Elmezughi Mohamed K, Salih Omran, Afullo Thomas J, Duffy Kevin J
The Discipline of Electrical, Electronic and Computer Engineering, University of KwaZulu-Natal, Durban, 4041, South Africa.
Institute of Systems Science, Durban University of Technology, Durban, 4000, South Africa.
Heliyon. 2023 Sep 6;9(9):e19685. doi: 10.1016/j.heliyon.2023.e19685. eCollection 2023 Sep.
In light of the technological advancements that require faster data speeds, there has been an increasing demand for higher frequency bands. Consequently, numerous path loss prediction models have been developed for 5G and beyond communication networks, particularly in the millimeter-wave and subterahertz frequency ranges. Despite these efforts, there is a pressing need for more sophisticated models that offer greater flexibility and accuracy, particularly in challenging environments. These advanced models will help in deploying wireless networks with the guarantee of covering communication environments with optimum quality of service. This paper presents path loss prediction models based on machine learning algorithms, namely artificial neural network (ANN), artificial recurrent neural network (RNN) based on long short-term memory (LSTM), shortly known as RNN-LSTM, and convolutional neural network (CNN). Moreover, an ensemble-method-based neural network path loss model is proposed in this paper. Finally, an extensive performance analysis of the four models is provided regarding prediction accuracy, stability, the contribution of input features, and the time needed to run the model. The data used for training and testing in this study were obtained from measurement campaigns conducted in an indoor corridor setting, covering both line-of-sight and non-line-of-sight communication scenarios. The main result of this study demonstrates that the ensemble-method-based model outperforms the other models (ANN, RNN-LSTM, and CNN) in terms of efficiency and high prediction accuracy, and could be trusted as a promising model for path loss in complex environments at high-frequency bands.
鉴于技术进步需要更快的数据速度,对更高频段的需求日益增加。因此,已经为5G及以后的通信网络开发了许多路径损耗预测模型,特别是在毫米波和亚太赫兹频率范围内。尽管做出了这些努力,但迫切需要更复杂的模型,这些模型要具有更大的灵活性和准确性,特别是在具有挑战性的环境中。这些先进的模型将有助于部署无线网络,确保以最佳服务质量覆盖通信环境。本文提出了基于机器学习算法的路径损耗预测模型,即人工神经网络(ANN)、基于长短期记忆(LSTM)的人工递归神经网络(RNN),简称为RNN-LSTM,以及卷积神经网络(CNN)。此外,本文还提出了一种基于集成方法的神经网络路径损耗模型。最后,对这四种模型在预测准确性、稳定性、输入特征的贡献以及运行模型所需的时间方面进行了广泛的性能分析。本研究中用于训练和测试的数据来自在室内走廊环境中进行的测量活动,涵盖了视距和非视距通信场景。本研究的主要结果表明,基于集成方法的模型在效率和高预测准确性方面优于其他模型(ANN、RNN-LSTM和CNN),并且可以被视为高频段复杂环境中路径损耗的一个有前景的模型。