CMAC-Adaptive Force-Position Control of a Flexible-Joint Robot

Samuel Doctolero, C. Macnab
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Abstract

Although many hybrid force-position controllers appear in the literature, the problem of touching and leaving a surface rarely gets addressed - many leave this as a practical matter for the engineers. If the force control results in inappropriate signals in free space then the designer must try to switch controllers at the surface, a solution that can introduce unwanted vibrations; note that stability problems can easily result with such a design in light of imperfect knowledge/measurement of where the surface actually lies and the reality of (possibly unmodelled) joint elasticity. In this work we propose an adaptive backstepping approach that guarantees Lyapunov stability when in contact with the surface and in free-space i.e. without switching, for both non-redundant and redundant manipulators. We develop the controls for a flexible-joint robot in order to demonstrate the guarantee of stability and the ability to avoid excessive vibrations even in the case of elasticity. The proposed controls use neural networks to estimate nonlinear terms and unmodelled dynamics. Simulations show the proposed method significantly outperforms a proportional-derivative hybrid force-position control.
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柔性关节机器人的cmac -自适应力-位置控制
虽然许多混合力位置控制器出现在文献中,触摸和离开表面的问题很少得到解决-许多人把这作为一个实际问题留给工程师。如果力控制在自由空间中产生了不合适的信号,那么设计人员必须尝试在地面切换控制器,这种解决方案可能会引入不必要的振动;请注意,鉴于对表面实际位置的不完善的知识/测量以及(可能未建模的)关节弹性的现实情况,这种设计很容易导致稳定性问题。在这项工作中,我们提出了一种自适应后退方法,该方法保证了非冗余和冗余机械手在与表面和自由空间接触时的李雅普诺夫稳定性,即没有切换。为了证明柔性关节机器人的稳定性和在弹性情况下避免过度振动的能力,我们开发了柔性关节机器人的控制系统。所提出的控制使用神经网络来估计非线性项和未建模的动态。仿真结果表明,该方法明显优于比例导数混合力-位置控制方法。
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