International Journal of Distributed Sensor Networks (Nov 2019)

DRAV: Detection and repair of data availability violations in Internet of Things

  • Jinlin Wang,
  • Haining Yu,
  • Xing Wang,
  • Hongli Zhang,
  • Binxing Fang,
  • Yuchen Yang,
  • Xiaozhou Zhu

DOI
https://doi.org/10.1177/1550147719889899
Journal volume & issue
Vol. 15

Abstract

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The application of the Internet of Things has produced large amounts of data in different scenarios, which are accompanied with problems, such as consistency and integrity violations. Existing research on dealing with data availability violations is insufficient. In this work, the detection and repair of data availability violations (DRAV) framework is proposed to detect and repair data violations in Internet of Things with a distributed parallel computing environment. DRAV uses algorithms in the MapReduce programming framework, and these include detection and repair algorithms based on enhanced conditional function dependency for data consistency violation, MapJoin, and ReduceJoin algorithms based on master data for k -nearest neighbor–based integrity violation detection, and repair algorithms. Experiments are conducted to determine the effect of the algorithms. Results show that DRAV improves data availability in Internet of Things compared with existing methods by detecting and repairing violations.