Robust Secure Transmission Design for IRS-Assisted mmWave Cognitive Radio Networks
Xuewen Wu, Jingxiao Ma, Chenwei Gu, Xiaoping Xue, Xin Zeng

TL;DR
This paper proposes a robust secure beamforming design for IRS-assisted mmWave cognitive radio networks, enhancing secrecy rate under imperfect CSI and eavesdropper collaboration.
Contribution
It introduces a joint transmit and reflect beamforming optimization method considering imperfect CSI and collaborative eavesdroppers in IRS-assisted mmWave CRNs.
Findings
Proposed algorithm achieves near-optimal secrecy rate performance.
Robust beamforming effectively mitigates eavesdropping threats.
Simulation results validate the effectiveness of the joint design.
Abstract
Cognitive radio networks (CRNs) and millimeter wave (mmWave) communications are two major technologies to enhance the spectrum efficiency (SE). Considering that the SE improvement in the CRNs is limited due to the interference temperature imposed on the primary user (PU), and the severe path loss and high directivity in mmWave communications make it vulnerable to blockage events, we introduce an intelligent reflecting surface (IRS) into mmWave CRNs. Due to the estimation mismatch and the passivity of Eavesdroppers (Eves), perfect channel state information (CSI) of wiretap links is challenging to obtain, which promotes our research on robust secure beamforming (BF) design in the IRS-assisted mmWave CRNs. This paper considers the collaborate scenario of Eves, which allows us to investigate the BF design in the harsh eavesdropping environment. Specifically, by using a uniform linear array…
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