A study on precise control of industrial robot arm for manufacturing process automation

Jun-seok Yang, Y. Koo, Moon-Youl Park, H. Sim, H. Nguyen, Sung-Hyun Han
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Abstract

In this paper, we present two kinds of robust control schemes for robot system which has the parametric uncertainties. In order to compensate these uncertainties, we use the neural network control system that has the capability to approximate any nonlinear function over the compact input space. In the proposed control schemes, we need not derive the linear formulation of robot dynamic equation and tune the parameters. We also suggest the robust adaptive control laws in all proposed schemes for decreasing the effect of approximation error. To reduce the number of neural of network, we consider the properties of robot dynamics and the decomposition of the uncertainty function. The proposed controllers are robust not only to the structured uncertainty such as payload parameter, but also to the unstructured one such as friction model and disturbance. The reliability of the control scheme is shown by computer simulations and experiment of robot manipulator with 7 axis.
面向制造过程自动化的工业机械臂精确控制研究
针对具有参数不确定性的机器人系统,提出了两种鲁棒控制方案。为了补偿这些不确定性,我们使用神经网络控制系统,该系统具有在紧致输入空间上近似任何非线性函数的能力。在所提出的控制方案中,我们不需要推导机器人动力学方程的线性表达式,也不需要对参数进行整定。我们还提出了鲁棒自适应控制律,以减少逼近误差的影响。为了减少神经网络的数量,我们考虑了机器人动力学特性和不确定性函数的分解。该控制器不仅对载荷参数等结构不确定性具有鲁棒性,而且对摩擦模型和扰动等非结构不确定性具有鲁棒性。通过对七轴机械手的计算机仿真和实验,验证了该控制方案的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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