使用软Actor评论家q -学习方法的中间人攻击雾计算解释器

Bhargavi Krishnamurthy, S. Shiva
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引用次数: 2

摘要

由于大量物联网(IoT)设备的可用性呈指数级增长,通过在边缘设备/雾节点上执行计算来管理的物联网应用程序的延迟增加。中间人攻击(Man-in-the-Middle, MitM)在雾计算中非常常见,因为雾节点位于云和终端设备之间,因此雾计算架构容易受到中间人攻击。文献中设计和开发了几种机器学习方法来检测雾计算中的MitM攻击,但它们缺乏可解释性/可解释性特征。针对雾计算中的MitM攻击检测问题,设计了一种基于软行为者评价方法的可解释q学习算法。在每个时间步进行熵正则化强化学习,防止了在逼近目标过程中每个q函数的损失。所制定的攻击检测策略是高质量的,因为它满足鲁棒性和正确性的质量保证指标。所提出的可解释q -学习框架的行为对延迟、攻击检测时间、能耗和准确性等指标是令人鼓舞的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Man-in-the-Middle attack Explainer for Fog computing using Soft Actor Critic Q-Learning Approach
Because of exponential growth in the availability of large number of Internet of Things (IoT) devices there is an increase in the latency of IoT applications that is managed by performing computation on edge devices/fog nodes. Man-in-the-Middle (MitM) attack is very much common in fog computing as the Fog computing architecture is vulnerable to MitM attack because of the positioning of fog nodes between cloud and end devices. Several machine learning approaches are designed and developed in literature for detection of MitM attacks in fog computing but they lack interpretability/explainability feature. In this paper a novel interpretable Q-learning algorithm with soft actor critic approach is designed for detecting MitM attacks in Fog computing with proper reasoning. Entropy regularized reinforcement learning is performed at each time step which prevents the loss during of every Q-function during approximation of the target. The attack detection policies formulated are of high quality as it satisfies the quality assurance metrics of robustness and correctness the conduct of the proposed interpretable Q-learning framework is encouraging towards the metrics like latency, attack detection time, energy consumption, and accuracy.
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