Publication | Closed Access
Distributed Anomaly Detection in Wireless Sensor Networks
253
Citations
15
References
2006
Year
Unknown Venue
Sensor NetworksCluster ComputingFault DiagnosisAnomaly DetectionEngineeringData ScienceSensor DataWireless Sensor SystemWireless Sensor NetworksIntrusion ToleranceIdentifying MisbehaviorsInternet Of ThingsComputer ScienceSensor ConnectivityNetwork MonitoringSignal ProcessingCollaborative Sensor Network
Identifying misbehaviors is an important challenge for monitoring, fault diagnosis and intrusion detection in wireless sensor networks. A key problem is how to minimize the communication overhead and energy consumption in the network when identifying misbehaviors. Our approach to this problem is based on a distributed, cluster-based anomaly detection algorithm. We minimize the communication overhead by clustering the sensor measurements and merging clusters before sending a description of the clusters to the other nodes. In order to evaluate our distributed scheme, we implemented our algorithm in a simulation based on the sensor data gathered from the Great Duck Island project. We demonstrate that our scheme achieves comparable accuracy compared to a centralized scheme with a significant reduction in communication overhead
| Year | Citations | |
|---|---|---|
Page 1
Page 1