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The optimization of warehouse location and resources distribution for emergency rescue under uncertainty

机译:不确定性下应急救援的仓库定位与资源分布的优化

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摘要

China is one of the countries that suffer the most natural disasters in the world. The situation of emergency response and rescue is extremely tough. Establishing the emergency warehouse is one of the important ways to cope with rapid-onset disasters. In this paper, a mixed integer programming (MIP) model based on time cost under uncertainty is proposed, which help solve the emergency warehouse location and distribution problem. Comprehensive consideration of factors such as time cost, penalty cost for lack of resources, alternative origins of resources from both suppliers and emergency warehouses, different means of transportation and multiple resources types are involved in our study. We also introduce uncertain scenarios to describe the severity of the disaster. Particle swarm optimization (PSO) and variable neighborhood search (VNS) are designed to solve the MIP model of different scales of instances. Numerous examples have been tested to compare two heuristics with commercial solver (CPLEX). Both of two algorithms can obtain the exact solution same as CPLEX in small-scale instances while show great performance on larger instances with 10 candidate warehouses, 25 disasters and 50 scenarios.
机译:中国是遭受世界上最自然灾害的国家之一。应急救援的形势非常艰难。建立应急仓库,以应对迅速发生的灾害的重要途径之一。在本文中,混合整数规划(MIP)模型基于不确定条件下的时间成本,提出了一种相助应急仓库的位置和分布问题。的因素,如时间成本,对于资源匮乏的惩罚成本综合考虑,从供应商和应急仓库资源,不同的交通方式和多种资源类型的替代来源都参与了我们的研究。我们还介绍了不确定的情景来描述这场灾难的严重性。粒子群优化(PSO)和可变邻域搜索(VNS)的设计来解决实例的不同尺度的MIP模型。无数的例子已经过测试,比较两个启发式与商业求解器(CPLEX)。双方的两种算法可以得到小规模的情况下一样CPLEX确切的解决方案,同时与10个候选仓库,25个灾害和50个方案显示在较大的情况下,强大的性能。

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