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首页> 外文期刊>Computers & Industrial Engineering >Decision support for multi-objective flow shop scheduling by the Pareto Iterated Local Search methodology
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Decision support for multi-objective flow shop scheduling by the Pareto Iterated Local Search methodology

机译:帕累托迭代局部搜索方法为多目标流水车间调度提供决策支持

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摘要

The article describes the proposition and application of a local search metaheuristic for multi-objective optimization problems. It is based on two main principles of heuristic search, intensification through variable neighborhoods, and diversification through perturbations and successive iterations in favorable regions of the search space. The concept is successfully tested on permutation flow shop scheduling problems under multiple objectives and compared to other local search approaches. While the obtained results are encouraging in terms of their quality, another positive attribute of the approach is its simplicity as it does require the setting of only very few parameters. The metaheuristic is a key element of the Multi-Objective Optimization and Production Planning Solver MOOPPS. The software has been awarded the European Academic Software Award in Ronneby, Sweden (http://www.bth.se/llab/easa_2002.nsf), and has since been used for research and higher education in the mentioned problem domain (Geiger, 2006).
机译:本文介绍了针对多目标优化问题的局部搜索元启发式方法的命题和应用。它基于启发式搜索的两个主要原理,即通过可变邻域进行强化,以及通过在搜索空间的有利区域中进行扰动和连续迭代来实现多样化。该概念已针对多个目标下的置换流水车间调度问题成功进行了测试,并与其他本地搜索方法进行了比较。尽管所获得的结果在质量上令人鼓舞,但该方法的另一个积极特性是它的简单性,因为它只需要设置很少的参数即可。元启发法是多目标优化和生产计划求解器MOOPPS的关键要素。该软件已获得瑞典Ronneby(http://www.bth.se/llab/easa_2002.nsf)的欧洲学术软件奖,此后已用于上述问题领域的研究和高等教育(Geiger, 2006)。

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