Batch Process
Monitoring Based on Multisubspace Multiway
Principal Component Analysis
and Time-Series Bayesian Inference
- Publication date
- Publisher
Abstract
Multiway principal
component analysis (MPCA), which is a dimensionality
reduction method for process variables, has been widely used to monitor
batch and fed-batch processes. However, three main factors affect
the performance of MPCA monitoring: The future status of the online
batch has to be predicted, the discarded principal components with
small variance might contain useful information, and self-correlation
and industrial noise exist in process data. Thus, a new batch process
monitoring method based on multisubspace multiway principal component
analysis and time-series Bayesian inference through a moving window
is developed. The feasibility and effectiveness of the proposed batch
process monitoring method is demonstrated using a numerical process
and the fed-batch penicillin fermentation process, and its performance
is compared with that of the MPCA. The results show that the proposed
method is more accurate in detecting different types of batch process
faults