Title :
Low-Complexity Nonlinear Adaptive Filter Based on a Pipelined Bilinear Recurrent Neural Network
Author :
Zhao, Haiquan ; Zeng, Xiangping ; He, Zhengyou
Author_Institution :
Sch. of Electr. Eng., Southwest Jiaotong Univ., Chengdu, China
Abstract :
To reduce the computational complexity of the bilinear recurrent neural network (BLRNN), a novel low-complexity nonlinear adaptive filter with a pipelined bilinear recurrent neural network (PBLRNN) is presented in this paper. The PBLRNN, inheriting the modular architectures of the pipelined RNN proposed by Haykin and Li, comprises a number of BLRNN modules that are cascaded in a chained form. Each module is implemented by a small-scale BLRNN with internal dynamics. Since those modules of the PBLRNN can be performed simultaneously in a pipelined parallelism fashion, it would result in a significant improvement of computational efficiency. Moreover, due to nesting module, the performance of the PBLRNN can be further improved. To suit for the modular architectures, a modified adaptive amplitude real-time recurrent learning algorithm is derived on the gradient descent approach. Extensive simulations are carried out to evaluate the performance of the PBLRNN on nonlinear system identification, nonlinear channel equalization, and chaotic time series prediction. Experimental results show that the PBLRNN provides considerably better performance compared to the single BLRNN and RNN models.
Keywords :
adaptive filters; bilinear systems; chaos; computational complexity; gradient methods; identification; learning (artificial intelligence); nonlinear filters; pipeline processing; recurrent neural nets; time series; adaptive amplitude real-time recurrent learning algorithm; chaotic time series prediction; computational complexity; gradient descent approach; internal dynamics; low-complexity nonlinear adaptive filter; modular architectures; nonlinear channel equalization; nonlinear system identification; pipelined bilinear recurrent neural network; pipelined parallelism fashion; small-scale BLRNN; Artificial neural networks; Computational modeling; Computer architecture; Convergence; Neurons; Pipeline processing; Recurrent neural networks; Bilinear recurrent neural network; pipelined architecture; pipelined recurrent neural network; real-time recurrent learning; volterra filter; Algorithms; Computer Simulation; Humans; Neural Networks (Computer); Nonlinear Dynamics; Signal Processing, Computer-Assisted;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2011.2161330