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Development of correlation-based process characteristics visualization method and its application to fault detection

机译:基于关联的过程特征可视化方法的开发及其在故障检测中的应用

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Although process monitoring is important for maintaining safety and product quality, it is difficult to understand process characteristics particularly when they are changing. Since the correlation among variables changes due to changes in process characteristics, process data visualization based on the correlation among variables helps process characteristic understanding. In the present work, a new correlation-based data visualization method is proposed by integrating joint decorrelation (JD) and stochastic proximity embedding (SPE). JD is a blind source separation (BSS) method that can separates sample based on the correlation, and SPE is a self-organizing algorithm that can map high-dimensional data to a two-dimensional plane. The proposed method, referred to as JD-SPE, separates samples based on the correlation using JD and the separated samples are visualized in the two-dimensional plane by SPE. Correlation matrices have to be constructed before sample separation for JD; however how to construct them is not clear. The present work also proposes a correlation matrix construction method for JD by using nearest correlation spectral clustering (NCSC), which is a correlation-based clustering method. In addition, a new process monitoring method based on multivariate statistical process control (MSPC) which is a well-known process monitoring algorithm and JD-SPE. This monitoring method is referred to as JD-SPE-T. The proposed JD-SPE-T can detect a fault that can not detected by the conventional MSPC. The usefulness of the proposed methods is demonstrated through numerical examples.
机译:尽管过程监视对于维持安全性和产品质量很重要,但是很难理解过程特征,尤其是当它们发生变化时。由于变量之间的相关性由于过程特性的变化而改变,因此基于变量之间的相关性的过程数据可视化有助于理解过程特性。在当前工作中,通过联合联合去相关(JD)和随机邻近嵌入(SPE),提出了一种新的基于相关性的数据可视化方法。 JD是一种盲源分离(BSS)方法,可以基于相关性分离样本,而SPE是一种自组织算法,可以将高维数据映射到二维平面。所提出的方法称为JD-SPE,它使用JD基于相关性来分离样本,并且通过SPE在二维平面上可视化分离的样本。京瓷样品分离前必须建立相关矩阵。但是,如何构造它们尚不清楚。本工作还提出了一种使用最近相关谱聚类(NCSC)的JD相关矩阵构造方法,它是一种基于相关的聚类方法。另外,一种基于多变量统计过程控制(MSPC)的新过程监视方法是众所周知的过程监视算法和JD-SPE。此监视方法称为JD-SPE-T。提出的JD-SPE-T可以检测到常规MSPC无法检测到的故障。通过数值例子证明了所提出方法的有效性。

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