Baier, N.2004-12-032004-12-032004-12-032003https://infoscience.epfl.ch/handle/20.500.14299/183434A nonlinear recurrent neural network is trained to synthesize chaotic signals. The identification process is reduced to a teaching phase and a linear regression. The influence of the shape of the nonlinearity in the neurons and the noise amplitude are studied, as a result some design rules can be given. In a future step we want this system to be brought to synchronize in a way to perform signal classification.Non-Linear DynamicsChaos SynchronisationAttractor learning with nonlinear, artificial, neural networktext::conference output::conference proceedings::conference paper