In this paper we explore the issue of the transfer of process monitoring models between different plants that
exploit the same manufacturing process to manufacture the same product. Given a source plant A and a
target plant B, the objective is to use the data available from plant A to monitor the operation of plant B,
until a sufficient amount of data entirely representative of the operation in plant B is collected to allow
building a process monitoring model based on these data only.
Two different model transfer methodologies are proposed, which depend on the nature of the measured
process variables (namely, on whether they are common between the two plants or not). Both the proposed
approaches combine fundamental engineering knowledge on the system (derived from mass or energy
balances) with latent variable modeling techniques (namely, principal component analysis and joint-Y
partial least-squares regression). Both approaches are based on adaptive algorithms, which make them
practical for online use, and are tested on a benchmark problem related to the scale-up of the monitoring
model for an industrial spray-drying process. Results show that both proposed procedures provide robust
and prompt fault detection, even when very few data are available from plant B
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