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Reference set selection with generalized orthogonal Procrustes analysis for multivariate statistical process monitoring of multiple production processes

机译:具有广义正交Procrustes分析的参考集选择,用于对多个生产过程进行多元统计过程监控

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Multivariate process monitoring is important in industry to ensure that production processes perform as close as possible to optimal operation. However, the selection of a reference set of optimal or expected performance is required for efficient process monitoring in real time. In this paper we present the method of generalized orthogonal Procrustes analysis to select a reference set for the multivariate monitoring of multiple production processes simultaneously. We combine generalized orthogonal Procrustes analysis with principal component analysis (PCA) and biplots to illustrate the implementation of the method and the interpretation of the results which provide important information on the relationships between many process variables and differences between the production processes. The work is motivated by an industrial problem involving the multivariate monitoring of a coal gasification production facility considering many process variables monitored across multiple reactors.
机译:多变量过程监控在工业中很重要,以确保生产过程尽可能接近最佳操作。但是,为了实时进行有效的过程监控,需要选择最佳或预期性能的参考集。在本文中,我们介绍了广义正交Procrustes分析的方法,以便为同时监控多个生产过程的多变量监测选择参考集。我们将广义正交Procrustes分析与主成分分析(PCA)和双图相结合,以说明该方法的实施和结果的解释,这些结果提供了有关许多过程变量之间的关系以及生产过程之间的差异的重要信息。这项工作是由涉及煤气化生产设施的多变量监控的工业问题引起的,考虑到跨多个反应器监控的许多过程变量。

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