基于机器学习的智能制造不合格品监控控制图

Simone Massulini Acosta, Angelo Marcio Oliveira Sant’Anna
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引用次数: 2

摘要

目的过程监控是在制造过程中管理产品质量特性的一种方法。文献中已经提出了几种基于机器学习算法的过程监控,并引起了许多研究人员的注意。在本文中,作者开发了基于机器学习的控制图,用于监控智能制造中的部分不合格产品。本研究提出了一种利用差分进化算法优化的贝叶斯稀疏核的关联向量机,用于制造业的有效监控。设计/方法论/方法在制造业中对数据分析、建模和监测进行了新的方法。本研究开发了一种使用贝叶斯稀疏核技术的关联向量机,以改进用于回归和分类问题的支持向量机。作者将所提出的关联向量机与其他机器学习算法(如支持向量机、人工神经网络和贝塔回归模型)的性能进行了比较。使用蒙特卡罗模拟,通过平均行程长度的不同偏移场景对所提出的方法进行了评估。发现作者基于最佳机器学习算法分析了一家制造公司的真实案例研究。结果表明,所提出的基于关联向量机的过程监控是监控制造过程中缺陷产品的优秀质量工具。通过与四个机器学习模型的比较分析来评估所提出方法的性能。关联向量机的性能略好于支持向量机、人工神经网络和贝塔模型。独创性/价值这项研究与其他研究不同,它提供了监测缺陷产品的方法。基于机器学习的控制图用于监控智能制造过程中的产品故障。此外,本研究的主要贡献是开发不同的故障检测模型,并识别制造过程中的任何变化点。此外,作者的研究表明,机器学习模型是工业过程中部分不合格产品建模和监测的适当工具。
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Machine learning-based control charts for monitoring fraction nonconforming product in smart manufacturing
PurposeProcess monitoring is a way to manage the quality characteristics of products in manufacturing processes. Several process monitoring based on machine learning algorithms have been proposed in the literature and have gained the attention of many researchers. In this paper, the authors developed machine learning-based control charts for monitoring fraction non-conforming products in smart manufacturing. This study proposed a relevance vector machine using Bayesian sparse kernel optimized by differential evolution algorithm for efficient monitoring in manufacturing.Design/methodology/approachA new approach was carried out about data analysis, modelling and monitoring in the manufacturing industry. This study developed a relevance vector machine using Bayesian sparse kernel technique to improve the support vector machine used to both regression and classification problems. The authors compared the performance of proposed relevance vector machine with other machine learning algorithms, such as support vector machine, artificial neural network and beta regression model. The proposed approach was evaluated by different shift scenarios of average run length using Monte Carlo simulation.FindingsThe authors analyse a real case study in a manufacturing company, based on best machine learning algorithms. The results indicate that proposed relevance vector machine-based process monitoring are excellent quality tools for monitoring defective products in manufacturing process. A comparative analysis with four machine learning models is used to evaluate the performance of the proposed approach. The relevance vector machine has slightly better performance than support vector machine, artificial neural network and beta models.Originality/valueThis research is different from the others by providing approaches for monitoring defective products. Machine learning-based control charts are used to monitor product failures in smart manufacturing process. Besides, the key contribution of this study is to develop different models for fault detection and to identify any change point in the manufacturing process. Moreover, the authors’ research indicates that machine learning models are adequate tools for the modelling and monitoring of the fraction non-conforming product in the industrial process.
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来源期刊
CiteScore
5.60
自引率
12.00%
发文量
53
期刊介绍: In today''s competitive business and industrial environment, it is essential to have an academic journal offering the most current theoretical knowledge on quality and reliability to ensure that top management is fully conversant with new thinking, techniques and developments in the field. The International Journal of Quality & Reliability Management (IJQRM) deals with all aspects of business improvements and with all aspects of manufacturing and services, from the training of (senior) managers, to innovations in organising and processing to raise standards of product and service quality. It is this unique blend of theoretical knowledge and managerial relevance that makes IJQRM a valuable resource for managers striving for higher standards.Coverage includes: -Reliability, availability & maintenance -Gauging, calibration & measurement -Life cycle costing & sustainability -Reliability Management of Systems -Service Quality -Green Marketing -Product liability -Product testing techniques & systems -Quality function deployment -Reliability & quality education & training -Productivity improvement -Performance improvement -(Regulatory) standards for quality & Quality Awards -Statistical process control -System modelling -Teamwork -Quality data & datamining
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