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首页> 外文期刊>International Journal of Industrial Engineering & Production Research >Optimizing Setup Time Reduction Rate in an Integrated JIT Lot-Splitting Model by Using PSO and GS Algorithms for Single and Multiple Delivery Policies
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Optimizing Setup Time Reduction Rate in an Integrated JIT Lot-Splitting Model by Using PSO and GS Algorithms for Single and Multiple Delivery Policies

机译:使用PSO和GS算法针对单个和多个交付策略,在集成JIT批量拆分模型中优化设置时间的减少率

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摘要

This article develops an integrated JIT lot-splitting model for a single supplier and a single buyer for only one product. The relationship between optimal lot size and setup time reduction is an important subject in such problems. In this model we analyze the effect of setup time reduction in the integrated lot splitting strategy. Two cases, Single Delivery (SD) case, and Multiple Delivery (MD) case are investigated before and after setup time reduction. The Gradient Search (GS) and Particle Swarm Optimization (PSO) are used in proposed model to determine the optimal order quantity (Q~*), optimal rate of setup reduction (R~*), and the optimal number of deliveries (N~*) -just for multiple deliveries case. These optimum values are calculated by minimizing the total cost for both buyer and supplier. Finally numerical example and sensitivity analysis are provided to compare the aggregate total cost for two cases and effectiveness of the considered algorithms. The results show that which policy for lotsizing is leading to lower total cost. Results show that the aggregate total cost in Single delivery policy is obtained 1.3% lower when we used the optimized setup time reduction rate.
机译:本文为仅一个产品的单个供应商和单个购买者开发了一个集成的JIT批量拆分模型。最佳批量与减少建立时间之间的关系是此类问题中的重要主题。在此模型中,我们分析了集成批次拆分策略中设置时间减少的影响。在减少设置时间之前和之后,研究了两种情况,即单次交付(SD)和多次交付(MD)情况。在提出的模型中,使用了梯度搜索(GS)和粒子群优化(PSO)来确定最佳订单量(Q〜*),最佳设置减少率(R〜*)和最佳交付量(N〜 *)-仅适用于多次交货的情况。通过使买方和供应商的总成本最小化来计算这些最佳值。最后,通过数值算例和敏感性分析,比较了两种情况下的总成本和所考虑算法的有效性。结果表明,哪种批量生产策略会降低总成本。结果表明,当我们使用优化的设置时间减少率时,单次交付策略的总总成本降低了1.3%。

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