基于机器学习的RSRP预测智能传播模型

Sai Wu, Baojuan Ma, Tiantian Ye, Jianming Zhang, Weiping Shao, Weijun Zheng
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引用次数: 0

摘要

无线传播模型建模对于5G网络的系统设计和基站部署具有重要意义。传统模型受限于多种传播环境。基于光线追踪的确定性模型需要大量的计算。因此,我们提出了一种基于深度学习的拟合方法。然而,当将深度学习模型用于无线传输模型建模时,通常需要大量的手工设计特征。为了解决这一问题,在特征工程阶段,我们提出了一种基于机器学习算法的特征生成器-梯度提升决策树来自动表征组合特征。基于HATA路径损失公式的人工设计的八个特点。在建模阶段,建立了基于BP神经网络的智能无线传播模型,将组合特征、人工设计特征、原始工程参数、地理参数等数据作为神经网络输入,进行无线电波传播模型建模和参考信号接收功率(RSRP)回归预测。我们定量地比较了几种机器学习算法在无线信道建模中的性能。我们的研究结果表明,使用GBDT(Gradient Boosting decision Tree)特征生成器作为辅助的深度神经网络算法的整体性能优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning based Intelligent Propagation Model for RSRP prediction
Wireless propagation model modeling is of great significance for system design and base station deployment of 5G network-Traditional models are limited to a variety of propagation environments.A deterministic model based on ray tracing requires a great deal of computation.Therefore, we propose a deep learning-based fitting method.However, when the deep learning model is used for wireless transmission model modeling, it usually requires a lot of manual design features. In order to solve this problem, in the feature engineering stage, we proposed a feature generator based on the machine learning algorithm-Gradient Boosting Decision Tree to automatically characterize the combined features.Eight features of manual design based on HATA pathloss formula.In the model stage, an intelligent wireless propagation model based on BP neural network is established-Combined features, manual design features, original engineering parameters, geographic parameters and other data are used as inputs of neural networks for radio wave propagation model modeling and RSRP(Reference Signal Receiving Power) regression prediction.We quantitatively compare the performance of several machine learning algorithms in modeling wireless channels.Our results show that the overall performance of the deep neural network algorithm using the GBDT(Gradient Boosting Decison Tree) feature generator as auxiliary is better than other algorithms.
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