DQ-MOTAG: Deep Reinforcement Learning-based Moving Target Defense Against DDoS Attacks

Xinzhong Chai, Yasen Wang, Chuanxu Yan, Yuan Zhao, Wenlong Chen, Xiaolei Wang
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引用次数: 9

Abstract

The rapid developments of mobile communication and wearable devices greatly improve our daily life, while the massive entities and emerging services also make Cyber-Physical System (CPS) much more complicated. The maintenance of CPS security tends to be more and more difficult. As a ”gamechanging” new active defense concept, Moving Target Defense (MTD) handle this tricky problem by periodically upsetting and recombining connections between users and servers in the protected system, which is so-called ”shuffle”. By this means, adversaries can hardly obtain enough time to compromise the potential victims, which is the indispensable condition to collect necessary information or conduct further malicious attacks. But every coin has two sides, MTD also introduce unbearable high energy consumption and resource occupation in the meantime, which hinders the large-scale application of MTD for quite a long time. In this paper, we propose a novel deep reinforcement learning-based MOTAG system called DQ-MOTAG. To our knowledge, this is the first work to provide self-adaptive shuffle period adjustment ability for MTD with reinforcement learning-based intelligent control mechanism. We also design an algorithm to generate optimal duration of next period to guide subsequent shuffle. Finally, we conduct a series of experiments to prove the availability and performance of DQ-MOTAG compared to exist methods. The result highlights our solution in terms of defense performance, error block rate and network source consumption.
基于深度强化学习的移动目标DDoS攻击防御
移动通信和可穿戴设备的快速发展极大地改善了我们的日常生活,但海量的实体和新兴的服务也使信息物理系统(CPS)变得更加复杂。CPS安全的维护变得越来越困难。作为一种“改变游戏规则”的新型主动防御概念,移动目标防御(MTD)通过周期性地扰乱和重组受保护系统中用户和服务器之间的连接来解决这一棘手问题,即所谓的“洗牌”。这样一来,攻击者很难获得足够的时间来攻击潜在的受害者,这是收集必要信息或进行进一步恶意攻击的必要条件。但凡事都有两面性,同时MTD也带来了难以承受的高能耗和资源占用,这在相当长一段时间内阻碍了MTD的大规模应用。在本文中,我们提出了一种新的基于深度强化学习的MOTAG系统,称为DQ-MOTAG。据我们所知,这是第一个用基于强化学习的智能控制机制为MTD提供自适应洗牌周期调节能力的工作。我们还设计了一种算法来生成下一个周期的最佳持续时间,以指导后续洗牌。最后,我们进行了一系列的实验来证明DQ-MOTAG与现有方法的有效性和性能。结果表明我们的解决方案在防御性能、错误块率和网络源消耗方面都得到了突出的体现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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