2021
DOI: 10.3390/a14010025
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Advanced Construction of the Dynamic Matrix in Numerically Efficient Fuzzy MPC Algorithms

Abstract: A method for the advanced construction of the dynamic matrix for Model Predictive Control (MPC) algorithms with linearization is proposed in the paper. It extends numerically efficient fuzzy algorithms utilizing skillful linearization. The algorithms combine the control performance offered by the MPC algorithms with nonlinear optimization (NMPC algorithms) with the numerical efficiency of the MPC algorithms based on linear models in which the optimization problem is a standard, easy-to-solve, quadratic program… Show more

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Cited by 4 publications
(1 citation statement)
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References 49 publications
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“…Furthermore, continued improvements in modeling and estimation seem logical. Comparison of the results here to model predictive control, as articulated by Marusak in [38,39] for prediction and by Nebeluk and Ławry ńczuk for tuning in [40], seems to be very interesting for future research. In [41], Pappalardo proposes alternative uses of forward and reverse dynamics in the control, and comparison to the self-awareness feature of deterministic artificial intelligence seems to be a natural area for future improvements.…”
Section: Future Researchmentioning
confidence: 65%
“…Furthermore, continued improvements in modeling and estimation seem logical. Comparison of the results here to model predictive control, as articulated by Marusak in [38,39] for prediction and by Nebeluk and Ławry ńczuk for tuning in [40], seems to be very interesting for future research. In [41], Pappalardo proposes alternative uses of forward and reverse dynamics in the control, and comparison to the self-awareness feature of deterministic artificial intelligence seems to be a natural area for future improvements.…”
Section: Future Researchmentioning
confidence: 65%