A Novel Deep Learning-based Approach to encounter cyber threats in IIoT

Syed Nawaz Ali Shah, Ghufran Ahmed, Adnan Akhunzada, Engr. Shahbaz Siddiqui
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Abstract

Internet of Things (IoT) is a growing field and it has reached the multi-million dollar market. The research in the field of IoT, networks and AI is in initial stages due to the growing nature of IoT market. The IoT devices are used in many different applications to automate processes. In Industrial Internet of Things (IIoT), millions of such tiny devices are used to automate the quality assurance, safety protocols and other industrial processes. Due to resource constraint nature of such tiny devices, security is a big challenge for researchers to detect the security-based threats in IoT. Hence, intrusion detection is a big problem in IoT. In this paper, a novel approach to detect intrusions and cyber threats is proposed. In the proposed approach, the out class deep learning based algorithms are used to detect cyber threats in IoT. For this purpose, a latest data set named as Kitsune is used. This data set is already pre-processed and contains rich feature sets. Moreover, it has latest data of 9 types of attacks. In the proposed strategy, work has been done on a single type of attack namely Mirai Botnet and four different algorithms LSTM, GRU, DNN, RNN with the combinations of CNN1d, CNN2d and CNN3d are used. The simulation results show that the proposed approach with an accuracy of 99.73 outperforms traditional approaches.
一种新的基于深度学习的方法来应对工业物联网中的网络威胁
物联网(IoT)是一个不断发展的领域,它已经达到了数百万美元的市场。由于物联网市场的不断发展,物联网、网络和人工智能领域的研究处于初级阶段。物联网设备在许多不同的应用中用于自动化流程。在工业物联网(IIoT)中,数百万个这样的微型设备被用于自动化质量保证、安全协议和其他工业过程。由于这些微小设备的资源约束性质,安全是研究人员检测物联网中基于安全的威胁的一大挑战。因此,入侵检测是物联网中的一个大问题。本文提出了一种检测入侵和网络威胁的新方法。在提出的方法中,使用基于外类深度学习的算法来检测物联网中的网络威胁。为此,使用名为Kitsune的最新数据集。该数据集已经经过预处理,并包含丰富的特征集。此外,它还拥有9种攻击的最新数据。在提出的策略中,针对Mirai僵尸网络这一单一类型的攻击进行了研究,并使用了四种不同的算法LSTM、GRU、DNN、RNN以及CNN1d、CNN2d和CNN3d的组合。仿真结果表明,该方法的准确率达到99.73,优于传统方法。
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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