Implementation of antenna array beamforming by using a novel neural network structure

Z. Zaharis, T. Yioultsis, C. Skeberis, T. Xenos, P. Lazaridis, G. Mastorakis, C. Mavromoustakis
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引用次数: 12

Abstract

The present study introduces the implementation of antenna array beamforming based on a new neural network (NN) structure. The NN comprises two hidden layers, which use different interconnectivity patterns. The first one is divided in sublayers, which are equal in number to the inputs of the NN. Each sublayer communicates only with the respective input but is fully interconnected with the second hidden layer. The NN training is performed by using data sets derived by a well-known beamforming technique called minimum variance distortionless response. The trained NN is capable of serving as adaptive beamformer that makes a linear antenna array steer the main lobe towards a desired signal and place nulls towards respective interference signals in the presence of additive zero-mean Gaussian noise. The performance of the trained NN is tested by estimating the mean absolute deviation of main lobe and null directions from their respective desired directions.
利用一种新的神经网络结构实现天线阵列波束形成
本文介绍了一种基于神经网络结构的天线阵列波束形成的实现方法。神经网络包括两个隐藏层,它们使用不同的互连模式。第一个被分成子层,这些子层的数量与神经网络的输入数量相等。每个子层只与各自的输入通信,但与第二个隐藏层完全互连。神经网络的训练是通过使用众所周知的波束形成技术(称为最小方差无失真响应)导出的数据集来完成的。训练后的神经网络能够作为自适应波束形成器,使线性天线阵列将主瓣转向所需信号,并在存在加性零均值高斯噪声的情况下将各自的干扰信号置于零点。通过估计主瓣和零方向相对于各自期望方向的平均绝对偏差来测试训练后的神经网络的性能。
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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