广义迭代超扭转滑模控制:以柔性关节双驱动h型龙门工作台为例

Wenxin Wang, Jun Ma, Zilong Cheng, Xiaocong Li, A. Mamun, Tong-heng Lee
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引用次数: 2

摘要

机电一体化系统在工业中是常用的,在工业中总是要求快速准确的运动性能,以保证制造精度和效率。然而,系统的模型和参数难以准确获得。此外,高阶模态、多轴系统的强耦合或未建模的摩擦会给系统带来不确定性动力学。为了克服上述问题,提高运动性能,本文提出了一种针对未知动力学的机电系统的智能化、完全无模型控制方法。设计了一种将广义超扭转算法与独特的迭代学习规律有机融合的二自由度结构。控制器仅利用在迭代中收集的输入-输出数据,使其在不知道系统参数的情况下工作。给出了收敛性的严格证明,并以柔性关节双驱动h型龙门工作台为例验证了该方法的有效性。
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Generalized Iterative Super-Twisting Sliding Mode Control: A Case Study on 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 the manufacturing precision and efficiency. Nevertheless, the system model and parameters are difficult to be obtained accurately. Moreover, the high-order modes, strong coupling in multi-axis system, 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 the 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.
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