Force Tracking Control of Lower Extremity Exoskeleton Based on a New Recurrent Neural Network

IF 1.8 4区 计算机科学 Q3 ENGINEERING, BIOMEDICAL Applied Bionics and Biomechanics Pub Date : 2024-01-06 DOI:10.1155/2024/5870060
Yuxuan Cao, Jie Chen, Li Gao, Jiqing Luo, Jinyun Pu, Shengli Song
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Abstract

The lower extremity exoskeleton can enhance the ability of human limbs, which has been used in many fields. It is difficult to develop a precise force tracking control approach for the exoskeleton because of the dynamics model uncertainty, external disturbances, and unknown human–robot interactive force lied in the system. In this paper, a control method based on a novel recurrent neural network, namely zeroing neural network (ZNN), is proposed to obtain the accurate force tracking. In the framework of ZNN, an adaptive RBF neural network (ARBFNN) is employed to deal with the system uncertainty, and a fixed-time convergence disturbance observer is designed to estimate the external disturbance of the exoskeleton electrohydraulic system. The Lyapunov stability method is utilized to prove the convergence of all the closed-loop signals and the force tracking is guaranteed. The proposed control scheme’s (ARBFNN-FDO-ZNN) force tracking performances are presented and contrasted with the exponential reaching law-based sliding mode controller (ERL-SMC). The proposed scheme is superior to ERL-SMC with fast convergence speed and lower tracking error peak. Finally, experimental tests are conducted to verify the efficacy of the proposed controller for solving accurate force tracking control issues.
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基于新型递归神经网络的下肢外骨骼力跟踪控制
下肢外骨骼可增强人体肢体的能力,已在许多领域得到应用。由于系统中存在动力学模型的不确定性、外部干扰和未知的人机交互力,因此很难开发出精确的外骨骼力跟踪控制方法。本文提出了一种基于新型递归神经网络(即归零神经网络(ZNN))的控制方法,以获得精确的力跟踪。在 ZNN 框架下,采用自适应 RBF 神经网络(ARBFNN)来处理系统的不确定性,并设计了一个固定时间收敛扰动观测器来估计外骨骼电液系统的外部扰动。利用 Lyapunov 稳定性方法证明了所有闭环信号的收敛性,并保证了力的跟踪。介绍了所提出的控制方案(ARBFNN-FDO-ZNN)的力跟踪性能,并与基于指数达成律的滑模控制器(ERL-SMC)进行了对比。所提出的方案优于 ERL-SMC,收敛速度快,跟踪误差峰值更低。最后,通过实验测试验证了所提控制器在解决精确力跟踪控制问题方面的功效。
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来源期刊
Applied Bionics and Biomechanics
Applied Bionics and Biomechanics ENGINEERING, BIOMEDICAL-ROBOTICS
自引率
4.50%
发文量
338
审稿时长
>12 weeks
期刊介绍: Applied Bionics and Biomechanics publishes papers that seek to understand the mechanics of biological systems, or that use the functions of living organisms as inspiration for the design new devices. Such systems may be used as artificial replacements, or aids, for their original biological purpose, or be used in a different setting altogether.
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