Resilient Average and Distortion Detection in Sensor Networks

In this paper a resilient sensor network is built in order to lessen the effects of a small portion of corrupted sensors when an aggregated result such as the average needs to be obtained. By examining the variance in sensor readings, a change in the pattern can be spotted and minimized in order...

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Bibliographic Details
Main Author: Aguirre Jurado, Ricardo
Format: Others
Published: ScholarWorks@UNO 2009
Subjects:
PCA
Online Access:http://scholarworks.uno.edu/td/962
http://scholarworks.uno.edu/cgi/viewcontent.cgi?article=1943&context=td
Description
Summary:In this paper a resilient sensor network is built in order to lessen the effects of a small portion of corrupted sensors when an aggregated result such as the average needs to be obtained. By examining the variance in sensor readings, a change in the pattern can be spotted and minimized in order to maintain a stable aggregated reading. Offset in sensors readings are also analyzed and compensated to help reduce a bias change in average. These two analytical techniques are later combined in Kalman filter to produce a smooth and resilient average given by the readings of individual sensors. In addition, principal components analysis is used to detect variations in the sensor network. Experiments are held using real sensors called MICAz, which are use to gather light measurements in a small area and display the light average generated in that area.