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  1. Home
  2. Indian Institute of Technology Madras
  3. Publication10
  4. Outlier detection in wireless sensor networks using bayesian belief networks
 
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Outlier detection in wireless sensor networks using bayesian belief networks

Date Issued
01-12-2006
Author(s)
Dharanipragada Janakiram 
Indian Institute of Technology, Madras
Reddy V, Adi Mallikarjuna
Kumar, A. V.U.Phani
Abstract
Data reliability is an important issue from the user's perspective, in the context of streamed data in wireless sensor networks (WSN). Reliability is affected by the harsh environmental conditions, interferences in wireless medium and usage of low quality sensors. Due to these conditions, the data generated by the sensors may get corrupted resulting in outliers and missing values. Deciding whether an observation is an outlier or not depends on the behavior of the neighbors' readings as well as the readings of the sensor itself. This can be done by capturing the spatio-temporal correlations that exists among the observations of the sensor nodes. By using naïve Bayesian networks for classification, we can estimate whether an observation belongs to a class or not. If it falls beyond the range of the class, then it can be detected as an outlier. However naïve Bayesian networks do not consider the conditional dependencies among the observations of sensor attributes. So, we propose an outlier detection scheme based on Bayesian Belief Networks, which captures the conditional dependencies among the observations of the attributes to detect the outliers in the sensor streamed data. Applicability of this scheme as a plug-in to the Component Oriented Middleware for Sensor Networks (COMiS) of our early research work is also presented. © 2006 IEEE.
Volume
2006
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