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Statistical monitoring and diagnosis of automatic controlled processes using dynamic PCA

机译:使用动态PCA对自动控制过程进行统计监视和诊断

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摘要

As manufacturing quality has become a decisive factor in competing in a global market, statistical quality techniques such as statistical process control (SPC) are becoming very popular in industries. With advances in sensing and data capture technology, large volumes of data are being routinely collected in automatic controlled processes. There is a growing need for SPC monitoring and diagnosis in these environments, but an effective implementing scheme is still lacking. This research provides an integrated approach to simultaneously monitor and diag- nose an automatic controlled process by using dynamic principal component analysis (DPCA) and minimax distance classifier. Through a step-by-step imple- mentation procedure, the proposed scheme is expected to have an impact on many manufacturing industries with automatic process control (APC) or engin- eering process control (EPC).
机译:随着制造质量已成为在全球市场竞争中的决定性因素,诸如统计过程控制(SPC)之类的统计质量技术在行业中正变得越来越流行。随着传感和数据捕获技术的进步,通常在自动控制过程中收集大量数据。在这些环境中,对SPC监视和诊断的需求不断增长,但是仍然缺乏有效的实施方案。这项研究提供了一种集成方法,可通过使用动态主成分分析(DPCA)和最小最大距离分类器来同时监视和诊断自动控制过程。通过逐步的实施程序,预计该方案将对许多具有自动过程控制(APC)或工程过程控制(EPC)的制造业产生影响。

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