Conference Proceedings

Incremental elliptical boundary estimation for anomaly detection in Wireless Sensor Networks

M Moshtaghi, C Leckie, S Karunasekera, JC Bezdek, S Rajasegarar, M Palaniswami

Proceedings IEEE International Conference on Data Mining Icdm | Published : 2011

Abstract

Wireless Sensor Networks (WSNs) provide a low cost option for gathering spatially dense data from different environments. However, WSNs have limited energy resources that hinder the dissemination of the raw data over the network to a central location. This has stimulated research into efficient data mining approaches, which can exploit the restricted computational capabilities of the sensors to model their normal behavior. Having a normal model of the network, sensors can then forward anomalous measurements to the base station. Most of the current data modeling approaches proposed for WSNs require a fixed offline training period and use batch training in contrast to the real streaming nature..

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