DocumentCode
5272
Title
Compressed Sensing Signal and Data Acquisition in Wireless Sensor Networks and Internet of Things
Author
Shancang Li ; Li Da Xu ; Xinheng Wang
Author_Institution
Coll. of Eng., Swansea Univ., Swansea, UK
Volume
9
Issue
4
fYear
2013
fDate
Nov. 2013
Firstpage
2177
Lastpage
2186
Abstract
The emerging compressed sensing (CS) theory can significantly reduce the number of sampling points that directly corresponds to the volume of data collected, which means that part of the redundant data is never acquired. It makes it possible to create standalone and net-centric applications with fewer resources required in Internet of Things (IoT). CS-based signal and information acquisition/compression paradigm combines the nonlinear reconstruction algorithm and random sampling on a sparse basis that provides a promising approach to compress signal and data in information systems. This paper investigates how CS can provide new insights into data sampling and acquisition in wireless sensor networks and IoT. First, we briefly introduce the CS theory with respect to the sampling and transmission coordination during the network lifetime through providing a compressed sampling process with low computation costs. Then, a CS-based framework is proposed for IoT, in which the end nodes measure, transmit, and store the sampled data in the framework. Then, an efficient cluster-sparse reconstruction algorithm is proposed for in-network compression aiming at more accurate data reconstruction and lower energy efficiency. Performance is evaluated with respect to network size using datasets acquired by a real-life deployment.
Keywords
Internet of Things; compressed sensing; data acquisition; information systems; sampled data systems; signal reconstruction; signal sampling; wireless sensor networks; CS theory; Internet of Things; IoT; cluster-sparse reconstruction algorithm; compressed sensing signal; data acquisition; energy efficiency; in-network compression; information acquisition; information compression; information systems; net-centric applications; network lifetime; network size; nonlinear reconstruction algorithm; performance evaluation; random sampling; real-life deployment; redundant data; sampled data store; sampled data transmit; sampling point reduction; sparse sampling; standalone applications; transmission coordination; wireless sensor networks; Compressed sensing; Data acquisition; Information systems; Sparse matrices; Wireless sensor networks; Compressed sensing (CS); Internet of Things (IoT); enterprise systems; industrial informatics; information systems; wireless sensor networks (WSNs);
fLanguage
English
Journal_Title
Industrial Informatics, IEEE Transactions on
Publisher
ieee
ISSN
1551-3203
Type
jour
DOI
10.1109/TII.2012.2189222
Filename
6159081
Link To Document