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Maximising profit for multiple-product, single-period, single-machine manufacturing under sequential set-up constraints that depend on lot size

机译:在取决于批量的顺序设置约束下,使多产品,单周期,单机制造的利润最大化

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摘要

The classical problem of order acceptance/rejection in make-to-order environments, when aiming to maximise profit with machine set-ups is extended in this paper to multiple set-ups depending on manufacturing batch size. In this case, if the manufacturing batch is larger than certain product-dependent bounds, not only is the initial set-up required but also periodic reset-ups are in order, generating sub-batches of the same order, such as tool resharpening and machine recalibration. A network formulation provides the basis for identifying effective algorithms to obtain a solution to the problem. A binary programming model (BPM) and a dynamic programming formulation (DPF) are proposed to solve the problem to optimality. In addition, two heuristics are developed to obtain lower bounds on maximum profit: each attempt to maximise customer satisfaction under production time restrictions, and to provide an extension to the classical knapsack problem. Numerical experimentation shows that computational time is not an issue when BPM and heuristics are applied, but the cost of commercial solvers for BPM algorithms might be problematic. However, if the aim is to code the DPF in-house, the curse of dimensionality in dynamic programming must be addressed, although dynamic programming does yield a full sensitivity analysis, which is useful for decision-making.
机译:当按订单生产环境中的订单接受/拒绝的经典问题,当旨在通过机器设置最大化利润时,在本文中将其扩展为多个设置,具体取决于制造批次的大小。在这种情况下,如果制造批次大于某些取决于产品的界限,则不仅需要进行初始设置,而且还需要进行定期重置,从而生成相同顺序的子批,例如重新磨刀和机器重新校准。网络公式为识别有效算法以获得问题解决方案提供了基础。提出了一种二进制规划模型(BPM)和一个动态规划公式(DPF)来解决该问题。此外,还开发了两种启发式方法来获取最大利润的下限:每种尝试都试图在生产时间限制下最大化客户满意度,并扩展了经典背包问题。数值实验表明,在应用BPM和启发式算法时,计算时间不是问题,但是BPM算法的商业求解器的成本可能存在问题。但是,如果目标是在内部对DPF进行编码,则尽管动态编程的确会产生完整的灵敏度分析,但对于决策来说很有用,但必须解决动态编程中的维数问题。

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