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A Deep Learning-Based Intrusion Detection System for MQTT Enabled IoT

Authors :
Almas Khan, Muhammad
Khan, Muazzam A
Ullah Jan, Sana
Ahmad, Jawad
Jamal, Sajjad Shaukat
Shah, Awais Aziz
Pitropakis, Nikolaos
Buchanan, William J
Alonistioti, Nancy
Panagiotakis, Spyros
Markakis, Evangelos K
Publication Year :
2021
Publisher :
MDPI, 2021.

Abstract

A large number of smart devices in Internet of Things (IoT) environments communicate via different messaging protocols. Message Queuing Telemetry Transport (MQTT) is a widely used publish–subscribe-based protocol for the communication of sensor or event data. The publish–subscribe strategy makes it more attractive for intruders and thus increases the number of possible attacks over MQTT. In this paper, we proposed a Deep Neural Network (DNN) for intrusion detection in the MQTT-based protocol and also compared its performance with other traditional machine learning (ML) algorithms, such as a Naive Bayes (NB), Random Forest (RF), k-Nearest Neighbour (kNN), Decision Tree (DT), Long Short-Term Memory (LSTM), and Gated Recurrent Units (GRUs). The performance is proved using two different publicly available datasets, including (1) MQTT-IoT-IDS2020 and (2) a dataset with three different types of attacks, such as Man in the Middle (MitM), Intrusion in the network, and Denial of Services (DoS). The MQTT-IoT-IDS2020 contains three abstract-level features, including Uni-Flow, Bi-Flow, and Packet-Flow. The results for the first dataset and binary classification show that the DNN-based model achieved 99.92%, 99.75%, and 94.94% accuracies for Uni-flow, Bi-flow, and Packet-flow, respectively. However, in the case of multi-label classification, these accuracies reduced to 97.08%, 98.12%, and 90.79%, respectively. On the other hand, the proposed DNN model attains the highest accuracy of 97.13% against LSTM and GRUs for the second dataset.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.core.ac.uk....8aaf850ba895f29108d35954b5d9fc80