GFDM TRANSCEIVER BASED ON ANN CHANNEL ESTIMATION

A. Ali, Saad S. Hreshee
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Abstract

Generalized frequency division multiplexing (GFDM) is one of the candidate waveforms beyond 5G for wireless communication. Channel estimation is challenging in wireless transmission because of inherent interference. It is based on a pilot signal that uses Least Square (LS) and Normalized Least Mean Square (NLMS) to perform the estimation. This paper used the Artificial Neural Network (ANN) as a channel estimation method, considered a novel estimation process for the GFDM transceiver. The channel estimation based on ANN depends on the data set generated from LS estimation, which considers the proposed method is optimized to LS based on the backpropagation neural network. The ANN algorithm considered a fitness function to estimate the channel. Levenberg-Marquardt backpropagation (LM), Bayesian Regularization backpropagation (BR), and Scaled Conjugate Gradient backpropagation (SCG) training methods training by using the Matlab toolbox used to perform the estimation. BR training method gives the best performance than LS and other training methods at 22 neurons in hidden layers, which at 20dB give BER = 0.0369 that enhanced over LS by 0.08.
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基于Ann信道估计的GFDM收发器
广义频分复用(GFDM)是5G以后无线通信的候选波形之一。由于固有干扰,信道估计在无线传输中具有挑战性。它是基于一个导频信号,使用最小二乘(LS)和归一化最小均方(NLMS)进行估计。本文采用人工神经网络(ANN)作为信道估计方法,研究了一种新的GFDM收发器信道估计方法。基于人工神经网络的信道估计依赖于LS估计生成的数据集,其中认为所提出的方法是基于反向传播神经网络优化到LS的。该算法考虑了适应度函数来估计信道。Levenberg-Marquardt反向传播(LM)、贝叶斯正则化反向传播(BR)和缩放共轭梯度反向传播(SCG)训练方法通过使用Matlab工具箱进行训练来执行估计。在隐藏层22个神经元时,BR训练方法比LS和其他训练方法表现最好,在20dB时BER = 0.0369,比LS训练方法提高0.08。
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