Unmanned Aerial Vehicle Assisted Healthcare Resource Allocation in Disasters

L. Diao, Yue Liu, William Liu, L. Chiaraviglio
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引用次数: 1

Abstract

The fast response to a disaster is a key factor in rescuing victims who are trapped in the affected areas. The high amount of casualties as well as life and medical resource allocation cause the complexity of disaster rescuing. This paper concentrates on developing a multi-objective (MO) optimization model and adopts an algorithm named Probabilistic Solution Discovery Algorithm (PSDA) to generate a set of Pareto solutions on account of (i) the affected location, (ii) the number of victims in the affected location, (iii) the amount of resource, including food, water, and medicine, (iv) the location of the resource, (v) the deployment of UAVs. PSDA is used to solve the MO model, each of the Pareto solutions is an emergency rescuing strategy. A study case is provided to validate the perspectives. The results of resource allocation generated with the five aforementioned factors have confirmed the effectiveness of the proposed solution.
无人驾驶飞行器辅助灾难中的医疗资源分配
对灾难的快速反应是营救被困灾区灾民的关键因素。大量的人员伤亡以及生命和医疗资源的分配造成了灾难救援的复杂性。本文致力于开发一种多目标(MO)优化模型,并采用一种名为 "概率解发现算法"(PSDA)的算法来生成一组帕累托解,其考虑因素包括:(i) 受灾地点;(ii) 受灾地点的灾民数量;(iii) 包括食物、水和药品在内的资源数量;(iv) 资源的位置;(v) 无人机的部署。使用 PSDA 对 MO 模型进行求解,每个帕累托方案都是一种紧急救援策略。提供了一个研究案例来验证这些观点。上述五个因素产生的资源分配结果证实了所提方案的有效性。
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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