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A multi-objective differential evolution algorithm for parallel batch processing machine scheduling considering electricity consumption cost

机译:考虑电费成本的并行批处理机调度多目标差分进化算法

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The manufacturing industry consumes massive amounts of energy and produces great numbers of greenhouse gases every year. Recently, an increasing attention has been paid to the energy efficiency of the manufacturing industry. This paper considers a parallel batch processing machine (BPM) scheduling problem in the presence of dynamic job arrivals and a time-of-use pricing scheme. The objective is to simultaneously minimize makespan, a measure of production efficiency and minimize total electricity cost (TEC), an indicator for environmental sustainability. A BPM is capable of processing multiple jobs at a time, which has wide applications in many manufacturing industries such as electronics manufacturing facilities and steel-making plants. We formulate this problem as a mixed integer programming model. Considering the problem is strongly NP-hard, a multi-objective differential evolution algorithm is proposed for effectively solving the problem at large scale. The performance of the proposed algorithm is evaluated by comparing it to the well-known NSGA-II algorithm and another multi-objective optimization algorithm AMGA. Experimental results show that the proposed algorithm performs better than NSGA-II and AMGA in terms of solution quality and distribution. (C) 2018 Elsevier Ltd. All rights reserved.
机译:制造业每年消耗大量能源,并产生大量温室气体。最近,人们越来越关注制造业的能源效率。本文考虑存在动态作业到达和使用时间定价方案的并行批处理机器(BPM)调度问题。目标是同时最小化制造时间(衡量生产效率的指标)和最小化总电力成本(TEC)(环境可持续性的指标)。 BPM能够一次处理多个作业,在许多制造业中都有广泛的应用,例如电子制造设施和炼钢厂。我们将此问题表述为混合整数规划模型。考虑到该问题具有较强的NP难性,提出了一种多目标差分进化算法来有效地大规模解决该问题。通过将其与著名的NSGA-II算法和另一种多目标优化算法AMGA进行比较,可以评估该算法的性能。实验结果表明,该算法在解决方案质量和分布上均优于NSGA-II和AMGA。 (C)2018 Elsevier Ltd.保留所有权利。

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