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Multi-objective optimization with fuzzy measures and its application to flow-shop scheduling

机译:模糊测度的多目标优化及其在流水车间调度中的应用

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Most of the research in multi-objective scheduling optimization uses the classical weighted arithmetic mean operator to aggregate the various optimization criteria. However, there are scheduling problems where criteria are considered interact and thus a different operator should be adopted. This paper is devoted to the search of Pareto-optimal solutions in a tri-criterion flow-shop scheduling problem (FSSP) considering the interactions among the objectives. A new hybrid meta-heuristic is proposed to solve the problem which combines a genetic algorithm (GA) for solutions evolution and a reduced variable neighborhood search (RVNS) technique for fast solution improvement. To deal with the interactions among the three criteria the discrete Choquet integral method is adopted as a means to aggregate the criteria in the fitness function of each individual solution. Experimental comparisons (over public available FSSP test instances) with five existing multi-objective evolutionary algorithms (including the well known SPEA2 and NSCAII algorithms as well as the recently published L-NSGA algorithm) showed a superior performance for the developed approach in terms of diversity and domination of solutions.
机译:多目标调度优化中的大多数研究都使用经典的加权算术平均算子来汇总各种优化准则。但是,存在调度问题,其中标准被认为是相互影响的,因此应采用其他运营商。考虑到目标之间的相互作用,本文致力于在三标准流水车间调度问题(FSSP)中搜索Pareto最优解。提出了一种新的混合元启发式算法来解决该问题,该算法结合了用于解决方案进化的遗传算法(GA)和用于快速解决方案改进的减少变量邻域搜索(RVNS)技术。为了处理这三个标准之间的相互作用,采用离散的Choquet积分方法作为将标准聚合到每个解决方案的适应度函数中的方法。与五种现有的多目标进化算法(包括著名的SPEA2和NSCAII算法以及最近发布的L-NSGA算法)进行的实验比较(在公开的FSSP测试实例上)显示了该方法在多样性方面的优越性能和控制解决方案。

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