Cellular networks (LTE, 5G, and beyond) are dramatically growing with high demand from consumers and more promising than the other wireless networks with advanced telecommunication technologies. The main goal of these networks is to connect billions of devices, systems, and users with high-speed data transmission, high cell capacity, and low latency, as well as to support a wide range of new applications, such as virtual reality, metaverse, telehealth, online education, autonomous and flying vehicles, advanced manufacturing, and many more. To achieve these goals, spectrum sensing has been paid more attention, along with new approaches using artificial intelligence (AI) methods for spectrum management in cellular networks. This paper provides a vulnerability analysis of spectrum sensing approaches using AI-based semantic segmentation models for identifying cellular network signals under adversarial attacks with and without defensive distillation methods. The results showed that mitigation methods can significantly reduce the vulnerabilities of AI-based spectrum sensing models against adversarial attacks.
翻译:移动电话网络(LTE, 5G及以后)随着消费者的高需求而急剧增长,而且比其他拥有先进电信技术的无线网络更有希望,这些网络的主要目标是将数十亿个设备、系统和用户连接起来,提供高速数据传输、高细胞容量和低潜伏的高速数据传输、高细胞容量和低潜伏的装置、系统和用户,并支持一系列新的应用,如虚拟现实、逆向、远程保健、在线教育、自主和飞行器、先进制造等。为了实现这些目标,频谱遥感受到更多的关注,同时采用人工智能(AI)方法管理蜂窝网络频谱的新方法。本文利用基于AI的语义分割模型分析频谱遥感方法,以便用和不使用防御性蒸馏方法识别对抗性攻击下的手机网络信号。结果显示,减缓方法可以大大降低AI基频谱传感器模型在对抗对抗性攻击时的脆弱性。