Performance comparison of blind and non-blind channel equalizers using artificial neural networks

Sarvraj Singh Ranhotra, Atul Kumar, M. Magarini, Amit Mishra
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引用次数: 7

Abstract

In digital communication systems, multipath propagation induces Inter Symbol Interference (ISI). To reduce the effect of ISI different channel equalization algorithms are used. Complex equalization algorithms allow for achieving the best performance but they do not meet the requirements for implementation of real-time detection at low complexity, thus limiting their application. In this paper, we present different blind and non-blind equalization structures based on Artificial Neural Networks (ANNs) and, also, we analyze their complexity versus performance. Since the activation function at the output layer depends on the cost function with respect to the input, in the present work we use mean squared error as loss function for the output layer. The simulated network is based on multilayer feedforward perceptron ANN, which is trained by utilizing the error back-propagation algorithm. The weights of the network are updated in accordance with training of the network to improve the convergence speed. Simulation results demonstrate that the implementation of equalizers using ANN provides an upper hand over the performance and computational complexity with respect to conventional methods.
基于人工神经网络的盲与非盲信道均衡器性能比较
在数字通信系统中,多径传播会引起码间干扰(ISI)。为了降低ISI的影响,采用了不同的信道均衡算法。复杂的均衡算法可以实现最佳性能,但不能满足在低复杂度下实现实时检测的要求,从而限制了其应用。本文提出了不同的基于人工神经网络的盲均衡和非盲均衡结构,并分析了它们的复杂度和性能。由于输出层的激活函数取决于相对于输入的成本函数,在目前的工作中,我们使用均方误差作为输出层的损失函数。仿真网络基于多层前馈感知器ANN,利用误差反向传播算法对其进行训练。根据网络的训练更新网络的权值,提高了收敛速度。仿真结果表明,与传统方法相比,使用人工神经网络实现均衡器在性能和计算复杂度方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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