Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10400004 | Control Engineering Practice | 2005 | 16 Pages |
Abstract
This paper describes the development of neural model-based control strategies for the optimisation of an industrial aluminium substrate disk grinding process. The grindstone removal rate varies considerably over a stone life and is a highly nonlinear function of process variables. Using historical grindstone performance data, a NARX-based neural network model is developed. This model is then used to implement a direct inverse controller and an internal model controller based on the process settings and previous removal rates. Preliminary plant investigations show that thickness defects can be reduced by 50% or more, compared to other schemes employed.
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Authors
James J. Govindhasamy, Seán F. McLoone, George W. Irwin, John J. French, Richard P. Doyle,