RFID unreliable data filtering by integrating adaptive sliding window and Euclidean distance
Li-Lan Liu, Zi-Long Yuan, Xue-Wei Liu, Cheng Chen, Ke-Sheng Wang
Advances in Manufacturing ›› 2014, Vol. 2 ›› Issue (2) : 121-129.
RFID unreliable data filtering by integrating adaptive sliding window and Euclidean distance
Through improving the redundant data filtering of unreliable data filter for radio frequency identification (RFID) with sliding-window, a data filter which integrates self-adaptive sliding-window and Euclidean distance is proposed. The input data required being filtered have been shunt by considering a large number of redundant data existing in the unreliable data for RFID and the redundant data in RFID are the main filtering object with utilizing the filter based on Euclidean distance. The comparison between the results from the method proposed in this paper and previous research shows that it can improve the accuracy of the RFID for unreliable data filtering and largely reduce the redundant reading rate.
Radio frequency identification (RFID) / Adaptive sliding window / Euclidean distance / Redundant data
[1.] |
|
[2.] |
|
[3.] |
Monge AE. An adaptive and efficient algorithm for detecting approximately duplicate database records. http://citeseer.ni.nec.com/monge00adaptive.html. Accessed 30 Oct 2012
|
[4.] |
Jeffery SR, Franklin MJ, Garofalakis MN (2008) An adaptive RFID middleware for supporting Me tap hysical data independence. Proc of Very Large Datebase, Auckland, New Zealand, pp 256–289
|
[5.] |
Chen HQ, Ku WS, Wang HX (2010) Sun minte leveraging spatio-temporal redundancy for RFID data cleansing. In: Proceedings of Special Interest Group on Management of Data, Indiana, USA, pp 51–62
|
[6.] |
Carbunar B, Ramanathan M, Koyuturk M et al (2005) Redundant reader elimination in RFID systems. In: The 2nd annual IEEE communications society conference on sensor and Ad Hoc communications and networks, 26–29 Sept 2005, pp 176–184
|
[7.] |
Jeffery SR, Alonso G, Franklin MJ et al (2006) A pipelined framework for online cleaning of sensor data streams. In: Proceedings of the 22nd International Conference on Data Engineering (ICDE), Atlanta, Georgia, USA, p 140
|
[8.] |
|
[9.] |
Jeffery SR, Garofalakis M, Franklin M (2006) Adaptive cleaning for RFID data streams. In: Proceedings of the 32nd international conference on very large data bases (VLDB), Seoul, Korea, pp 163–174
|
[10.] |
|
[11.] |
|
[12.] |
Chen XH, Wang X (2013) An improved algorithm in redundant data cleaning based on RFID middleware. Microelectron Comp 30(7): 154–158
|
[13.] |
Chen H, Ku WS, Wang HX et al (2010) Leveraging spatio-temporal redundancy for RFID data cleansing. In: Proceedings of the 2010 ACM SIGMOD international conference on management of data SIGMOD, New York, USA, pp 51–62
|
[14.] |
Li X (2013) Research on RFID middleware data cleaning technology. Dissertation, Beijing Jiaotong University
|
[15.] |
|
[16.] |
Meng LY, Yu FQ (2010) RFID data cleaning based on adaptive window. In: Proceedings of the 2nd International Conference on Future Computer and Communication. Wuhan, China, pp 746–749
|
[17.] |
Eom KH, Lee SJ (2011) Improved Kalman filter method for measurement noise reduction in multi sensor RFID systems. Sensors, pp 10266–10282
|
[18.] |
|
[19.] |
Chen L (2013) RFID middleware research data cleaning methods. Dissertation, Wuhan University of Technology
|
[20.] |
|
/
〈 |
|
〉 |