Towards Cost-Effective Moving Target Defense Against DDoS and Covert Channel Attacks

Huangxin Wang, Fei Li, Songqing Chen
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引用次数: 36

Abstract

Traditionally, network and system configurations are static. Attackers have plenty of time to exploit the system's vulnerabilities and thus they are able to choose when to launch attacks wisely to maximize the damage. An unpredictable system configuration can significantly lift the bar for attackers to conduct successful attacks. Recent years, moving target defense (MTD) has been advocated for this purpose. An MTD mechanism aims to introduce dynamics to the system through changing its configuration continuously over time, which we call adaptations. Though promising, the dynamic system reconfiguration introduces overhead to the applications currently running in the system. It is critical to determine the right time to conduct adaptations and to balance the overhead afforded and the security levels guaranteed. This problem is known as the MTD timing problem. Little prior work has been done to investigate the right time in making adaptations. In this paper, we take the first step to both theoretically and experimentally study the timing problem in moving target defenses. For a broad family of attacks including DDoS attacks and cloud covert channel attacks, we model this problem as a renewal reward process and propose an optimal algorithm in deciding the right time to make adaptations with the objective of minimizing the long-term cost rate. In our experiments, both DDoS attacks and cloud covert channel attacks are studied. Simulations based on real network traffic traces are conducted and we demonstrate that our proposed algorithm outperforms known adaptation schemes.
实现针对DDoS和隐蔽通道攻击的高性价比移动目标防御
传统上,网络和系统配置是静态的。攻击者有足够的时间来利用系统的漏洞,因此他们能够明智地选择何时发动攻击,以最大限度地造成损害。不可预测的系统配置可以大大提高攻击者进行成功攻击的门槛。近年来,移动目标防御(MTD)已被提出。MTD机制旨在通过随着时间的推移不断地改变其配置来为系统引入动态,我们称之为适应性。尽管前景不错,但动态系统重新配置给系统中当前运行的应用程序带来了开销。确定进行调整的正确时间并平衡所提供的开销和所保证的安全级别是至关重要的。这个问题被称为MTD定时问题。在此之前,几乎没有人研究过做出适应的正确时间。本文首先从理论和实验两方面对移动目标防御中的定时问题进行了研究。对于包括DDoS攻击和云隐蔽通道攻击在内的一系列攻击,我们将此问题建模为更新奖励过程,并提出了一种最佳算法,用于决定正确的时间进行适应,以最小化长期成本率。在实验中,我们研究了DDoS攻击和云隐蔽通道攻击。基于真实网络流量轨迹的仿真结果表明,我们提出的算法优于已知的自适应方案。
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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