Disturbance models for offset-free model-predictive control
โ Scribed by Gabriele Pannocchia; James B. Rawlings
- Publisher
- American Institute of Chemical Engineers
- Year
- 2003
- Tongue
- English
- Weight
- 254 KB
- Volume
- 49
- Category
- Article
- ISSN
- 0001-1541
No coin nor oath required. For personal study only.
โฆ Synopsis
Abstract
Model predictive control algorithms achieve offsetโfree control objectives by adding integrating disturbances to the process model. The purpose of these additional disturbances is to lump the plantโmodel mismatch and/or unmodeled disturbances. Its effectiveness has been proven for particular square cases only. For systems with a number of measured variables (p) greater than the number of manipulated variables (m), it is clear that any controller can track without offset at most m controlled variables. One may think that m integrating disturbances are sufficient to guarantee offsetโfree control in the m controlled variables. We show this idea is incorrect and present general conditions that allow zero steadyโstate offset. In particular, a number of integrating disturbances equal to the number of measured variables are shown to be sufficient to guarantee zero offset in the controlled variables. These results apply to square and nonsquare, openโloop stable, integrating and unstable systems.
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