多随机电磁源远场有效方位确定的神经网络方法

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

摘要

本文提出了一种确定多随机源远场电磁信号入射方向的有效方法。该方法基于多层感知器(MLP)人工神经网络实现的神经模型。利用接收天线阵采样信号的相关矩阵训练成功的MLP神经模型,可以准确地确定辐射电磁信号的到达方向(DOA),进而确定多个随机源在方位面上的位置。该模型具有快速估计DOA的特点,适合于实时应用。文中详细介绍了该模型的体系结构、训练和测试结果以及仿真结果。
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Neural network approach for efficient DOA determination of multiple stochastic EM sources in far-field
An efficient approach for determination of incoming direction of electromagnetic (EM) signals radiated from multiple stochastic sources in far-field is presented in this paper. The approach is based on using a neural model realized by the Multi-Layer Perceptron (MLP) artificial neural network. MLP neural model, successfully trained by using correlation matrix of signals sampled by receiving antenna array, can be used to accurately determine a direction of arrival (DOA) of radiated EM signals and afterward a location of each of multiple stochastic sources in azimuth plane. Presented model is suitable for real-time applications as it performs fast the DOA estimation. The model architecture, results of its training and testing as well as simulation results are described in details in the paper.
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