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Journal Article Atmospheric Attenuation Model Using Gaussian Process in Sub-THz Terrestrial Wireless Communications
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Authors
Ki Joung Jang, Jin Hyung Oh, Youngkeun Yoon, JongHo Kim, Ganguk Hwang
Issue Date
2024-02
Citation
IEEE Antennas and Wireless Propagation Letters, v.23, no.2, pp.568-572
ISSN
1536-1225
Publisher
Institute of Electrical and Electronics Engineers
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1109/LAWP.2023.3330189
Abstract
Atmospheric elements affect signal propagation and cause significant signal loss called atmospheric attenuation, especially in high-frequency range including sub-THz frequencies. Atmospheric attenuation mainly consists of gaseous, fog, and rain attenuation and the traditional approach considers them separately to develop good prediction models. However, the traditional models are not accurate and even unavailable for the high-frequency range, such as sub-THz frequencies. In this letter, we propose a new attenuation model to predict atmospheric attenuation for terrestrial line-of-sight propagation at high frequencies, such as sub-THz. The proposed model is based on Gaussian process regression (GPR). To train our model with a big measurement dataset, we use a scalable variant of GPR called blockbox matrix–matrix Gaussian process. We validate our model with a dataset obtained from a long-term measurement campaign at sub-THz frequencies. Our experiments show that our model significantly outperforms the existing model. We also show that our model provides reliable prediction intervals of atmospheric attenuation.
KSP Keywords
Atmospheric attenuation, Atmospheric elements, Attenuation model, Frequency range, Gaussian Process(GP), Gaussian Process Regression(GPR), High frequency(HF), Line of sight(LOS), Line-of-sight propagation, Long-term measurement, Measurement Campaign