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Efficient non-population-based algorithms for the permutation flowshop scheduling problem with makespan minimisation subject to a maximum tardiness

机译:有效的基于非人口的置换流水车间调度问题的算法,使制造期最小化受最大拖延的影响

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This paper focuses on the problem of scheduling jobs in a permutation flowshop with the objective of makespan minimisation subject to a maximum allowed tardiness for the jobs, a problem that combines two desirable manufacturing objectives related to machine utilisation and to customer satisfaction. Although several approximate algorithms have been proposed for this NP-hard problem, none of them can use the excellent speed-up method by Taillard (1990) [22] for makespan minimisation due to the special structure of the problem under consideration. In this paper, several properties of the problem are defined in order to be able to partly apply Taillard's acceleration. This mechanism, together with a novel feasible tabu local search method, allows us to further exploit the structure of solutions of the problem, and are incorporated in two proposed algorithms: a bounded-insertion-based constructive heuristic and an advanced non-population-based algorithm. These algorithms are compared with state-of-the-art algorithms under the same computer conditions. The results show that both algorithms improve existing ones and therefore, constitute the new state-of-art approximate solution procedures for the problem. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文着眼于在排列流水车间中安排作业的问题,其目标是使制造跨度最小化,以最大程度地允许作业拖延工作,该问题结合了与机器利用率和客户满意度有关的两个理想制造目标。尽管已经提出了几种解决该NP难问题的近似算法,但是由于所考虑问题的特殊结构,它们都不能使用Taailard(1990)[22]提出的出色的提速方法来最小化制造期。在本文中,定义了问题的几个属性,以便能够部分应用Taillard的加速度。该机制与一种新颖的可行禁忌局部搜索方法一起,使我们可以进一步利用问题的解决方案的结构,并将其结合到两个建议的算法中:基于有界插入的构造性启发式算法和基于高级非种群的算法算法。将这些算法与在相同计算机条件下的最新算法进行比较。结果表明,这两种算法都对现有算法进行了改进,因此构成了该问题的最新技术近似解决程序。 (C)2015 Elsevier Ltd.保留所有权利。

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