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Direction of arrival estimation in multipath environments using deep learning

机译:利用深度学习的多路径环境抵达方向

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摘要

This article aims to present a novel direction of arrival (DOA) estimation strategy in multipath environments using deep learning. Eigen decomposition-based algorithms, such as multiple signal classification (MUSIC), have high-resolution DOA estimation performance, but they fail to work in the case of coherent signals. These algorithms require extensive computation and are difficult to implement in real time. Neural networks (multilayer perceptron [MLP] and radial basis function neural network [RBFNN]) are also applied to DOA estimation problem, and they are found to be faster than the conventional techniques, but they fail to ensure the desired accuracy in multipath environments when the training data set contains a huge number of samples and the number of incident signals was unknown. To enhance the DOA estimation performance, an efficient convolutional neural network (CNN)-based smart antenna is proposed. This smart antenna is composed of a uniform linear array (ULA), an intelligent DOA estimator, and an efficient adaptive beamformer, and the space is decomposed into five space sectors. The intelligent DOA estimator contains six CNN networks. One network is used as a classifier to select one or more space sectors, and five networks are used to calculate the DOAs of unknown number of coherent or noncoherent incident signals that received in the selected space sectors. The simulation results demonstrate that the proposed DOA estimator enables reliable DOA estimation despite very challenging multipath environment, and the CNN substantially reduces the CPU time for the DOA estimation computations especially when the number of incident signals is large.
机译:本文旨在利用深度学习呈现多径环境中的抵达方向(DOA)估算策略。基于eIGEN分解的算法,例如多信号分类(音乐),具有高分辨率DOA估计性能,但它们不能在相干信号的情况下工作。这些算法需要广泛的计算,并且难以实时实现。神经网络(多层Perceptron [MLP]和径向基函数神经网络[RBFNN])也应用于DOA估计问题,并且发现它们比传统技术更快,但它们未能确保多径环境中所需的准确性训练数据集包含大量的样本,事件信号的数量未知。为了增强DOA估计性能,提出了一种高效的卷积神经网络(CNN)基于智能天线。该智能天线由均匀的线性阵列(ULA),智能DOA估计器和高效的自适应波束形成器组成,并且该空间被分解成五个空间扇区。智能DOA估计器包含六个CNN网络。一个网络用作分类器以选择一个或多个空间扇区,并且使用五个网络来计算在所选空间扇区中接收的未知数量的连贯或非混合事件信号的DOA。仿真结果表明,尽管多径环境非常具有挑战性,所提出的DOA估计能够实现可靠的DOA估计,并且CNN基本上减少了DOA估计计算的CPU时间,特别是当入射信号的数量大时。

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