TY - JOUR
T1 - Experimentally-efficient data-driven rational feedforward control for multivariable systems
AU - Poot, Maurice
AU - Portegies, Jim
AU - Kostić, Dragan
AU - Oomen, Tom
PY - 2024
Y1 - 2024
N2 - Feedforward control with task flexibility for MIMO systems is essential to meet the growing demands on throughput and accuracy of high-tech systems. The aim of this paper is to develop an experimentally efficient framework for data-driven tuning of rational feedforward controllers for general non-commutative MIMO systems. In the developed approach, the nonlinear terms in the non-convex optimisation problem of iterative learning control (ILC) are iteratively circumvented via approximation. This leads to a series of convex optimisation problems that can be solved offline to obtain the parameters of the rational feedforward controller. In addition, by limiting the number of offline iterations an experimentally intensive algorithm is derived, which could be beneficial in the case of severe model mismatch. A simulation study shows that the experimentally efficient approach converges fast through offline iterations and has improved convergence properties through the use of regularisation.
AB - Feedforward control with task flexibility for MIMO systems is essential to meet the growing demands on throughput and accuracy of high-tech systems. The aim of this paper is to develop an experimentally efficient framework for data-driven tuning of rational feedforward controllers for general non-commutative MIMO systems. In the developed approach, the nonlinear terms in the non-convex optimisation problem of iterative learning control (ILC) are iteratively circumvented via approximation. This leads to a series of convex optimisation problems that can be solved offline to obtain the parameters of the rational feedforward controller. In addition, by limiting the number of offline iterations an experimentally intensive algorithm is derived, which could be beneficial in the case of severe model mismatch. A simulation study shows that the experimentally efficient approach converges fast through offline iterations and has improved convergence properties through the use of regularisation.
KW - iterative learning control
KW - Multivariable
KW - non-convex optimisation
KW - rational basis functions
UR - http://www.scopus.com/inward/record.url?scp=85206085725&partnerID=8YFLogxK
U2 - 10.1080/00207179.2024.2409309
DO - 10.1080/00207179.2024.2409309
M3 - Article
AN - SCOPUS:85206085725
SN - 0020-7179
VL - 98 (2025)
SP - 1563
EP - 1572
JO - International Journal of Control
JF - International Journal of Control
IS - 7
ER -