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A hybrid method of fuzzy simulation and genetic algorithm to optimize constrained inventory control systems with stochastic replenishments and fuzzy demand(Conference Paper)

机译:模糊仿真和遗传算法的混合方法,以优化随机补给和模糊需求的约束库存控制系统(会议纸)

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摘要

Multi-periodic inventory control problems are mainly studied by employing one of two assumptions. First, the continuous review, where depending on the inventory level, orders can happen at any time, and next the periodic review, where orders can only be placed at the beginning of each period. In this paper, we relax these assumptions and assume the times between two replenishments are independent random variables. For the problem at hand, the decision variables (the maximum inventory of several products) are of integer-type and there is a single space-constraint. While demands are treated as fuzzy numbers, a combination of back-order and lost-sales is considered for the shortages. We demonstrate the model of this problem is of an integer-nonlinear-programming type. A hybrid method of fuzzy simulation (FS) and genetic algorithm (GA) is proposed to solve this problem. The performance of the proposed method is then compared with the performance of an existing hybrid FS and simulated annealing (SA) algorithm through three numerical examples containing different numbers of products. Furthermore, the applicability of the proposed methodology along with a sensitivity analysis on its parameters is shown by numerical examples. The comparison results show that, at least for the numerical examples under consideration, the hybrid method of FS and GA shows better performance than the hybrid method of FS and SA.
机译:多定期库存控制问题主要是通过使用两个假设中的一种来研究。首先,持续审查,根据库存水平,订单可以随时发生,下一个定期审查,订单只能放在每个时期的开始时。在本文中,我们放松了这些假设,并假设两个补货之间的时间是独立的随机变量。对于手头的问题,决策变量(几个产品的最大库存)是整数类型的,并且有一个空间约束。虽然需求被视为模糊数字,但缺款的后退和销售的组合被认为是短缺。我们展示了这个问题的模型是一个整数 - 非线性编程类型。提出了一种模糊仿真(FS)和遗传算法(GA)的混合方法来解决这个问题。然后将所提出的方法的性能与现有混合动力传递FS和模拟退火(SA)算法的性能进行比较,通过包含不同数量的产品的三个数值示例。此外,通过数值示例示出了所提出的方法的适用性以及对其参数的灵敏度分析。比较结果表明,至少对于所考虑的数值示例,FS和GA的混合方法显示出比FS和SA的混合方法更好的性能。

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