基于人工免疫系统的云共居拒绝服务威胁检测

Azuan Ahmad, Wan Shafiuddin Zainudin, M. Kama, N. Idris, M. Saudi
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引用次数: 2

摘要

云计算引入了对数据保护和入侵检测机制的关注。对文献的回顾表明,仍然缺乏云IDS的工作,重点是使用树突状细胞算法(DCA)作为一种实用的方法来实现实时混合检测。此外,还缺乏专门的威胁检测来检测针对云计算环境的入侵,目前的实现仍然使用传统的开源或企业IDS来检测针对云计算环境的威胁。云实现还引入了一个新术语“共同驻留”攻击,并且缺乏对检测此类攻击的研究。本研究旨在为云计算环境提供一种混合入侵检测模型。为此,本研究提出了一种改进的DCA作为混合入侵检测机制的主要检测算法,该机制工作于结合异常和误用检测机制的云共居威胁检测(CCTD)。本研究还提出了一种检测共居攻击的方法。本文提出了共驻留攻击检测模型,并对该模型进行了测试,得到了满意的结果。实验在受控环境中进行,并使用自定义生成的共同驻留拒绝服务攻击来测试所提出模型检测新型共同驻留攻击的能力。实验结果表明,所提出的模型能够检测出实验过程中发生的大多数攻击类型。实验表明,CCTD模型改进了以前用于解决类似问题的DCA。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud Co-Residency Denial of Service Threat Detection Inspired by Artificial Immune System
Cloud computing introduces concerns about data protection and intrusion detection mechanism. A review of the literature shows that there is still a lack of works on cloud IDS that focused on implementing real-time hybrid detections using Dendritic Cell algorithm (DCA) as a practical approach. In addition, there is also lack of specific threat detection built to detect intrusions targeting cloud computing environment where current implementations still using traditional open source or enterprise IDS to detect threats targeting cloud computing environment. Cloud implementations also introduce a new term, "co-residency" attack and lack of research focusing on detecting this type of attack. This research aims to provide a hybrid intrusion detection model for Cloud computing environment. For this purpose, a modified DCA is proposed in this research as the main detection algorithm in the new hybrid intrusion detection mechanism which works on Cloud Co-Residency Threat Detection (CCTD) that combines anomaly and misuse detection mechanism. This research also proposed a method in detecting co-residency attacks. In this paper the co-residency attack detection model was proposed and tested until satisfactory results were obtained with the datasets. The experiment was conducted in a controlled environment and conducted using custom generated co-residency denial of service attacks for testing the capability of the proposed model in detecting novel co-residency attacks. The results show that the proposed model was able to detect most of the types of attacks that conducted during the experiment. From the experiment, the CCTD model has been shown to improve DCA previously used to solve similar problem.
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