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Publications in Scientific Journals:

A.L. Dontchev, I. Kolmanovsky, M. Krastanov, V. Phan:
"Approximating optimal finite horizon feedback by model predictive control";
Research Reports (Vienna University of Technology, Institute of Statistics and Mathematical Methods in Economics, Operations Research and Control Systems), 2018-07 (2018), 7; 20 pages.



English abstract:
We consider a finite-horizon continuous-time optimal control problem with nonlinear dynamics, an integral cost, control constraints and a time-varying parameter which represents perturbations or uncertainty. After discretizing the problem we employ a model predictive control (MPC) algorithm for this finite horizon optimal control problem by first solving the problem over the entire time horizon and then applying the first element of the optimal discrete-time control sequence, being a constant in time function, to the continuous-time system over the sampling interval. Then the state at the end of the
sampling interval is measured (estimated) with certain error, and the process is repeated at each step over the remaining horizon. As a result, we obtain a piecewise constant
function in time as control which can be regarded as an approximation to the optimal feedback control of the continuous-time system. In our main result we derive an estimate of the difference between the MPC-generated solution and the optimal feedback solution, both obtained for the same value of the perturbation parameter, in terms of the step-size of the discretization and the measurement error. Numerical results illustrating our estimates are reported.

Keywords:
optimal feedback control, model predictive control, discrete approximations, parameter uncertainty, error estimate


Electronic version of the publication:
https://publik.tuwien.ac.at/files/publik_274333.pdf


Created from the Publication Database of the Vienna University of Technology.