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Quality prediction and analysis for large-scale processes based on multi-level principal component modeling strategy

机译:基于多层次主成分建模策略的大规模过程质量预测与分析

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This paper proposed a multi-level principal component regression (PCR) modeling strategy for quality prediction and analysis of large-scale processes. Based on decomposition of the large data matrix, the first level PCR model divides the process into different sub-blocks through uncorrelated principal component directions, with a related index defined for determination of variables in each sub-block. In the second level, a PCR model is developed for local quality prediction in each sub-block. Subsequently, the third level PCR model is constructed to combine the local prediction results in different sub-blocks. For process analysis, a sub-block contribution index is defined to identify the critical-to-quality sub-blocks, based on which an inside sub-block contribution index is further defined for determination of the key variables in each sub-block. As a result, correlations between process variables and quality variables can be successfully constructed. A case study on Tennessee Eastman (TE) benchmark process is provided for performance evaluation.
机译:本文提出了一种用于大型过程质量预测和分析的多级主成分回归(PCR)建模策略。基于大数据矩阵的分解,第一级PCR模型通过不相关的主成分方向将过程划分为不同的子块,并定义了相关的索引来确定每个子块中的变量。在第二级中,开发了一个PCR模型用于每个子块中的局部质量预测。随后,构建第三级PCR模型以将局部预测结果组合到不同的子块中。为了进行过程分析,定义了一个子块贡献指数来标识对质量至关重要的子块,在此基础上进一步定义了一个内部子块贡献指数,用于确定每个子块中的关键变量。结果,可以成功地建立过程变量和质量变量之间的相关性。以田纳西州伊士曼(TE)基准程序为例,进行绩效评估。

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