Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology Tomography

Data acquisition from multi-hop large-scale outdoor wireless sensor network (WSN) deployments for environmental monitoring is full of challenges. This is because of the severe resource constraints on tiny battery-operated motes (e.g., bandwidth, memory, power, and computing capacity), the data acqui...

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Main Authors: Yimei Li, Yao Liang
Format: Article
Language:English
Published: IEEE 2018-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8356576/
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spelling doaj-f72c713cc0a141dab4081443de41480b2021-03-29T20:49:38ZengIEEEIEEE Access2169-35362018-01-016276372765010.1109/ACCESS.2018.28345508356576Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology TomographyYimei Li0Yao Liang1https://orcid.org/0000-0002-7353-7242Department of Computer and Information Science, Indiana University–Purdue University at Indianapolis, Indianapolis, IN, USADepartment of Computer and Information Science, Indiana University–Purdue University at Indianapolis, Indianapolis, IN, USAData acquisition from multi-hop large-scale outdoor wireless sensor network (WSN) deployments for environmental monitoring is full of challenges. This is because of the severe resource constraints on tiny battery-operated motes (e.g., bandwidth, memory, power, and computing capacity), the data acquisition volume from large-scale WSNs, and the highly dynamic wireless link conditions in outdoor harsh communication environments. We present a novel compressed sensing approach, which can recover the sensing data at the sink with high fidelity when a very few data packets need to be collected, leading to a significant reduction of the network transmissions and thus an extension of the WSN lifetime. Interplaying with the dynamic WSN routing topology, the proposed approach is both efficient and simple to implement on the resource-constrained motes without motes' storing of any part of the random projection matrix, as opposed to other existing compressed sensing-based schemes. We further propose a systematic method via machine learning to find a suitable representation basis, for any given WSN deployment and data field, which is both sparse and incoherent with the random projection matrix in compressed sensing for data collection. We validate our approach and evaluate its performance using a real-world outdoor multihop WSN testbed deployment in situ. The results demonstrate that our approach significantly outperforms existing compressed sensing approaches by reducing data recovery errors by an order of magnitude for the entire WSN observation field while drastically reducing wireless communication costs at the same time.https://ieeexplore.ieee.org/document/8356576/Compressed sensingwireless sensor networkssensing and routing interplayirregular graph decompositionrouting topology tomographyreal world deployment
collection DOAJ
language English
format Article
sources DOAJ
author Yimei Li
Yao Liang
spellingShingle Yimei Li
Yao Liang
Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology Tomography
IEEE Access
Compressed sensing
wireless sensor networks
sensing and routing interplay
irregular graph decomposition
routing topology tomography
real world deployment
author_facet Yimei Li
Yao Liang
author_sort Yimei Li
title Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology Tomography
title_short Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology Tomography
title_full Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology Tomography
title_fullStr Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology Tomography
title_full_unstemmed Compressed Sensing in Multi-Hop Large-Scale Wireless Sensor Networks Based on Routing Topology Tomography
title_sort compressed sensing in multi-hop large-scale wireless sensor networks based on routing topology tomography
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2018-01-01
description Data acquisition from multi-hop large-scale outdoor wireless sensor network (WSN) deployments for environmental monitoring is full of challenges. This is because of the severe resource constraints on tiny battery-operated motes (e.g., bandwidth, memory, power, and computing capacity), the data acquisition volume from large-scale WSNs, and the highly dynamic wireless link conditions in outdoor harsh communication environments. We present a novel compressed sensing approach, which can recover the sensing data at the sink with high fidelity when a very few data packets need to be collected, leading to a significant reduction of the network transmissions and thus an extension of the WSN lifetime. Interplaying with the dynamic WSN routing topology, the proposed approach is both efficient and simple to implement on the resource-constrained motes without motes' storing of any part of the random projection matrix, as opposed to other existing compressed sensing-based schemes. We further propose a systematic method via machine learning to find a suitable representation basis, for any given WSN deployment and data field, which is both sparse and incoherent with the random projection matrix in compressed sensing for data collection. We validate our approach and evaluate its performance using a real-world outdoor multihop WSN testbed deployment in situ. The results demonstrate that our approach significantly outperforms existing compressed sensing approaches by reducing data recovery errors by an order of magnitude for the entire WSN observation field while drastically reducing wireless communication costs at the same time.
topic Compressed sensing
wireless sensor networks
sensing and routing interplay
irregular graph decomposition
routing topology tomography
real world deployment
url https://ieeexplore.ieee.org/document/8356576/
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AT yaoliang compressedsensinginmultihoplargescalewirelesssensornetworksbasedonroutingtopologytomography
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