优化中小型企业生产流程的自动化机器学习方法

IF 3.7 4区 管理学 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Operations Research Perspectives Pub Date : 2024-06-01 DOI:10.1016/j.orp.2024.100308
Yarens J. Cruz , Alberto Villalonga , Fernando Castaño , Marcelino Rivas , Rodolfo E. Haber
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引用次数: 0

摘要

机器学习可有效用于生成能够代表中小型企业生产流程动态的模型。这些模型能够估算关键性能指标,通常用于优化生产流程。然而,在大多数工业应用中,生产流程的建模和优化目前都是作为单独的任务来进行的,人工方式成本高、效率低。自动化的机器学习工具和框架为推导模型提供了便利,减少了建模时间和成本。然而,利用生产模型进行优化仍处于起步阶段。这项工作提出了一种整合全自动程序的方法,该程序包含自动机器学习管道和多目标优化算法,用于改进生产流程,特别关注中小型企业。该程序将生成的模型嵌入到基于参考点的非支配排序遗传算法的目标函数中,从而对相应的生产流程进行基于偏好的帕累托最优参数化。该方法利用一家小型制造企业的生产流程数据进行了实施和验证,为分析指标生成了基于机器学习的高精度模型。此外,通过应用所提方法的优化步骤,该生产流程的生产率提高了 3.19%,缺陷率降低了 2.15%,优于仅关注生产率的传统试错法。
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Automated machine learning methodology for optimizing production processes in small and medium-sized enterprises

Machine learning can be effectively used to generate models capable of representing the dynamic of production processes of small and medium-sized enterprises. These models enable the estimation of key performance indicators, and are often used for optimizing production processes. However, in most industrial applications, modeling and optimization of production processes are currently carried out as separate tasks, manually in a very costly and inefficient way. Automated machine learning tools and frameworks facilitate the path for deriving models, reducing modeling time and cost. However, optimization by exploiting production models is still in infancy. This work presents a methodology for integrating a fully automated procedure that embraces automated machine learning pipelines and a multi-objective optimization algorithm for improving the production processes, with special focus on small and medium-sized enterprises. This procedure is supported on embedding the generated models as objective functions of a reference point based non-dominated sorting genetic algorithm, resulting in preference-based Pareto-optimal parametrizations of the corresponding production processes. The methodology was implemented and validated using data from a manufacturing production process of a small manufacturing enterprise, generating highly accurate machine learning-based models for the analyzed indicators. Additionally, by applying the optimization step of the proposed methodology it was possible to increase the productivity of the manufacturing process by 3.19 % and reduce its defect rate by 2.15 %, outperforming the results obtained with traditional trial and error method focused on productivity alone.

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来源期刊
Operations Research Perspectives
Operations Research Perspectives Mathematics-Statistics and Probability
CiteScore
6.40
自引率
0.00%
发文量
36
审稿时长
27 days
期刊最新文献
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