Estimation of MIMO channels using complex time delay fully Recurrent Neural Network

Estimation of Multi Input Multi Output (MIMO) channels can be performed by Artificial Neural Network (ANN)s such as Multi Layer Perceptron (MLP)s. However, the cost of training overload in case of time varying MIMO channels is the main bottleneck of such ANN architectures for which a viable alterati...

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Bibliographic Details
Published in2011 2nd National Conference on Emerging Trends and Applications in Computer Science pp. 1 - 5
Main Authors Sarma, K K, Mitra, A
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.03.2011
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ISBN1424495784
9781424495788
DOI10.1109/NCETACS.2011.5751375

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Summary:Estimation of Multi Input Multi Output (MIMO) channels can be performed by Artificial Neural Network (ANN)s such as Multi Layer Perceptron (MLP)s. However, the cost of training overload in case of time varying MIMO channels is the main bottleneck of such ANN architectures for which a viable alterative, namely, the Recursive Recurrent Network (RNN) is explored. Although for tightly coupled real and imaginary components of a transmitted signal RNN cannot provide a satisfactory solution, nevertheless, a split - complex activation RNN approach can be adopted to deal with such cases averaging the output obtained for a given time length. The results demonstrate better performance as well as computational simplicity compared to MLP architectures with temporal characteristics.
ISBN:1424495784
9781424495788
DOI:10.1109/NCETACS.2011.5751375