基于自适应决策反馈均衡器的非线性信道神经网络

Z. Zerdoumi, D. Chikouche, D. Benatia
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引用次数: 2

摘要

本文研究了人工神经网络在非线性信道均衡问题中的应用。利用神经网络的非线性均衡器可以克服由码间干扰(ISI)和非线性等信道畸变所带来的困难。研究表明,基于多层感知器的均衡器(MLPE)的性能明显优于线性均衡器。提出了一种基于多层感知器的决策反馈均衡器(MLP DFE),该均衡器采用反向传播算法进行训练。评估了MLP DFE处理非线性信道的能力。仿真结果表明,MLP DFE在眼纹质量、稳态均方误差(MSE)和最小误码率(BER)方面均明显优于MLPE。MLPE均衡器在严重非线性信道上的性能较差,而MLP DFE均衡器在两个非线性信道上的性能最好。
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Adaptive decision feedback equalizer based neural network for nonlinear channels
This paper investigates the application of artificial neural network to the problem of nonlinear channel equalization. The difficulties caused by channel distortions such as inter symbol interference (ISI) and nonlinearity can overcome by nonlinear equalizers employing neural networks. It has been shown that multilayer perceptron based equalizer (MLPE) outperform significantly linear equalizers. We present a multilayer perceptron based equalizer with decision feedback (MLP DFE) trained with the back propagation algorithm. The capacity of the MLP DFE to deal with nonlinear channels is evaluated. It is shown from simulation results that performance of the MLP DFE surpass significantly the MLPE in term of eye pattern quality, steady state mean square error (MSE), and minimum Bit Error Rate (BER). The MLPE equalizer performs poorly on the severe nonlinear channel whereas the MLP DFE equalizer provides the best performance on the two nonlinear channels considered.
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