Efficient, Lightweight Cyber Intrusion Detection System for IoT Ecosystems Using MI2G Algorithm

Author:

Kaushik Sunil,Bhardwaj AkashdeepORCID,Alomari AbdullahORCID,Bharany SalilORCID,Alsirhani AmjadORCID,Mujib Alshahrani Mohammed

Abstract

The increase in internet connectivity has led to an increased usage of the Internet of Things (IoT) and devices on the internet. These IoT devices are becoming the backbone of Industry 4.0. The dependence on IoT devices has made them vulnerable to cyber-attacks. IoT devices are often deployed in harsh conditions, challenged with less computational costs, and starved with energy. All these limitations make it tough to deploy accurate intrusion detection systems (IDSs) in IoT devices and make the critical IoT ecosystem more susceptible to cyber-attacks. A new lightweight IDS and a novel feature selection algorithm are introduced in this paper to overcome the challenges of computational cost and accuracy. The proposed algorithm is based on the Information Theory models to select the feature with high statistical dependence and entropy reduction in the dataset. This feature selection algorithm also showed an increase in performance parameters and a reduction in training time of 27–63% with different classifiers. The proposed IDS with the algorithm showed accuracy, Precision, Recall, and F1-Score of more than 99% when tested with the CICIDS2018 dataset. The proposed IDS is competitive in accuracy, Precision, Recall, and training time compared to the latest published research. The proposed IDS showed consistent performance on the UNSWNB15 dataset.

Publisher

MDPI AG

Subject

Computer Networks and Communications,Human-Computer Interaction

Reference71 articles.

1. Towards an attention-based accurate intrusion detection approach;Dey;Proceedings of the International Conference on Heterogeneous Networking for Quality, Reliability, Security, and Robustness,2021

2. 10 Cyber Security Trends You Can’t Ignore in 2021. PurpleSec https://purplesec.us/cyber-security-trends-2021/

3. Securing ERP Cyber Systems by Preventing Holistic Industrial Intrusion;Kaushik,2021

4. Scraped Data of 500 Million LinkedIn Users Being Sold Online, 2 Million Records Leaked as Proof. Cybernews https://cybernews.com/news/stolen-data-of-500-million-linkedin-users-being-sold-online-2-million-leaked-as-proof-2/

5. IOTW: Contractor Allegedly Responsible for Aramco $50 million Ransom. CsHub https://www.cshub.com/executive-decisions/articles/iotw-contractor-allegedly-responsible-for-aramco-50-million-ransom

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