SYROMar 23, 2021

Generalized Iterative Super-Twisting Sliding Mode Control: A Case Study on Flexure-Joint Dual-Drive H-Gantry Stage

arXiv:2103.12567v14 citations
Originality Incremental advance
AI Analysis

This addresses the need for fast and accurate motion in industrial mechatronic systems, though it appears incremental as it builds on existing super-twisting and iterative learning methods.

The paper tackled the problem of controlling mechatronic systems with unknown dynamics by introducing a novel model-free control method, achieving improved motion performance validated on a flexure-joint dual-drive H-gantry stage.

Mechatronic systems are commonly used in the industry, where fast and accurate motion performance is always required to guarantee manufacturing precision and efficiency. Nevertheless, the system model and parameters are difficult to be obtained accurately. Moreover, the high-order modes, strong coupling in the multi-axis systems, or unmodeled frictions will bring uncertain dynamics to the system. To overcome the above-mentioned issues and enhance the motion performance, this paper introduces a novel intelligent and totally model-free control method for mechatronic systems with unknown dynamics. In detail, a 2-degree-of-freedom (DOF) architecture is designed, which organically merges a generalized super-twisting algorithm with a unique iterative learning law. The controller solely utilizes the input-output data collected in iterations such that it works without any knowledge of the system parameters. The rigorous proof of convergence ability is given and a case study on flexture-joint dual-drive H-gantry stage is shown to validate the effectiveness of the proposed method.

Foundations

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