Physics-guided neural controllers for compensating parasitic forces in high-precision mechatronics
Duration
March 2020 - August 2024Project Manager
Expanding markets for integrated circuits and 3D printing call for rapid development of a new generation of intelligent high-precision mechatronics, which can move mechanical stages with higher accuracy despite inherent parasitic forces. Therefore, this project will design a new type of data-driven intelligent controllers for compensating parasitic forces in high-precision mechatronics. The original idea is to develop physics-guided neural networks that are simpler to train and more robust compared to state-of-the-art deep neural networks. The resulting physics-guided neural controllers will be tested in an industrial linear motor for lithography machines with the aim of pushing accuracy from 100μm closer to 10μm in the presence of parasitic forces.
Project Related Publications
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On feedforward control using physics-guided neural networks: Training cost regularization and optimized initialization
(2022) -
Generalized feedforward control using physics-informed neural networks
IFAC-PapersOnLine (2022) -
Physics-guided neural networks for inversion-based feedforward control applied to linear motors
(2022)
Project Related Publications
-
On feedforward control using physics-guided neural networks: Training cost regularization and optimized initialization
(2022) -
Generalized feedforward control using physics-informed neural networks
IFAC-PapersOnLine (2022) -
Physics-guided neural networks for inversion-based feedforward control applied to linear motors
(2022)