首页> 外文会议>Proceedings of the 13th world congress >ANALYSIS, MONITORING AND FAULT DIAGNOSIS OF INDUSTRIAL PROCESSES USING MULTIVARIATE STATISTICAL PROJECTION METHODS
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ANALYSIS, MONITORING AND FAULT DIAGNOSIS OF INDUSTRIAL PROCESSES USING MULTIVARIATE STATISTICAL PROJECTION METHODS

机译:多元统计投影方法的工业过程分析,监测和故障诊断

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Multivariate statistical procedures based on various versions of principle component analysis (PCA), and partial least squares (PLS), have recently been proposed for the analysis monitoring and diagnosis of industrial processes. These methods are capable of treating processes with large numbers of highly correlated process and quality variables, and can easily handle missing data. The only information needed to exploit them is a good database on historical process operations. In this paper, industrial experiences with these methods based on recent applications in many different industries are presented. Both continuous and batch processes are treated. Multi-block methods are shown to be very useful for treating large continuous processes or multistage batch operations, and multi-way methods are used to treat batch processes where one has time-varying trajectory data on many variables.
机译:最近已经提出了基于主成分分析(PCA)和偏最小二乘(PLS)各种版本的多元统计程序,用于工业过程的分析监控和诊断。这些方法能够处理具有大量高度相关的过程和质量变量的过程,并且可以轻松处理丢失的数据。利用它们的唯一信息是一个良好的历史过程操作数据库。在本文中,基于在许多不同行业中的最新应用,介绍了使用这些方法的行业经验。连续过程和批处理过程均被处理。已显示多块方法对于处理大型连续过程或多阶段批处理操作非常有用,而多路方法用于处理其中许多变量具有时变轨迹数据的批处理过程。

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