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Multi-objective optimization of a stochastic assembly line balancing: A hybrid simulated annealing algorithm

机译:随机装配流水线平衡的多目标优化:一种混合模拟退火算法

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This paper deals with multi-objective optimization of a single-model stochastic assembly line balancing problem with parallel stations. The objectives are as follows: (1) minimization of the smoothness index and (2) minimization of the design cost. To obtain Pareto-optimal solutions for the problem, we propose a new solution algorithm, based on simulated annealing (SA), called m_SAA. m_SAA implements a multinomial probability mass function approach, tabu list, repair algorithms and a diversification strategy. The effectiveness of m_SAA is investigated comparing its results with those obtained by another SA (using a weight-sum approach) on a suite of 24 test problems. Computational results show that m_SAA with a multinomial probability mass function approach is more effective than SA with weight-sum approach in terms of the quality of Pareto-optimal solutions. Moreover, we investigate the effects of properties (i.e., the tabu list, repair algorithms and diversification strategy) on the performance of m_SAA.
机译:本文针对具有并行工位的单模型随机装配线平衡问题进行多目标优化。目标如下:(1)最小化平滑度指标,(2)最小化设计成本。为了获得该问题的帕累托最优解,我们提出了一种基于模拟退火(SA)的新求解算法,称为m_SAA。 m_SAA实现了多项概率质量函数方法,禁忌表,修复算法和多样化策略。将m_SAA的结果与另一套SA(使用权重和方法)获得的结果进行比较,研究了24个测试问题。计算结果表明,就帕累托最优解的质量而言,具有多项概率质量函数方法的m_SAA比具有权重和方法的SA更有效。此外,我们研究了属性(即禁忌表,修复算法和多元化策略)对m_SAA性能的影响。

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