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首页> 外文期刊>Advances in Engineering Software >An opposition-based differential evolution algorithm for permutation flow shop scheduling based on diversity measure
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An opposition-based differential evolution algorithm for permutation flow shop scheduling based on diversity measure

机译:基于分集测度的基于反对派的置换流水车间调度差分进化算法

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The permutation flow shop problem (PFSSP) is an NP-hard problem of wide engineering and theoretical background. In this paper, a differential evolution (DE) based memetic algorithm, named ODDE, is proposed for PFSSP. First, to make DE suitable for PFSSP, a new LRV rule based on random key is introduced to convert the continuous position in DE to the discrete job permutation. Second, the NEH heuristic was combined the random initialization to the population with certain quality and diversity. Third, to improve the global optimization property of DE, a DE approach based on measure of population's diversity is proposed to tuning the crossover rate. Fourth, to improve the convergence rate of DE, the opposition-based DE employs opposition-based learning for the initialization and for generation jumping to enhance the global optimal solution. Fifth, the fast local search is used for enhancing the individuals with a certain probability. Sixth, the pairwise based local search is used to enhance the global optimal solution and help the algorithm to escape from local minimum. Additionally, simulations and comparisons based on PFSSP benchmarks are carried out, which show that our algorithm is both effective and efficient. We have also evaluated our algorithm with the well known DMU problems. For the problems with the objective of minimizing makespan, the algorithm ODDE obtains 24 new upper bounds of the 40 instances, and for the problems with the objective of maximum lateness, ODDE obtains 137 new upper bounds of the 160 instances. These new upper bounds can be used for future algorithms to compare their results with ours.
机译:置换流水车间问题(PFSSP)是具有广泛工程和理论背景的NP难题。本文针对PFSSP提出了一种基于差分进化(DE)的模因算法,称为ODDE。首先,为了使DE适用于PFSSP,引入了一种基于随机密钥的新LRV规则,以将DE中的连续位置转换为离散作业排列。其次,将NEH启发式方法与具有一定质量和多样性的总体随机初始化组合在一起。第三,为了提高DE的全局优化特性,提出了一种基于人口多样性测度的DE方法来调整交叉率。第四,为了提高DE的收敛速度,基于对立的DE使用基于对立的学习进行初始化和生成跳跃,以增强全局最优解。第五,快速局部搜索用于以一定概率增强个人。第六,基于成对的局部搜索被用于增强全局最优解,并帮助算法摆脱局部最小值。此外,基于PFSSP基准进行了仿真和比较,表明我们的算法既有效又高效。我们还用众所周知的DMU问题评估了我们的算法。对于以最小化制造时间为目标的问题,算法ODDE获得了40个实例的24个新上限,而对于以最大延迟为目标的问题,ODDE获得了160个实例的137个新上限。这些新的上限可用于将来的算法,以将其结果与我们的结果进行比较。

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