Improvement of Deep Learning-Based Reference Signal Received Power Prediction for LTE Communication System

Danupol Chomsuay, W. Phakphisut, Thongchai Wijitpornchai, Poonlarp Areeprayoonkij, Tanun Jaruvitayakovit, N. Puttarak
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Abstract

Recently, in our previous work [3], we have proposed the deep learning-based reference signal received power (RSRP) prediction for LTE communication system. However, in this work, the output of DNN is path loss error instead of RSRP. Moreover, our deep neural network is improved by increasing the number of features, such as 3-D antenna gain, digital elevation model (DEM). The path loss model is also developed by using the clustering technique. The results show that the dominant prediction testing, non-dominant prediction testing can provide the RMSE around 3.7 dB, and 4.9 dB, respectively.
基于深度学习的LTE通信系统参考信号接收功率预测改进
最近,我们在之前的工作[3]中提出了基于深度学习的LTE通信系统参考信号接收功率(RSRP)预测。然而,在这项工作中,DNN的输出是路径损失误差,而不是RSRP。此外,通过增加三维天线增益、数字高程模型(DEM)等特征的数量来改进我们的深度神经网络。利用聚类技术建立了路径损失模型。结果表明,优势预测测试和非优势预测测试的均方根误差分别在3.7 dB和4.9 dB左右。
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