Link Prediction and Route Selection Based on Channel State Detection in UASNs

In Underwater Acoustic Sensor Networks (UASNs), data route is often disrupted by link interruption which will further lead to incorrect data transmission due to high propagation delay, Doppler effect, and the vulnerability of water environment in acoustic channel. So how to correctly transmit data w...

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Main Authors: Jian Chen, Yanyan Han, Deshi Li, Jugen Nie
Format: Article
Language:English
Published: Wiley 2011-09-01
Series:International Journal of Distributed Sensor Networks
Online Access:https://doi.org/10.1155/2011/939864
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author Jian Chen
Yanyan Han
Deshi Li
Jugen Nie
author_facet Jian Chen
Yanyan Han
Deshi Li
Jugen Nie
author_sort Jian Chen
collection DOAJ
description In Underwater Acoustic Sensor Networks (UASNs), data route is often disrupted by link interruption which will further lead to incorrect data transmission due to high propagation delay, Doppler effect, and the vulnerability of water environment in acoustic channel. So how to correctly transmit data when there are interrupted links on the data path is just the issue Delay Tolerant Networks (DTNs) aim to solve. In this paper, we propose a model to predict link interruption and route interruption in UASNs by the historical link information and channel state obtained by periodic detection. A method of decomposing and recomposing routes hop by hop in order to optimize route reselection is also presented. Moreover, we present a back-up route maintenance scheme to keep back-up routes with fresh information. In case of single route, we advance the idea to utilize the periodicity of environmental changes to help predict link interruption. In the simulation, we make comparisons on node energy consumption, end-to-end delay as well as bit error rate with and without link prediction. It can be derived that the network performance is significantly improved with our mechanism, so that our mechanism is effective and efficient while guaranteeing reliable data transmission.
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spelling doaj-art-4833b7f33a3b409d84eb531b9f6501452025-08-20T02:38:01ZengWileyInternational Journal of Distributed Sensor Networks1550-14772011-09-01710.1155/2011/939864939864Link Prediction and Route Selection Based on Channel State Detection in UASNsJian ChenYanyan HanDeshi LiJugen NieIn Underwater Acoustic Sensor Networks (UASNs), data route is often disrupted by link interruption which will further lead to incorrect data transmission due to high propagation delay, Doppler effect, and the vulnerability of water environment in acoustic channel. So how to correctly transmit data when there are interrupted links on the data path is just the issue Delay Tolerant Networks (DTNs) aim to solve. In this paper, we propose a model to predict link interruption and route interruption in UASNs by the historical link information and channel state obtained by periodic detection. A method of decomposing and recomposing routes hop by hop in order to optimize route reselection is also presented. Moreover, we present a back-up route maintenance scheme to keep back-up routes with fresh information. In case of single route, we advance the idea to utilize the periodicity of environmental changes to help predict link interruption. In the simulation, we make comparisons on node energy consumption, end-to-end delay as well as bit error rate with and without link prediction. It can be derived that the network performance is significantly improved with our mechanism, so that our mechanism is effective and efficient while guaranteeing reliable data transmission.https://doi.org/10.1155/2011/939864
spellingShingle Jian Chen
Yanyan Han
Deshi Li
Jugen Nie
Link Prediction and Route Selection Based on Channel State Detection in UASNs
International Journal of Distributed Sensor Networks
title Link Prediction and Route Selection Based on Channel State Detection in UASNs
title_full Link Prediction and Route Selection Based on Channel State Detection in UASNs
title_fullStr Link Prediction and Route Selection Based on Channel State Detection in UASNs
title_full_unstemmed Link Prediction and Route Selection Based on Channel State Detection in UASNs
title_short Link Prediction and Route Selection Based on Channel State Detection in UASNs
title_sort link prediction and route selection based on channel state detection in uasns
url https://doi.org/10.1155/2011/939864
work_keys_str_mv AT jianchen linkpredictionandrouteselectionbasedonchannelstatedetectioninuasns
AT yanyanhan linkpredictionandrouteselectionbasedonchannelstatedetectioninuasns
AT deshili linkpredictionandrouteselectionbasedonchannelstatedetectioninuasns
AT jugennie linkpredictionandrouteselectionbasedonchannelstatedetectioninuasns