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ANN Prediction Models for Outdoor SIMO Millimeter Band System

机译:ANN预测模型户外SIMO毫米频段系统

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This paper presents the prediction propagation paths of angle of arrivals (AoAs) of a Smart Antenna System in an outdoor environment utilizing Artificial Neural Networks (ANN). The proposed models consist of a Multilayer Perceptron and a Generalized Regression Neural Network trained with measurements of an antenna system consisted of a Single Input Single Output (SISO) system in the millimeter wave band. For comparison purposes the theoretical Gaussian scatter density model was investigated for the derivation of the power angle profile. The proposed models utilize the characteristics of the environment for prediction of the angle of arrivals of each one of the propagation paths and can be applicable for the derivation of SIMO (Single Input Single Output) parameters, such as system capacity. The results are presented towards the average error, standard deviation and mean square error compared with the measurements and they are capable for the derivation of accurate prediction models for the case of AoA in an outdoor millimeter wave propagation environment.
机译:本文介绍了利用人工神经网络(ANN)在室外环境中的智能天线系统的到达(AOAS)的预测传播路径。所提出的模型包括多层的Perceptron和具有由天线系统的测量训练的广义回归神经网络,包括在毫米波频带中的单个输入单输出(Siso)系统。为了比较目的,研究了理论高斯散射密度模型,用于电力角度谱的推导。所提出的模型利用环境的特征来预测每个传播路径的到达角度的角度,并且可以适用于SIMO(单输入单输出)参数的推导,例如系统容量。与测量相比,该结果呈现朝向平均误差,标准偏差和均方误差,并且它们能够在室外毫米波传播环境中为AOA的情况推导出准确的预测模型。

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