In this work, a parameter tuning
problem of two-degrees-of-freedom
model predictive control of industrial paper-making processes is explored
to achieve satisfactory time-domain robust closed-loop performance
in terms of worst-case overshoots and worst-case settling times, under
user-specified parametric uncertainties. An efficient visualization
method is first developed to characterize the set of time-domain closed-loop
responses in the presence of parametric model–plant mismatch.
On the basis of the visualization technique and the unmodality/monotonicity
properties of the performance indices with respect to the tuning parameters,
the feasibility of the tuning problem can be analyzed, and a three-step
iterative line-search based automatic tuning algorithm is proposed
to determine the controller parameters that meet the time-domain performance
requirements robustly for the given parametric uncertainty specifications.
The effectiveness of the algorithm is illustrated by applying the
results to a process from stock to conditioned weight in an industrial
paper machine and by comparing the performance of the algorithm with
that of brutal search.
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