Effective sensor positioning to localize target transmitters in a Cognitive Radio Network

A precise positioning of transmitting nodes enhances the performance of Cognitive Radio (CR), by enabling more efficient dynamic allocation of channels and transmit powers for unlicensed users. Most localization techniques rely on random positioning of sensor nodes where, few sensor nodes may have a...

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Main Authors: Audri Biswas, Sam Reisenfeld, Mark Hedley, Zhuo Chen
Format: Article
Language:English
Published: European Alliance for Innovation (EAI) 2016-04-01
Series:EAI Endorsed Transactions on Cognitive Communications
Subjects:
Online Access:http://eudl.eu/doi/10.4108/eai.5-4-2016.151145
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spelling doaj-7f3c80e2a7ef47d4800b653a9c9a0fff2020-11-25T00:07:00ZengEuropean Alliance for Innovation (EAI)EAI Endorsed Transactions on Cognitive Communications2313-45342016-04-012611010.4108/eai.5-4-2016.151145Effective sensor positioning to localize target transmitters in a Cognitive Radio NetworkAudri Biswas0Sam Reisenfeld1Mark Hedley2Zhuo Chen3Department of Engineering, Faculty of Science and Engineering, Macquarie University, NSW 2109, Australia. sam.reisenfeld@mq.edu.auDepartment of Engineering, Faculty of Science and Engineering, Macquarie University, NSW 2109, AustraliaDigital Productivity Flagship, CSIRO, NSW 2122, AustraliaDigital Productivity Flagship, CSIRO, NSW 2122, AustraliaA precise positioning of transmitting nodes enhances the performance of Cognitive Radio (CR), by enabling more efficient dynamic allocation of channels and transmit powers for unlicensed users. Most localization techniques rely on random positioning of sensor nodes where, few sensor nodes may have a small separation between adjacent nodes. Closely spaced nodes introduces correlated observations, effecting the performance of Compressive Sensing (CS) algorithm. This paper introduces a novel minimum distance separation aided compressive sensing algorithm (MDACS). The algorithm selectively eliminates Secondary User (SU) power observations from the set of SU receiving terminals such that pairs of the remaining SUs are separated by a minimum geographic distance.We have evaluated the detection of multiple sparse targets locations and error in l2-norm of the recovery vector. The proposed method offers an improvement in detection ratio by 20% while reducing the error in l2-norm by 57%.http://eudl.eu/doi/10.4108/eai.5-4-2016.151145Cognitive RadioCompressive SensingRadio Environment MapLocalizationPower Measurements
collection DOAJ
language English
format Article
sources DOAJ
author Audri Biswas
Sam Reisenfeld
Mark Hedley
Zhuo Chen
spellingShingle Audri Biswas
Sam Reisenfeld
Mark Hedley
Zhuo Chen
Effective sensor positioning to localize target transmitters in a Cognitive Radio Network
EAI Endorsed Transactions on Cognitive Communications
Cognitive Radio
Compressive Sensing
Radio Environment Map
Localization
Power Measurements
author_facet Audri Biswas
Sam Reisenfeld
Mark Hedley
Zhuo Chen
author_sort Audri Biswas
title Effective sensor positioning to localize target transmitters in a Cognitive Radio Network
title_short Effective sensor positioning to localize target transmitters in a Cognitive Radio Network
title_full Effective sensor positioning to localize target transmitters in a Cognitive Radio Network
title_fullStr Effective sensor positioning to localize target transmitters in a Cognitive Radio Network
title_full_unstemmed Effective sensor positioning to localize target transmitters in a Cognitive Radio Network
title_sort effective sensor positioning to localize target transmitters in a cognitive radio network
publisher European Alliance for Innovation (EAI)
series EAI Endorsed Transactions on Cognitive Communications
issn 2313-4534
publishDate 2016-04-01
description A precise positioning of transmitting nodes enhances the performance of Cognitive Radio (CR), by enabling more efficient dynamic allocation of channels and transmit powers for unlicensed users. Most localization techniques rely on random positioning of sensor nodes where, few sensor nodes may have a small separation between adjacent nodes. Closely spaced nodes introduces correlated observations, effecting the performance of Compressive Sensing (CS) algorithm. This paper introduces a novel minimum distance separation aided compressive sensing algorithm (MDACS). The algorithm selectively eliminates Secondary User (SU) power observations from the set of SU receiving terminals such that pairs of the remaining SUs are separated by a minimum geographic distance.We have evaluated the detection of multiple sparse targets locations and error in l2-norm of the recovery vector. The proposed method offers an improvement in detection ratio by 20% while reducing the error in l2-norm by 57%.
topic Cognitive Radio
Compressive Sensing
Radio Environment Map
Localization
Power Measurements
url http://eudl.eu/doi/10.4108/eai.5-4-2016.151145
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AT zhuochen effectivesensorpositioningtolocalizetargettransmittersinacognitiveradionetwork
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