Abstract
The requirements for high accuracy and throughput in next-generation data-intensive motion systems lead to situations where position-dependent feedforward is essential. This article aims to develop a framework for interpretable and task-flexible position-dependent feedforward through systematic learning with automated experimental design. A data-driven and interpretable framework is developed by employing Gaussian process (GP) regression, enabling accurate modeling of feedforward parameters as a continuous function of position. The data is efficiently collected and illustrated through an iterative learning control (ILC) algorithm. Moreover, a framework for experimental design in the sense of automatically determining the training positions is presented by exploiting the uncertainty estimates of the GP and the specified first-principles knowledge. Two relevant case studies show the importance and significant performance improvement of the approach for position-dependent snap feedforward for a simplified 1-D wafer stage simulation and experimental application to position-dependent motor force constant compensation in an industrial wirebonder.
Original language | English |
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Pages (from-to) | 1968-1982 |
Number of pages | 15 |
Journal | IEEE Transactions on Control Systems Technology |
Volume | 32 |
Issue number | 6 |
DOIs | |
Publication status | Published - Nov 2024 |
Funding
This work was supported by ASMPT. The authors would like to thank Kelvin Kai Wa Yan and Robin van Es for their valuable contributions to this research and the experimental case study.
Funders | Funder number |
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ASMPT |
Keywords
- Actuators
- Dynamics
- Feedforward systems
- Force
- Gaussian processes (GPs)
- Systematics
- Task analysis
- Wires
- iterative learning control (ILC)
- mutual information