channel sounding
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2022 ◽  
Vol 20 (4) ◽  
pp. 562-572
Author(s):  
Jose Marcos Leal Barbosa Filho ◽  
Vicente Angelo De Sousa Junior ◽  
Danilo De Santana Pena ◽  
Leonardo Henrique Gonsioroski

2021 ◽  
Author(s):  
Sai Li ◽  
Xiaoyu Dang ◽  
Chongzheng Hao ◽  
Maqsood Hussain Shah ◽  
Jie Li
Keyword(s):  

2021 ◽  
Author(s):  
William Matthews ◽  
Cuiwei He ◽  
Steve Collins
Keyword(s):  

Author(s):  
Liu Jingmei ◽  
Shen Zhiwei ◽  
Ren Zhuangzhuang ◽  
Liu Jingwei ◽  
Gong Fengkui

Electronics ◽  
2021 ◽  
Vol 10 (7) ◽  
pp. 843
Author(s):  
Liang Yin ◽  
Ruonan Yang ◽  
Yuliang Yao

Millimeter wave, especially the high frequency millimeter wave near 100 GHz, is one of the key spectrum resources for the sixth generation (6G) mobile communication, which can be used for precise positioning, imaging and large capacity data transmission. Therefore, high frequency millimeter wave channel sounding is the first step to better understand 6G signal propagation. Because indoor wireless deployment is critical to 6G and different scenes classification can make future radio network optimization easy, we built a 6G indoor millimeter wave channel sounding system using just commercial instruments based on time-domain correlation method. Taking transmission and reception of a typical 93 GHz millimeter wave signal in the W-band as an example, four indoor millimeter wave communication scenes were modeled. Furthermore, we proposed a data-driven supervised machine learning method to extract fingerprint features from different scenes. Then we trained the scene classification model based on these features. Baseband data from receiver was transformed to channel Power Delay Profile (PDP), and then six fingerprint features were extracted for each scene. The decision tree, Support Vector Machine (SVM) and the optimal bagging channel scene classification algorithms were used to train machine learning model, with test accuracies of 94.3%, 86.4% and 96.5% respectively. The results show that the channel fingerprint classification model trained by machine learning method is effective. This method can be used in 6G channel sounding and scene classification to THz in the future.


Author(s):  
Alfred Mudonhi ◽  
Marina Lotti ◽  
Antonio Clemente ◽  
Raffaele D'Errico ◽  
Claude Oestges
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