We propose the reduced basis method for the solution of parametrized optimal control problems described by parabolic partial differential equations in the unconstrained case. The method, which is based on an off-line-on-line decomposition procedure, allows at the on-line step large computational cost savings with respect to the "truth" approximation used for defining the reduced basis. An a posteriori error estimate is provided by mea ns of the goal-oriented analysis, thus associating an error bound to each optimal solution of the pa rametrized optimal control problem and answering to the demand for a reliable method. An adaptive procedure, led by the a posteriori error estimate, is considered for the generation of the reduced b asis space, which is set according to the optimal primal and dual solutions of the optimal control pr oblem at hand. © 2010 Society for Industrial and Applied Mathematics.

Reduced basis method and a posteriori error estimation for parametrized linear-quadratic optimal control problems

DEDE', LUCA
2010-01-01

Abstract

We propose the reduced basis method for the solution of parametrized optimal control problems described by parabolic partial differential equations in the unconstrained case. The method, which is based on an off-line-on-line decomposition procedure, allows at the on-line step large computational cost savings with respect to the "truth" approximation used for defining the reduced basis. An a posteriori error estimate is provided by mea ns of the goal-oriented analysis, thus associating an error bound to each optimal solution of the pa rametrized optimal control problem and answering to the demand for a reliable method. An adaptive procedure, led by the a posteriori error estimate, is considered for the generation of the reduced b asis space, which is set according to the optimal primal and dual solutions of the optimal control pr oblem at hand. © 2010 Society for Industrial and Applied Mathematics.
2010
A posteriori error estimation; Optimal control; Parametrized partial differential equations; Reduced basis method; Applied Mathematics; Computational Mathematics
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1002673
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