Conference Proceedings
On on-line sampled-data optimal learning for dynamic systems with uncertainties
SH Zhou, Y Tan, D Oetomo, C Freeman, I Mareels
2013 9th Asian Control Conference Ascc 2013 | IEEE | Published : 2013
Abstract
In this study, a novel on-line optimal learning control is proposed to achieve the optimal performance for dynamic systems with modeling uncertainties, measurement noise and iteration-varying initial conditions. By introducing a nominal model and a sampled-data controller, it is possible to find the optimal solution iteratively of an optimization problem using gradient descent method. A feedback controller is introduced along the finite-time domain to ensure that the difference between the output of the nominal model and that of the actual plant can be made arbitrarily small. This feedback thus can be used to handle various uncertainties in the plant model, while the feedforward learning con..
View full abstractGrants
Awarded by Australian Research Council (ARC) under Future Fellow Project
Awarded by Australian Research Council
Funding Acknowledgements
This work is supported by the Australian Research Council (ARC) under Future Fellow Project: FT0991385