementioned goals. Our trace-driven experiments demonstrate the superior performance of MobiRescue over other comparison methods.
基于强化学习的洪水灾害救援队调度
在洪水灾害中,派遣救援队的效率至关重要。然而,以往的应急车辆调度方法无法处理洪涝灾害情况,以往的救援队调度方法无法准确估计潜在救援请求的位置,也无法根据救援请求的实时分布情况调度救援队。本文提出了一种基于人的机动性的救援队伍调度系统MobiRescue,该系统的目标是最大限度地满足救援请求的总数量,最大限度地减少救援队伍到达救援请求地点的行驶延迟,最大限度地减少派出的救援队伍数量。研究了佛罗伦萨飓风城市尺度的人员流动数据集,发现不同地区的灾害影响程度差异较大,人员流动受灾害影响显著,这意味着救援队伍的行驶路线需要进行自适应调整。然后,我们提出了一种基于支持向量机(SVM)的方法来预测每个路段上潜在救援请求的分布。基于预测分布,我们开发了一种基于强化学习(RL)的救援队调度方法来实现上述目标。我们的跟踪驱动实验证明了MobiRescue优于其他比较方法的性能。
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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