Multidirection Update-Based Multiobjective Particle Swarm Optimization for Mixed No-Idle Flow-Shop Scheduling Problem

Wenqiang Zhang;Wenlin Hou;Chen Li;Weidong Yang;Mitsuo Gen
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引用次数: 11

Abstract

The Mixed No-Idle Flow-shop Scheduling Problem (MNIFSP) is an extension of flow-shop scheduling, which has practical significance and application prospects in production scheduling. To improve the efficacy of solving the complicated multiobjective MNIFSP, a MultiDirection Update (MDU) based Multiobjective Particle Swarm Optimization (MDU-MoPSO) is proposed in this study. For the biobjective optimization problem of the MNIFSP with minimization of makespan and total processing time, the MDU strategy divides particles into three subgroups according to a hybrid selection mechanism. Each subgroup prefers one convergence direction. Two subgroups are individually close to the two edge areas of the Pareto Front (PF) and serve two objectives, whereas the other one approaches the central area of the PF, preferring the two objectives at the same time. The MDU-MoPSO adopts a job sequence representation method and an exchange sequence-based particle update operation, which can better reflect the characteristics of sequence differences among particles. The MDU-MoPSO updates the particle in multiple directions and interacts in each direction, which speeds up the convergence while maintaining a good distribution performance. The experimental results and comparison of six classical evolutionary algorithms for various benchmark problems demonstrate the effectiveness of the proposed algorithm.
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基于多方向更新的混合无空闲流车间调度问题多目标粒子群优化
混合无空闲流水车间调度问题(MNIFSP)是流水车间调度的延伸,在生产调度中具有实际意义和应用前景。为了提高求解复杂多目标mifsp问题的效率,提出了一种基于多方向更新(MDU)的多目标粒子群优化方法(MDU- mopso)。针对最大完工时间和总处理时间最小的MNIFSP双目标优化问题,MDU策略根据混合选择机制将粒子划分为三个子组。每个子群倾向于一个收敛方向。两个子群体分别靠近帕累托前沿(PF)的两个边缘区域并服务于两个目标,而另一个子群体接近PF的中心区域,同时倾向于两个目标。MDU-MoPSO采用作业序列表示方法和基于交换序列的粒子更新操作,能更好地反映粒子间序列差异的特点。MDU-MoPSO在多个方向上更新粒子,并在每个方向上相互作用,在保持良好分布性能的同时加快了收敛速度。针对各种基准问题的实验结果和六种经典进化算法的比较表明了该算法的有效性。
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