A Formulation of nonlinear model predictive control using automatic differentiation

Date

2005-12-01T00:00:00Z

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Elsevier Science B.V., Amsterdam.

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Article

ISSN

0959-1524

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Citation

Yi Cao, A formulation of nonlinear model predictive control using automatic differentiation, Journal of Process Control, Volume 15, Issue 8, December 2005, Pages 851-858.

Abstract

An efficient algorithm is developed to alleviate the computational burden associated with nonlinear model predictive control (NMPC). The new algorithm extends an existing algorithm for solutions of dynamic sensitivity from autonomous to non-autonomous differential equations using the Taylor series and automatic differentiation (AD). A formulation is then presented to recast the NMPC problem as a standard nonlinear programming problem by using the Taylor series and AD. The efficiency of the new algorithm is compared with other approaches via an evaporation case study. The comparison shows that the new algorithm can reduce computational time by two orders of magnitude.

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Github

Keywords

Predictive control, Optimal control, Dynamic sensitivity

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