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A branch population genetic algorithm for dual-resource constrained job shop scheduling problem

机译:双资源约束作业车间调度问题的分支种群遗传算法

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摘要

The manufacturing systems constrained by both machines and heterogeneous workers are referred to as Dual Resource Constrained (DRC) systems. DRC scheduling problem has attracted more and more attention in recent years. In order to address the Dual Resource Constrained Job Shop Scheduling Problem (DRCJSP) to minimize the makespan and cost, a meta-heuristic algorithm named Branch Population Genetic Algorithm (BPGA) is proposed in this paper. The proposed algorithm is a genetic algorithm (GA) based scheduling approach, and it introduces the branch population to accumulate and transfer evolutionary experience of parent chromosomes via pheromone. The branch population can strengthen the population diversity and accelerate convergence. Additionally, several mechanisms are applied to optimize the performance of BPGA. The elite evolutionary operator is utilized to optimize search ability by laying particular emphasis on the evolution of the elite population. The roulette selection operator based on sector segmentation is proposed to decrease the computational complexity and avoid the algorithm prematurity. The scheduling strategy based on compressed time window is proposed to improve the global scheduling performance. In our research, BPGA shows convergence to the Pareto front according to the Markov chain theory. Numerical experiments with randomly generated examples and case studies are analyzed to evaluate the performance of the proposed algorithm. Computational experiments show BPGA can provide the promising results for the DRCJSP.
机译:受机器和异构工人约束的制造系统称为双重资源约束(DRC)系统。近年来,DRC调度问题引起了越来越多的关注。为了解决双重资源受限作业车间调度问题(DRCJSP),以最大程度地减少制造周期和成本,提出了一种名为分支种群遗传算法(BPGA)的元启发式算法。所提出的算法是一种基于遗传算法的调度方法,它引入了分支种群,以通过信息素积累和转移亲本染色体的进化经验。分支人口可以增强人口多样性并加速融合。此外,应用了多种机制来优化BPGA的性能。通过特别强调精英人口的进化,利用精英进化算子来优化搜索能力。提出了一种基于扇区分割的轮盘赌选择算子,以降低计算复杂度,避免算法过早出现。提出了基于压缩时间窗口的调度策略,以提高全局调度性能。在我们的研究中,BPGA根据马尔可夫链理论显示了帕累托前沿的收敛性。分析了随机生成的示例和案例研究的数值实验,以评估所提出算法的性能。计算实验表明,BPGA可以为DRCJSP提供有希望的结果。

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