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Dynamic Parameter Identification for a Manipulator with Joint Torque Sensors Based on an Improved Experimental Design

机译:基于改进实验设计的带联合扭矩传感器的机械手动态参数辨识

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摘要

As the foundation of model control, robot dynamics is crucial. However, a robot is a complex multi-input–multi-output system. System noise seriously affects parameter identification results, thereby inevitably requiring us to conduct signal processing to extract useful signals from chaotic noise. In this research, the dynamic parameters were identified on the basis of the proposed multi-criteria embedded optimization design method, to obtain the optimal excitation signal and then use maximum likelihood estimation for parameter identification. Considering the movement coupling characteristics of the multi-axis, experiments were based on a two degrees-of-freedom manipulator with joint torque sensors. Simulation and experimental results showed that the proposed method can reasonably resolve the problem of mutual opposition within a single criterion and improve the identification robustness in comparison with other optimization criteria. The mean relative standard deviation was 0.04 and 0.3 lower in the identified parameters than in F1 and F3, respectively, thus signifying that noise is effectively alleviated. In addition, validation experimental curves were close to the estimation model, and the average of root mean square (RMS) is 0.038, thereby confirming the accuracy of the proposed method.
机译:作为模型控制的基础,机器人动力学至关重要。但是,机器人是一个复杂的多输入多输出系统。系统噪声严重影响参数识别结果,因此不可避免地要求我们进行信号处理以从混沌噪声中提取有用的信号。在这项研究中,在提出的多准则嵌入式优化设计方法的基础上对动态参数进行识别,以获得最佳激励信号,然后将最大似然估计用于参数识别。考虑到多轴的运动耦合特性,实验基于带关节扭矩传感器的两自由度机械手。仿真和实验结果表明,与其他优化准则相比,该方法可以合理地解决单一准则内的相互对立问题,提高了识别的鲁棒性。在所确定的参数中,平均相对标准偏差分别比F1和F3低0.04和0.3,从而表明可以有效减轻噪声。此外,验证实验曲线接近估计模型,均方根(RMS)的平均值为0.038,从而证实了该方法的准确性。

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