Opportunities for Physical Layer Security in UAV Communication Enhanced with Intelligent Reflective Surfaces

计算机科学 物理层 图层(电子) 计算机网络 计算机安全 人机交互 电信 无线 材料科学 复合材料
作者
Wali Ullah Khan,Eva Lagunas,Zain Ali,Muhammad Awais Javed,Manzoor Ahmed,Symeon Chatzinotas,Björn Ottersten,Petar Popovski
出处
期刊:IEEE Wireless Communications [Institute of Electrical and Electronics Engineers]
卷期号:29 (6): 22-28 被引量:106
标识
DOI:10.1109/mwc.001.2200125
摘要

Unmanned aerial vehicles (UAVs) are an important component of next-generation wireless networks that can assist in high data rate communications and provide enhanced coverage.Their high mobility and aerial nature offer deployment flexibility and low-cost infrastructure support to existing cellular networks and provide many applications that rely on mobile wireless communications. However, security is a major challenge in UAV communications, and physical layer security (PLS) is an important technique to improve the reliability and security of data shared with the assistance of UAVs. Recently, the intelligent reflective surface (IRS) has emerged as a novel technology to extend and/or enhance wireless coverage by reconfiguring the propagation environment of communications. This article provides an overview of how the IRS can improve the PLS of UAV networks. We discuss different use cases of PLS for IRS-enhanced UAV communications and briefly review the recent advances in this area. Then, based on the recent advances, we also present a case study that utilizes alternate optimization to maximize the secrecy capacity for an IRS-enhanced UAV scenario in the presence of multiple Eves. Finally, we highlight several open issues and research challenges to realize PLS in IRS-enhanced UAV communications.
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