A Method for Predicting Future Observations in the Monitoring of a Batch Process

Hyun-Woo Cho; Kwang-Jae Kim
January 2003
Journal of Quality Technology;Jan2003, Vol. 35 Issue 1, p59
Academic Journal
Proposes a method for predicting future observations in the monitoring of a batch process. Outline of the multiway principal components analysis; Basic procedure of the proposed method; Demonstration of the method using data from a polyvinyl chloride batch process.


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