供应商管理库存模型中的遗传算法参数

Cahyo Pramudyo
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引用次数: 2

摘要

为了处理供应商和零售商之间的信息交换问题,供应商管理库存(vendor Managed Inventory, VMI)提供了一个很好的方法来处理这个问题。双方的信息交流提高了供应链绩效。在以往的研究工作中,建立了一个针对一个供应商和一个零售商的随机模型。利用遗传算法(GA)进行仿真优化来解决这一问题。遗传算法中有两个重要参数(变异概率和交叉概率)。本研究旨在分析遗传算法参数与最优解之间的关系。本研究比较了遗传算法参数的多种组合及其对最优解和达到最优解的时间的影响。研究结果表明,最优组合得到最优解。不幸的是,最佳组合只适用于特定条件,增加/减少GA参数值并不能自动提高最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic Algorithm Parameters in a Vendor Managed Inventory Model
To handle the information exchange problem between a vendor and a retailer, Vendor Managed Inventory (VMI) provides a good approach to handle the problem. Information exchanges between both sides enhance supply chain performance. In a previous research work, a stochastic model for one vendor and one retailer has been developed. Simulation optimization using genetic algorithm (GA) has been use to solve the problem. There are 2 important parameters in genetic algorithm (probability of mutation and probability of crossover). This research aims at analyzing relations between GA parameters and optimal solutions. This research compares many combinations of GA parameters and the effects on optimal solutions and time to reach the optimal solutions. This research concludes that the best combination reaches the optimal solutions. Unfortunately, the best combination is only suitable for a certain condition and increasing/reducing GA parameters values do not automatically improve the optimal solutions.
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