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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part A, Systems and humans >An Effective PSO-Based Hybrid Algorithm for Multiobjective Permutation Flow Shop Scheduling
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An Effective PSO-Based Hybrid Algorithm for Multiobjective Permutation Flow Shop Scheduling

机译:一种基于PSO的有效多目标置换流水车间调度混合算法

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This paper proposes a hybrid algorithm based on particle swarm optimization (PSO) for a multiobjective permutation flow shop scheduling problem, which is a typical NP-hard combinatorial optimization problem with strong engineering backgrounds. Not only does the proposed multiobjective algorithm (named MOPSO) apply the parallel evolution mechanism of PSO characterized by individual improvement, population cooperation, and competition to effectively perform exploration but it also utilizes several adaptive local search methods to perform exploitation. First, to make PSO suitable for solving scheduling problems, a ranked-order value (ROV) rule based on a random key technique to convert the continuous position values of particles to job permutations is presented. Second, a multiobjective local search based on the Nawaz–Enscore–Ham heuristic is applied to good solutions with a specified probability to enhance the exploitation ability. Third, to enrich the searching behavior and to avoid premature convergence, a multiobjective local search based on simulated annealing with multiple different neighborhoods is designed, and an adaptive meta-Lamarckian learning strategy is employed to decide which neighborhood will be used. Due to the fusion of multiple different searching operations, good solutions approximating the real Pareto front can be obtained. In addition, MOPSO adopts a random weighted linear sum function to aggregate multiple objectives to a single one for solution evaluation and for guiding the evolution process in the multiobjective sense. Due to the randomness of weights, searching direction can be enriched, and solutions with good diversity can be obtained. Simulation results and comparisons based on a variety of instances demonstrate the effectiveness, efficiency, and robustness of the proposed hybrid algorithm.
机译:针对多目标排列流水车间调度问题,提出了一种基于粒子群优化算法的混合算法,该算法是典型的NP-hard组合优化问题,具有较强的工程背景。所提出的多目标算法(称为MOPSO)不仅应用了以个体改进,种群协作和竞争为特征的PSO并行演化机制来有效地进行探索,而且还利用了几种自适应局部搜索方法来进行探索。首先,为了使PSO适合解决调度问题,提出了一种基于随机密钥技术的排序顺序值(ROV)规则,该规则将粒子的连续位置值转换为作业排列。其次,将基于Nawaz–Enscore–Ham启发式方法的多目标局部搜索应用于具有指定概率的良好解决方案,以提高开发能力。第三,为了丰富搜索行为并避免过早收敛,设计了一种基于模拟退火的具有多个不同邻域的多目标局部搜索,并采用自适应元拉马克学习策略来确定将使用哪个邻域。由于多个不同搜索操作的融合,可以获得逼近实际帕累托前沿的良好解决方案。此外,MOPSO采用随机加权线性和函数将多个目标聚合为一个目标,以进行解决方案评估并在多目标意义上指导演化过程。由于权重的随机性,可以丰富搜索方向,并且可以获得具有良好多样性的解。仿真结果和基于各种实例的比较证明了所提出的混合算法的有效性,效率和鲁棒性。

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