In this paper, we propose and investigate an aerial reconfigurable intelligent surface (aerial-RIS)-aided wireless communication system. Specifically, considering practical composite fading channels, we characterize the air-to-ground (A2G) links by Namkagami-m small-scale fading and inverse-Gamma large-scale shadowing. To investigate the delay-limited performance of the proposed system, we derive a tight approximate closed-form expression for the end-to-end outage probability (OP). Next, considering a mobile environment, where performance analysis is intractable, we rely on machine learning-based performance prediction to evaluate the performance of the mobile aerial-RIS-aided system. Specifically, taking into account the three-dimensional (3D) spatial movement of the aerial-RIS, we build a deep neural network (DNN) to accurately predict the OP. We show that: (i) fading and shadowing conditions have strong impact on the OP, (ii) as the number of reflecting elements increases, aerial-RIS achieves higher energy efficiency (EE), and (iii) the aerial-RIS-aided system outperforms conventional relaying systems.
Majid H. KhoshafaGamil AhmedTelex M. N. NgatchedMarco Di Renzo
Shimaa NaserOmar AlhusseinLina BariahDe MiSami Muhaidat
Kun WangY. TianTai YanBo WangXintong ShiJie XiongWenming YuJing JinHai LinWenxuan Tang
Tong Van LuyenLe Van ThaiNguyen Minh TranNguyen Van Cuong
Xinyi YangWeicong ChenXiao LiShi Jin