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GRU-Type LARC Strategy for Precision Motion Control With Accurate Tracking Error Prediction

Chuxiong Hu, Tiansheng Ou, Yu Zhu, Limin Zhu

2020IEEE Transactions on Industrial Electronics86 citationsDOI

Abstract

To simultaneously achieve accurate tracking error prediction, rigorous motion accuracy, and certain robustness to parameter variations and unknown disturbances, this article proposes a data-based learning adaptive robust control (LARC) strategy based on gated recurrent unit (GRU) neural network. Firstly, parameter adaptive control and robust control are utilized to guarantee the robustness against parametric uncertainties and unknown disturbances. A GRU neural network is then constructed and capable of precisely predicting the tracking error after training with data collected from a linear-motor-driven stage. Essentially, the GRU network can be viewed as a data-based model, which captures the tracking error dynamic characteristics and provides a prediction even before implementing the real trajectory. Consequently, a reference modification and a feedforward compensation part can be formed, which is the significant part of the whole LARC control structure. Comparative experimental investigation not only validates the effectiveness of the tracking error prediction ability, but also demonstrates the practically satisfactory transient/steady-state tracking performance of the proposed control strategy.

Topics & Concepts

Robustness (evolution)Control theory (sociology)Feed forwardArtificial neural networkComputer scienceTracking errorParametric statisticsMotion controlTrajectoryArtificial intelligenceControl engineeringEngineeringControl (management)MathematicsRobotGeneBiochemistryStatisticsAstronomyChemistryPhysicsIterative Learning Control SystemsControl Systems in EngineeringAdaptive Control of Nonlinear Systems
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