Ghasemi Peiman, Goodarzian Fariba, Abraham Ajith
Department of Logistics, Tourism and Service Management, German University of Technology in Oman (GUtech), Muscat, Oman.
Machine Intelligence Research Labs (MIR Labs), Scientific Network for Innovation and Research Excellence, 11, 3rd Street NW, P.O. Box 2259, Auburn, WA 98071 USA.
Appl Intell (Dordr). 2022;52(12):13729-13762. doi: 10.1007/s10489-022-03776-x. Epub 2022 Jun 3.
Millions of affected people and thousands of victims are consequences of earthquakes, every year. Therefore, it is necessary to prepare a proper preparedness and response planning. The objectives of this paper are ) minimizing the expected value of the total costs of relief supply chain, ) minimizing the maximum number of unsatisfied demands for relief staff and ) minimizing the total probability of unsuccessful evacuation in routes. In this paper, a scenario based stochastic multi-objective location-allocation-routing model is proposed for a real humanitarian relief logistics problem which focused on both pre- and post-disaster situations in presence of uncertainty. To cope with demand uncertainty, a simulation approach is used. The proposed model integrates these two phases simultaneously. Then, both strategic and operational decisions (pre-disaster and post-disaster), fairness in the evacuation, and relief item distribution including commodities and relief workers, victim evacuation including injured people, corpses and homeless people are also considered simultaneously in this paper. The presented model is solved utilizing the Epsilon-constraint method for small- and medium-scale problems and using three metaheuristic algorithms for the large-scale problem (case study). Empirical results illustrate that the model can be used to locate the shelters and relief distribution centers, determine appropriate routes and allocate resources in uncertain and real-life disaster situations.
每年,地震都会造成数百万人受灾,数千人遇难。因此,有必要制定适当的准备和应对计划。本文的目标是:(1)最小化救援供应链的总成本期望值;(2)最小化救援人员未满足需求的最大数量;(3)最小化疏散路线中疏散失败的总概率。本文针对一个实际的人道主义救援物流问题,提出了一种基于情景的随机多目标选址-分配-路由模型,该问题聚焦于存在不确定性的灾前和灾后情况。为应对需求不确定性,采用了一种模拟方法。所提出的模型同时整合了这两个阶段。此外,本文还同时考虑了战略和运营决策(灾前和灾后)、疏散中的公平性以及救援物资分配(包括商品和救援人员)、受灾人员疏散(包括受伤人员、尸体和无家可归者)。对于中小规模问题,利用ε-约束方法求解所提出的模型;对于大规模问题(案例研究),则使用三种元启发式算法求解。实证结果表明,该模型可用于在不确定的现实灾害情况下确定避难所和救援分发中心的位置、确定合适的路线以及分配资源。