Dynamical Functional Artificial Neural Network: Use of Efficient Piecewise Linear Functions
نویسندگان
چکیده
A nonlinear adaptive time series predictor has been developed using a new type of piecewise linear (PWL) network for its underlying model structure. The PWL Network is a D-FANN (Dynamical Functional Artificial Neural Network) the activation functions of which are piecewise linear. The new realization is presented with the associated training algorithm. Properties and characteristics are discussed. This network has been successfully used to model and predict an important class of highly dynamic and nonstationary signals, namely speech signals. Keywords— Adaptive signal processing, nonlinear prediction, time series prediction.
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تاریخ انتشار 2008