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首页> 外文期刊>Annals of Operations Research >A distance-based control chart for monitoring multivariate processes using support vector machines
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A distance-based control chart for monitoring multivariate processes using support vector machines

机译:基于距离的控制图,用于使用支持向量机监控多元过程

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Abstract Traditional control charts assume a baseline parametric model, against which new observations are compared in order to identify significant departures from the baseline model. To monitor a process without a baseline model, real-time contrasts (RTC) control charts were recently proposed to monitor classification errors when seperarting new observations from limited phase I data using a binary classifier. In contrast to the RTC framework, the distance between an in-control dataset and a dataset of new observations can also be used to measure the shift of the process. In this paper, we propose a distance-based multivariate process control chart using support vector machines (SVM), referred to as D-SVM chart. The SVM classifier provides a continuous score or distance from the boundary for each observation and allows smaller sample sizes than the previously random forest based RTC charts. An extensive experimental study shows that the RTC charts with the SVM scores are more efficient than those with the random forest for detecting changes in high-dimensional processes and/or non-normal processes. A real-life example from a mobile phone assembly process is also considered.
机译:摘要传统控制图采用基线参数模型,将其与新观察值进行比较,以识别与基线模型的显着偏离。为了监视没有基线模型的过程,最近提出了实时对比(RTC)控制图,用于在使用二进制分类器将新观测值与有限的I相数据分开时监视分类错误。与RTC框架相比,控制中数据集和新观测值数据集之间的距离也可以用于测量过程的偏移。在本文中,我们提出了一种使用支持​​向量机(SVM)的基于距离的多元过程控制图,称为D-SVM图。 SVM分类器为每个观察提供连续的分数或距边界的距离,并且比以前基于随机森林的RTC图表允许的样本量小。广泛的实验研究表明,具有SVM得分的RTC图表比具有随机森林的RTC图表更有效地检测高维过程和/或非正常过程的变化。还考虑了手机组装过程中的真实示例。

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