基于sFlow的SDN (Software Define Network)可扩展流管理方案

Adeniji Oluwashola David, O. Omotosho
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引用次数: 0

摘要

网络空间对信息隐私的威胁是巨大而复杂的,需要有弹性的网络和反脆弱的安全机制。软件定义网络(SDN)基础设施本身容易受到严重的威胁,这些威胁可能会损害其作为安全提供商的可用性。SDN的基本特性是支持高带宽和及时的内容传输。SDN采用细粒度的安全方法,通过将安全控制集中到一个实体中,使用控制器来确保业务控制和信息保护。SDN为应用程序与网络交互提供了一种新的范例。这种与声明性抽象的交互将指示应用程序编程接口(api)指导网络的配置和操作。查询API是为了向网络请求信息,以便规划和优化网络操作。在本研究中,攻击者利用漏洞执行分布式拒绝服务(DDoS)攻击进行了检查。在SDN中,控制平面和转发平面之间的信任是至关重要的。控制平面和数据平面的分离导致了DoS (denial of service)攻击、中间人攻击和网络饱和攻击等开放式安全挑战。该平台运行在Mininet 2.2.2、Ubuntu 18.04、Ryu Controller 4.34和Sflow-RT上。分类学习基于支持向量机(SVM)。贡献是在正常流量生成过程中提供流量RT状态和SFlow RT包监控的监控应用。SFlow RT Status监控应用的含义是监控sFlowAgent、SFlow Byte、SFlow packet状态的失效,防止网络攻击。
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Scalable Flow based Management Scheme in Software Define Network (SDN) using sFlow
The threats to information privacy while connected to cyber space are capacious and complex which require resilient network and antifragile security mechanisms. Software Define Network (SDN) infrastructure itself is predisposed to severe threats that may damage the provision of its usability as a security provider. The essential qualities of (SDN) are to provide support for high bandwidth and timely content delivery. SDN granular approach to security by centralizing the security control into one entity using the controller to ensure service control and information protection. SDN provides a new paradigm for applications to interact with the network. This interaction with declarative abstraction will instruct the Application Programming Interface (APIs) to direct the configuration and operation of the network. The API is queried to ask the network for information in order to plan and optimize the network operations. In this study, the vulnerability exploited by attackers to perform distributed denial of service (DDoS) attacks is examined. The trust between the control planes and forwarding planes is crucial in SDN. The separation of the control and data planes contributes to open security challenges such as denial of service (DoS) attacks, man-in-the-middle attacks, and network saturation attacks. The platform runs on Mininet 2.2.2, Ubuntu 18.04, Ryu Controller 4.34, and Sflow-RT. The Classification learning is based on Support Vector Machine (SVM). The contribution is to provide monitoring application of Flow RT Status and SFlow RT Packet Monitoring during Normal Traffic Generation. The implication for the monitoring application of SFlow RT Status is to supervise the failure in the status of sFlowAgent, sFlow Byte, and sFlow packet against cyber-attack.
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