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Deep Learning for Signal Authentication and Security in Massive Internet-of-Things Systems

机译:大规模物联网系统中用于信号认证和安全性的深度学习

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Secure signal authentication is arguably one of the most challenging problems in the Internet of Things (IoT), due to the large-scale nature of the system and its susceptibility to man-in-the-middle and data-injection attacks. In this paper, a novel watermarking algorithm is proposed for dynamic authentication of IoT signals to detect cyber-attacks. The proposed watermarking algorithm, based on a deep learning long short-term memory structure, enables the IoT devices (IoTDs) to extract a set of stochastic features from their generated signal and dynamically watermark these features into the signal. This method enables the IoT gateway, which collects signals from the IoTDs, to effectively authenticate the reliability of the signals. Moreover, in massive IoT scenarios, since the gateway cannot authenticate all of the IoTDs simultaneously due to computational limitations, a game-theoretic framework is proposed to improve the gateway's decision making process by predicting vulnerable IoTDs. The mixed-strategy Nash equilibrium (MSNE) for this game is derived, and the uniqueness of the expected utility at the equilibrium is proven. In the massive IoT system, due to the large set of available actions for the gateway, the MSNE is shown to be analytically challenging to derive, and thus, a learning algorithm that converges to the MSNE is proposed. Moreover, in order to handle incomplete information scenarios, in which the gateway cannot access the state of the unauthenticated IoTDs, a deep reinforcement learning algorithm is proposed to dynamically predict the state of unauthenticated IoTDs and allow the gateway to decide on which IoTDs to authenticate. Simulation results show that with an attack detection delay of under 1 s, the messages can be transmitted from IoTDs with an almost 100% reliability. The results also show that by optimally predicting the set of vulnerable IoTDs, the proposed deep reinforcement learning algorithm reduces the number of compromised IoTDs by up to 30%, compared to an equal probability baseline.
机译:由于系统的大规模性质及其对中间人攻击和数据注入攻击的敏感性,因此安全信号认证可以说是物联网(IoT)中最具挑战性的问题之一。本文提出了一种新颖的水印算法,用于物联网信号的动态认证,以检测网络攻击。所提出的水印算法基于深度学习的长期短期记忆结构,使IoT设备(IoTD)能够从其生成的信号中提取一组随机特征,并将这些特征动态地加水印到信号中。此方法使从IoTD收集信号的IoT网关可以有效地验证信号的可靠性。此外,在大规模物联网场景中,由于网关由于计算限制而无法同时对所有IoTD进行身份验证,因此提出了一种博弈论框架,通过预测易受攻击的IoTD来改善网关的决策过程。推导了该博弈的混合策略纳什均衡(MSNE),并证明了均衡时预期效用的唯一性。在大型物联网系统中,由于网关具有大量可用操作,因此MSNE在推导上具有解析性挑战,因此,提出了一种收敛到MSNE的学习算法。此外,为了处理网关无法访问未经身份验证的IoTD状态的不完整信息场景,提出了一种深度强化学习算法来动态预测未经身份验证的IoTD的状态,并允许网关决定对哪些IoTD进行身份验证。仿真结果表明,攻击检测延迟不到1 s,可以从IoTD发送消息,可靠性几乎达到100%。结果还表明,与等概率基线相比,通过最佳预测易受攻击的IoTD的集合,所提出的深度强化学习算法可将受损IoTD的数量减少多达30%。

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