An AI based Approach to Secure SDN Enabled Future Avionics Communications Network Against DDoS Attacks

Muhammad Ali, Fouad Benamrane, D. Luong, Yim-Fun Hu, Jian-Ping Li, Kanaan Abdo
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引用次数: 5

Abstract

The security has always been an important part of the telecommunication systems, which require consideration with high priority and appropriate countermeasures by network operators. In avionics communication systems the consideration of security is even more important, provided the fact that a minor security breach in avionics communication system can lead to a catastrophic incident which is never acceptable in any circumstances. Like other terrestrial networks the evolution of avionics communication networks is also incorporating new technologies such as heterogeneous networking for multilink communications, software defined radios (SDR), IoT, Cloud, Big Data and software defined networking (SDN) etc. This evolution for future avionics communication networks on one hand is offering enhanced reliability, flexibility, improved performance, centralized control, global network view and better management to the future avionics networks but on other hand it also inherits some of the vulnerabilities such as single point of failure etc. The pre-existing vulnerabilities together with newly inherited vulnerabilities due to incorporation of new technologies in future avionics communications networks demands considerable attention and develop context for more research in this area. There have been multiple artificial intelligence (AI) based techniques proposed by researcher globally to counter the security challenges associated with traditional terrestrial networks but very rare efforts have been made in securing future avionics communication incorporating AI. This paper proposes an AI based security solution using artificial neural networks (ANN) to address the security issues of future avionics communications networks. This paper identifies the possible vulnerabilities in the SDN enabled future avionics network (COMET) architecture at different levels considering southbound, northbound and east/west bound interfaces. Each asset in the COMET aircraft architecture is analyzed for possible vulnerabilities and potential threats and categorized appropriately. The main focus of proposed research is on the AI based method to detect and protect the COMET aircraft system from Distributed Denial of Service (DDoS) attacks and its impacts. Addressing DDoS attacks is an important concern in network security as lack of countermeasures can easily lead to waste of network resources resulting into gigantic depletion of bandwidth and eventually network unavailability. The traditional methods to defend against DDoS attacks are traceback method, entropy variation and intrusion detection and prevention system (IDPS). This paper proposes using ANN techniques in IDPS to efficiently detect and prevent the DDoS attacks by taking advantage of SDN stack. The simulation is carried out by implementing the proposed AI method on top of SDN controller and running different DDoS attacks scenarios to monitor and verify that the detection accuracy is higher and false alarm rate is low enough.
基于人工智能的基于SDN的未来航空电子通信网络抵御DDoS攻击的方法
安全一直是电信系统的重要组成部分,需要网络运营商优先考虑并采取相应的对策。在航空电子通信系统中,安全性的考虑更为重要,因为航空电子通信系统中的一个小小的安全漏洞可能导致灾难性事件,这在任何情况下都是不可接受的。与其他地面网络一样,航空电子通信网络的发展也融入了新技术,如多链路通信的异构网络、软件定义无线电(SDR)、物联网、云、大数据和软件定义网络(SDN)等。这种面向未来航空电子通信网络的演进,一方面为未来航空电子网络提供了更高的可靠性、灵活性、性能、集中控制、全局网络视图和更好的管理,但另一方面也继承了一些弱点,如单点故障等。在未来的航空电子通信网络中,由于新技术的引入,原有的漏洞以及新继承的漏洞需要得到相当大的关注,并为这一领域的更多研究提供了背景。全球研究人员已经提出了多种基于人工智能(AI)的技术来应对与传统地面网络相关的安全挑战,但在确保包含人工智能的未来航空电子通信方面所做的努力非常少。本文提出了一种基于人工智能的安全解决方案,利用人工神经网络(ANN)来解决未来航空电子通信网络的安全问题。本文在考虑南向、北向和东西向接口的不同层次上,确定了SDN支持的未来航空电子网络(COMET)体系结构中可能存在的漏洞。对COMET飞机架构中的每个资产进行可能的漏洞和潜在威胁分析,并进行适当分类。提出的研究重点是基于人工智能的方法来检测和保护COMET飞机系统免受分布式拒绝服务(DDoS)攻击及其影响。应对DDoS攻击是网络安全中的一个重要问题,缺乏应对措施容易导致网络资源的浪费,导致带宽的巨大消耗,最终导致网络不可用。防御DDoS攻击的传统方法有回溯法、熵变法和入侵检测与防御系统(IDPS)。本文提出在IDPS中使用人工神经网络技术,利用SDN栈有效地检测和防范DDoS攻击。通过在SDN控制器上实现本文提出的AI方法,运行不同的DDoS攻击场景进行仿真,监测并验证检测准确率较高,虚报率足够低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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