1,637
Views
110
CrossRef citations to date
0
Altmetric
Original Articles

Statistics-based outlier detection for wireless sensor networks

, , , , &
Pages 1373-1392 | Received 13 Dec 2010, Accepted 18 Dec 2011, Published online: 27 Feb 2012

References

  • Akyildiz , I.F. , Su , W. , Sankarasubramaniam , Y. and Cayirci , E. 2002 . A survey on sensor networks . IEEE Communications Magazine , 40 ( 8 ) : 102 – 114 .
  • Arampatzis , T. , Lygeros , J. and Manesis , S. A survey of applications of wireless sensors and wireless sensor networks . Proceedings of the 13rd Mediterranean conference on control and automation . Cyprus. 27–29 June 2005 . pp. 719 – 724 . Limassol .
  • Basu , S. and Meckesheimer , M. 2007 . Automatic outlier detection for time series: an application to sensor data . Journal of Knowledge and Information Systems , 11 ( 2 ) : 137 – 154 .
  • Branch , J. , Szymanski , B. , Giannella , C. and Wolff , R. In-network outlier detection in wireless sensor networks . Proceedings of the 26th IEEE international conference on distributed computing systems .
  • Chandola , V. , Banerjee , A. and Kumar , V. 2009 . Anomaly detection: a survey . ACM Computing Surveys , 41 ( 3 ) : 1 – 58 .
  • Chatfield , C. 2004 . The analysis of time series: an introduction , London : Chapman and Hall/CRC .
  • Claramunt , C. and Thriault , M. 1995 . “ Managing time in GIS: an event-oriented approach ” . In Recent advances on temporal databases , Edited by: Clifford , J. and Tuzhilin , A. 23 – 42 . Zurich : Springer-Verlag .
  • Cressie , N.A.C. 1991 . Statistics for spatial data , New York : John Wiley & Sons .
  • Efron , B. 1979 . Bootstrap methods: another look at the jackknife . The Annals of Statistics , 7 ( 1 ) : 1 – 26 .
  • Elnahrawy , E. and Nath , B. 2004 . “ Context-aware sensors ” . In Wireless sensor networks: first European workshop, EWSN 2004 , Edited by: Karl , H. , Willig , A. and Wolisz , A. 77 – 93 . Berlin : Springer .
  • Fisher , P.F. 1999 . “ Models of uncertainty in spatial data ” . In Geographical information systems: principles, techniques, management , Edited by: Longley , P.A. , Goodchild , M.F. , Maguire , D.J. and Rhind , D.W. 190 – 206 . Chichester : John Wiley & Sons .
  • Ingelrest , F. , Barrenetxea , G. , Schaefer , G. , Vetterli , M. , Couach , O. and Parlange , M. 2010 . SensorScope: application-specific sensor network for environmental monitoring . ACM Transactions on Sensor Networks , 6 ( 2 ) : 1 – 32 .
  • Jones , O. , Maillardet , R. and Robinson , A. 2009 . Introduction to scientific programming and simulation using R , Boca Raton : Chapman and Hall/CRC .
  • Klein , A. and Lehner , W. 2009 . Representing data quality in sensor data streaming environments . Journal on Data and Information Quality , 1 ( 2 ) : 1 – 28 .
  • Liu , J. , Chu , P. , Liu , J. , Reich , J. and Zhao , F. 2003 . State-Centric programming for sensor-actuator network systems . IEEE Pervasive Computing , 2 ( 4 ) : 50 – 62 .
  • Muthukrishnan , S. , Shah , J. and Vitter , S. Mining deviants in time series data streams . IEEE proceedings of the 16th international conference on scientific and statistical database management (SSDBM′04), IEEE Computer Society . Greece. 21–23 June 2004 . pp. 41 – 50 . Santorini .
  • Ni , K. and Pottie , G. Sensor network data fault detection using hierarchical Bayesian space-time modeling . Technical report, TR-69, University of California . 2009 .
  • Pebesma , E.J. 2004 . Multivariable geostatistics in S: the gstat package . Computers and Geosciences , 30 : 683 – 691 .
  • Pokrajac , D. , Lazarevic , A. and Latecki , L.J. Incremental local outlier detection for data streams . Proceedings of the IEEE symposium on computational intelligence and data mining, IEEE Computer Society . Hawaii . 1–5 April 2007 . pp. 504 – 515 .
  • Rajasegarar , S. , Leckie , C. , Palaniswami , M. and Bezdek , J.C. Distributed anomaly detection in wireless sensor networks . Proceedings of IEEE international conference on communications, IEEE Computer Society . Singapore. 30 Oct–1 Nov 2006 . pp. 1 – 5 .
  • Rajasegarar , S. , Leckie , C. , Palaniswami , M. and Bezdek , J.C. Quarter sphere based distributed anomaly detection in wireless sensor networks . Proceedings of IEEE international conference on communications, IEEE Computer Society . Glasgow . 24–28 June 2007 . pp. 3864 – 3869 .
  • Rajasegarar , S. , Leckie , C. and Palaniswami , M. CESVM: centered hyperellipsoidal support vector machine based anomaly detection . Proceedings of IEEE international conference on communications. IEEE Computer Society . Beijing , China. pp. 1610 – 1614 .
  • R Development Core Team, 2010. R: A language and environment for statistical computing [online]. Vienna, Austria, R Foundation for Statistical Computing. ISBN 3–900051–07–0. http://www.R-project.org (http://www.R-project.org) (Accessed: 26 June 2011 ).
  • Roman , R. , Lopez , J. and Gritzalis , S. 2008 . Situation awareness mechanisms for wireless sensor networks . IEEE Communications Magazine , 46 ( 4 ) : 102 – 107 .
  • Sheng , B. , Li , Q. , Mao , W. and Jin , W. Outlier detection in sensor networks . Proceedings of the 8th ACM international symposium on mobile ad hoc networking and computing . Montreal , Canada. 9–14 September 2007 . ACM Press .
  • Shuai , M. , Xie , K. , Chen , G. , Ma , X. and Song , G. A Kalman filter based approach for outlier detection in sensor networks . Proceedings of international conference on computer science and software engineering, IEEE Computer Society . Wuhan , China. 12–14 December 2008 . pp. 154 – 157 .
  • Sterk , G. and Stein , A. 1997 . Mapping wind-blown mass transport by modeling variability in space and time . Soil Science Society of America Journal , 61 : 232 – 239 .
  • Subramaniam , S. , Palpanas , T. , Papadopoulos , D. , Kalogerakiand , V. and Gunopulos , D. Online outlier detection in sensor data using non-parametric models . Proceedings of the 32nd international conference on very large data bases . Seoul , Korea. 12–15 September 2006 . pp. 187 – 198 . ACM Press .
  • Webster , R. and Oliver , M.A. 2007 . Geostatistics for environmental scientists , Chichester : Springer .
  • Wu , W. , Cheng , X. , Ding , M. , Xing , K. , Liu , F. and Deng , P. 2007 . Localized outlying and boundary data detection in sensor networks . IEEE Transactions on Knowledge and Data Engineering , 19 ( 8 ) : 1145 – 1157 .
  • Zhang , K. , Shi , S. , Gao , H. and Li , J. Unsupervised outlier detection in sensor networks using aggregation tree . Proceedings of the 3rd international conference on advanced data mining and applications . pp. 158 – 169 .
  • Zhang , Y. , Meratnia , N. and Havinga , P.J.M. 2007b . “ A taxonomy framework for unsupervised outlier detection techniques for multi–type data sets ” . In Technical Report, TR-CTIT–07–79 , The Netherlands : University of Twente .
  • Zhang , Y. , Meratnia , N. and Havinga , P.J.M. 2010a . Outlier detection techniques for wireless sensor network: A survey . IEEE Communications Surveys & Tutorials , 12 ( 2 ) : 159 – 170 .
  • Zhang , Y. , Meratnia , N. and Havinga , P.J.M. 2010b . Ensuring high sensor data quality through use of online outlier detection techniques . International Journal of Sensor Networks , 7 ( 3 ) : 141 – 151 .
  • Zhang , Y. 2010 . Observing the unobservable – distributed online outlier detection in wireless sensor networks , The Netherlands : University of Twente . Thesis. (PhD)

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.