Title :
Nonlinear adaptive prediction of complex-valued signals by complex-valued PRNN
Author :
Goh, Su Lee ; Mandic, Danilo P.
Author_Institution :
Dept. of Electr. & Electron. Eng., Imperial Coll. London, UK
fDate :
5/1/2005 12:00:00 AM
Abstract :
A complex-valued pipelined recurrent neural network (CPRNN) for nonlinear adaptive prediction of complex nonlinear and nonstationary signals is introduced. This architecture represents an extension of the recently proposed real-valued PRNN of Haykin and Li in 1995. To train the CPRNN, a complex-valued real time recurrent learning (CRTRL) algorithm is first derived for a single recurrent neural network (RNN). This algorithm is shown to be generic and applicable to general signals that have complex domain representations. The CRTRL is then extended to suit the modularity of the CPRNN architecture. Further, to cater to the possibly large dynamics of the input signals, a gradient adaptive amplitude of the nonlinearity within the neurons is introduced to give the adaptive amplitude CRTRL (AACRTRL). A comprehensive analysis of the architecture and associated learning algorithms is undertaken, including the role of the number of nested modules, number of neurons within the modules, and input memory of the CPRNN. Simulations on real-world and synthetic complex data support the proposed architecture and algorithms.
Keywords :
adaptive signal processing; computational complexity; gradient methods; learning (artificial intelligence); multidimensional signal processing; pipeline processing; prediction theory; recurrent neural nets; complex-valued PRNN; complex-valued real time recurrent learning algorithm; complex-valued signal; gradient adaptive amplitude; multidimension forecasting; nonlinear adaptive prediction; nonlinear signal; nonstationary signal; pipelined recurrent neural network; Adaptive filters; Adaptive signal processing; Biomedical signal processing; Multidimensional signal processing; Neural networks; Neurons; Pipeline processing; Recurrent neural networks; Signal processing; Signal processing algorithms; Complex-valued analysis; RNNs; multidimension forecasting; nonlinear adaptive prediction;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2005.845462