Long-range predictive control using weighting-sequence models
- 1 January 1987
- journal article
- Published by Institution of Engineering and Technology (IET) in IEE Proceedings D Control Theory and Applications
- Vol. 134 (3) , 187-195
- https://doi.org/10.1049/ip-d.1987.0028
Abstract
Long-range predictive control appears to be a better foundation for self-tuning compared with k-step ahead or model-reference approaches. Various methods have been proposed in the literature based on weighting-sequence models, and the paper unifies their development. By assuming a noise structure which involves Brownian motion, natural integrating action is achieved as opposed to the ad hoc approaches previously used. Simulation studies using truncated models show that large numbers of parameters are necessary using weighting sequences, although a parallel method using a CARIMA model is entirely satisfactory. When used with nonminimum-phase plant, the dynamic matrix control method works best.Keywords
This publication has 3 references indexed in Scilit:
- Extended Horizon Adaptive ControlIFAC Proceedings Volumes, 1984
- Typical Application Possibilities for Self-Tuning Predictive ControlIFAC Proceedings Volumes, 1982
- PREDICTIVE CONTROL USING IMPULSE RESPONSE MODELSPublished by Elsevier ,1980