A mixture model application in monitoring error message rates for a distributed industrial fleet

IF 1.3 4区 工程技术 Q4 ENGINEERING, INDUSTRIAL Quality Engineering Pub Date : 2022-11-01 DOI:10.1080/08982112.2022.2132866
Bernat Plandolit, Ignasi Puig‐de‐Dou, G. Costigan, Xavier Puig, Lourdes Rodero, José Miguel Martínez
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Abstract

Abstract Remotely monitoring industrial printers for an unexpected increase of warning and error messages reduces equipment downtime and increases customer satisfaction. Directly tracking raw error messages rates during a given observation period poses some issues. Firstly, when a printer has not been used much during the observation period, its actual printing time is low. In this situation, even a small set of error messages can become an unexpectedly large rate of messages per printing hour. Secondly, classifying printers in error messages groups based on their rate (for instance, low, medium and high) and studying group changes over time, is useful in identifying potential problems. To overcome these issues, a nonparametric estimation method which simultaneously obtains empirical Bayes estimations of error messages rates and the number of error messages groups is used. This approach has been used in epidemiology, mainly in disease mapping research, but not in an industrial reliability context. The objective of our work is to show the application of the mixture model to real-time monitoring of printers’ error message rates in a way that addresses the two issues mentioned above.
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混合模型在分布式工业机群错误消息率监测中的应用
摘要远程监控工业打印机,以发现意外增加的警告和错误消息,减少了设备停机时间,提高了客户满意度。在给定的观察期内直接跟踪原始错误消息率会带来一些问题。首先,当打印机在观察期内使用不多时,其实际打印时间较低。在这种情况下,即使是一组很小的错误消息,也可能变成每打印小时意外的大量消息。其次,根据错误消息的比率(例如,低、中、高)将打印机分类到错误消息组中,并研究组随时间的变化,有助于识别潜在问题。为了克服这些问题,使用了一种非参数估计方法,该方法同时获得错误消息率和错误消息组数量的经验贝叶斯估计。这种方法已用于流行病学,主要用于疾病绘图研究,但未用于工业可靠性背景。我们工作的目的是展示混合模型在实时监控打印机错误消息率方面的应用,以解决上述两个问题。
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来源期刊
Quality Engineering
Quality Engineering ENGINEERING, INDUSTRIAL-STATISTICS & PROBABILITY
CiteScore
3.90
自引率
10.00%
发文量
52
审稿时长
>12 weeks
期刊介绍: Quality Engineering aims to promote a rich exchange among the quality engineering community by publishing papers that describe new engineering methods ready for immediate industrial application or examples of techniques uniquely employed. You are invited to submit manuscripts and application experiences that explore: Experimental engineering design and analysis Measurement system analysis in engineering Engineering process modelling Product and process optimization in engineering Quality control and process monitoring in engineering Engineering regression Reliability in engineering Response surface methodology in engineering Robust engineering parameter design Six Sigma method enhancement in engineering Statistical engineering Engineering test and evaluation techniques.
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