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首页> 外文期刊>Neural computing & applications >LION IDS: A meta-heuristics approach to detect DDoS attacks against Software-Defined Networks
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LION IDS: A meta-heuristics approach to detect DDoS attacks against Software-Defined Networks

机译:狮子ID:一种荟萃启发式方法,用于检测软件定义网络的DDOS攻击

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摘要

Most of the enterprises are transforming their conventional networks into Software-Defined Network (SDN) to avail the cost efficiency and network flexibility. But recent attacks and security breaches against SDNs expose the security weakness of the technology. Distributed Denial of Service (DDoS) is the most common attack launched against various SDN architecture layers. Hence, DDoS has been claimed to be the most dangerous attack and threat to SDN. The existing mitigation techniques are traffic volumetric methods, entropical methods and traffic flow analysis methods. They depend on traffic sampling to achieve truly inline against DDoS detection accuracy in real time. However, traffic sampling-based methods are expensive with chances for incomplete approximation of underlying traffic patterns being very high. Early detection of DDoS attack in the controller is critical and requires highly adaptive and accurate methods. In this paper, an effective and accurate DDoS detection method using Lion optimization algorithm is proposed. The proposed detection technique is robust enough to detect DDoS attack within the least magnitude of attack traffic. Further, to evaluate the performance, the proposed method is compared with the state-of-the-art techniques. The outcome of this paper is current method limitation and scope for improvement depicted from overall study and analysis. The experimental results have proved that the proposed method outperforms the existing state-of-the-art methods with 96% accuracy.
机译:大多数企业正在将传统网络转换为软件定义的网络(SDN),以利用成本效率和网络灵活性。但最近的攻击和安全泄露对抗SDNS暴露了技术的安全疲软。分布式拒绝服务(DDOS)是针对各种SDN架构层发布的最常见的攻击。因此,DDOS已被声称是最危险的攻击和对SDN的威胁。现有的缓解技术是业务体积方法,熵方法和交通流量分析方法。它们依赖于交通采样,实时实现真正的直线反对DDOS检测精度。然而,基于流量采样的方法对于底层交通模式非常高的不完整近似的机会昂贵。在控制器中的DDOS攻击的早期检测至关重要,需要高度适应性和准确的方法。本文提出了一种利用狮子优化算法的有效和准确的DDOS检测方法。所提出的检测技术足以在攻击流量的最少幅度内检测DDOS攻击。此外,为了评估性能,将所提出的方法与最先进的技术进行比较。本文的结果是目前的方法限制和改进的范围,从整体研究和分析中描绘。实验结果证明,该方法优于现有的最先进方法,精度为96%。

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