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Belongs to PC:SerieArticles collection
TITLE:
Link quality prediction in wireless community networks using deep recurrent neural networks - imarina:6626715
Handle:
https://hdl.handle.net/20.500.11797/imarina6626715
URV's Author/s:
Abdelnasser Mohamed Mahmoud, Mohamed / Puig Valls, Domènec Savi
Author, as appears in the article.:
Abdel-Nasser, Mohamed; Mahmoud, Karar; Omer, Osama A; Lehtonen, Matti; Puig, Domenec
Author's mail:
mohamed.abdelnasser@urv.cat
domenec.puig@urv.cat
Author identifier
:
0000-0002-1074-2441
0000-0002-0562-4205
Journal publication year:
2020
Publication Type:
Journal Publications
ISSN:
1110-0168
APA
:
Abdel-Nasser, Mohamed; Mahmoud, Karar; Omer, Osama A; Lehtonen, Matti; Puig, Domenec (2020). Link quality prediction in wireless community networks using deep recurrent neural networks. Alexandria Engineering Journal, 59(5), 3531-3543. DOI: 10.1016/j.aej.2020.05.037
Papper original source
:
Alexandria Engineering Journal. 59 (5): 3531-3543
Abstract:
© 2020 Faculty of Engineering, Alexandria University Wireless community networks (WCNs) are large, heterogeneous, dynamic, and decentralized networks. Such complex characteristics raise different challenges, such as the effect of wireless communications on the performance of networks and routing protocols. The prediction approaches of link quality (LQ) can improve the performance of routing algorithms of WCNs while avoiding weak links. The prediction of LQ in WCNs can be a complex task because of the fluctuated nature of LQ measurements due to the dynamic wireless environment. In this paper, a deep learning based approach is proposed to accurately predict LQ in WCNs. Specifically, we propose the use of two variants of deep recurrent neural network (RNN): long short-term memory recurrent neural networks (LSTM-RNN) and gated recurrent unit (GRU). The positive feature of the proposed variants is that they can handle the fluctuating nature of LQ due to their ability to learn and exploit the context in LQ time-series. The experimental results on data collected from a real-world WCN show that the proposed LSTM-RNN and GRU models accurately predict LQ in WCNs compared to related methods. The proposed approach could be a helpful tool for accurately predicting LQ, thereby improving the performance of routing protocols of WCNs.
Article's DOI:
10.1016/j.aej.2020.05.037
Link to the original source:
https://www.sciencedirect.com/science/article/pii/S1110016820302519?via%3Dihub
Papper version:
info:eu-repo/semantics/publishedVersion
licence for use:
https://creativecommons.org/licenses/by/3.0/es/
Department:
Enginyeria Informàtica i Matemàtiques
Licence document URL:
https://repositori.urv.cat/ca/proteccio-de-dades/
Thematic Areas:
General engineering
Farmacia
Engineering, multidisciplinary
Engineering (miscellaneous)
Engineering (all)
Keywords:
Time-series analysis
Rnn
Lstm
Link quality prediction
Gru
Deep learning
Entity:
Universitat Rovira i Virgili
Record's date:
2024-10-12
Description:
© 2020 Faculty of Engineering, Alexandria University Wireless community networks (WCNs) are large, heterogeneous, dynamic, and decentralized networks. Such complex characteristics raise different challenges, such as the effect of wireless communications on the performance of networks and routing protocols. The prediction approaches of link quality (LQ) can improve the performance of routing algorithms of WCNs while avoiding weak links. The prediction of LQ in WCNs can be a complex task because of the fluctuated nature of LQ measurements due to the dynamic wireless environment. In this paper, a deep learning based approach is proposed to accurately predict LQ in WCNs. Specifically, we propose the use of two variants of deep recurrent neural network (RNN): long short-term memory recurrent neural networks (LSTM-RNN) and gated recurrent unit (GRU). The positive feature of the proposed variants is that they can handle the fluctuating nature of LQ due to their ability to learn and exploit the context in LQ time-series. The experimental results on data collected from a real-world WCN show that the proposed LSTM-RNN and GRU models accurately predict LQ in WCNs compared to related methods. The proposed approach could be a helpful tool for accurately predicting LQ, thereby improving the performance of routing protocols of WCNs.
Coverage:
Anglès
Type:
Journal Publications
Contributor:
Universitat Rovira i Virgili
Títol:
Link quality prediction in wireless community networks using deep recurrent neural networks
Subject:
Engineering (Miscellaneous),Engineering, Multidisciplinary
Time-series analysis
Rnn
Lstm
Link quality prediction
Gru
Deep learning
General engineering
Farmacia
Engineering, multidisciplinary
Engineering (miscellaneous)
Engineering (all)
Date:
2020
Creator:
Abdel-Nasser, Mohamed
Mahmoud, Karar
Omer, Osama A
Lehtonen, Matti
Puig, Domenec
Rights:
info:eu-repo/semantics/openAccess
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