Advanced-multi-step nonlinear model predictive control

•We propose a fast NMPC method (amsNMPC) to avoid computational delay.•amsNMPC deals with NLP problems whose solution time exceeds sampling period.•Nominal stability of amsNMPC method is proved.•amsNMPC could track set point change and handle small level of errors.•The performance of amsNMPC deterio...

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Bibliographic Details
Published in:Journal of process control 2013-09, Vol.23 (8), p.1116-1128
Main Authors: Yang, Xue, Biegler, Lorenz T.
Format: Article
Language:eng
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Summary:•We propose a fast NMPC method (amsNMPC) to avoid computational delay.•amsNMPC deals with NLP problems whose solution time exceeds sampling period.•Nominal stability of amsNMPC method is proved.•amsNMPC could track set point change and handle small level of errors.•The performance of amsNMPC deteriorates with increasing errors and NLP solution time. Nonlinear model predictive control (NMPC) has gained widespread attention due to its ability to handle variable bounds and deal with multi-input, multi-output systems. However, it is susceptible to computational delay, especially when the solution time of the nonlinear programming (NLP) problem exceeds the sampling time. In this paper we propose a fast NMPC method based on NLP sensitivity, called advanced-multi-step NMPC (amsNMPC). Two variants of this method are developed, the parallel approach and the serial approach. For the amsNMPC method, NLP problems are solved in background multiple sampling times in advance, and manipulated variables are updated on-line when the actual states are available. We present case studies about a continuous stirred tank reactor (CSTR) and a distillation column to show the performance of amsNMPC. Nominal stability properties are also analyzed.
ISSN:0959-1524
1873-2771