Title :
A discrete-time neural network model for systems identification
Author :
Hakim, N.Z. ; Kaufman, J.J. ; Cerf, G. ; Meadows, H.E.
Abstract :
Neural networks can be powerful tools for nonlinear signal processing and systems modeling. The authors present a class of discrete-time, neural-network-based, nonlinear models suitable for such applications in a systems identification framework. The parameters for these models include a local interconnection neighborhood size, a time constant characterizing the neurons, a weight matrix, and input output connection matrices. The prediction error identification method trains the net to solve two problems: the prediction of a chaotic time series generated by the logistic function, and the demodulation of FSK (frequency-shift keying) signals. The proposed approach allows a speedup of 1 to 2 orders of magnitude while preserving important properties of its continuous-time analog, and its speed permits global minima to be determined by simulated annealing. The model allows multichannel applications for control or prediction
Keywords :
filtering and prediction theory; identification; neural nets; time series; FSK signal demodulation; chaotic time series; continuous-time analog; discrete-time; discrete-time neural network model; frequency-shift keying; global minima; input output connection matrices; local interconnection neighborhood size; logistic function; multichannel applications; nonlinear signal processing; prediction error identification method; recurrent neural nets; simulated annealing; systems identification; systems modeling; time constant; weight matrix;
Conference_Titel :
Neural Networks, 1990., 1990 IJCNN International Joint Conference on
Conference_Location :
San Diego, CA, USA
DOI :
10.1109/IJCNN.1990.137904