Journal article

Hyperspherical cluster based distributed anomaly detection in wireless sensor networks

S Rajasegarar, C Leckie, M Palaniswami

Journal of Parallel and Distributed Computing | Published : 2014

Abstract

This article describes a distributed hyperspherical cluster based algorithm for identifying anomalies in measurements from a wireless sensor network, and an implementation on a real wireless sensor network testbed. The communication overhead incurred in the network is minimised by clustering sensor measurements and merging clusters before sending a compact description of the clusters to other nodes. An evaluation on several real and synthetic datasets demonstrates that the distributed hyperspherical cluster-based scheme achieves comparable detection accuracy with a significant reduction in communication overhead compared to a centralised scheme, where all the sensor node measurements are com..

View full abstract

Grants

Awarded by Engineering and Physical Sciences Research Council


Funding Acknowledgements

We acknowledge the support from Australian Research Council (ARC) Research Network on Intelligent Sensors, Sensor Networks and Information Processing (ISSNIP); 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 ARC Linkage project grant (LP120100529) and the ARC Linkage Infrastructure, Equipment and Facilities scheme (LIEF) grant (LE120100129).