As we are more and more dependent on the communication technologies, resilience against any attacks on communication networks is important to guarantee the digital sovereignty of our society. New developments of communication networks tackle the problem of resilience by in-network computing approaches for higher protocol layers, while the physical layer remains an open problem. This is particularly true for wireless communication systems which are inherently vulnerable to adversarial attacks due to the open nature of the wireless medium. In denial-of-service (DoS) attacks, an active adversary is able to completely disrupt the communication and it has been shown that Turing machines are incapable of detecting such attacks. As Turing machines provide the fundamental limits of digital information processing and therewith of digital twins, this implies that even the most powerful digital twins that preserve all information of the physical network error-free are not capable of detecting such attacks. This stimulates the question of how powerful the information processing hardware must be to enable the detection of DoS attacks. Therefore, in the paper the need of neuromorphic twins is advocated and by the use of Blum-Shub-Smale machines a first implementation that enables the detection of DoS attacks is shown. This result holds for both cases of with and without constraints on the input and jamming sequences of the adversary.
翻译:由于我们越来越依赖通信技术,因此应对通信网络的任何攻击的复原力对于保障我们社会的数字化主权非常重要。通信网络的新发展通过网络内计算方法应对较高协议层的复原力问题,而物理层仍然是一个开放的问题。对于无线通信系统来说尤其如此,由于无线媒体的开放性质,无线通信系统本身就容易受到对抗性攻击。在拒绝服务(DoS)攻击中,积极的对手能够完全干扰通信,并且已经表明图灵机器无法发现这种攻击。由于图灵机器提供了数字信息处理和数字双胞胎的基本限制,这意味着即使是保存所有物理网络信息的最强大的数字双胞胎也无法发现这种攻击。这刺激了信息处理硬件必须有多强大才能发现DoS攻击的问题。因此,在论文中主张需要神经定型双胞胎,并且通过使用布拉姆-Shub-Smal机器首次实施能够检测多S攻击的信号处理和数据双胞胎,这表明,即使是保存所有物理网络信息无误差的最强大的数字双胞胎也无法发现这种攻击。这引发了与输入序列和没有限制的阻隔断。