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ML for IEEE 802.15. 4e/TSCH: Energy Efficient Approach to Detect DDoS Attack Using Machine Learning

机译:ML对于IEEE 802.15。 4E / TSCH:使用机器学习检测DDOS攻击的节能方法

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Internet of Things (IoT) is a way to communicate with the real world without much human involvement. It is booming in today's computing world, with billions of devices having sensors and actuators connected to the internet using various low power technologies. Despite several profits, it experiences multiple security threats that impel catastrophic crashes in the IEEE 802.15.4e (6TiSCH) network. Various threats like jamming attacks, DDoS, abnormal behavior, etc., are detected using multiple Machine Learning (ML) and Deep Learning (DL) approaches. In this paper, an edge-based ML enables Intrusion Detection Systems (IDS) is proposed to detect distributed denial-of-service (DDoS) attack patterns from a particular source. Experimental outcomes confirm that the proposed approach is scalable and efficient in terms of computation and storage. Hence, the intended approach gives a faster response as (24.2- 68.9) Sec. The average memory utilization (ROM/RAM), energy usage, and accuracy achieved by our intended solution are 35834B/5378B, 85916mJ, 98.7%, respectively, which outperform closely related work.
机译:事情互联网(物联网)是与现实世界沟通的方式,没有太多人类的参与。它在当今的计算世界中蓬勃发展,其中数十亿种设备,具有使用各种低功率技术连接到互联网的传感器和执行器。尽管有几个利润,它会遇到多种安全威胁,即IEEE 802.15.4e(6TISCH)网络中的征集灾难性崩溃。使用多种机器学习(ML)和深度学习(DL)方法检测不同类似的威胁,如干扰攻击,DDOS,异常行为等。在本文中,提出了一种基于边缘的M1,提出了入侵检测系统(IDS)来检测来自特定源的分布式拒绝服务(DDOS)攻击模式。实验结果证实,在计算和存储方面,所提出的方法是可扩展和高效的。因此,预期的方法提供了更快的反应,如(24.2-68.9)秒。我们预期解决方案实现的平均内存利用率(ROM / RAM),能源使用和准确性分别为35834B / 5378B,85916MJ,98.7%,其优于密切相关的工作。

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