首页> 外文会议>International Congress and Exhibition on Condition Monitoring and Diagnostic Engineering Management >Chapter 87 The Application of Statistical Quality Control Methods in Predictive Maintenance 4.0: An Unconventional Use of Statistical Process Control (SPC) Charts in Health Monitoring and Predictive Analytics
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Chapter 87 The Application of Statistical Quality Control Methods in Predictive Maintenance 4.0: An Unconventional Use of Statistical Process Control (SPC) Charts in Health Monitoring and Predictive Analytics

机译:第87章统计质量控制方法在预测性维护中的应用:健康监测和预测分析中的统计过程控制(SPC)图表的非常规使用

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Statistical Process Control (SPC) is a technique of gauging and monitoring quality by closely observing a given manufacturing process. Appropriate quality data is collected in the form of product measurements or readings from various machines. This data is used in evaluating, monitoring and controlling the variability of the considered manufacturing process. This paper proposes the expansion of SPC methods to predictive maintenance. Applications of SPC techniques in various fields outside of basic production systems have been increasing in popularity. This paper investigates the practicality and viability of using Control Charts in predictive maintenance and health monitoring. Moreover, this study discusses numerous enabling technologies, such as Industrial Internet of Things (IIOT), that help to advance real-time monitoring of industrial processes. This study also expands on the use of Naive-Bayes and other Machine Learning methods to identify strong (naive) dependencies between specific faults and special patterns in monitored measurements. Despite its idealistic independence assumption, the naive Bayes classifier is effective in practice since its classification decision may often be correct even if its probability estimates are inaccurate. Optimal conditions of naive Bayes will be also identified, and a deeper understanding of data characteristics that affect the performance of naive Bayes is analyzed.
机译:统计过程控制(SPC)是通过密切观察给定的制造过程来测量和监测质量的技术。以产品测量或各种机器读数的形式收集适当的质量数据。该数据用于评估,监控和控制所考虑的制造过程的可变性。本文提出了SPC方法的扩展来预测维护。 SPC技术在基本生产系统之外的各个领域的应用一直在越来越受欢迎。本文研究了使用控制图表在预测性维护和健康监测中的实用性和可行性。此外,本研究讨论了许多有利的技术,例如工业互联网(IIOT),有助于推进对工业过程的实时监测。本研究还扩展了Naive-Bayes和其他机器学习方法的使用,以识别特定故障与监测测量中的特殊模式之间的强(Naive)依赖性。尽管其理想主义的独立假设,但是,即使其概率估计不准确,朴素的贝叶斯分类器在实践中是有效的。还发现了天真贝叶斯的最佳条件,分析了影响影响幼稚贝叶斯性能的数据特征的更深层次。

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