English

RADS: Real-time Anomaly Detection System for Cloud Data Centres

Distributed, Parallel, and Cluster Computing 2018-11-13 v1

Abstract

Cybersecurity attacks in Cloud data centres are increasing alongside the growth of the Cloud services market. Existing research proposes a number of anomaly detection systems for detecting such attacks. However, these systems encounter a number of challenges, specifically due to the unknown behaviour of the attacks and the occurrence of genuine Cloud workload spikes, which must be distinguished from attacks. In this paper, we discuss these challenges and investigate the issues with the existing Cloud anomaly detection approaches. Then, we propose a Real-time Anomaly Detection System (RADS) for Cloud data centres, which uses a one class classification algorithm and a window-based time series analysis to address the challenges. Specifically, RADS can detect VM-level anomalies occurring due to DDoS and cryptomining attacks. We evaluate the performance of RADS by running lab-based experiments and by using real-world Cloud workload traces. Evaluation results demonstrate that RADS can achieve 90-95% accuracy with a low false positive rate of 0-3%. The results further reveal that RADS experiences fewer false positives when using its window-based time series analysis in comparison to using state-of-the-art average or entropy based analysis.

Keywords

Cite

@article{arxiv.1811.04481,
  title  = {RADS: Real-time Anomaly Detection System for Cloud Data Centres},
  author = {Sakil Barbhuiya and Zafeirios Papazachos and Peter Kilpatrick and Dimitrios S. Nikolopoulos},
  journal= {arXiv preprint arXiv:1811.04481},
  year   = {2018}
}

Comments

14 pages

R2 v1 2026-06-23T05:12:00.988Z