In this paper, we consider covert beamforming design for intelligent reflecting surface (IRS) assisted Internet of Things (IoT) networks, where Alice utilizes IRS to covertly transmit a message to Bob without being recognized by Willie. We investigate the joint beamformer design of Alice and IRS to maximize the covert rate of Bob when the knowledge about Willie's channel state information (WCSI) is perfect and imperfect at Alice, respectively. For the former case, we develop a covert beamformer under the perfect covert constraint by applying semidefinite relaxation. For the later case, the optimal decision threshold of Willie is derived, and we analyze the false alarm and the missed detection probabilities. Furthermore, we utilize the property of Kullback-Leibler divergence to develop the robust beamformer based on a relaxation, S-Lemma and alternate iteration approach. Finally, the numerical experiments evaluate the performance of the proposed covert beamformer design and robust beamformer design.
翻译:在本文中,我们考虑对智能反射表面(IRS)辅助的物联网网络进行隐形波形设计,爱丽丝利用IRS秘密向鲍勃传递信息而不为威利所识别。我们调查爱丽丝和IRS的联合光束设计,以便在对威利频道状态信息(WCSI)的了解分别对爱丽丝来说是完美和不完善的情况下,最大限度地扩大鲍勃的隐形率。对于前一种情况,我们通过应用半定点的放松,在完全隐蔽的限制下开发了隐形波形。对于后一种情况,我们得出威利的最佳决策门槛,我们分析假警报和失密的探测概率。此外,我们利用Kullback-Lebeller差异的特性,在放松、S-Lemma和备用斜度方法的基础上,开发稳健的光谱。最后,数字实验评估了拟议的隐形设计和稳健的光度设计。