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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >A particle swarm optimization approach for constraint joint single buyer-single vendor inventory problem with changeable lead time and (r,Q) policy in supply chain
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A particle swarm optimization approach for constraint joint single buyer-single vendor inventory problem with changeable lead time and (r,Q) policy in supply chain

机译:粒子群优化方法解决供应链中交货时间和(r,Q)策略可变的约束单个买方-单个卖方的联合库存问题

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In this paper, the chance-constraint joint single vendor-single buyer inventory problem is considered in which the demand is stochastic and the lead time is assumed to vary linearly with respect to the lot size. The shortage in combination of back order and lost sale is considered and the demand follows a uniform distribution. The order should be placed in multiple of packets, the service rate limitation on each product is considered a chance constraint, and there is a limited budget for the buyer to purchase the products. The goal is to determine the re-order point and the order quantity of each product such that the chain total cost is minimized. The model of this problem is shown to be an integer nonlinear programming type and in order to solve it, a particle swarm optimization (PSO) approach is used. To assess the efficiency of the proposed algorithm, the model is solved using both genetic algorithm and simulated annealing approaches as well. The results of the comparisons by a numerical example, in which a sensitivity analysis on the model parameters is also performed, show that the proposed PSO algorithm performs better than the other two methods in terms of the total supply chain costs.
机译:在本文中,考虑了机会受限的联合单一卖方-单一买方库存问题,其中需求是随机的,并且假定提前期相对于手数成线性变化。考虑到缺货和销售损失的组合短缺,需求遵循均匀分布。该订单应放在多个数据包中,每个产品的服务费率限制被认为是机会限制,并且买方购买产品的预算有限。目的是确定每种产品的再订购点和订购数量,以使链的总成本最小化。该问题的模型显示为整数非线性规划类型,并且为了解决该问题,使用了粒子群优化(PSO)方法。为了评估所提出算法的效率,使用遗传算法和模拟退火方法都对模型进行了求解。通过数值示例的比较结果(其中还对模型参数进行了敏感性分析)表明,就总供应链成本而言,所提出的PSO算法的性能优于其他两种方法。

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