Periodic Service Behavior Strain Analysis-Based Intrusion Detection in Cloud

S. Priya, R. S. Ponmagal
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引用次数: 0

Abstract

: The problem of intrusion detection in cloud environments has been well studied. The presence of adversaries would challenge data security in the cloud by generating intrusion attacks towards the cloud data and should be mitigated for the development of the cloud environment. In mitigating intrusion attacks, there exist several techniques in the literature. The method uses different features like frequency of access, payload details, protocol mapping, etc. However, the methods need to improve to achieve the expected performance in detecting intrusion attacks. An efficient Periodic Service Behavior Strain Analysis (PSBSA) is presented to handle this issue. Unlike earlier methods, the PSBSA model analyzes the behavior of users in various time frames like historical, recent, and current spans. The model focused on identifying intrusion attacks in several constraints, not just considering the current nature. The performance of intrusion detection can be improved by viewing the user's behavior in historical, present, and recent timespan. Unlike other approaches, the proposed PSBSA model considers the user's behavior at different times in measuring the user's trust towards intrusion detection. Accordingly, the proposed PSBSA model analyzes the behavior of users under various situations. It examines the behavior in accessing the services at historical, current, and recent times. The method performs Historical Strain Analysis (HSA) Current Strain Analysis (CSA) and Recent Strain Analysis (RSA). HSA analysis is performed according to the historical data, CSA is performed based on the current access data and RSA is performed with the recent access data. The model estimates various legitimacy support values on each analysis to conclude the trust of any user. According to the support values, intrusion detection has been performed. The proposed PSBSA model introduces higher accuracy in intrusion detection in a cloud environment.
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基于周期性服务行为应变分析的云入侵检测
:云环境中的入侵检测问题已得到深入研究。敌方的存在会对云数据产生入侵攻击,从而对云数据安全构成挑战,因此应为云环境的发展采取缓解措施。在缓解入侵攻击方面,文献中存在多种技术。这些方法使用不同的特征,如访问频率、有效载荷细节、协议映射等。但是,这些方法还需要改进,以达到检测入侵攻击的预期性能。本文提出了一种高效的周期性服务行为应变分析法(PSBSA)来解决这一问题。与早期的方法不同,PSBSA 模型分析了用户在不同时间段内的行为,如历史、近期和当前跨度。该模型侧重于识别多个约束条件下的入侵攻击,而不仅仅考虑当前的性质。通过查看用户在历史、当前和最近时间段的行为,可以提高入侵检测的性能。与其他方法不同,所提出的 PSBSA 模型在衡量用户对入侵检测的信任度时,会考虑用户在不同时间段的行为。因此,所提出的 PSBSA 模型分析了用户在各种情况下的行为。它检查了用户在历史、当前和近期访问服务的行为。该方法执行历史应变分析(HSA)、当前应变分析(CSA)和近期应变分析(RSA)。HSA 分析根据历史数据进行,CSA 根据当前访问数据进行,RSA 根据最近访问数据进行。该模型对每项分析估算出不同的合法性支持值,从而得出用户信任度的结论。根据支持值进行入侵检测。所提出的 PSBSA 模型为云环境中的入侵检测带来了更高的准确性。
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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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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