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Multivariate statistical process monitoring of propylene polymerization with principal component analysis and support vector data description

机译:具有主成分分析的丙烯聚合的多变量统计过程监测和支持载体数据描述

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This paper addresses fault diagnosis and identification of propylene polymerization process for which the recorded variables follow non-Gaussian distributions. Recent work has demonstrated the effectiveness of principal component analysis (PCA) in dimension reduction and support vector data description (SVDD) in non-Gaussian monitoring statistics. This article extends this work by combining principal component analysis with support vector data description and introducing a fault identification technique to diagnose abnormal process cause. The research results confirm the utility of the proposed method.
机译:本文解决了记录变量遵循非高斯分布的丙烯聚合过程的故障诊断和鉴定。最近的工作已经证明了主成分分析(PCA)在非高斯监测统计中的尺寸减小和支持矢量数据描述(SVDD)中的有效性。本文通过将主成分分析与支持向量数据描述组合并引入故障识别技术来诊断异常过程原因来扩展本工作。研究结果证实了该方法的效用。

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