Javascript must be enabled to continue!
A Novel Deep Learning-Based Intrusion Detection System for IoT Networks
View through CrossRef
The impressive growth rate of the Internet of Things (IoT) has drawn the attention of cybercriminals more than ever. The growing number of cyber-attacks on IoT devices and intermediate communication media backs the claim. Attacks on IoT, if they remain undetected for an extended period, cause severe service interruption resulting in financial loss. It also imposes the threat of identity protection. Detecting intrusion on IoT devices in real-time is essential to make IoT-enabled services reliable, secure, and profitable. This paper presents a novel Deep Learning (DL)-based intrusion detection system for IoT devices. This intelligent system uses a four-layer deep Fully Connected (FC) network architecture to detect malicious traffic that may initiate attacks on connected IoT devices. The proposed system has been developed as a communication protocol-independent system to reduce deployment complexities. The proposed system demonstrates reliable performance for simulated and real intrusions during the experimental performance analysis. It detects the Blackhole, Distributed Denial of Service, Opportunistic Service, Sinkhole, and Workhole attacks with an average accuracy of 93.74%. The proposed intrusion detection system’s precision, recall, and F1-score are 93.71%, 93.82%, and 93.47%, respectively, on average. This innovative deep learning-based IDS maintains a 93.21% average detection rate which is satisfactory for improving the security of IoT networks.
Title: A Novel Deep Learning-Based Intrusion Detection System for IoT Networks
Description:
The impressive growth rate of the Internet of Things (IoT) has drawn the attention of cybercriminals more than ever.
The growing number of cyber-attacks on IoT devices and intermediate communication media backs the claim.
Attacks on IoT, if they remain undetected for an extended period, cause severe service interruption resulting in financial loss.
It also imposes the threat of identity protection.
Detecting intrusion on IoT devices in real-time is essential to make IoT-enabled services reliable, secure, and profitable.
This paper presents a novel Deep Learning (DL)-based intrusion detection system for IoT devices.
This intelligent system uses a four-layer deep Fully Connected (FC) network architecture to detect malicious traffic that may initiate attacks on connected IoT devices.
The proposed system has been developed as a communication protocol-independent system to reduce deployment complexities.
The proposed system demonstrates reliable performance for simulated and real intrusions during the experimental performance analysis.
It detects the Blackhole, Distributed Denial of Service, Opportunistic Service, Sinkhole, and Workhole attacks with an average accuracy of 93.
74%.
The proposed intrusion detection system’s precision, recall, and F1-score are 93.
71%, 93.
82%, and 93.
47%, respectively, on average.
This innovative deep learning-based IDS maintains a 93.
21% average detection rate which is satisfactory for improving the security of IoT networks.
Related Results
Ensemble-Based Deep Learning Models for Enhancing IoT Intrusion Detection
Ensemble-Based Deep Learning Models for Enhancing IoT Intrusion Detection
Cybersecurity finds widespread applications across diverse domains, encompassing intelligent industrial systems, residential environments, personal gadgets, and automobiles. This h...
eBF: An Enhanced Bloom Filter for Intrusion Detection in IoT
eBF: An Enhanced Bloom Filter for Intrusion Detection in IoT
Abstract
Intrusion detection is an essential process to identify malicious incidents and continuously alert the many users of the Internet of Things (IoT). The constant mon...
MULTI-OBJECTIVE WHALE OPTIMIZED WITH RECURRENT DEEP LEARNING FOR EFFICIENT INTRUSION DETECTION IN HIGH SENSITIVE NETWORK TRAFFIC
MULTI-OBJECTIVE WHALE OPTIMIZED WITH RECURRENT DEEP LEARNING FOR EFFICIENT INTRUSION DETECTION IN HIGH SENSITIVE NETWORK TRAFFIC
Intrusion detection plays a pivotal aspect in providing security for the information and the main technology lies in identifying different networks in an accurate as well as precis...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...
Intelligent Feature Engineering Based Intrusion
Detection System for IoT Network Security
Intelligent Feature Engineering Based Intrusion
Detection System for IoT Network Security
Abstract
Internet-of-Things (IoT) helps create smart systems by allowing physical environments to be controlled or monitored by users through extensive sensor networks. Suc...
Deception-Based Security Framework for IoT: An Empirical Study
Deception-Based Security Framework for IoT: An Empirical Study
<p><b>A large number of Internet of Things (IoT) devices in use has provided a vast attack surface. The security in IoT devices is a significant challenge considering c...
SMART INTRUSION DETECTION IN INDUSTRIAL DEVICES USING DEEP BELIEF NETWORK
SMART INTRUSION DETECTION IN INDUSTRIAL DEVICES USING DEEP BELIEF NETWORK
Utilization of smart systems everywhere through mobile devices, laptops and home pc are now become flexible. The increase in web usage also increases the web application cyber thre...
Network intrusion detection method based on IEHO-SVM
Network intrusion detection method based on IEHO-SVM
As the growth of network technology, the network intrusion has become increasingly serious. An elephant herding optimization algorithm and support vector machine-based network intr...

