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A Game-Theoretic Analysis of Energy-Depleting Jamming Attacks with a Learning Counterstrategy

机译:具有学习策略的耗能干扰攻击的博弈论分析

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摘要

Jamming may become a serious threat in Internet of Things networks of battery-powered nodes, as attackers can disrupt packet delivery and significantly reduce the lifetime of the nodes. In this work, we model an active defense scenario in which an energy-limited node uses power control to defend itself from a malicious attacker, whose energy constraints may not be known to the defender:Me interaction between the two nodes is modeled as an asymmetric Bayesian game where the victim has incomplete information about the attacker. We show how to derive the optimal Bayesian strategies for both the defender and the attacker, which may then serve as guidelines to develop and gauge efficient heuristics that are less computationally expensive than the optimal strategies. For example, we propose a neural-network-based learning method that allows the node to effectively defend itself from the jamming with a significantly reduced computational load. The outcomes of the ideal strategies highlight the tradeoff between node lifetime and communication reliability and the importance of an intelligent defense from jamming attacks.
机译:干扰可能会成为电池供电节点的物联网网络中的严重威胁,因为攻击者可能会破坏数据包的传递并大大缩短节点的寿命。在这项工作中,我们对主动防御方案进行建模,在该方案中,能量受限的节点使用功率控制来防御恶意攻击者的攻击,而攻击者的能量约束可能未知:两个节点之间的Me交互被建模为不对称贝叶斯游戏,其中受害者没有有关攻击者的完整信息。我们展示了如何为防御者和攻击者两者导出最佳贝叶斯策略,然后可以将其用作开发和评估有效启发式方法的指导,这些启发式方法在计算上要比最佳策略便宜。例如,我们提出了一种基于神经网络的学习方法,该方法允许节点以显着减少的计算负荷有效地防御干扰。理想策略的结果突出了节点寿命与通信可靠性之间的权衡,以及智能防御防御干扰的重要性。

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