Fuzzy neural networks for direct adaptive control

It is well known that sliding-mode control is simple and insensitive to uncertainties and disturbances. However, control input chattering is the main problem of the classical sliding-mode controller (SMC). In this paper, a fuzzy neural network SMC (FNNSMC) is presented for a class of nonlinear systems. The FNNSMC can eliminate the chattering, unlike the SMC, but there is larger rising time in the FNNSMC than in the SMC. In some cases, small rise time is important. To decrease the rising time of the FNNSMC, an adaptive controller is proposed where the SMC and the FNNSMC are incorporated by a smooth transformation. This adaptive control scheme can improve the dynamical performance and eliminate the high-frequency chattering in the control signal. The system stability is proved by using the Lyapunov function. The simulation results demonstrate the advantages of the proposed adaptive controller.

[1]  Okyay Kaynak,et al.  Neuro sliding mode control of robotic manipulators , 2000 .

[2]  Frank L. Lewis,et al.  Multilayer neural-net robot controller with guaranteed tracking performance , 1996, IEEE Trans. Neural Networks.

[3]  Robert M. Sanner,et al.  Gaussian Networks for Direct Adaptive Control , 1991, 1991 American Control Conference.

[4]  Chin-Teng Lin,et al.  Neural-Network-Based Fuzzy Logic Control and Decision System , 1991, IEEE Trans. Computers.

[5]  Weiping Li,et al.  Applied Nonlinear Control , 1991 .

[6]  Okyay Kaynak,et al.  The fusion of computationally intelligent methodologies and sliding-mode control-a survey , 2001, IEEE Trans. Ind. Electron..

[7]  Peter Kwong-Shun Tam,et al.  A fuzzy sliding controller for nonlinear systems , 2001, IEEE Trans. Ind. Electron..

[8]  Zhihong Man,et al.  Adaptive sliding mode approach for learning in a feedforward neural network , 2005, Neural Computing & Applications.

[9]  V. Utkin Variable structure systems with sliding modes , 1977 .

[10]  Antônio de Pádua Braga,et al.  Sliding mode algorithm for training multilayer artificial neural networks , 1998 .

[11]  Feipeng Da,et al.  Decentralized sliding mode adaptive controller design based on fuzzy neural networks for interconnected uncertain nonlinear systems , 2000, IEEE Trans. Neural Networks Learn. Syst..

[12]  Malur K. Sundareshan,et al.  A recurrent neural network-based adaptive variable structure model-following control of robotic manipulators , 1995, Autom..

[13]  Eli Tzirkel-Hancock,et al.  Stable control of nonlinear systems using neural networks , 1992 .

[14]  Miran Rodic,et al.  Neural network sliding mode robot control , 1997, Robotica.

[15]  Karl Johan Åström,et al.  Adaptive Control , 1989, Embedded Digital Control with Microcontrollers.

[16]  Malur K. Sundareshan,et al.  Neural network-assisted variable structure control scheme for control of a flexible manipulator arm , 1997, Autom..

[17]  Okyay Kaynak,et al.  Stabilizing and robustifying the learning mechanisms of artificial neural networks in control engineering applications , 2000 .

[18]  Jean-Jacques E. Slotine,et al.  Sliding controller design for non-linear systems , 1984 .

[19]  Okyay Kaynak,et al.  Stable training of computationally intelligent systems by using variable structure systems technique , 2000, IEEE Trans. Ind. Electron..

[20]  Eliezer Colina-Morles,et al.  A sliding mode strategy for adaptive learning in Adalines , 1995 .