论文标题
多人Antenna数据驱动的窃听攻击和符号级的预编码对策
Multi-Antenna Data-Driven Eavesdropping Attacks and Symbol-Level Precoding Countermeasures
论文作者
论文摘要
在这项工作中,我们考虑在有多个Antenna Eavesdropper(EVE)的情况下使用通道编码的无线多用户(MU)多输入单输出(MISO)系统中的安全通信。在这种情况下,我们利用机器学习(ML)工具来设计软编码的试验符号作为训练数据,以设计软和硬解码方案。在这种情况下,我们为解码器提出了ML框架,使前夕可以高精度确定传输消息。因此,我们表明,即使采用了相对安全的传输技术,例如符号级预码(SLP),MU-MISO系统也容易受到此类窃听攻击的影响。为了抵消这一攻击,我们提出了两种基于SLP的新型方案,这些方案通过阻碍学习过程来增加前夕的比特率。我们设计了这两个安全性增强方案,以满足有关复杂性,安全性和功耗的不同要求。仿真结果验证了基于ML的窃听攻击以及对策,并表明安全性的增长是在不影响预期用户的解码性能的情况下实现的。
In this work, we consider secure communications in wireless multi-user (MU) multiple-input single-output (MISO) systems with channel coding in the presence of a multi-antenna eavesdropper (Eve). In this setting, we exploit machine learning (ML) tools to design soft and hard decoding schemes by using precoded pilot symbols as training data. In this context, we propose ML frameworks for decoders that allow an Eve to determine the transmitted message with high accuracy. We thereby show that MU-MISO systems are vulnerable to such eavesdropping attacks even when relatively secure transmission techniques are employed, such as symbol-level precoding (SLP). To counteract this attack, we propose two novel SLP-based schemes that increase the bit-error rate at Eve by impeding the learning process. We design these two security-enhanced schemes to meet different requirements regarding complexity, security, and power consumption. Simulation results validate both the ML-based eavesdropping attacks as well as the countermeasures, and show that the gain in security is achieved without affecting the decoding performance at the intended users.