Litcius/Paper detail

Real-Time Adaptive Anomaly Detection in Industrial IoT Environments

Mahsa Raeiszadeh, Amin Ebrahimzadeh, Roch Glitho, Johan Eker, Raquel A. F. Mini

2024IEEE Transactions on Network and Service Management32 citationsDOIOpen Access PDF

Abstract

To ensure reliability and service availability, next-generation networks are expected to rely on automated anomaly detection systems powered by advanced machine learning methods with the capability of handling multi-dimensional data. Such multi-dimensional, heterogeneous data occurs mostly in today’s Industrial Internet of Things (IIoT), where real-time detection of anomalies is critical to prevent impending failures and resolve them in a timely manner. However, existing anomaly detection methods often fall short of effectively coping with the complexity and dynamism of multi-dimensional data streams in IIoT. In this paper, we propose an adaptive method for detecting anomalies in IIoT streaming data utilizing a multi-source prediction model and concept drift adaptation. The proposed anomaly detection algorithm merges a prediction model into a novel drift adaptation method resulting in accurate and efficient anomaly detection that exhibits improved scalability. Our trace-driven evaluations indicate that the proposed method outperforms the state-of-the-art anomaly detection methods by achieving up to an 89.71% accuracy (in terms of Area under the Curve (AUC)) while meeting the given efficiency and scalability requirements.

Topics & Concepts

Computer scienceAnomaly detectionInternet of ThingsReal-time computingEmbedded systemData miningAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion DetectionSmart Grid Security and Resilience