基于贝塔回归和粒子群优化的电子垃圾统计过程监测

Angelo Marcio Oliveira Sant’Anna
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引用次数: 1

摘要

目的E废物管理可以在不影响可靠性、质量或性能的情况下减少业务活动的相关影响。统计过程监控是管理制造过程中设备可靠性和质量的有效方法。本文提出了一种基于贝塔回归模型和粒子群优化的电子垃圾装置比例监测方法。制定了一项统计过程监测方案,将剩余使用寿命技术结合起来,以有效监测电子废物部件或设备。设计/方法/方法开发了一种将回归方法和粒子群优化算法相结合的方法,以提高回归模型估计的准确性。控制图工具用于监测制造过程中电子设备故障检测中电子垃圾设备的比例。结果表明,所提出的统计过程监测是一个极好的可靠性和质量方案,可以监测调色剂生产过程中电子垃圾装置的比例。优化的回归模型估计显示,工艺变量对单独的注入速率和调色剂踏面以及注入速率、调色剂踏板、粘度和密度之间的相互作用都有显著影响。独创性/价值这项研究与其他研究不同,它提供了一种建模和监测电子垃圾装置比例的方法。统计过程监控可用于监控制造过程中的废品。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。所使用的优化模型可以复制到其他电子行业,并支持令人满意的电子废物管理。
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Statistical process monitoring for e-waste based on beta regression and particle swarm optimization
PurposeE-waste management can reduce relevant impact of the business activity without affecting reliability, quality or performance. Statistical process monitoring is an effective way for managing reliability and quality to devices in manufacturing processes. This paper proposes an approach for monitoring the proportion of e-waste devices based on Beta regression model and particle swarm optimization. A statistical process monitoring scheme integrating residual useful life techniques for efficient monitoring of e-waste components or equipment was developed.Design/methodology/approachAn approach integrating regression method and particle swarm optimization algorithm was developed for increasing the accuracy of regression model estimates. The control chart tools were used for monitoring the proportion of e-waste devices from fault detection of electronic devices in manufacturing process.FindingsThe results showed that the proposed statistical process monitoring was an excellent reliability and quality scheme for monitoring the proportion of e-waste devices in toner manufacturing process. The optimized regression model estimates showed a significant influence of the process variables for both individually injection rate and toner treads and the interactions between injection rate, toner treads, viscosity and density.Originality/valueThis research is different from others by providing an approach for modeling and monitoring the proportion of e-waste devices. Statistical process monitoring can be used to monitor waste product in manufacturing. Besides, the key contribution in this study is to develop different models for fault detection and identify any change point in the manufacturing process. The optimized model used can be replicated to other Electronic Industry and allows support of a satisfactory e-waste management.
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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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