A Biased Random-Key Genetic Algorithm for the Rescue Unit Allocation and Scheduling Problem

Victor Cunha, Luciana S. Pessoa, M. Vellasco, R. Tanscheit, M. Pacheco
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引用次数: 9

Abstract

The occurrence of a disaster brings about damages, destruction, ecological disruption, loss of human life, human suffering, deterioration of health and health service of sufficient magnitude to require external assistance, demanding the mobilization and deployment of emergency rescue units within the affected area, in order to reduce casualties and economic losses. The scheduling of those units is one of the key issues in the emergency response phase and can be seen as a generalization of the unrelated parallel machine scheduling problem with sequence and machine dependent setup. The objective is to minimize the total weighted completion time of the incidents to be attended, where the weight correspond to its severity level. We propose a biased random-key genetic algorithm to tackle this problem, considering fuzzy required processing times for the incidents, and compare the solutions with those generated by a constructive heuristic, from the literature, developed to deal with this problem. Our results show that the genetic algorithm's solutions are 2.17% better than those obtained with the constructive heuristic when applied to instances with up to 40 incidents and 40 rescue units.
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一种求解救援单元分配与调度问题的有偏随机密钥遗传算法
灾害的发生造成损害、破坏、生态破坏、人命损失、人类痛苦、健康和保健服务恶化,其严重程度足以需要外部援助,要求在受灾地区动员和部署紧急救援单位,以减少伤亡和经济损失。这些单元的调度是应急响应阶段的关键问题之一,可以看作是具有顺序和机器相关设置的不相关并行机器调度问题的推广。目标是最小化要处理的事件的总加权完成时间,其中权重对应于其严重性级别。我们提出了一个有偏差的随机密钥遗传算法来解决这个问题,考虑到事件的模糊所需处理时间,并将解决方案与从文献中开发的用于处理这个问题的建设性启发式生成的解决方案进行比较。结果表明,在40个事件、40个救援单位的情况下,遗传算法的解比建设性启发式算法的解高2.17%。
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