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首页> 外文期刊>Communications in Statistics >Variance Shifts Identification Model of Bivariate Process Based on LS-SVM Pattern Recognizer
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Variance Shifts Identification Model of Bivariate Process Based on LS-SVM Pattern Recognizer

机译:基于LS-SVM模式识别器的二元过程方差漂移辨识模型

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摘要

Multivariate Statistical Process Control (MSPC) techniques are effective tools for detecting the abnormalities of multivariate process variation. MSPC techniques are based on overall statistics; this has caused the difficulties in interpretation of the alarm signal, that is, MSPC charts do not provide the necessary information about which process variables (or subset of them) are responsible for the signal, and this task is left up to the quality engineers in production field. This article proposes a model based on LS-SVM pattern recognizer to diagnose the bivariate process abnormality in covariance matrix. The main property of this model is a supplement of MSPC |S| cliart to identify the variable(s) which is (are) responsible for the process abnormality when |S| chart issue a warning signal. Through simulation experiment, the performance of the model is evaluated by accuracy rate of pattern recognition. The results indicate that the proposed model is an effective method to interpret the root causes of the process abnormality. A bivariate example is presented to illustrate the application of the proposed model.
机译:多元统计过程控制(MSPC)技术是检测多元过程变化异常的有效工具。 MSPC技术基于总体统计;这给报警信号的解释带来了困难,也就是说,MSPC图表没有提供有关哪个过程变量(或它们的子集)对信号负责的必要信息,而这项任务留给了质量工程师。生产领域。本文提出了一种基于LS-SVM模式识别器的模型,用于诊断协方差矩阵中的双变量过程异常。此模型的主要属性是MSPC | S |的补充。当| S |时,可以识别导致过程异常的变量图表发出警告信号。通过仿真实验,通过模式识别的准确率来评估模型的性能。结果表明,所提出的模型是解释过程异常根本原因的有效方法。给出了一个双变量示例来说明所提出模型的应用。

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