Lai Guanyu, Liu Weizhen, Yang Weijun, Zhong Huihui, He Yutao, Zhang Yun
School of Automation, Guangdong University of Technology, Guangzhou 510006, China.
School of Mechanical and Electrical Engineering, Guangzhou City Polytechnic, Guangzhou 510405, China.
Entropy (Basel). 2023 Jun 29;25(7):999. doi: 10.3390/e25070999.
The existence of the physiological tremor of the human hand significantly affects the application of tele-operation systems in performing high-precision tasks, such as tele-surgery, and currently, the process of effectively eliminating the physiological tremor has been an important yet challenging research topic in the tele-operation robot field. Some scholars propose using deep learning algorithms to solve this problem, but a large number of hyperparameters lead to a slow training speed. Later, the support-vector-machine-based methods have been applied to solve the problem, thereby effectively canceling tremors. However, these methods may lose the prediction accuracy, because learning energy cannot be accurately assigned. Therefore, in this paper, we propose a broad-learning-system-based tremor filter, which integrates a series of incremental learning algorithms to achieve fast remodeling and reach the desired performance. Note that the broad-learning-system-based filter has a fast learning rate while ensuring the accuracy due to its simple and novel network structure. Unlike other algorithms, it uses incremental learning algorithms to constantly update network parameters during training, and it stops learning when the error converges to zero. By focusing on the control performance of the slave robot, a sliding mode control approach has been used to improve the performance of closed-loop systems. In simulation experiments, the results demonstrated the feasibility of our proposed method.
人手生理震颤的存在显著影响了远程操作系统在执行诸如远程手术等高精度任务中的应用,目前,有效消除生理震颤的过程一直是远程操作机器人领域一个重要但具有挑战性的研究课题。一些学者提出使用深度学习算法来解决这个问题,但大量的超参数导致训练速度缓慢。后来,基于支持向量机的方法被应用于解决该问题,从而有效地消除了震颤。然而,这些方法可能会失去预测准确性,因为学习能量无法准确分配。因此,在本文中,我们提出了一种基于广义学习系统的震颤滤波器,它集成了一系列增量学习算法以实现快速重塑并达到期望的性能。需要注意的是,基于广义学习系统的滤波器由于其简单新颖的网络结构,在保证准确性的同时具有快速的学习速率。与其他算法不同,它在训练过程中使用增量学习算法不断更新网络参数,并且当误差收敛到零时停止学习。通过关注从机器人的控制性能,采用了滑模控制方法来提高闭环系统的性能。在仿真实验中,结果证明了我们所提方法的可行性。