A Novel Method for Moving Laterally and Discovering Malicious Lateral Movements in Windows Operating Systems: A Case Study

Q3 Engineering Advances in Technology Innovation Pub Date : 2022-08-25 DOI:10.31357/ait.v2i3.5584
A. Mailewa, Kyle Rozendaal
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引用次数: 0

Abstract

Lateral movement is a pervasive threat because modern networked systems that provide access to multiple users are far more efficient than their non-networked counterparts. It is a well-known attack methodology with extensive research conducted investigating the prevention of lateral movement in enterprise systems. However, attackers use increasingly sophisticated methods to move laterally that bypass typical detection systems. This research comprehensively reviews the problems in lateral movement detection and outlines common defenses to protect modern systems from lateral movement attacks. A literature review outlines techniques for automatic detection of malicious lateral movement, explaining common attack methods utilized by advanced persistent threats and components built into the Windows operating system that can assist with discovering malicious lateral movement. Finally, a novel approach for moving laterally designed by other security researchers is reviewed and studied, an original process for detecting this method of lateral movement is proposed, and the application of the detection methodology is also expanded.
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在Windows操作系统中横向移动和发现恶意横向移动的新方法:一个案例研究
横向移动是一种普遍存在的威胁,因为现代网络系统提供了对多个用户的访问,其效率远远高于非网络系统。这是一种众所周知的攻击方法,在企业系统中进行了广泛的研究,以防止横向移动。然而,攻击者使用越来越复杂的方法绕过典型的检测系统进行横向移动。本研究全面回顾了横向移动检测中的问题,并概述了保护现代系统免受横向移动攻击的常见防御措施。一篇文献综述概述了自动检测恶意横向移动的技术,解释了高级持久威胁和内置到Windows操作系统中的组件所使用的常见攻击方法,这些方法可以帮助发现恶意横向移动。最后,回顾和研究了其他安全研究人员设计的一种新的横向移动方法,提出了一种检测这种横向移动方法的原始过程,并扩展了检测方法的应用范围。
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来源期刊
Advances in Technology Innovation
Advances in Technology Innovation Energy-Energy Engineering and Power Technology
CiteScore
1.90
自引率
0.00%
发文量
18
审稿时长
12 weeks
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