首页|Neural Network Robust Control Based on Computed Torque for Lower Limb Exoskeleton

Neural Network Robust Control Based on Computed Torque for Lower Limb Exoskeleton

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The lower limb exoskeletons are used to assist wearers in various scenarios such as medical and industrial settings.Complex modeling errors of the exoskeleton in different application scenarios pose challenges to the robustness and stability of its control algorithm.The Radial Basis Function(RBF)neural network is used widely to compensate for modeling errors.In order to solve the problem that the current RBF neural network controllers cannot guarantee the asymptotic stability,a neural network robust control algorithm based on computed torque method is proposed in this paper,focusing on trajectory tracking.It innovatively incorporates the robust adaptive term while introduc-ing the RBF neural network term,improving the compensation ability for modeling errors.The stability of the algo-rithm is proved by Lyapunov method,and the effectiveness of the robust adaptive term is verified by the simulation.Experiments wearing the exoskeleton under different walking speeds and scenarios were carried out,and the results show that the absolute value of tracking errors of the hip and knee joints of the exoskeleton are consistently less than 1.5°and 2.5°,respectively.The proposed control algorithm effectively compensates for modeling errors and exhibits high robustness.

Lower limb exoskeletonModel compensationRBF neural networkComputed torque method

Yibo Han、Hongtao Ma、Yapeng Wang、Di Shi、Yanggang Feng、Xianzhong Li、Yanjun Shi、Xilun Ding、Wuxiang Zhang

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School of Mechanical Engineering and Automation,Beihang University,Beijing 100191,China

Beihang Goer(WeiFang)Intelligent Robot Co.,Ltd.,Beihang University,Weifang,China

Research Center of Satellite Technology,Harbin Institute of Technology,Harbin,China

Beijing Xinfeng Aerospace Equipment Co.,Ltd,Beijing,China

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国家重点研发计划国家自然科学基金国家自然科学基金

2022YFB4701200T212100352205004

2024

中国机械工程学报
中国机械工程学会

中国机械工程学报

CSTPCD
影响因子:0.765
ISSN:1000-9345
年,卷(期):2024.37(2)