U-033
Using a Learning Controller to Achieve Accurate Linear Motor Motion Control
Authors: Ai-Ping Hu (1), Andy Register (2), Nader Sadegh (1)
Affiliation: (1) Georgia Institute of Technology, (2) Georgia Tech Research Institute
Abstract
The development and experimental implementation of a learning controller for achieving
accurate (on the order of micrometers) linear motor motion control of a rigid mass
is presented. The learning controller employs (1) neural networks with local basis
functions to approximate system nonlinearities, and thus compensate for them, and
(2) a linear control component consisting of both feedback and feedforward terms.
The significant nonlinearities present in our system are established to be friction,
cogging, and torque ripple. It is assumed that detailed knowledge of these nonlinearities
is not available. Experimental results demonstrate that the proposed learning controller
is able to significantly reduce trajectory tracking errors when compared to a standard
controller.
Ai-Ping Hu
phone: (404) 894-3256
gt0162c@prism.gatech.edu