A signal reconstruction method of wireless sensor network based on compressed sensing

Abstract Compressed sensing (CS) is a new theory for sampling and recovering signal-based sparse transformation. This theory could help us to acquire complete signal at low cost. Therefore, it also satisfies the requirement of low-cost sampling since bandwidth and capability of sampling is not suffi...

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Main Authors: Shiyu Zhu, Shanxiong Chen, Xihua Peng, Hailing Xiong, Sheng Wu
Format: Article
Language:English
Published: SpringerOpen 2020-05-01
Series:EURASIP Journal on Wireless Communications and Networking
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13638-020-01724-2
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spelling doaj-ee19bfaa99254a9395cc86ddc9224fde2020-11-25T02:49:00ZengSpringerOpenEURASIP Journal on Wireless Communications and Networking1687-14992020-05-012020112710.1186/s13638-020-01724-2A signal reconstruction method of wireless sensor network based on compressed sensingShiyu Zhu0Shanxiong Chen1Xihua Peng2Hailing Xiong3Sheng Wu4College of Computer and Information Science, Southwest UniversityCollege of Computer and Information Science, Southwest UniversityCollege of Computer and Information Science, Southwest UniversityCollege of Computer and Information Science, Southwest UniversityCollege of Computer and Information Science, Southwest UniversityAbstract Compressed sensing (CS) is a new theory for sampling and recovering signal-based sparse transformation. This theory could help us to acquire complete signal at low cost. Therefore, it also satisfies the requirement of low-cost sampling since bandwidth and capability of sampling is not sufficient. However, wireless sensor network is an open scene, and signal is easily affected by noise in the open environment. Specially, CS theory indicates a method of sub-Nyquist sampling which is effective to reduce cost in the process of data acquirement. However, the sampling is “imperfect”, and the corresponding data is more sensitive to noise. Consequently, it is urgently requisited for robust and antinoise reconstruction algorithms which can ensure the accuracy of signal reconstruction. In the article, we present a proximal gradient algorithm (PRG) to reconstruct sub-Nyquist sampling signal in the noise environment. This algorithm iteratively uses a straightforward shrinkage step to find the optimum solution of constrained formula, and then restores the original signal. Finally, in the experiment, PRG shows excellent performance comparing to OMP, BP, and SP while signal is corrupted by noise.http://link.springer.com/article/10.1186/s13638-020-01724-2Compressed sensingSparse reconstructionWireless sensor networkSub-Nyquist
collection DOAJ
language English
format Article
sources DOAJ
author Shiyu Zhu
Shanxiong Chen
Xihua Peng
Hailing Xiong
Sheng Wu
spellingShingle Shiyu Zhu
Shanxiong Chen
Xihua Peng
Hailing Xiong
Sheng Wu
A signal reconstruction method of wireless sensor network based on compressed sensing
EURASIP Journal on Wireless Communications and Networking
Compressed sensing
Sparse reconstruction
Wireless sensor network
Sub-Nyquist
author_facet Shiyu Zhu
Shanxiong Chen
Xihua Peng
Hailing Xiong
Sheng Wu
author_sort Shiyu Zhu
title A signal reconstruction method of wireless sensor network based on compressed sensing
title_short A signal reconstruction method of wireless sensor network based on compressed sensing
title_full A signal reconstruction method of wireless sensor network based on compressed sensing
title_fullStr A signal reconstruction method of wireless sensor network based on compressed sensing
title_full_unstemmed A signal reconstruction method of wireless sensor network based on compressed sensing
title_sort signal reconstruction method of wireless sensor network based on compressed sensing
publisher SpringerOpen
series EURASIP Journal on Wireless Communications and Networking
issn 1687-1499
publishDate 2020-05-01
description Abstract Compressed sensing (CS) is a new theory for sampling and recovering signal-based sparse transformation. This theory could help us to acquire complete signal at low cost. Therefore, it also satisfies the requirement of low-cost sampling since bandwidth and capability of sampling is not sufficient. However, wireless sensor network is an open scene, and signal is easily affected by noise in the open environment. Specially, CS theory indicates a method of sub-Nyquist sampling which is effective to reduce cost in the process of data acquirement. However, the sampling is “imperfect”, and the corresponding data is more sensitive to noise. Consequently, it is urgently requisited for robust and antinoise reconstruction algorithms which can ensure the accuracy of signal reconstruction. In the article, we present a proximal gradient algorithm (PRG) to reconstruct sub-Nyquist sampling signal in the noise environment. This algorithm iteratively uses a straightforward shrinkage step to find the optimum solution of constrained formula, and then restores the original signal. Finally, in the experiment, PRG shows excellent performance comparing to OMP, BP, and SP while signal is corrupted by noise.
topic Compressed sensing
Sparse reconstruction
Wireless sensor network
Sub-Nyquist
url http://link.springer.com/article/10.1186/s13638-020-01724-2
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