Litcius/Paper detail

Frequency-Domain Data-Driven Adaptive Iterative Learning Control Approach: With Application to Wafer Stage

Xuewei Fu, Xiaofeng Yang, Pericle Zanchetta, Yang Liu, Chenyang Ding, Mi Tang, Zhenyu Chen

2020IEEE Transactions on Industrial Electronics28 citationsDOIOpen Access PDF

Abstract

The feedforward control is becoming increasingly important in ultra-precision stages. However, the conventional model-based methods cannot achieve expected performance in new-generation stages since it is hard to obtain the accurate plant model due to the complicated stage dynamical properties. To tackle this problem, this article develops a model-free data-driven adaptive iterative learning approach that is designed in the frequency-domain. Explicitly, the proposed method utilizes the frequency-response data to learn and update the output of the feedforward controller online, which has benefits that both the structure and parameters of the plant model are not required. An unbiased estimation method for the frequency response of the closed-loop system is proposed and proved through the theoretical analysis. Comparative experiments on a linear motor confirm the effectiveness and superiority of the proposed method, and show that it has the ability to avoid the performance deterioration caused by the model mismatch with the increasing iterative trials.

Topics & Concepts

Iterative learning controlFeed forwardComputer scienceControl theory (sociology)Frequency domainIterative methodController (irrigation)Adaptive controlFrequency responseControl engineeringControl (management)AlgorithmArtificial intelligenceEngineeringBiologyElectrical engineeringComputer visionAgronomyIterative Learning Control SystemsPiezoelectric Actuators and ControlAdvanced machining processes and optimization
Frequency-Domain Data-Driven Adaptive Iterative Learning Control Approach: With Application to Wafer Stage | Litcius