Mohammed I. Alghamdi, Abeer. Y. Salawi, Salwa Alghamdi
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引用次数: 0
摘要
软件定义网络(SDN)由于能够提供可控的网络操作,一直是研究的热点。SDN控制器可以看作是SDN模型的操作系统,它负责执行不同的网络应用程序。尽管SDN有很多好处,但安全性仍然是一个具有挑战性的问题。同时,分布式拒绝服务(DDoS, distributed denial of services)是针对SDN的一种典型攻击方式,其集中式架构尤其体现在SDN的控制层。本文提出了一种新的基于模糊规则基分类的Cat群优化(CSO-FRBCC)网络安全模型。本文提出的CSO-FRBCC模型旨在对SDN中DDoS攻击的发生进行有效的分类。为了实现这一点,CSO-FRBCC模型主要对输入数据进行预处理,将其转换为统一的格式。此外,CSO-FRBCC模型采用FRBCC分类器对入侵进行识别和分类。此外,采用猫群优化(CSO)算法对FRBCC分类模型的参数优化进行调整,提高了分类性能。在基准数据集上进行了一组全面的模拟,结果突出了CSO-FRBCC模型优于其他最新方法的结果。
Smart Model for Securing Software Defined Networks
Software defined networks (SDN) remain a hot research field as it provides controllable networking operations. The SDN controller can be treated as the operating system of the SDN model and it holds the responsibility of performing different networking applications. Despite the benefits of SDN, security remains a challenging problem. At the same time, distributed denial of services (DDoS) is a typical attack on SDN owing to centralized architecture, especially at the control layer of the SDN. This article develops a new Cat Swarm Optimization with Fuzzy Rule Base Classification (CSO-FRBCC) model for cybersecurity in SDN. The presented CSO-FRBCC model intends to effectually categorize the occurrence of DDoS attacks in SDN. To achieve this, the CSO-FRBCC model primarily pre-processes the input data to transform it to a uniform format. Besides, the CSO-FRBCC model employs FRBCC classifier for the recognition and classification of intrusions. Moreover, the parameter optimization of the FRBCC classification model is adjusted by the use of cat swarm optimization (CSO) algorithm which results in improved performance. A comprehensive set of simulations were carried out on benchmark dataset and the results highlighted the enhanced outcomes of the CSO-FRBCC model over the other recent approaches.