The exponential growth of internet connected systems has generated numerous challenges, such as spectrum shortage issues, which require efficient spectrum sharing (SS) solutions. Complicated and dynamic SS systems can be exposed to different potential security and privacy issues, requiring protection mechanisms to be adaptive, reliable, and scalable. Machine learning (ML) based methods have frequently been proposed to address those issues. In this article, we provide a comprehensive survey of the recent development of ML based SS methods, the most critical security issues, and corresponding defense mechanisms. In particular, we elaborate the state-of-the-art methodologies for improving the performance of SS communication systems for various vital aspects, including ML based cognitive radio networks (CRNs), ML based database assisted SS networks, ML based LTE-U networks, ML based ambient backscatter networks, and other ML based SS solutions. We also present security issues from the physical layer and corresponding defending strategies based on ML algorithms, including Primary User Emulation (PUE) attacks, Spectrum Sensing Data Falsification (SSDF) attacks, jamming attacks, eavesdropping attacks, and privacy issues. Finally, extensive discussions on open challenges for ML based SS are also given. This comprehensive review is intended to provide the foundation for and facilitate future studies on exploring the potential of emerging ML for coping with increasingly complex SS and their security problems.
翻译:互联网连通系统的飞速增长产生了许多挑战,例如频谱短缺问题,这需要高效的频谱共享(SS)解决方案。复杂和动态的SS系统可能暴露于不同的潜在安全和隐私问题,需要保护机制适应性、可靠和可扩展。基于机器学习(ML)的方法经常被提出来解决这些问题。在本篇文章中,我们提供了对基于 ML 的SS 方法的最新发展情况、最关键的安全问题和相应的防御机制的全面调查。特别是,我们制定了改进SS 通信系统在各种关键方面的性能的最新方法,包括基于 ML 的认知无线电网络(CRNs ) 、基于 ML 的数据库协助SS 网络、基于 ML 的 LTE-U 网络、基于环境反弹网络的ML 和其他基于 ML SS 解决方案。我们还介绍了基于 ML 算法的物理层安全问题和相应的防御战略,包括初级用户模拟攻击、 Spectrmational 数据伪造(SSDF) 攻击、干扰攻击、窃听攻击、窃听攻击、隐藏攻击、基于ML 的隐私问题的潜在研究为未来研究提供了不断探索的潜在基础。