DocumentCode :
2021432
Title :
Data gathering in wireless sensor networks through intelligent compressive sensing
Author :
Wang, Jin ; Tang, Shaojie ; Yin, Baocai ; Li, Xiang-Yang
Author_Institution :
Beijing Key Lab. of Multimedia & Intell. Software Technol., Beijing Univ. of Technol., Beijing, China
fYear :
2012
fDate :
25-30 March 2012
Firstpage :
603
Lastpage :
611
Abstract :
The recently emerged compressive sensing (CS) theory provides a whole new avenue for data gathering in wireless sensor networks with benefits of universal sampling and decentralized encoding. However, existing compressive sensing based data gathering approaches assume the sensed data has a known constant sparsity, ignoring that the sparsity of natural signals vary in temporal and spatial domain. In this paper, we present an adaptive data gathering scheme by compressive sensing for wireless sensor networks. By introducing autoregressive (AR) model into the reconstruction of the sensed data, the local correlation in sensed data is exploited and thus local adaptive sparsity is achieved. The recovered data at the sink is evaluated by utilizing successive reconstructions, the relation between error and measurements. Then the number of measurements is adjusted according to the variation of the sensed data. Furthermore, a novel abnormal readings detection and identification mechanism based on combinational sparsity reconstruction is proposed. Internal error and external event are distinguished by their specific features. We perform extensive testing of our scheme on the real data sets and experimental results validate the efficiency and efficacy of the proposed scheme. Up to about 8dB SNR gain can be achieved over conventional CS based method with moderate increase of complexity.
Keywords :
autoregressive processes; compressed sensing; encoding; signal detection; signal reconstruction; signal sampling; wireless sensor networks; AR model; CS theory; SNR gain; abnormal readings detection; adaptive data gathering; autoregressive model; combinational sparsity reconstruction; compressive sensing theory; constant sparsity; decentralized encoding; extensive testing; external event; identification mechanism; intelligent compressive sensing; internal error; local adaptive sparsity; local correlation; natural signals; real data sets; recovered data; sensed data reconstruction; spatial domain; temporal domain; universal sampling; wireless sensor networks; Correlation; Current measurement; Data models; Pollution measurement; Temperature measurement; Temperature sensors; Wireless sensor networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
INFOCOM, 2012 Proceedings IEEE
Conference_Location :
Orlando, FL
ISSN :
0743-166X
Print_ISBN :
978-1-4673-0773-4
Type :
conf
DOI :
10.1109/INFCOM.2012.6195803
Filename :
6195803
Link To Document :
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