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- 2009 Annual Meeting
- Computing and Systems Technology Division
- Advances in Process Control II
- (438c) A Novel MPC Strategy by Adapting Disturbance Models
In this work, we propose a new MPC scheme that adapts the disturbance model. Usually process models are more complicated than disturbance dynamics; accurate identification and prediction of the process can hardly be achieved under closed-loop. Therefore, in our approach, only the disturbance model is adapted without the need for external perturbations. The disturbance model is updated by re-estimating a Kalman gain to give better predictions of future disturbances. MPC then takes advantage of these predictions to calculate optimal manipulated variables. Implementation of the proposed MPC strategy in commercial MPC packages such as DMCplus is discussed. In this case the objective is the ease of implementation rather than trying to be the most general form of formulation.
Performance of the proposed MPC strategy is studied by simulations based on the Wood-Berry distillation model. Results show that as compared with traditional MPC great improvements in controlled variables could be made. It is also found that process model mismatch can be compensated to some extent by adapting the disturbance model. Performance deteriorations caused by nonlinearities could be reduced.
References
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[3] H. Fukushima, T.-H. Kim, T. Sugie. Adaptive model predictive control for a class of constrained linear systems based on the comparison model. Automatica. 2007; 43:301-308.
[4] D. Dougherty, D. Cooper. A practical multiple model adaptive strategy for single-loop MPC. Control Engineering Practice. 2003; 11:141-159.