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Channel Estimation for the ISDB-TB FBMC System Using Neural Networks : A Proposal of Application of Back Propagation Training Algorithm

Authors

Jefferson Jesus Hengles Almeida, P. B. Lopes, Cristiano Akamine and Nizam Omar, Mackenzie Presbyterian University, Brazil

Abstract

Due to the evolution of technology and the diffusion of digital television, many researchers have studied more efficient transmission and reception methods. This fact occurs because of the demand of transmitting videos with better quality using new standards such 8K SUPER HiVISION. In this scenario, modulation techniques such as Filter Bank Multi Carrier, associated with advanced coding and synchronization methods, are being applied, aiming to achieve the desired data rate to support ultra-high definition videos. Simultaneously, it is also important to investigate ways of channel estimation that enable a better reception of the transmitted signal. This task is not always trivial, depending of the characteristics of the channel. Thus, the use of artificial intelligence can contribute to estimate the channel frequency response, from the transmitted pilots. A classical algorithm called Back-propagation Training can be applied to find the channel equalizer coefficients, making possible the correct reception of TV signals. Therefore, this work presents a method of channel estimation that uses neural network techniques to obtain the channel response in the Brazilian Digital System Television, called ISDB-TB, using Filter Bank Multi Carrier.

Keywords

Channel estimation, Artificial intelligence, ISDB-TB, FBMC, Neural Networks.

Full Text  Volume 7, Number 7