A Novel Zero-Touch, Zero-Trust, AI/ML Enablement Framework for IoT Network Security
Journal:
arXiv
Published Date:
Feb 5, 2025
Abstract
The IoT facilitates a connected, intelligent, and sustainable society;
therefore, it is imperative to protect the IoT ecosystem. The IoT-based 5G and
6G will leverage the use of machine learning and artificial intelligence
(ML/AI) more to pave the way for autonomous and collaborative secure IoT
networks. Zero-touch, zero-trust IoT security with AI and machine learning (ML)
enablement frameworks offers a powerful approach to securing the expanding
landscape of Internet of Things (IoT) devices. This paper presents a novel
framework based on the integration of Zero Trust, Zero Touch, and AI/ML powered
for the detection, mitigation, and prevention of DDoS attacks in modern IoT
ecosystems. The focus will be on the new integrated framework by establishing
zero trust for all IoT traffic, fixed and mobile 5G/6G IoT network traffic, and
data security (quarantine-zero touch and dynamic policy enforcement). We
perform a comparative analysis of five machine learning models, namely,
XGBoost, Random Forest, K-Nearest Neighbors, Stochastic Gradient Descent, and
Native Bayes, by comparing these models based on accuracy, precision, recall,
F1-score, and ROC-AUC. Results show that the best performance in detecting and
mitigating different DDoS vectors comes from the ensemble-based approaches.