SENSOR DATA MINING TECHNIQUES AND MIDDLEWARE STRUCTURE FOR USN ENVIRONMENT

  • Jin, Cheng-Hao (Dept. of Computer Sciience, Chungbuk National University) ;
  • Lee, Yong-Mi (Dept. of Computer Sciience, Chungbuk National University) ;
  • Kim, Hi-Seok (School of Electronics and Information Engineering, Cheongju University) ;
  • Pok, Gou-Chol (Yanbian University of Science and Technology) ;
  • Ryu, Keun-Ho (Dept. of Computer Sciience, Chungbuk National University)
  • Published : 2007.10.31

Abstract

With advances in sensor technology, current researches on the pertinent techniques are actively directed toward the way which enables the USN computing service. For many applications using sensor networks, the incoming data are by nature characterized as high-speed, continuous, real-time and infinite. Due to such uniqueness of sensor data characteristics, for some instances a finite-sized buffer may not accommodate the entire incoming data, which leads to inevitable loss of data, and requirement for fast processing makes it impossible to conduct a thorough investigation of data. In addition to the potential problem of loss of data, incoming data in its raw form may exhibit high degree of complexity which evades simple query or alerting services for capturing and extracting useful information. Furthermore, as traditional mining techniques are developed to handle fixed, static historical data, they are not useful and directly applicable for analyzing the sensor data. In this paper, (1) describe how three mining techniques (sensor data outlier analysis, sensor pattern analysis, and sensor data prediction analysis) are appropriate for the USN middleware structure, with their application to the stream data in ocean environment. (2) Another proposal is a middleware structure based on USN environment adaptive to above mining techniques. This middleware structure includes sensor nodes, sensor network common interface, sensor data processor, sensor query processor, database, sensor data mining engine, user interface and so on.

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