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A confidence-based filtering method for DDoS attack defense in cloud environment

机译:云环境下基于信任度的DDoS攻击防御过滤方法

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摘要

Distributed Denial-of-Service attack (DDoS) is a major threat for cloud environment. Traditional defending approaches cannot be easily applied in cloud security due to their relatively low efficiency, large storage, to name a few. In view of this challenge, a Confidence-Based Filtering method, named CBF, is investigated for cloud computing environment, in this paper. Concretely speaking, the method is deployed by two periods, i.e., non-attack period and attack period. More specially, legitimate packets are collected in the non-attack period, for extracting attribute pairs to generate a nominal profile. With the nominal profile, the CBF method is promoted by calculating the score of a particular packet in the attack period, to determine whether to discard it or not. At last, extensive simulations are conducted to evaluate the feasibility of the CBF method. The result shows that CBF has a high scoring speed, a small storage requirement, and an acceptable filtering accuracy. It specifically satisfies the real-time filtering requirements in cloud environment.
机译:分布式拒绝服务攻击(DDoS)是对云环境的主要威胁。传统防御方法由于效率相对较低,存储量大等优点而无法轻松应用于云安全。针对这一挑战,本文针对云计算环境研究了一种基于置信度的过滤方法,即CBF。具体地讲,该方法分为两个周期,即非攻击周期和攻击周期。更具体地说,在非攻击期间收集合法数据包,以提取属性对以生成名义配置文件。通过名义轮廓,通过计算攻击周期中特定数据包的分数来确定是否丢弃它,从而促进了CBF方法的发展。最后,进行了广泛的仿真,以评估CBF方法的可行性。结果表明,CBF具有较高的评分速度,较小的存储需求和可接受的过滤精度。它特别满足了云环境中的实时过滤要求。

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