A Hybrid Multimode1 Neural Network for Nonlinear Systems Identification

نویسندگان

  • I. Baruch
  • F.
  • R. Garrido
  • E. Gortcheva
چکیده

An improved universal parallel recurrent neural network canonical architecture, named Recurrent Trainable Neural Network (RTNN), suited for state-space systems identification, and an improved dynamic back-propagation method of its leaming, are proposed. The proposed R T " is studied with various representative examples and the results of its learning are compared with other results,, given in the literature. For a complex non-linear plants identification, a fuzzy-rule-based system and a fuzzyneural multimodel, are used. The fuzzy-neural multimodel is applied for mechanical system with friction identification.

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تاریخ انتشار 2009