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Tabu Search Heuristic for Joint Location-Inventory Problem with Stochastic Inventory Capacity and Practicality Constraints

机译:具有随机库存能力和实用性约束的联合位置-库存问题的禁忌搜索启发式

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摘要

This paper studies the joint location-inventory on a two-level supply chain where a single plant supplies a single commodity to a set of facilities which serve a set of customers with stochastic demands. The proposed model accounts for the probability of unfulfilled demand during the lead time, the probability of inventory capacity violation, and practicality constraints to eliminate impractical solutions including reorder points close to or higher than inventory capacity and order quantities close to zero. An iterative-nested tabu search heuristic with 100 possible parameter combinations is performed on test problems to identify the best parameter combination. The parameter combination of the least-transport-cost customer assignment rule, the complex facility swap type, the random open facility selection rule and the least-estimated-cost close facility selection rule is ranked highest with up to 73.33%, 60% and 50% chance yielding best, second-best or third-best solutions on respective clustered, random and random-clustered customer configuration. The average computational time of each run is less than two seconds on each problem instance. The sensitivity analysis of demand standard deviation, unit transportation cost and unit holding cost is also performed. On a small problem where a commercial solver can solve the proposed formulation, the tabu search heuristic yields a better solution with the much shorter CPU time of 0.148 s and the tighter upper bound of optimality gap of 15.07% than the solution from the commercial solver (the CPU time of 55.05 h and the upper bound of optimality gap of 16.98%).
机译:本文研究了两级供应链上的联合位置库存,其中一个工厂将单个商品供应给一组设施,以服务于一组具有随机需求的客户。所提出的模型考虑了交货期未满足需求的可能性,库存容量违规的可能性以及消除不切实际的解决方案的实用性约束,包括接近或高于库存容量的再订购点以及接近零的订货数量。对测试问题执行具有100种可能参数组合的迭代嵌套禁忌搜索试探法,以识别最佳参数组合。最小运输成本客户分配规则,复杂设施交换类型,随机开放设施选择规则和最小估计成本关闭设施选择规则的参数组合排名最高,分别高达73.33%,60%和50 %机会在各个群集,随机和随机群集客户配置上产生最佳,次优或次优解决方案。在每个问题实例上,每次运行的平均计算时间少于两秒钟。还进行了需求标准偏差,单位运输成本和单位持有成本的敏感性分析。在商业求解器可以解决所提出的公式的小问题上,禁忌搜索启发式方法比商业求解器提供的解决方案具有更短的CPU时间0.148 s,最优间隙上限更窄的15.07%( CPU时间为55.05小时,最佳差距上限为16.98%)。

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