Multivariate statistical procedures for monitoring the behavior of batch pr
ocesses are presented. A Mew type of regression, called multiway covariates
regression, ir used Co Sind the relationship between the process variables
and the quality variables of the final product. The three-way structure of
the batch process data is modeled by means of a Tucker3 or a PARAFAC model
. The only information needed is a historical data set of past successful b
atches. Subsequent new batches can be monitored using multivariate statisti
cal process control charts. In this way the progress of the new batch can b
e tracked and possible faults can be easily detected. Further detailed info
rmation from the process can be obtained by interrogating the underlying mo
del. Diagnostic tools, such as contribution plots of each of the variables
to the observed deviation, are also developed. Finally, on-line predictions
of the final quality variables can be monitored; providing an additional t
ool to see whether a particular batch will produce an out-of-spec product.
These ideas are illustrated using simulated and real data of a batch polyme
rization reaction.