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Multivariate Statistical Batch Process Monitoring Using Dynamic Independent Component Analysis

机译:使用动态独立分量分析的多变量统计批处理监控

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Use of independent component analysis (ICA) in developing statistical monitoring charts for batch processes has been reported previously. This paper extends the previous work by introducing time lag shifts to include process dynamics in the ICA model. Comparison of the dynamic ICA based method with other batch process monitoring approaches based on static ICA, static principal component analysis (PCA) and dynamic PCA is made for an industrial batch polymerization reactor and a simulated fed-batch penicillin fermentation process. For all the faults studied, the dynamic ICA method was found to be the only approach that detected all the faults, and it detected the faults earlier with less ambiguity than other approaches.
机译:以前已经报道了在开发批处理过程中开发统计监测图表时的独立分量分析(ICA)。本文通过引入时间滞后转移来扩展前一个工作,以包括ICA模型中的过程动态。基于ICA的动态ICA方法与基于静态ICA,静态主成分分析(PCA)和动态PCA的其他批处理监测方法进行了比较,用于工业批量聚合反应器和模拟进料批素发酵过程。对于所研究的所有故障,发现动态ICA方法是检测所有故障的唯一方法,并且它检测到更早的故障,而不是其他方法的含糊不变。

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