基于rbfnn的大惯量工业机器人动态参数辨识研究

Zicong Chen, L. Wang, Hui Zhang, Jianqi Liu, Qin-ruo Wang
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引用次数: 1

摘要

针对大惯量工业机器人动力学模型的精度问题,提出了一种径向基函数神经网络(RBFNNs)加权最小二乘(WLS)辨识方案,进一步提高了动力学模型的精度。基于大惯量工业机器人的动态线性化模型,引入开源工具箱symybotics辅助求解最小惯量参数集和观测矩阵。选取有限项傅立叶级数作为激励轨迹,以观测矩阵的条件数作为优化性能指标。其目的是确保外部干扰对识别数据的影响最小化,同时充分激发机器人动力学。根据实际运行数据,采用加权最小二乘法对动力学参数进行辨识,得到动力学参数的粗略解。在此基础上,通过非线性约束函数优化和rbfnn优化得到了精确解。实验结果表明,该方法能有效地保证大惯量工业机器人动力学模型的准确性,为其高性能运动控制提供了重要的技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Dynamic Parameter Identification of Large Inertia Industrial Robot Based on RBFNNs
Aiming at the accuracy of the large inertia industrial robot dynamic model, a radial basis function neural networks (RBFNNs) weighted least square (WLS) identification scheme is proposed to further improve the accuracy of the dynamic model. Based on the dynamic linearization model of a large inertia industrial robot, the open-source toolbox Sympybotics is introduced to assist in obtaining the minimum inertia parameter set and observation matrix. The finite-term Fourier series is selected as the excitation trajectory while the condition number of the observation matrix is applied as the performance index for optimization. Its purpose is to ensure that the impact of external disturbances on the identification data is minimized while fully exciting the robot dynamics. Based on the actual operating data, the weighted least squares method is used to identify the kinetic parameters to obtain a rough solution of the kinetic parameters. Further, the accurate solution is obtained by nonlinear constraint function optimization and RBFNNs optimization. The experimental results show that the proposed method could guarantee the accuracy of the dynamic model of the large inertia industrial robot effectively, which provides an important technical support for its high-performance motion control.
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