A New Approach to Intelligent Model Based Predictive Control Scheme
A. H. MAZINAN, M. F. KAZEMI
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DOI: 10.4236/iim.2010.21002   PDF    HTML     6,036 Downloads   10,292 Views   Citations

Abstract

This paper describes a new approach to intelligent model based predictive control scheme for deriving a complex system. In the control scheme presented, the main problem of the linear model based predictive control theory in dealing with severe nonlinear and time variant systems is thoroughly solved. In fact, this theory could appropriately be improved to a perfect approach for handling all complex systems, provided that they are firstly taken into consideration in line with the outcomes presented. This control scheme is organized based on a multi-fuzzy-based predictive control approach as well as a multi-fuzzy-based predictive model approach, while an intelligent decision mechanism system (IDMS) is used to identify the best fuzzy-based predictive model approach and the corresponding fuzzy-based predictive control approach, at each instant of time. In order to demonstrate the validity of the proposed control scheme, the single linear model based generalized predictive control scheme is used as a benchmark approach. At last, the appropriate tracking performance of the proposed control scheme is easily outperformed in comparison with previous one.

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A. MAZINAN and M. KAZEMI, "A New Approach to Intelligent Model Based Predictive Control Scheme," Intelligent Information Management, Vol. 2 No. 1, 2010, pp. 14-20. doi: 10.4236/iim.2010.21002.

Conflicts of Interest

The authors declare no conflicts of interest.

References

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