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Neural networks-based DOA estimation of multiple stochastic narrow-band EM sources

机译:基于神经网络的多次随机窄带EM源的DOA估计

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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.
机译:在纸上考虑了远场中多次随机窄带电磁源的定位。提出了基于人工神经网络的方法,以允许有效的到达方向(DOA)确定从随机源辐射的电磁信号作为源定位过程中的关键步骤之一。它使用通过远场扫描区域的天线阵列的信号采样获得的相关矩阵,以基于MLP(多层Perceptron)神经网络训练适当的模型。提出的方法是在神经模型的示例上验证了在方位角处于固定角度距离处于固定角度距离的三个随机源的位置的准确和快速一维(1D)DOA估计的神经模型的示例。

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