Abstract
Iterative learning control yields accurate feedforward input by utilizing experimental data from past iterations. However, typically there exists a tradeoff between task flexibility and tracking performance. This study aims to develop a learning framework with both high task-flexibility and high tracking-performance by integrating rational basis functions with frequency-domain learning. Rational basis functions enable the learning of system zeros, enhancing system representation compared to polynomial basis functions. The developed framework is validated through a two-mass motion system, showing high tracking-performance with high task-flexibility, enhanced by the rational basis functions effectively learning the flexible dynamics.
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CITATION STYLE
Tsurumoto, K., Ohnishi, W., Koseki, T., Van Haren, M., & Oomen, T. (2024). Integrated Rational Feedforward in Frequency-Domain Iterative Learning Control for Highly Task-Flexible Motion Control. IEEE/ASME Transactions on Mechatronics, 29(4), 3010–3018. https://doi.org/10.1109/TMECH.2024.3400252
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