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Improved NSGA-II for the Job-Shop Multi-Objective Scheduling Problem

机译:改进了NSGA-II,用于工作店多目标调度问题

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摘要

Job-shop scheduling is essential to advanced manufacturing and modern management. In light of the difficulty of obtaining the optimal solution using simple genetic algorithms in the process of solving multi-objective job-shop scheduling problems, with maximum customer satisfaction and minimum makespan in mind, we constructed a multi-objective job-shop scheduling model with factory capacity constraints and propose an improved NSGA-II algorithm. This algorithm not only uses an improved elitism strategy to dynamically update the elite solution set, but also enhances the Pareto sorting algorithm to make density computations more accurate, thereby ensuring population diversity. An example is given to verify that this algorithm can effectively enhance global search capabilities, save computing resources, and lead to a better optimal solution, Using this algorithm for job-shop scheduling optimization oriented towards multi-objective decision-making can provide corporate executives with a scientific quantitative basis for management and decision-making, thereby enhancing their companies' competitiveness.
机译:工作店安排对于先进制造和现代管理至关重要。鉴于使用简单的遗传算法获取最佳解决方案,在解决多目标工作商店调度问题的过程中,具有最大的客户满意度和最低的Makespan,我们构建了一个多目标工作店调度模型工厂容量约束并提出改进的NSGA-II算法。该算法不仅使用改进的精英策略来动态更新精英解决方案集,而且还增强了帕累托分拣算法,使密度计算更准确,从而确保人口分集。给出一个例子来验证该算法可以有效地增强全局搜索能力,节省计算资源,并导致更好的最佳解决方案,利用该算法为面向多目标决策的作业商店调度优化可以提供企业高管科学的管理和决策的定量基础,从而提高了公司的竞争力。

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