Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks
In the near feature, large-scale wireless sensor networks will play an important role in our lives by monitoring our environment with large numbers of sensors. However, data loss owing to data collision between the sensor nodes and electromagnetic noise need to be addressed. As the interval of aggr...
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doaj-5597d4e6eb644954a051f727124fb1192020-11-25T01:45:12ZengIFSA Publishing, S.L.Sensors & Transducers2306-85151726-54792016-04-01199419 Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks Kohei Ohba0Yoshihiro Yoneda1Koji Kurihara2Takashi Suganuma3Hiroyuki Ito4Noboru Ishihara5Kunihiko Gotoh6Koichiro Yamashita 7Kazuya Masu8Tokyo Institute of Technology, Nagatsutacho 4259, Midori-ku, Kanagawa, 226–8503, JapanTokyo Institute of Technology, Nagatsutacho 4259, Midori-ku, Kanagawa, 226–8503, JapanNetwork Systems Laboratory, Fujitsu Laboratories Ltd., Kamikodanaka 4–1–1, Kawasaki Nakahara-ku, Kanagawa, 211–8588, JapanTokyo Institute of Technology, Nagatsutacho 4259, Midori-ku, Kanagawa, 226–8503, JapanTokyo Institute of Technology, Nagatsutacho 4259, Midori-ku, Kanagawa, 226–8503, JapanTokyo Institute of Technology, Nagatsutacho 4259, Midori-ku, Kanagawa, 226–8503, JapanTokyo Institute of Technology, Nagatsutacho 4259, Midori-ku, Kanagawa, 226–8503, JapanNetwork Systems Laboratory, Fujitsu Laboratories Ltd., Kamikodanaka 4–1–1, Kawasaki Nakahara-ku, Kanagawa, 211–8588, JapanTokyo Institute of Technology, Nagatsutacho 4259, Midori-ku, Kanagawa, 226–8503, Japan In the near feature, large-scale wireless sensor networks will play an important role in our lives by monitoring our environment with large numbers of sensors. However, data loss owing to data collision between the sensor nodes and electromagnetic noise need to be addressed. As the interval of aggregate data is not fixed, digital signal processing is not possible and noise degrades the data accuracy. To overcome these problems, we have researched an environmental data recovery technique using polynomial regression based on the correlations among environmental data. The reliability of the recovered data is discussed in the time, space and frequency domains. The relation between the accuracy of the recovered characteristics and the polynomial regression order is clarified. The effects of noise, data loss and number of sensor nodes are quantified. Clearly, polynomial regression offers the advantage of low-pass filtering and enhances the signal-to-noise ratio of the environmental data. Furthermore, the polynomial regression can recover arbitrary environmental characteristics. Measured temperature and accelerator characteristics were recovered successfully.http://www.sensorsportal.com/HTML/DIGEST/april_2016/Vol_199/P_2810.pdfWireless sensor networksData lossPolynomial regressionData recoveryEnvironment monitoring. |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Kohei Ohba Yoshihiro Yoneda Koji Kurihara Takashi Suganuma Hiroyuki Ito Noboru Ishihara Kunihiko Gotoh Koichiro Yamashita Kazuya Masu |
spellingShingle |
Kohei Ohba Yoshihiro Yoneda Koji Kurihara Takashi Suganuma Hiroyuki Ito Noboru Ishihara Kunihiko Gotoh Koichiro Yamashita Kazuya Masu Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks Sensors & Transducers Wireless sensor networks Data loss Polynomial regression Data recovery Environment monitoring. |
author_facet |
Kohei Ohba Yoshihiro Yoneda Koji Kurihara Takashi Suganuma Hiroyuki Ito Noboru Ishihara Kunihiko Gotoh Koichiro Yamashita Kazuya Masu |
author_sort |
Kohei Ohba |
title |
Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks |
title_short |
Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks |
title_full |
Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks |
title_fullStr |
Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks |
title_full_unstemmed |
Polynomial Regression Techniques for Environmental Data Recovery in Wireless Sensor Networks |
title_sort |
polynomial regression techniques for environmental data recovery in wireless sensor networks |
publisher |
IFSA Publishing, S.L. |
series |
Sensors & Transducers |
issn |
2306-8515 1726-5479 |
publishDate |
2016-04-01 |
description |
In the near feature, large-scale wireless sensor networks will play an important role in our lives by monitoring our environment with large numbers of sensors. However, data loss owing to data collision between the sensor nodes and electromagnetic noise need to be addressed. As the interval of aggregate data is not fixed, digital signal processing is not possible and noise degrades the data accuracy. To overcome these problems, we have researched an environmental data recovery technique using polynomial regression based on the correlations among environmental data. The reliability of the recovered data is discussed in the time, space and frequency domains. The relation between the accuracy of the recovered characteristics and the polynomial regression order is clarified. The effects of noise, data loss and number of sensor nodes are quantified. Clearly, polynomial regression offers the advantage of low-pass filtering and enhances the signal-to-noise ratio of the environmental data. Furthermore, the polynomial regression can recover arbitrary environmental characteristics. Measured temperature and accelerator characteristics were recovered successfully. |
topic |
Wireless sensor networks Data loss Polynomial regression Data recovery Environment monitoring. |
url |
http://www.sensorsportal.com/HTML/DIGEST/april_2016/Vol_199/P_2810.pdf |
work_keys_str_mv |
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