The Disturbance Model in Based Predictive Control
Résumé
Model Based Predictive Control (MBPC) is a control methodology which
uses a process model on-line in the control computer; this model is used for calculating
output predictions and optimizing control actions. The importance of the system model
has been generally recognized, but less attention has been paid to the role of the
disturbance model. In this paper the importance of the disturbance model is indicated
with respect to the EPSAC approach to MBPC. To illustrate this importance, an
example of this advanced control methodology applied to a typical mechatronic system
is presented, to compare the performances obtained by using different disturbance
models. It clearly shows the benefits of using an ‘intelligent’ disturbance model instead
of the ‘default’ model generally adopted in practice.