As wireless network technology becomes more and more popular, mutual interference between various signals has become more and more severe and common. Therefore, there is often a situation in which the transmission of its own signal is interfered with by occupying the channel. Especially in a confrontational environment, Jamming has caused great harm to the security of information transmission. So I propose ML-based secure ultra-low power communication, which is an approach to use machine learning to predict future wireless traffic by capturing patterns of past wireless traffic to ensure ultra-low-power transmission of signals via backscatters. In order to be more suitable for the adversarial environment, we use backscatter to achieve ultra-low power signal transmission, and use frequency-hopping technology to achieve successful confrontation with Jamming information. In the end, we achieved a prediction success rate of 96.19%.
翻译:随着无线网络技术越来越受欢迎,各种信号之间的相互干扰变得越来越严重和常见。 因此,常常出现一种情况,即它自己的信号的传输因占据该频道而受到干扰。 特别是在对抗环境下,贾明对信息传输安全造成了极大伤害。 因此,我提议以ML为基础的安全超低功率通信,这是利用机器学习来预测未来无线通信的一种方法,通过捕捉过去的无线通信模式,确保信号通过背斜体的超低功率传输。 为了更适合对抗环境,我们利用反向散射来实现超低功率信号传输,并利用频率选择技术来成功对抗干扰信息。 最后,我们实现了96.19%的预测成功率。