The Application of Neural Network in Nonlinear System

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Abstract:

Neural network theory is widely applied to predictive control system because of its superiority in dealing with nonlinearities therein. Meanwhile, various algorithms for neural network predictive control have been put forward..The paper investigates the application of neural network-based control in nonlinear system. Especially, some current important nerual network-based controls are remarked and the developments are prospected.

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Advanced Materials Research (Volumes 179-180)

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128-134

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January 2011

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© 2011 Trans Tech Publications Ltd. All Rights Reserved

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