基于表面肌电信号步态轨迹估计的RBF神经网络滑模控制方法

Zhongbo Sun, Xiao-jun Duan, Feng Li, Yongbai Liu, Gang-Yi Wang, Tian Shi, Keping Liu
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引用次数: 3

摘要

本文针对脑卒中下肢运动功能障碍患者设计并开发了一种新的RBF神经网络滑模控制器,并将其应用于3自由度(3- dof)下肢康复机器人(LLRR),用于患者的被动康复。首先,设计了一个简单的LLRR结构,可以调整以适应患者的髋关节、膝关节和踝关节。然后,获得患者的肌电图信号来预测LLRR系统的预期轨迹,其中肌电图信号由BIOPAC软件检测。在此基础上,设计了基于RBF神经网络的滑模方法,并利用Lyapunov定理验证了控制器的渐近稳定性。最后,通过MATLAB软件对LLRR系统进行了实验验证,验证了所提出的控制方法对于下肢患者是可行和有效的。因此,所开发的控制方法对患者的实时被动康复训练具有高效率和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RBF Neural Network-Sliding Model Control Approach for Lower Limb Rehabilitation Robot Based on Gait Trajectories of SEMG Estimation
This paper designed and developed a new RBF neural network-sliding model controller for patients with stroke and lower extremity motor dysfunction, and applied it to a 3 degrees of freedom (3-DOF) lower limb rehabilitation robot (LLRR) for passive rehabilitation of patients. At first, a simple LLRR structure is designed that can be adjusted to fit the patient at the hip, knee, and ankle joints. Then, the patient's sEMG signal is obtained to predict the expected trajectory of the LLRR system, where the EMG signal is detected by BIOPAC software. Moreover, a RBF neural network-sliding model approach is designed for the dynamics model of the LLRR, and the asymptotic stability of the controller is verified via a Lyapunov theorem. Finally, LLRR system is experimentally verified by the MATLAB software, which exploit that the proposed control approach is feasible and effective for the lower extremity patients. Thereby, the developed control approach has illustrated high efficiency and robustness for the patient's passive rehabilitation training in real-time.
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