Research on Digital Forensics Framework for Malicious Behavior in Cloud

Guangxuan Chen, Di Wu, Guangxiao Chen, Panke Qin, Lei Zhang, Qiang Liu
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引用次数: 1

Abstract

The difficult of detecting, response, tracing the malicious behavior in cloud has brought great challenges to the law enforcement in combating cybercrimes. This paper presents a malicious behavior oriented framework of detection, emergency response, traceability, and digital forensics in cloud environment. A cloud-based malicious behavior detection mechanism based on SDN is constructed, which implements full-traffic flow detection technology and malicious virtual machine detection based on memory analysis. The emergency response and traceability module can clarify the types of the malicious behavior and the impacts of the events, and locate the source of the event. The key nodes and paths of the infection topology or propagation path of the malicious behavior will be located security measure will be dispatched timely. The proposed IaaS service based forensics module realized the virtualization facility memory evidence extraction and analysis techniques, which can solve volatile data loss problems that often happened in traditional forensic methods.
云环境下恶意行为的数字取证框架研究
云环境中恶意行为的检测、响应和追踪的难度给打击网络犯罪的执法带来了巨大的挑战。本文提出了一种基于云环境的恶意行为检测、应急响应、可追溯性和数字取证的框架。构建了基于SDN的云恶意行为检测机制,实现了全流量检测技术和基于内存分析的恶意虚拟机检测。应急响应和溯源模块可以明确恶意行为的类型和事件的影响,定位事件的源头。确定感染拓扑的关键节点和路径或恶意行为的传播路径,及时调度安全措施。提出的基于IaaS服务的取证模块实现了虚拟化设施内存证据提取和分析技术,解决了传统取证方法中易失性数据丢失的问题。
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