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Improved Heuristic Kalman Algorithm for Solving Multi-Objective Flexible Job Shop Scheduling Problem

机译:求解多目标柔性作业车间调度问题的改进启发式卡尔曼算法

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The Flexible Job Shop Scheduling Problem (FJSSP), as a typical NP-hard optimization problem, has a significant value in manufacturing environment. This paper presents an improved estimation method of Multi-Objective Heuristic Kalman Algorithm (MOHKA) for solving Multi-Objective Flexible Job Shop Scheduling Problem (MOFJSSP). The optimization results of improved MOHKA for the MOFJSSP were implemented in the five Kacem and ten Brendimarte benchmarks. First, an improved mathematical model of MOHKA was proposed and implemented in MATLAB. Then we applied MOHKA to solve MOFJSSP with an improved real number encoding system, optimized for three benchmark optimization parameters, the maximum completion time of on all jobs (makespan), the total workload on all machine, the workload of the critical machine (the maximum workload among the machines). The results presented in the paper show that the improved method of MOHKA for solving MOFJSSP can optimize multi-objective parameters especially for some of these selected cases in which our algorithm gives us high-quality results.
机译:柔性作业车间调度问题(FJSSP)作为典型的NP硬优化问题,在制造环境中具有重要价值。本文提出了一种改进的多目标启发式卡尔曼算法(MOHKA)估计方法,用于解决多目标柔性作业车间调度问题(MOFJSSP)。在五个Kacem和十个Brendimarte基准中实现了针对MOFJSSP改进的MOHKA的优化结果。首先,提出了一种改进的MOHKA数学模型,并在MATLAB中实现。然后,我们使用MOHKA通过改进的实数编码系统解决了MOFJSSP问题,该系统针对以下三个基准优化参数进行了优化:所有作业的最大完成时间(makespan),所有计算机的总工作量,关键计算机的工作量(最大机器之间的工作量)。本文提出的结果表明,改进的MOHKA方法可以解决MOFJSSP问题,从而可以优化多目标参数,尤其是在某些选择的情况下,我们的算法可以为我们提供高质量的结果。

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