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Nonlinear channel equalization for wireless communication systems using Legendre neural networks

机译:使用Legendre神经网络的无线通信系统的非线性信道均衡

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摘要

In this paper, we present a computationally efficient neural network (NN) for equalization of nonlinear communication channels with 4-QAM signal constellation. The functional link NN (FLANN) for nonlinear channel equalization which we had proposed earlier, offers faster mean square error (MSE) convergence and better bit error rate (BER) performance compared to multilayer perceptron (MLP). Here, we propose a Legendre NN (LeNN) model whose performance is better than the FLANN due to simple polynomial expansion of the input in contrast to the trigonometric expansion in the latter. We have compared the performance of LeNN-, FLANN- and MLP-based equalizers using several performance criteria and shown that the performance of LeNN is superior to that of MLP-based equalizer, in terms of MSE convergence rate, BER and computational complexity, especially, in case of highly nonlinear channels. LeNN-based equalizer has similar performance as FLANN in terms of BER and convergence rate but it provides significant computational advantage over the FLANN since the evaluation of Legendre functions involves less computation compared to trigonometric functions.
机译:在本文中,我们提出了一种计算有效的神经网络(NN),用于均衡具有4-QAM信号星座图的非线性通信通道。与多层感知器(MLP)相比,我们之前提出的用于非线性信道均衡的功能链接NN(FLANN)具有更快的均方误差(MSE)收敛性和更好的误码率(BER)性能。在这里,我们提出一个Legendre NN(LeNN)模型,由于输入的简单多项式展开与后者的三角展开不同,因此其性能优于FLANN。我们使用几种性能标准对基于LeNN,FLANN和MLP的均衡器的性能进行了比较,结果表明,就MSE收敛速度,BER和计算复杂度而言,LeNN的性能优于基于MLP的均衡器。 ,如果是高度非线性的渠道。基于BER的均衡器在BER和收敛速度方面具有与FLANN相似的性能,但由于与联想函数相比,对Legendre函数的评估涉及较少的计算,因此它提供了优于FLANN的计算优势。

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