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DCNNBiLSTM: An Efficient Hybrid Deep Learning-Based Intrusion Detection System

Journal:

Telematics and Informatics R

Publisher:

Elsevier

Corresponding author:

Vanlalruata Hnamte

First author:

Vanlalruata Hnamte

Date of submission:

17th November 2022

1st revision Review Complete Date:

24th February 2023

2nd revision Review Complete Date:

04th March 2023

Accepted Date:

05th March 2023

DOI

https://doi.org/10.1016/j.teler.2023.100053

ScienceDirect Link

https://www.sciencedirect.com/science/article/pii/S2772503023000130

Abstract:

In recent years, all real-world processes have been shifted to the cyber environment practically, and computers communicate with one another over the Internet. As a result, there is a rising number of network security vulnerabilities, and network administrators are unable to secure their networks from all forms of cyberattacks. Many techniques for network intrusion detection have also been developed. However, they encounter significant challenges as a result of the ongoing emergence of new vulnerabilities that present systems cannot comprehend. We are motivated by deep learning’s exceptional performance in various detection and identification tasks, we present an intelligent and efficient network intrusion detection system (NIDS) based on Deep Learning (DL). In this study, we present a deep learning-based IDS for attack detection. The model has been trained with real-time traffic datasets; CICIDS2018 and Edge_IIoT datasets. The performance of the model is investigated using multiclass classification and achieved a 100% and 99.64% accuracy rate respectively when trained and tested with the datasets.

How to cite

Vanlalruata Hnamte, Jamal Hussain, DCNNBiLSTM: An Efficient Hybrid Deep Learning-Based Intrusion Detection System, Telematics and Informatics Reports, Volume 10, 2023, 100053, ISSN 2772-5030, https://doi.org/10.1016/j.teler.2023.100053. (https://www.sciencedirect.com/science/article/pii/S2772503023000130)

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