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Energy-efficient no-wait permutation flow shop scheduling by adaptive multi-objective variable neighborhood search

机译:通过自适应多目标变量邻域搜索调度节能无等待置换流程。

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This paper considers an energy-efficient no-wait permutation flow shop scheduling problem to minimize makespan and total energy consumption, simultaneously. The processing speeds of machines can be dynamically adjusted for different jobs. In general, lower processing speeds require less energy consumption but result in longer processing times, while higher speeds take the opposite effect. To reach the Pareto front of the problem, we propose an adaptive multi-objective variable neighborhood search (AM-VNS) algorithm. Specifically, we first design two basic speed adjusting heuristics which can reduce the energy consumption of a given solution without worsening its makespan. Two widely used neighborhood-generating operations, i.e., insertion and swap, are adapted and integrated into the variable neighborhood descent phase. With respect to their executing order, two variable neighborhood descent structures can be designed. We adopt an adaptive mechanism to dynamically determine which structure will be selected to handle the current solution. To further improve the performance of the algorithm, we develop a novel problem-specific shake procedure. We also introduce accelerating techniques to speed up the algorithm. Computational results show that the AM-VNS algorithm outperforms multi-objective evolutionary algorithms NSGA-II and SPEA-II. (C) 2019 Elsevier Ltd. All rights reserved.
机译:本文考虑了节能的无等级排列流程商店调度问题,以同时最大限度地减少Mapspan和总能耗。可以为不同的作业动态调整机器的处理速度。通常,较低的处理速度需要较少的能量消耗,但导致更长的处理时间,而较高的速度则采取相反的效果。要到达问题的帕累托,我们提出了一种自适应多目标变量邻域搜索(AM-VNS)算法。具体而言,我们首先设计两种基本速度调节启发式,可以降低给定解决方案的能耗而不恶化其Makespan。两个广泛使用的邻域生成操作,即插入和交换,适用并集成到可变邻域下降阶段。关于其执行顺序,可以设计两个可变邻域下降结构。我们采用自适应机制来动态确定将选择哪个结构来处理当前解决方案。为了进一步提高算法的性能,我们开发了一种新的特定问题的抖动程序。我们还介绍加速技术以加快算法。计算结果表明,AM-VNS算法优于多目标进化算法NSGA-II和SPEA-II。 (c)2019 Elsevier Ltd.保留所有权利。

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