基于神经网络的无线信道均衡器性能比较

Lopamudra Ghadei, H. K. Sahoo
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引用次数: 1

摘要

本文采用人工神经网络(ANN)架构建立均衡模型,这是设计无线通信接收机的基本要求。由于无线信道受到噪声和多径衰落的影响,并且传输受到码间干扰(ISI)的影响。采用递归神经网络(RNN)和功能链路神经网络(FLANN)设计自适应均衡器,以减小ISI的影响,提高接收机的误码率性能。采用LMS算法对基于神经网络的均衡模型进行训练。在基于FLANN均衡器的情况下,其他正交多项式如Legendre和Hermite多项式用于扩展输入模式。RNN均衡器采用反馈机制,反馈滤波器的阶数取决于延迟输入样本的个数。通过MATLAB仿真,对各均衡器的误码率(BER)、均方误差(MSE)和星座图进行了比较。从分析结果来看,很明显,当L-ary PSK数据通过有噪声的非线性信道时,使用RNN模型的均衡器在误码率方面始终优于基于FLANN的均衡器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Comparison of Neural Network based Equalizers for Wireless Communication Channels
In this paper, artificial neural network (ANN) architectures are used to develop equalization models which are the basic requirements to design wireless communication receivers. Because wireless channels are affected by noise and multipath fading and the transmission is affected by a critical problem of inter symbol interference(ISI). Recurrent Neural Network (RNN) and Functional Link ANN(FLANN) using different functional expansions are used to design adaptive equalizers which can minimize the effect of ISI and improve BER performance of the receiver. The neural network based equalization models are trained using LMS algorithm. Other orthogonal polynomials such as Legendre and Hermite polynomials are used for expanding the input patterns in case of FLANN based equalizer . RNN equalizer uses feedback mechanism and the order of feedback filter depends on the number of delayed input samples. The performances of the equalizers are compared by evaluating bit error rate(BER), mean square error(MSE) and constellation diagram using MATLAB simulations. From the analyzed results, it is quite apparent that equalizer using RNN model consistently outperform FLANN based equalizers in terms of BER when L-ary PSK data is passed through a noisy nonlinear channel.
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