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Iterative Learning Control for Video-Rate Atomic Force Microscopy | IEEE Journals & Magazine | IEEE Xplore

Iterative Learning Control for Video-Rate Atomic Force Microscopy


Abstract:

We present a control scheme for video-rate atomic force microscopy with rosette pattern. The controller structure involves a feedback internal-model-based controller and ...Show More

Abstract:

We present a control scheme for video-rate atomic force microscopy with rosette pattern. The controller structure involves a feedback internal-model-based controller and a feedforward iterative learning controller. The iterative learning controller is designed to improve tracking performance of the feedback-controlled scanner by rejecting the repetitive disturbances arising from the system nonlinearities. We investigate the performance of two inversion techniques for constructing the learning filter. We conduct tracking experiments using a two-degree-of-freedom microelectromechanical system (MEMS) nanopositioner at frame rates ranging from 5 to 20 frames per second. The results reveal that the algorithm converges rapidly and the iterative learning controller significantly reduces both the transient and steady-state tracking errors. We acquire and report a series of high-resolution time-lapsed video-rate AFM images with the rosette pattern.
Published in: IEEE/ASME Transactions on Mechatronics ( Volume: 26, Issue: 4, August 2021)
Page(s): 2127 - 2138
Date of Publication: 20 October 2020

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