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Industrial experiences with multivariate statistical analysis of batch process data

机译:批处理数据的多元统计分析的行业经验

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摘要

The data collected from a batch process over time from multiple sensors can be arranged in a matrix of J-variables X K-time points. Data collected on multiple batches can be arranged in a cube of I-batches X J-variables X K-time points. The analysis of a cube of data can be performed by unfolding in two different ways, batch unfolding giving an I X JK data matrix or observation unfolding resulting in an IK X J data matrix, followed by PCA. The data can also be analyzed directly using three-way methods such as PARAFAC or Tucker3. In the literature there is no clear agreement as to the most effective approach for the analysis of batch data. This paper makes detailed comparisons between the two unfolding approaches and the Tucker3 method. Batch data from a fermentation process at The Dow Chemical Company San Diego facility is used for this study. The three methods were found to be complementary to each other and a well-trained chemometrician/practitioner will find all three methods to be useful for batch data analysis. The batch unfolding MPCA is more sensitive to the overall batch variation while the observation unfolding MPLS is more sensitive to the localized batch variation. The Tucker3 method is in good balance in terms of detecting both variations.
机译:随时间推移从多个传感器从批处理过程中收集的数据可以排列在J变量X K时间点的矩阵中。可以将多个批次收集的数据安排在I批次X J变量X K时间点的多维数据集中。可以通过以下两种不同的方式展开数据立方体的分析:批量展开以提供I X JK数据矩阵;观察展开以得到IK X J数据矩阵;然后是PCA。也可以使用PARAFAC或Tucker3等三向方法直接分析数据。在文献中,对于批数据分析的最有效方法尚无明确的共识。本文对两种展开方法与Tucker3方法进行了详细的比较。这项研究使用了陶氏化学公司位于圣地亚哥的工厂发酵过程中的批次数据。发现这三种方法相互补充,并且训练有素的化学计量师/从业人员会发现这三种方法对于批处理数据分析很有用。批量展开MPCA对整体批量变化更敏感,而观测展开MPLS对局部批量变化更敏感。在检测两个变化方面,Tucker3方法具有很好的平衡。

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