DocumentCode :
702485
Title :
A hybrid neuro-inverse control approach with knowledge-based nonlinear separation for industrial nonlinear system with uncertainties
Author :
Zhang, T. ; Nakamura, M.
Author_Institution :
Department of Advanced Systems Control Engineering, Graduate School of Science and Engineering, Saga University, Honjomachi, Saga 840-8502, Japan
fYear :
2003
fDate :
1-4 Sept. 2003
Firstpage :
3243
Lastpage :
3248
Abstract :
This paper presents a general methodology of controller design by the hybrid neuro-inverse control with the knowledge-based nonlinear separation for industrial nonlinear systems. In industrial nonlinear systems, various kinds of uncertainties may cause serious deterioration of system performances. Unfortunately, these uncertainties are usually difficult to identify and compensate from the entire system point of view. With using the knowledge-based nonlinear separation, nonlinear dynamics of a nonlinear system is possibly separated into the input-output nonlinear static part and the nonlinear dynamic part to form a nonlinear separation structure. Hence, partial nonlinear factors of the nonlinear system are described by the input-output nonlinear static part. Uncertainties in the nonlinear system are bounded in the nonlinear dynamic part. In the proposed hybrid neuro-inverse control method, the input-output nonlinear static part is controlled by an inverse controller. A neurocontroller with a rigidly defined and trained neural network using available prior knowledge of the nonlinear system is constructed for the control of the nonlinear dynamic part. With respect to some cases, a PID controller is supplementarily employed to reduce the influence from big uncertainties in the nonlinear dynamic part. Owing to using the knowledge-based nonlinear separation and a PID controller, the neurocontroller is only needed to control a part of the original nonlinear dynamics of industrial nonlinear systems contaminated by uncertainties. The structure of the neural network employed in the neurocontroller becomes simpler and the consumption of time in training is reduced. Meanwhile, system performances of the nonlinear system can be improved by the proposed method. Based on this method, high-precision contour control of industrial articulated robot arm was solved. It demonstrated the generality, practicality and significant potential of this method for realizing the high-performance- control of industrial nonlinear systems.
Keywords :
Joints; Neurocontrollers; Nonlinear dynamical systems; Training; Trajectory; Uncertainty; Hybrid neuro-inverse control; high-precision contour control; industrial articulated robot arm; industrial nonlinear system; knowledge-based nonlinear separation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
European Control Conference (ECC), 2003
Conference_Location :
Cambridge, UK
Print_ISBN :
978-3-9524173-7-9
Type :
conf
Filename :
7086539
Link To Document :
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