The application of Bayesian networks for monitoring and
diagnosis of a multistage manufacturing process is described.
Bayesian network “part models” were designed to
represent individual parts in-process. These were combined to
form a “process model,” a Bayesian network model
of the entire manufacturing process. An efficient procedure
is designed for managing the “process network.”
Simulated data is used to test the validity of diagnosis made
from this method. In addition, a critical analysis of this
method is given, including computation speed concerns, accuracy
of results, and ease of implementation. Finally, a discussion
on future research in the area is given.