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A Multi-Restart Iterated Local Search Algorithm for the Permutation Flow Shop Problem Minimizing Total Flow Time

机译:置换流水车间问题的多重启迭代局部搜索算法,可将总流时间最小化

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摘要

A variety of metaheuristics have been developed to solve the permutation flow shop problem minimizing total flow time. Iterated local search (ILS) is a simple but powerful metaheuristic used to solve this problem. Fundamentally, ILS is a procedure that needs to be restarted from another solution when it is trapped in a local optimum. A new solution is often generated by only slightly perturbing the best known solution, narrowing the search space and leading to a stagnant state. In this paper, a strategy is proposed to allow the restart solution to be generated from a group of solutions drawn from local optima. This allows an extension of the search space, while maintaining the quality of the restart solution. A multi-restart ILS (MRSILS) is proposed, with the performance evaluated on a set of benchmark instances and compared with six state of the art metaheuristics. The results show that the easily implementable MRSILS is significantly better than five of the other metaheuristics and comparable to or slightly better than the remaining one. © 2012 Elsevier Ltd. All rights reserved.
机译:已经开发了多种元启发法来解决置换流水车间问题,从而使总流水时间最小化。迭代局部搜索(ILS)是一种简单但功能强大的元启发式算法,用于解决此问题。从根本上讲,ILS是一个陷入局部最优状态的过程,需要从另一个解决方案重新启动。通常仅通过稍微扰动最著名的解决方案,缩小搜索空间并导致停滞状态来生成新的解决方案。在本文中,提出了一种策略,该策略允许从一组根据局部最优得出的解决方案中生成重启解决方案。这样可以扩展搜索空间,同时保持重启解决方案的质量。提出了多重启ILS(MRSILS),其性能在一组基准实例上进行了评估,并与六种最新的元启发法进行了比较。结果表明,易于实施的MRSILS明显优于其他五种启发式方法,并且与其余的类似或稍好于后者。 ©2012 ElsevierLtd。保留所有权利。

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