Bio-inspired multi-objective algorithms applied on production scheduling problems

IF 1.6 3区 工程技术 Q4 ENGINEERING, INDUSTRIAL
Beatriz Flamia Azevedo, Rub´én Montanño-Vega, M. Varela, A. Pereira
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引用次数: 1

Abstract

Production scheduling is a crucial task in the manufacturing process. In this way, the managers must decide the job's production schedule. However, this task is not simple, often requiring complex software tools and specialized algorithms to find the optimal solution. In this work, a multi-objective optimization model was developed to explore production scheduling performance measures to help managers in decision-making related to job attribution under three simulations of parallel machine scenarios. Five important production scheduling performance measures were considered (makespan, tardiness and earliness times, number of tardy and early jobs), and combined into three objective functions. To solve the scheduling problem, three multi-objective evolutionary algorithms are considered (Multi-objective Particle Swarm Optimization, Multi-objective Grey Wolf Algorithm, and Non-dominated Sorting Genetic Algorithm II), and the set of optimum solutions named Pareto Front, provided by each one is compared in terms of dominance, generating a new Pareto Front, denoted as Final Pareto Front. Furthermore, this Final Pareto Front is analyzed through an automatic bio-inspired clustering algorithm based on the Genetic Algorithm. The results demonstrated that the proposed approach efficiently solves the scheduling problem considered. In addition, the proposed methodology provided more robust solutions by combining different bio-inspired multi-objective techniques. Furthermore, the cluster analysis proved fundamental for a better understanding of the results and support for choosing the final optimum solution.
仿生多目标算法在生产调度问题中的应用
生产调度是生产过程中的一项重要任务。通过这种方式,经理们必须决定工作的生产计划。然而,这项任务并不简单,通常需要复杂的软件工具和专门的算法来找到最优解。本文建立了一个多目标优化模型,在三种并行机器情景下探索生产调度绩效指标,以帮助管理者进行与工作归因相关的决策。考虑了五个重要的生产调度性能指标(makespan、延迟和提前时间、延迟和提前作业数),并将其合并为三个目标函数。为了解决调度问题,考虑了三种多目标进化算法(多目标粒子群算法、多目标灰狼算法和非支配排序遗传算法II),并将各算法提供的最优解集Pareto Front进行优势度比较,生成新的Pareto Front,称为Final Pareto Front。通过基于遗传算法的生物启发自动聚类算法对最终Pareto Front进行了分析。结果表明,该方法有效地解决了所考虑的调度问题。此外,所提出的方法通过结合不同的仿生多目标技术提供了更健壮的解决方案。此外,聚类分析证明了更好地理解结果和支持选择最终的最佳解决方案的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.70
自引率
9.10%
发文量
35
审稿时长
20 weeks
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