Predicting the Path Loss of Wireless Channel Models Using Machine Learning Techniques in MmWave Urban Communications

S. Aldossari, Kwang-Cheng Chen
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引用次数: 26

Abstract

The classic wireless communication channel modeling is performed using Deterministic and Stochastic channel methodologies. Machine learning (ML) emerges to revolutionize system design for 5G and beyond. ML techniques such as supervise leaning methods will be used to predict the wireless channel path loss of a variate of environments base on a certain dataset. The propagation signal of communication systems fundamentals is focusing on channel modeling particularly for new frequency bands such as MmWave. Machine learning can facilitate rapid channel modeling for 5G and beyond wireless communication systems due to the availability of partially relevant channel measurement data and model. When irregularity of the wireless channels leads to a complex methodology to achieve accurate models, appropriate machine learning methodology explores to reduce the complexity and increase the accuracy. In this paper, we demonstrate alternative procedures beyond traditional channel modeling to enhance the path loss models using machine learning techniques, to alleviate the dilemma of channel complexity and time consuming process that the measurements take. This demonstrated regression uses the measurement data of a certain scenario to successfully assist the prediction of path loss model of a different operating environment.
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在毫米波城市通信中使用机器学习技术预测无线信道模型的路径损耗
经典的无线通信信道建模采用确定性和随机信道方法。机器学习(ML)的出现将彻底改变5G及以后的系统设计。机器学习技术(如监督学习方法)将用于预测基于特定数据集的各种环境的无线信道路径损失。通信系统基本原理的传播信号主要集中在信道建模上,特别是对于像毫米波这样的新频段。由于可以获得部分相关的信道测量数据和模型,机器学习可以促进5G及以后无线通信系统的快速信道建模。当无线信道的不规则性导致实现准确模型的复杂方法时,适当的机器学习方法可以探索降低复杂性和提高准确性的方法。在本文中,我们展示了超越传统通道建模的替代程序,以使用机器学习技术增强路径损失模型,以缓解通道复杂性和测量过程耗时的困境。此演示的回归使用特定场景的测量数据成功地辅助预测不同操作环境的路径损耗模型。
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