Mohammed Banafaa;Saleh Alawsh;Ali Muqaibel;Mohammad Alhassoun
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引用次数: 0
摘要
大气管道由低层大气中尖锐的折射率梯度形成,在信号传播中起着至关重要的作用,特别是对于在高频频段(低于6 GHz及以上)运行的下一代通信系统,管道可以显著地改变信号路径。本研究通过针对特定区域的校正改进了国际电联标准折射率模型,随后开发了一个多元线性回归(MLR)框架,以便使用真实气象数据调整模型。MLR模型评估预测因子的显著性,解决多重共线性,并应用统计标准来产生局部折射率估计。为了处理未被MLR捕获的残差非线性模式,机器学习(ML)模型在残差上进行训练,并与统计输出集成以形成混合预测。区域特定(RS)模型与基于itu的修正折射率剖面存在系统偏差,平均差值为4.67 m -单位,标准差为3.49 m -单位,均方根误差为5.83 m -单位。这些差异表明,国际电联的概况不能充分反映当地的大气条件。此外,混合模型相对于单独的MLR减小了残差。结果强调了将RS调整和数据驱动方法结合在大气管道建模中进行传播分析的重要性。
Hybrid Statistical and Machine Learning Models for Atmospheric Refractivity Prediction in Wireless Channels
Atmospheric ducts, formed by sharp refractive index gradients in the lower atmosphere, play a crucial role in signal propagation, particularly for next-generation communication systems operating in high-frequency bands (sub-6 GHz and beyond), where ducts can significantly modify signal paths. This study refines the standard ITU refractivity model through a region-specific correction and subsequently develops a multiple linear regression (MLR) framework to adapt the model using real meteorological data. The MLR model evaluates predictor significance, addresses multicollinearity, and applies statistical criteria to produce a localized refractivity estimate. To address residual nonlinear patterns not captured by MLR, a machine learning (ML) model is trained on the residuals and integrated with the statistical output to form a hybrid prediction. The region-specific (RS) model shows a systematic deviation from the ITU-based modified refractivity profile, with a mean difference of 4.67 M-units, a standard deviation of 3.49 M-units, and an RMSE of 5.83 M-units. These differences suggest that the ITU profile does not adequately represent local atmospheric conditions. Furthermore, the hybrid model reduces residual error relative to MLR alone. The results highlight the importance of incorporating RS adjustments and data-driven methods in modeling atmospheric ducts for propagation analysis.
期刊介绍:
The IEEE Communications Letters publishes short papers in a rapid publication cycle on advances in the state-of-the-art of communication over different media and channels including wire, underground, waveguide, optical fiber, and storage channels. Both theoretical contributions (including new techniques, concepts, and analyses) and practical contributions (including system experiments and prototypes, and new applications) are encouraged. This journal focuses on the physical layer and the link layer of communication systems.