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Efficient DoA Tracking of Variable Number of Moving Stochastic EM Sources in Far-Field Using PNN-MLP Model

机译:使用PNN-MLP模型对远场中可变数量的随机EM源进行有效的DoA跟踪

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An efficient neural network-based approach for tracking of variable number of moving electromagnetic (EM) sources in far-field is proposed in the paper. Electromagnetic sources considered here are of stochastic radiation nature, mutually uncorrelated, and at arbitrary angular distance. The neural network model is based on combination of probabilistic neural network (PNN) and the Multilayer Perceptron (MLP) networks and it performs real-time calculations in two stages, determining at first the number of moving sources present in an observed space sector in specific moments in time and then calculating their angular positions in azimuth plane. Once successfully trained, the neural network model is capable of performing an accurate and efficient direction of arrival (DoA) estimation within the training boundaries which is illustrated on the appropriate example.
机译:提出了一种有效的基于神经网络的远场移动电磁源跟踪方法。此处考虑的电磁源具有随机辐射性质,互不相关,并且具有任意角度距离。神经网络模型基于概率神经网络(PNN)和多层感知器(MLP)网络的组合,并且它分两个阶段执行实时计算,首先确定特定空间中存在的观测空间扇区中存在的移动源的数量。时间点,然后计算它们在方位平面中的角位置。一旦成功训练,神经网络模型就能够在训练范围内执行准确而有效的到达方向(DoA)估计,如适当示例所示。

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