@ARTICLE{Jakowluk_W._Application-oriented_2020, author={Jakowluk, W. and Świercz, M.}, volume={68}, number={No. 4 (i.a. Special Section on Advances in Electrical Power Engineering)}, journal={Bulletin of the Polish Academy of Sciences Technical Sciences}, pages={883-891}, howpublished={online}, year={2020}, abstract={The model predictive control (MPC) technique has been widely applied in a large number of industrial plants. Optimal input design should guarantee acceptable model parameter estimates while still providing for low experimental effort. The goal of this work is to investigate an application-oriented identification experiment that satisfies the performance objectives of the implementation of the model. A- and D-optimal input signal design methods for a non-linear liquid two-tank model are presented in this paper. The excitation signal is obtained using a finite impulse response filter (FIR) with respect to the accepted application degradation and the input power constraint. The MPC controller is then used to control the liquid levels of the double tank system subject to the reference trajectory. The MPC scheme is built based on the linearized and discretized model of the system to predict the system’s succeeding outputs with reference to the future input signal. The novelty of this model-based method consists in including the experiment cost in input design through the objective function. The proposed framework is illustrated by means of numerical examples, and simulation results are discussed.}, type={Article}, title={Application-oriented experiment design for model predictive control}, URL={http://journals.pan.pl/Content/117271/PDF/24_883-891_01514_Bpast.No.68-4_27.08.20.pdf}, doi={10.24425/bpasts.2020.134189}, keywords={model predictive control, optimal input design, convex optimization, application-oriented identification}, }