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Multi-layered intrusion detection and prevention in the SDN/NFV enabled cloud of 5G networks using AI-based defense mechanisms

机译:使用基于AI的防御机制,使用基于AI的防御机制,在SDN / NFV网络中的多层入侵检测和预防

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Software defined networking (SDN), network function virtualization (NFV), and cloud computing are receiving significant attention in 5G networks. However, this attention creates a new challenge for security provisioning in these integrated technologies. Research in the field of SDN, NFV, cloud computing, and 5G has recently focused on the intrusion detection and prevention system (IDPS). Existing IDPS solutions are inadequate, which could cause large resource wastage and several security threats. To alleviate security issues, timely detection of an attacker is important. Thus, in this paper, we propose a novel approach that is referred to as multilayered intrusion detection and prevention (ML-IDP) in an SDN/NFV-enabled cloud of 5G networks. The proposed approach defends against security attacks using artificial intelligence (AI). In this paper, we employed five layers: data acquisition layer, switches layer, domain controllers (DC) layer, smart controller (SC) layer, and virtualization layer (NFV infrastructure). User authentication is held in the first layer using the Four-Q-Curve algorithm. To address the flow table overloading attack in the switches layer, the game theory approach, which is executed in the IDP agent, is proposed. The involvement of the IDP agent is to completely avoid a flow table overloading attack by a deep reinforcement learning algorithm, and thus, it updates the current state of all switches. In the DC layer, packets are processed and classified into two classes (normal and suspicious) by a Shannon Entropy function. Normal packets are forwarded to the cloud via the SC. Suspicious packets are sent to the VNF using a growing multiple self-organization map (GM-SOM). The proposed ML-IDP system is evaluated using NS3.26 for different security attacks, including IP Spoofing, flow table overloading, DDoS, Control Plane Saturation, and host location hijacking. From the experiment results, we proved that the ML-IDP with AI-based defense mechanisms effectively detects and prevents attacks.
机译:软件定义网络(SDN),网络功能虚拟化(NFV)和云计算在5G网络中受到重大关注。但是,这种关注为这些综合技术中的安全供应创造了新的挑战。 SDN,NFV,云计算和5G领域的研究最近专注于入侵检测和预防系统(IDPS)。现有的IDPS解决方案不充分,这可能导致大资源浪费和几种安全威胁。为了减轻安全问题,及时检测攻击者很重要。因此,在本文中,我们提出了一种新的方法,该方法被称为在支持SDN / NFV的5G网络云中的多层入侵检测和预防(ML-IDP)。拟议的方法使用人工智能(AI)来防止安全袭击事件。在本文中,我们采用了五层:数据采集层,开关层,域控制器(DC)层,智能控制器(SC)层和虚拟化层(NFV基础设施)。用户认证使用四Q曲线算法在第一层中保持。为了解决交换机层中的流动表重载攻击,提出了在IDP代理中执行的游戏理论方法。 IDP代理的参与是通过深度加强学习算法完全避免流动表重载攻击,因此,它更新所有交换机的当前状态。在DC层中,通过Shannon熵函数处理分组并分为两个类(正常和可疑)。正常数据包通过SC转发到云。可疑数据包使用不断增长的多个自组织地图(GM-SOM)发送到VNF。使用NS3.26评估所提出的ML-IDP系统,用于不同的安全攻击,包括IP欺骗,流量表重载,DDO,控制平面饱和度和主机位置劫持。从实验结果中,我们证明了具有基于AI的防御机制的ML-IDP有效地检测和防止攻击。

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