Journal article
Ellipsoidal neighbourhood outlier factor for distributed anomaly detection in resource constrained networks
S Rajasegarar, A Gluhak, M Ali Imran, M Nati, M Moshtaghi, C Leckie, M Palaniswami
Pattern Recognition | Published : 2014
Abstract
Anomaly detection in resource constrained wireless networks is an important challenge for tasks such as intrusion detection, quality assurance and event monitoring applications. The challenge is to detect these interesting events or anomalies in a timely manner, while minimising energy consumption in the network. We propose a distributed anomaly detection architecture, which uses multiple hyperellipsoidal clusters to model the data at each sensor node, and identify global and local anomalies in the network. In particular, a novel anomaly scoring method is proposed to provide a score for each hyperellipsoidal model, based on how remote the ellipsoid is relative to their neighbours. We demonst..
View full abstractRelated Projects (2)
Grants
Awarded by Medical Research Council
Funding Acknowledgements
We thank the support from REDUCE project Grant (EP/I000232/1) under the Digital Economy Programme run by Research Councils UK a cross council initiative led by EPSRC and contributed to by AHRC, ESRC and MRC; the Australian Research Council (ARC) Research Network on Intelligent Sensors, Sensor Networks and Information Processing (ISSNIP) and the ARC Grants (LP120100529 and LE120100129).