Tracking control of a closed-chain five-bar robot with two degrees of freedom by integration of an approximation-based approach and mechanical design.

Long Cheng, Zeng-Guang Hou, Min Tan, W J Zhang
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引用次数: 78

Abstract

The trajectory tracking problem of a closed-chain five-bar robot is studied in this paper. Based on an error transformation function and the backstepping technique, an approximation-based tracking algorithm is proposed, which can guarantee the control performance of the robotic system in both the stable and transient phases. In particular, the overshoot, settling time, and final tracking error of the robotic system can be all adjusted by properly setting the parameters in the error transformation function. The radial basis function neural network (RBFNN) is used to compensate the complicated nonlinear terms in the closed-loop dynamics of the robotic system. The approximation error of the RBFNN is only required to be bounded, which simplifies the initial "trail-and-error" configuration of the neural network. Illustrative examples are given to verify the theoretical analysis and illustrate the effectiveness of the proposed algorithm. Finally, it is also shown that the proposed approximation-based controller can be simplified by a smart mechanical design of the closed-chain robot, which demonstrates the promise of the integrated design and control philosophy.

基于近似方法与机械设计相结合的二自由度闭链五杆机器人跟踪控制。
研究了闭链五杆机器人的轨迹跟踪问题。基于误差变换函数和反演技术,提出了一种基于近似的跟踪算法,可以保证机器人系统在稳态和瞬态阶段的控制性能。其中,机器人系统的超调量、沉降时间和最终跟踪误差都可以通过误差变换函数中参数的适当设置进行调整。采用径向基函数神经网络(RBFNN)对机器人系统闭环动力学中的复杂非线性项进行补偿。RBFNN的近似误差只需要是有界的,这简化了神经网络的初始“跟踪误差”配置。通过算例验证了理论分析和算法的有效性。最后,还表明所提出的基于近似的控制器可以通过封闭链机器人的智能机械设计来简化,这表明了集成设计和控制理念的前景。
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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