Faults in Sensory Readings: Classification and Model Learning
Faults in wireless sensor networks are a common occurrence and their accumulation can have a significant negative influence on the reliability of the network. Accuracy of sensory readings decreases over time. We focus on detection of faults as they can be observed in sensory readings. Trace that fa...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
IFSA Publishing, S.L.
2013-01-01
|
Series: | Sensors & Transducers |
Subjects: | |
Online Access: | http://www.sensorsportal.com/HTML/DIGEST/january_2013/Special%20Issue/P_SI_304.pdf |
id |
doaj-d569f0857ec54d879b8a55f09c11fed8 |
---|---|
record_format |
Article |
spelling |
doaj-d569f0857ec54d879b8a55f09c11fed82020-11-24T20:41:23ZengIFSA Publishing, S.L.Sensors & Transducers2306-85151726-54792013-01-0118Special Issue177187 Faults in Sensory Readings: Classification and Model Learning Valentina Baljak0Tei Kenji1Shinichi Honiden2University of Tokyo, Hongo 7-3-1,Bunkyo ku, 113-8656 Tokyo, JapanNational Institute of Informatics, Hitotsubashi 2-1-2, Chiyoda Ku, 101-8430 Tokyo, JapanUniversity of Tokyo, Hongo 7-3-1,Bunkyo ku, 113-8656 Tokyo, JapanFaults in wireless sensor networks are a common occurrence and their accumulation can have a significant negative influence on the reliability of the network. Accuracy of sensory readings decreases over time. We focus on detection of faults as they can be observed in sensory readings. Trace that faults leave in data can be used for classification of faults independently of the underlying cause. We propose a complete and consistent fault classification based on two aspects. The first aspect is continuity and frequency of the occurrence, and the second is the existence of observable and learnable patterns. The network can learn a model of a fault from the past behavior and patterns visible in the data. We rely on centralized and straightforward detection methods using neighborhood vote and time series analysis. For the full classification phase, we propose the use of statistical pattern recognition, specifically, decision trees and regression. Current results show that this method works comparatively well when applied to dense data-centric wireless sensor network.http://www.sensorsportal.com/HTML/DIGEST/january_2013/Special%20Issue/P_SI_304.pdfFault toleranceModel learningWireless sensor networksStatistical pattern recognition |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Valentina Baljak Tei Kenji Shinichi Honiden |
spellingShingle |
Valentina Baljak Tei Kenji Shinichi Honiden Faults in Sensory Readings: Classification and Model Learning Sensors & Transducers Fault tolerance Model learning Wireless sensor networks Statistical pattern recognition |
author_facet |
Valentina Baljak Tei Kenji Shinichi Honiden |
author_sort |
Valentina Baljak |
title |
Faults in Sensory Readings: Classification and Model Learning |
title_short |
Faults in Sensory Readings: Classification and Model Learning |
title_full |
Faults in Sensory Readings: Classification and Model Learning |
title_fullStr |
Faults in Sensory Readings: Classification and Model Learning |
title_full_unstemmed |
Faults in Sensory Readings: Classification and Model Learning |
title_sort |
faults in sensory readings: classification and model learning |
publisher |
IFSA Publishing, S.L. |
series |
Sensors & Transducers |
issn |
2306-8515 1726-5479 |
publishDate |
2013-01-01 |
description |
Faults in wireless sensor networks are a common occurrence and their accumulation can have a significant negative influence on the reliability of the network. Accuracy of sensory readings decreases over time. We focus on detection of faults as they can be observed in sensory readings. Trace that faults leave in data can be used for classification of faults independently of the underlying cause. We propose a complete and consistent fault classification based on two aspects. The first aspect is continuity and frequency of the occurrence, and the second is the existence of observable and learnable patterns. The network can learn a model of a fault from the past behavior and patterns visible in the data. We rely on centralized and straightforward detection methods using neighborhood vote and time series analysis. For the full classification phase, we propose the use of statistical pattern recognition, specifically, decision trees and regression. Current results show that this method works comparatively well when applied to dense data-centric wireless sensor network. |
topic |
Fault tolerance Model learning Wireless sensor networks Statistical pattern recognition |
url |
http://www.sensorsportal.com/HTML/DIGEST/january_2013/Special%20Issue/P_SI_304.pdf |
work_keys_str_mv |
AT valentinabaljak faultsinsensoryreadingsclassificationandmodellearning AT teikenji faultsinsensoryreadingsclassificationandmodellearning AT shinichihoniden faultsinsensoryreadingsclassificationandmodellearning |
_version_ |
1716825337386500096 |