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Analysis of the maximum level policy in a production-distribution system

机译:生产分配系统中最高级别策略的分析

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We consider a production-distribution system, where a facility produces one commodity which is distributed to a set of retailers by a fleet of vehicles. Each retailer defines a maximum level of the inventory. The production policy, the retailers replenishment policies and the transportation policy have to be determined so as to minimize the total system cost. The overall cost is composed by fixed and variable production costs at the facility, inventory costs at both facility and retailers and routing costs. We study two different types of replenishment policies. The well-known order-up to level (OU) policy, where the quantity shipped to each retailer is such that the level of its inventory reaches the maximum level, and the maximum level (ML) policy, where the quantity shipped to each retailer is such that the inventory is not greater than the maximum level. We first show that when the transportation is outsourced, the problem with OU policy is NP-hard, whereas there exists a class of instances where the problem with ML policy can be solved in polynomial time. We also show the worst-case performance of the OU policy with respect to the more flexible ML policy. Then, we focus on the ML policy and the design of a hybrid heuristic. We also present an exact algorithm for the solution of the problem with one vehicle. Results of computational experiments carried out on small size instances show that the heuristic can produce high quality solutions in a very short amount of time. Results obtained on a large set of randomly generated problem instances are also shown, aimed at comparing the two policies.
机译:我们考虑一种生产分配系统,其中工厂生产一种商品,并通过一组车队将其分配给一组零售商。每个零售商都定义了最大库存水平。必须确定生产策略,零售商的补货策略和运输策略,以最大程度地降低系统总成本。总成本由设施的固定和可变生产成本,设施和零售商的库存成本以及路由成本组成。我们研究两种不同类型的补货政策。众所周知的按级别订购(OU)策略(其中向每个零售商的发货量使得其库存水平达到最大水平)和最大级别(ML)策略(其中向每个零售商的发货量)使得库存不大于最大数量。我们首先表明,当运输外包时,OU策略的问题是NP难题,而存在一类实例,其中ML策略的问题可以在多项式时间内解决。我们还显示了相对于更灵活的ML策略而言,OU策略的最坏情况性能。然后,我们关注ML策略和混合启发式算法的设计。我们还提出了一种解决单车问题的精确算法。在小型实例上进行的计算实验结果表明,启发式算法可以在很短的时间内生成高质量的解决方案。还显示了在大量随机生成的问题实例上获得的结果,旨在比较这两种策略。

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