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Degree:Doctoral Degree in Engineering
School/Department:College of Mechanical and Electrical Engineering

吴青聪

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Gender:Male

Education Level:东南大学机械学院

Alma Mater:东南大学机械工程学院

Paper Publications

Development of an RBFN-based neural-fuzzy adaptive control strategy for an upper limb rehabilitation exoskeleton
Date of Publication:2018-08-01 Hits:

Affiliation of Author(s):机电学院
Journal:MECHATRONICS
Key Words:Upper limb exoskeleton Robot-assisted rehabilitation Neural-fuzzy adaptive control Radial basis function network Lyapunov stability theory
Abstract:The patients of paralysis with motion impairment problems require extensive rehabilitation programs to regain motor functions. The great labor intensity and limited therapeutic effect of traditional human-based manual treatment have recently boosted the development of robot-assisted rehabilitation therapy. In the present work, a neural-fuzzy adaptive controller (NFAC) based on radial basis function network (RBFN) is developed for a rehabilitation exoskeleton to provide human arm movement assistance. A comprehensive overview is presented to describe the mechanical structure and electrical real-time control system of the therapeutic robot, which provides seven actuated degrees of freedom (DOFs) and achieves natural ranges of upper extremity movement. For the purpose of supporting the disable patients to perform repetitive passive rehabilitation training, the RBFN-based NFAC algorithm is proposed to guarantee trajectory tracking accuracy with parametric uncertainties and environmental disturbances. The stability of the proposed control scheme is demonstrated through Lyapunov stability theory. Further experimental investigation, involving the position tracking experiment and the frequency response experiment, are conducted to compare the control performance of the proposed method to those of cascaded proportional-integral-derivative controller (CPID) and fuzzy sliding mode controller (FSMC). The comparison results indicate that the proposed RBFN-based NFAC algorithm is capable of obtaining lower position tracking error and better frequency response characteristic.
Note:卷: 53 页: 85-94
ISSN No.:0957-4158
Translation or Not:no
Date of Publication:2018-08-01
Correspondence Author:Wu Qingcong
Date of Publication:2018-08-01