基于神经网络的多随机窄带电磁源DOA估计

Z. Stanković, N. Dončov, B. Milovanovic, J. Russer, I. Milovanovic, M. Agatonovic
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引用次数: 6

摘要

本文研究了多随机窄带电磁源在远场的定位问题。本文提出了一种基于人工神经网络的随机源辐射电磁信号的有效到达方向(DOA)确定方法,作为源定位过程的关键步骤之一。该算法利用天线阵列在远场扫描区对信号采样得到的相关矩阵,训练出基于多层感知器(MLP)神经网络的合适模型。通过一个神经网络模型的实例验证了该方法在方位面上对三个固定角度距离的随机源的位置进行准确、快速的一维DOA估计。
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Neural networks-based DOA estimation of multiple stochastic narrow-band EM sources
Localization of multiple stochastic narrow-band electromagnetic sources in the far-field is considered in the paper. Artificial neural networks-based approach is proposed to allow for an efficient direction of arrival (DOA) determination of electromagnetic signals radiated from stochastic sources as one of the key steps in the source localization procedure. It uses correlation matrix, obtained by signal sampling via antenna array in far-field scan area, to train an appropriate model based on MLP (Multi-Layer Perceptron) neural network. Proposed approach is validated on the example of a neural model performing accurate and fast one-dimensional (1D) DOA estimation of the position of three stochastic sources placed at fixed angle distance in azimuth plane.
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