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Effective Hybrid Stochastic Local Search Algorithms for Biobjective Permutation Flowshop Scheduling

机译:双目标置换流水车间调度的有效混合随机局部搜索算法

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This paper presents the steps followed in the design of hybrid stochastic local search algorithms for biobjective permutation flow shop scheduling problems. In particular, this paper tackles the three pairwise combinations of the objectives (ⅰ) makespan, (ⅱ) the sum of the completion times of the jobs, and (ⅲ) the weighted total tardiness of all jobs. The proposed algorithms are combinations of two local search methods: two-phase local search and Pareto local search. The design of the algorithms is based on a careful experimental analysis of crucial algorithmic components of the two search methods. The final results show that the newly developed algorithms reach very high performance: The solutions obtained frequently improve upon the best nondominated solutions previously known, while requiring much shorter computation times.
机译:本文介绍了针对双目标置换流水车间调度问题的混合随机局部搜索算法设计的步骤。尤其是,本文解决了目标的三个成对组合(ⅰ)生成时间,(ⅱ)工作完成时间的总和和(ⅲ)所有工作的加权总拖延时间。所提出的算法是两种局部搜索方法的组合:两阶段局部搜索和帕累托局部搜索。算法的设计基于对两种搜索方法中关键算法组成部分的仔细实验分析。最终结果表明,新开发的算法具有很高的性能:所获得的解决方案通常比以前已知的最佳非支配解决方案有所改进,同时所需的计算时间要短得多。

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