基于滑模定时控制的空间机器人分数阶算子深度学习拉格朗日方法

Tongyu Zhao, Guanghui Sun, Biqing Qi, Xiangyu Shao, D. Zhou
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摘要

由于深度学习的发展,许多方法在机器人领域产生了很大的影响。随着空间机器人对可靠性和稳定性的要求越来越高,基于深度学习的无模型算法在空间环境中比传统方法具有更大的优势。本文提出了一种新颖的基于深度学习机器人动态系统的机器人电流/转矩预测方法。此外,我们还增加了基于滑模的定时控制器,以提高控制性能。利用机器人动态特性的矩阵性质,从较少的样本中分析出了机械手当前的信息。该方法在机器人电流/转矩识别和跟踪方面具有显著的优势。它在鲁棒性和学习率方面也表现良好。该通用方法用于解决机械臂动力学过程中使用深度学习和数据滤波的各种问题,包括分数阶微分算子深度学习、机器人动力学和卡尔曼平滑。在零重力环境下,将该算法应用于一个实际的两关节空间机器人上进行了验证。结果表明,该算法能够学习基于机器人动力学的电流/转矩预测,并完成有限时间收敛。本文在空间机器人模型中基于机械臂动力学和深度学习的电流/转矩识别与预测领域做出了重要贡献。它在机器人电流/转矩跟踪和预测新情况方面表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning with Fractional Order Operaters Lagrangian Method for Space Robot based on Sliding Mode-based Fixed-time Control
Many approaches have been influential in the robotics field because of deep learning (DL). As space robots need more reliability and stability, model-free algorithms with deep learning have particular advantages over the traditional methods in space environment. In this paper, we present an original robot current/torque prediction based on robot dynamic system with deep learning. Also, we add sliding mode-based fixed-time controller to improve the control performance. It has analysed manipulator current information through robot dynamic property’s matrix nature from fewer samples. This method has significant benefits in terms of robot current/torque identification and tracking. It also performs well in robustness and learning rates. This generic method has developed to solve a variety of problems using deep learning and data filtering with manipulator dynamics process, which includes deep learning with fractional order differential operators, robot dynamics and Kalman smoothing. We verified our algorithm into a real two-joint space robot on air-floating platform in zero gravity environment. The final results show it can learn to predict current/torque based on robot dynamics and complete the finitetime convergence. This paper made several key contributions to the fields of current/torque identification and prediction with manipulator dynamics and deep learning in space robot models. It performs very well in robot current/torque tracking and predicting new situations.
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