14
Views
0
CrossRef citations to date
0
Altmetric
Original Articles

Suppressing Temporal Data in Sensor Networks using a Scheme Robust to Aberrant Readings

, , &
Pages 771-805 | Published online: 13 Nov 2009

References

  • Silberstein , A. , Braynard , R. , Filpus , G. , Puggioni , G. , Gelfand , A. , Munagala , K. and Yang , J. 2007 . DataDriven Processing in Sensor Networks . The Third Biennial Conference on Innovative Data Systems Research , : 10 – 21 .
  • Cardell-Oliver , R. , Smettemy , K. , Kranzz , M. and Mayerx , K. 2005 . A Reactive Soil Moisture Sensor Network: Design and Field Evaluation . International Journal of Distributed Sensor Networks , 1 : 149 – 162 .
  • Chu , D. , Deshpande , A. , Hellerstein , J. M. and Hong , W. . Approximate Data Collection in Sensor Networks using Probabilistic Models . The Twenty-second International Conference on Data Engineering (ICDE′06) . pp. 129 – 136 .
  • Tulone , D. and Madden , S. 2006 . PAQ: Time Series Forecasting For Approximate Query Answering In Sensor Networks . Lecture Notes in Computer Science , 3868 : 21 – 37 .
  • Zhang , Y. , Meratnia , N. and Havinga , P. J. M. 2008 . Outlier Detection Techniques for Wireless Sensor Network: A Survey , Enschede, , The Netherlands : University of Twente . Technical Report
  • Kotidis , Y. , Deligiannakis , A. , Stoumpos , V. , Vassalos , V. and Delis , A. 2007 . Robust Management of Outliers in Sensor Network Aggregate Queries . The Sixth International ACM Workshop on Data Engineering for Wireless and Mobile Access (MobiDE'07) , : 17 – 24 .
  • Subramaniam , S. , Palpanas , T. , Papadopoulos , D. , Kalogeraki , V. and Gunopulos , D. . Online Outlier Detection in Sensor Data Using NonParametric Models . the Thirty-second International Conference on Very Large Data Bases (VLDB′06) . pp. 187 – 198 .
  • Branch , J. , Szymanski , B. , Giannella , C. , Wolff , R. and Kargupta , H. . In-network outlier detection in wireless sensor networks . the Twenty-sixth International Conference on Distributed Company Systems (ICDCS) .
  • Palpanas , T. , Papadopoulos , D. , Kalogeraki , V. and Gunopulos , D. 2003 . Distributed deviation detection in sensor network . ACM SIGMOD Record , 32 : 77 – 82 .
  • Zhang , Y. , Meratnia , N. and Havinga , P. J. M. . An online outlier detection technique for wireless sensor networks using unsupervised quarter-sphere support vector machine . the Fourth International Conference Series on Intelligent Sensors, Sensor Networks and Information Processing (ISSNIP 2008) . pp. 151 – 156 .
  • Szewczyk , R. , Polastre , J. , Mainwaring , A. and Culler , D. 2004 . Lessons from a sensor network expedition . the First European Workshop on Sensor Networks (EWSN) , : 307 – 322 .
  • Tateson , J. , Roadknight , C. , Gonzalez , A. , Khan , T. , Fitz , S. , Henning , I. , Boyd , N. and Vincent , C. 2005 . Real world issues in deploying a wireless sensor network for oceanography . Workshop on Real-World Wireless Sensor Networks (REALWSN′05) ,
  • Yamanishi , K. and Takeuchi , J.-i . . A unifying framework for detecting outliers and change points from non-stationary time series data . ACM SIGKDD International Conference on Knowledge Discovery and Data Mining . Vol. 8 , pp. 676 – 681 .
  • Pollak , M. and Siegmund , D. 1991 . Sequential detection of a change in a normal mean when the initial value is unknown . The Annals of Statistics , 19 : 394 – 416 .
  • Frisén , M. 2003 . Statistical surveillance. Optimality and methods . International Statistical Review , 71 : 403 – 434 .
  • Muthukrishnan , S. , Shah , R. and Vitter , J. S. . Mining deviants in time series data streams . Sixteenth International Conference on Scientific and Statistical Database Management (SSDBM ′04) . pp. 41
  • Ramaswamy , S. , Rastogi , R. and Shim , K. 2000 . Efficient algorithms for mining outliers from large data sets . ACM SIGMOD Record , 29 : 427 – 438 .
  • Hodge , V. and Austin , J. 2004 . A survey of outlier detection methodologies . Artificial Intelligence Review , 22 : 85 – 126 .
  • Grubbs , F. E. 1969 . Procedures for detecting outlying observations in samples . Technometrics , 11 : 1 – 21 .
  • Lehman , E. L. 1997 . Testing Statistical Hypothesis , Berlin : Springer .
  • Tukey , J. W. 1977 . Exploratory data analysis , Reading, MA : Addison-Wesley .
  • University of Washington, Pacific Northwest Weather Data, Seattle, Washington. http://www.k12.atmos.washington.edu/k12/grayskies/nw_weather.html (Accessed: 15 December 2008 ).
  • Reis , I. A. , Câmara , G. , Assunção , R. M. and Monteiro , A. 2008 . Distributed data-aware representative clustering for geosensor networks data collection . the Tenth Brazilian Workshop on Real-Time and Embedded Systems (WRT 2008) , : 77 – 84 .
  • Reis , I. A. , Câmara , G. , Assunção , R. M. and Monteiro , A. M. V. 2007 . Data-aware clustering for geosensor networks data collection . the Thirteenth Brazilian Remote Sensing Symposium (SBSR) , : 6059 – 6066 .
  • Silberstein , A. , Puggioni , G. , Gelfand , A. , Munagala , K. and Yang , J. 2007 . Suppression and failures in sensor networks: A Bayesian approach . the Thirty-third Very Large Data Bases (VLDB ‘07) , : 842 – 853 .

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.