论文标题

LBDMID:基于LSTM的IoT网络入侵检测系统的深度学习模型

LBDMIDS: LSTM Based Deep Learning Model for Intrusion Detection Systems for IoT Networks

论文作者

Saurabh, Kumar, Sood, Saksham, Kumar, P. Aditya, Singh, Uphar, Vyas, Ranjana, Vyas, O. P., Khondoker, Rahamatullah

论文摘要

近年来,我们目睹了物联网(物联网)和日常活动中使用的边缘设备的巨大增长。这需要这些设备从网络攻击中的安全性进行改进以保护其用户。多年来,机器学习(ML)技术一直用于开发网络入侵检测系统(NID),目的是提高其可靠性/鲁棒性。在较早的ML技术中,DT表现良好。近年来,深度学习(DL)技术已被用于构建更可靠的系统。在本文中,开发了一个深度学习的长期记忆(LSTM)自动编码器和13-2的深神经网络(DNN)模型,在UNSW-NB15和BOT-IOT数据集上的准确性方面表现更好。因此,我们提出了LBDMIDS,在该LBDMID中,我们基于LSTMS的变体开发了NIDS模型,即堆叠LSTM和双向LSTM,并在UNSW \ _NB15和BOT \ -IOT数据集中验证了它们的性能。本文得出的结论是,LBDMID中的这些变体的表现优于经典ML技术,并且与过去建议的DNN模型相似。

In the recent years, we have witnessed a huge growth in the number of Internet of Things (IoT) and edge devices being used in our everyday activities. This demands the security of these devices from cyber attacks to be improved to protect its users. For years, Machine Learning (ML) techniques have been used to develop Network Intrusion Detection Systems (NIDS) with the aim of increasing their reliability/robustness. Among the earlier ML techniques DT performed well. In the recent years, Deep Learning (DL) techniques have been used in an attempt to build more reliable systems. In this paper, a Deep Learning enabled Long Short Term Memory (LSTM) Autoencoder and a 13-feature Deep Neural Network (DNN) models were developed which performed a lot better in terms of accuracy on UNSW-NB15 and Bot-IoT datsets. Hence we proposed LBDMIDS, where we developed NIDS models based on variants of LSTMs namely, stacked LSTM and bidirectional LSTM and validated their performance on the UNSW\_NB15 and BoT\-IoT datasets. This paper concludes that these variants in LBDMIDS outperform classic ML techniques and perform similarly to the DNN models that have been suggested in the past.

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