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Comparison between rule- and optimization-based workload control concepts: a simulation optimization approach

机译:规则与优化工作负载控制概念的比较:模拟优化方法

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摘要

An important goal of Production Planning and Control systems is to achieve short and predictable flow times, especially where high flexibility in meeting customer demand is required, while maintaining high output and due-date performance. One approach to this problem is the workload control (WLC) concept. Within WLC research two directions have been developed, largely separately, over time: Rule based and optimisation-based models. If a company intends to introduce an order release concept based on WLC it first has to decide which of these two approaches should be applied. Therefore, this paper compares two of the most widely used and considered best performing periodic order release models out of both streams: the LUMS (rule based) and the clearing function model (optimisation based). The parameters of both approaches are set using simulation optimisation. The performance is compared using a simulation study of a hypothetical job shop in a rolling horizon setting. The results show that the optimisation model outperforms the rule-based mechanism in all instances with stochastic demand (exponential inter-arrival times), but is outperformed in aggregate cost of backorders and inventory holding and balancing measures by the LUMS approach for scenarios with high utilisation and seasonal demand.
机译:生产规划和控制系统的一个重要目标是实现简短和可预测的流量时间,特别是在需要满足客户需求方面的高度灵活性,同时保持高输出和截止日期性能。这个问题的一种方法是工作负载控制(WLC)概念。在WLC研究中,两方向已经开发,主要是单独的,随着时间的推移:基于规则和基于优化的模型。如果公司打算以WLC介绍一个订单发布概念,首先必须决定应该应用这两种方法中的哪一个。因此,本文比较了两个最广泛使用的两个最广泛使用的定期顺序释放模型:LUMS(基于规则)和清算功能模型(基于优化)。使用仿真优化设置两种方法的参数。使用滚动地平线设置的假设作业商店的模拟研究进行比较。结果表明,优化模型在具有随机需求的所有实例(指数际际时间段)中的基于规则的机制,但由于具有高利用率的LUMS方法,以符合符合的回报和库存持有和平衡措施的总体成本优于卓越的情况和季节性需求。

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