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Integrated lot sizing and energy-efficient job shop scheduling problem in manufacturing/remanufacturing systems

机译:制造/再制造系统中集成的批量确定和节能的车间调度问题

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摘要

In this paper, a system designed to produce multi-class single-level products through both manufacturing of raw materials and remanufacturing of return products is taken into consideration, with the aim of defining and solving an integrated lot sizing and energy-efficient job shop scheduling problem. A mixed-integer programming formulation is proposed for the problem. This model minimizes not only the manufacturing and remanufacturing costs, the setup cost and the inventory holding and backlogging costs over the planning horizon, but also the energy costs paid for the utilization of machines and the compression of processing times. Since the model is NP-hard, a relax-and-fix heuristic is proposed to solve the problem. The proposed algorithm is illustrated with a numerical example, and its performance is tested on a set of randomly generated experimental problems. The results show the efficiency of the algorithm. Besides, the performance of the proposed energy-efficient model has been compared with classical models (that consider only the minimization of manufacturingiremanufacturing, holding and setup costs); the results indicate that the proposed model not only diminishes the energy consumption and the machines idle times, but it actually reduces the overall cost of the system.(C) 2017 Elsevier Ltd. All rights reserved.
机译:本文考虑了一个旨在通过原材料制造和退货再制造来生产多级单级产品的系统,目的是定义和解决集成的批量确定和节能工作计划问题。针对该问题提出了混合整数编程公式。该模型不仅可以最大程度地减少制造和再制造成本,设置成本以及在计划范围内的存货和积压成本,而且还可以最大程度地减少因使用机器和缩短加工时间而产生的能源成本。由于该模型是NP难模型,因此提出了一种松弛固定启发式算法来解决该问题。通过数值示例说明了该算法,并在一组随机产生的实验问题上测试了其性能。实验结果表明了该算法的有效性。此外,已将拟议的节能模型的性能与经典模型进行了比较(经典模型仅考虑最小化制造,制造,持有和设置成本);结果表明,提出的模型不仅减少了能耗和机器的闲置时间,而且实际上降低了系统的总体成本。(C)2017 Elsevier Ltd.保留所有权利。

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