Abstract

The growing development of IoT (Internet of Things) devices creates a large attack surface for cybercriminals to conduct potentially more destructive cyberattacks; as a result, the security industry has seen an exponential increase in cyber-attacks. Many of these attacks have effectively accomplished their malicious goals because intruders conduct cyber-attacks using novel and innovative techniques. An anomaly-based IDS (Intrusion Detection System) uses machine learning techniques to detect and classify attacks in IoT networks. In the presence of unpredictable network technologies and various intrusion methods, traditional machine learning techniques appear inefficient. In many research areas, deep learning methods have shown their ability to identify anomalies accurately. Convolutional neural networks are an excellent alternative for anomaly detection and classification due to their ability to automatically categorize main characteristics in input data and their effectiveness in performing faster computations. In this paper, we design and develop a novel anomaly-based intrusion detection model for IoT networks. First, a convolutional neural network model is used to create a multiclass classification model. The proposed model is then implemented using convolutional neural networks in 1D, 2D, and 3D. The proposed convolutional neural network model is validated using the BoT-IoT, IoT Network Intrusion, MQTT-IoT-IDS2020, and IoT-23 intrusion detection datasets. Transfer learning is used to implement binary and multiclass classification using a convolutional neural network multiclass pre-trained model. Our proposed binary and multiclass classification models have achieved high accuracy, precision, recall, and F1 score compared to existing deep learning implementations.

Highlights

  • Cybersecurity is a crucial part of the information management framework of today's IoT environment

  • The findings indicate that the reference convolutional neural network model performs better

  • The research mentioned in this article investigated the possibility of utilizing a convolutional neural network to solve anomaly detection in IoT networks

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Summary

Introduction

Cybersecurity is a crucial part of the information management framework of today's IoT environment. The following factors contributed to the widespread exposure of IoT vulnerabilities to cyber-attacks: the large-scale distribution of IoT devices from every household to every home, smart power grids, and smart cars, as well as the complexity of the communication protocols used by IoT users, will create significant security threats. The IoT information protection architecture is essential in today's technological innovations. The number of IoT devices in use has risen significantly from 16 billion in 2015 to over 30 billion in 2020, increasing since homes and companies are steadily relying on web technology. The increased variety of IoT systems being produced demonstrates that the IoT manufacturing industry is progressing toward revolutionizing IoT architecture. Industry and manufacturing use 40.2 % of IoT devices; 30.3 % of IoT equipment is used in the medical sector; retail uses 8.3 %, security uses 7.7% of IoT equipment; and transport uses 4.1 %, IoT equipment [1]

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