Robust detection of unknown DoS/DDoS attacks in IoT networks using a hybrid learning model

Abstract

The fourth industrial revolution is marked by the rapid growth of Internet of Things (IoT) technology, leading to an increase in the number of IoT devices. Unfortunately, this also makes these devices more susceptible to cyber threats, especially DoS/DDoS attacks. While supervised learning models have been adopted to detect and mitigate these threats, they have limitations in detecting unknown attacks that can cause severe consequences. This research aims to address those limitations and provide better protection for IoT networks against DoS/DDoS attacks. We propose a new approach that combines a soft-ordering convolutional neural network (SOCNN) model with local outlier factor (LOF) and isolation-based anomaly detection using nearest-neighbor ensembles (iNNE) models that use both supervised and unsupervised learning methods. We evaluated our approach on three benchmark datasets with varying …

Publication
Internet of Things
FieldDetails
Volume23
Pages100851
PublisherElsevier
Scholar articlesRobust detection of unknown DoS/DDoS attacks in IoT networks using a hybrid learning model - XH Nguyen, KH Le - Internet of Things, 2023 - Cited by 48 Related articles