保护云免受dos攻击的多层攻击识别(MLAR)模型

Yashika Arora
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摘要

本文针对经济拒绝服务攻击对云计算环境安全的影响进行了研究。云计算环境在过去十年中变得流行起来,因为许多企业已经将他们的在线工作转移到云上。云服务提供商为其用户提供最长的正常运行时间,这是以服务水平协议(sla)的形式提交的。正常运行时间是用于指示客户端应用程序运行其进程的云计算资源的可用性的术语。如果在任何时候,客户机应用程序由于资源不可用而无法运行其操作,则将其视为停机时间,这与正常运行时间是负的,并被视为违反SLA。SLA保留有关SLA违规及其解决的信息,这被认为是云服务提供商的损失。例如,99.99%的正常运行时间是由云服务提供商承诺的,并且由于任何内部或外部原因,实现的正常运行时间低于承诺值,云服务提供商可能面临SLA中定义的罚款,这被认为是服务提供商的直接利润损失。为了减少由于dos攻击造成的经济损失,该模型结合了周期认证、模式分析和数据流控制机制来防止云受到攻击。基于资源利用率和响应延迟参数,提出的多层攻击识别(MLAR)模型优于现有的基于受控访问的EDOS (CA-EDOS)预防模型。
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Multi-Layered Attack Recognition (MLAR) Model to Protect Cloud From EDOS Attacks
In this paper, the work is carried upon the security of cloud computing environment from the economic denial of service (EDOS) attacks. The cloud computing environments have become popular in the past decade, as number of businesses has shifted their work online to the cloud. The cloud service providers offer the maximum uptime for their users, which is committed in the form of service level agreements (SLAs). The uptime is the term used to indicate the availability of the cloud computing resources for client’s application to run its processes. If at any point, the client application is not able to run its operations due to non-availability of resources, it is considered as the downtime, which is negative to the uptime and considered as SLA violation. The SLAs keep the information about the SLA violations and their settlements, which is considered as the loss of the cloud service providers. For example, the uptime of 99.99% is committed by cloud service provider, and due to any internal or external reason, achieved uptime is lower than committed value, the cloud service provider may face a penalty as per defined in the SLA, which is considered direct profit loss for the service provider. In order to reduce the financial losses due to the EDOS attacks, the proposed model is designed by combining the periodic authentication, pattern analysis and data flow control mechanisms to prevent the cloud from attacks. The proposed Multi-Layered Attack Recognition (MLAR) Model has outperformed the existing controlled access based EDOS (CA-EDOS) prevention model on the basis of resource utilization and response delay parameters.
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