In previous works, a learning law with a dead zone function was developed for multilayer differential neural networks. This scheme requires strictly a priori knowledge of an upper bound for the unmodeled dynamics. In this paper, the learning law is modified in such a way that this condition is relaxed. By this modification, the tuning process is simpler and the dead-zone function is not required anymore. On the basis of this modification and by using a Lyapunov-like analysis, a stronger result is here demonstrated: the exponential convergence of the identification error to a bounded zone. Besides, a value for upper bound of such zone is provided. The workability of this approach is tested by a simulation example. Copyright � 2012 J. Humbert...
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In previous works, a learning law with a dead zone function was developed for multilayer differentia...
In this study, a neuro-controller with adaptive deadzone compensation for a class of unknown SISO no...
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This paper deals with studying the asymptotical properties of multilayer neural networks models used...
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