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An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning †

In wireless rechargeable sensor networks (WRSNs), a mobile charger (MC) moves around to compensate for sensor nodes’ energy via a wireless medium. In such a context, designing a charging strategy that optimally prolongs the network lifetime is challenging. This work aims to solve the challenges by i...

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Autores principales: Nguyen, Phi Le, La, Van Quan, Nguyen, Anh Duy, Nguyen, Thanh Hung, Nguyen, Kien
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8401319/
https://www.ncbi.nlm.nih.gov/pubmed/34450962
http://dx.doi.org/10.3390/s21165520
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author Nguyen, Phi Le
La, Van Quan
Nguyen, Anh Duy
Nguyen, Thanh Hung
Nguyen, Kien
author_facet Nguyen, Phi Le
La, Van Quan
Nguyen, Anh Duy
Nguyen, Thanh Hung
Nguyen, Kien
author_sort Nguyen, Phi Le
collection PubMed
description In wireless rechargeable sensor networks (WRSNs), a mobile charger (MC) moves around to compensate for sensor nodes’ energy via a wireless medium. In such a context, designing a charging strategy that optimally prolongs the network lifetime is challenging. This work aims to solve the challenges by introducing a novel, on-demand charging algorithm for MC that attempts to maximize the network lifetime, where the term “network lifetime” is defined by the interval from when the network starts till the first target is not monitored by any sensor. The algorithm, named Fuzzy Q-charging, optimizes both the time and location in which the MC performs its charging tasks. Fuzzy Q-charging uses Fuzzy logic to determine the optimal charging-energy amounts for sensors. From that, we propose a method to find the optimal charging time at each charging location. Fuzzy Q-charging leverages Q-learning to determine the next charging location for maximizing the network lifetime. To this end, Q-charging prioritizes the sensor nodes following their roles and selects a suitable charging location where MC provides sufficient power for the prioritized sensors. We have extensively evaluated the effectiveness of Fuzzy Q-charging in comparison to the related works. The evaluation results show that Fuzzy Q-charging outperforms the others. First, Fuzzy Q-charging can guarantee an infinite lifetime in the WSRNs, which have a sufficient large sensor number or a commensurate target number. Second, in other cases, Fuzzy Q-charging can extend the time until the first target is not monitored by 6.8 times on average and 33.9 times in the best case, compared to existing algorithms.
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spelling pubmed-84013192021-08-29 An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning † Nguyen, Phi Le La, Van Quan Nguyen, Anh Duy Nguyen, Thanh Hung Nguyen, Kien Sensors (Basel) Article In wireless rechargeable sensor networks (WRSNs), a mobile charger (MC) moves around to compensate for sensor nodes’ energy via a wireless medium. In such a context, designing a charging strategy that optimally prolongs the network lifetime is challenging. This work aims to solve the challenges by introducing a novel, on-demand charging algorithm for MC that attempts to maximize the network lifetime, where the term “network lifetime” is defined by the interval from when the network starts till the first target is not monitored by any sensor. The algorithm, named Fuzzy Q-charging, optimizes both the time and location in which the MC performs its charging tasks. Fuzzy Q-charging uses Fuzzy logic to determine the optimal charging-energy amounts for sensors. From that, we propose a method to find the optimal charging time at each charging location. Fuzzy Q-charging leverages Q-learning to determine the next charging location for maximizing the network lifetime. To this end, Q-charging prioritizes the sensor nodes following their roles and selects a suitable charging location where MC provides sufficient power for the prioritized sensors. We have extensively evaluated the effectiveness of Fuzzy Q-charging in comparison to the related works. The evaluation results show that Fuzzy Q-charging outperforms the others. First, Fuzzy Q-charging can guarantee an infinite lifetime in the WSRNs, which have a sufficient large sensor number or a commensurate target number. Second, in other cases, Fuzzy Q-charging can extend the time until the first target is not monitored by 6.8 times on average and 33.9 times in the best case, compared to existing algorithms. MDPI 2021-08-17 /pmc/articles/PMC8401319/ /pubmed/34450962 http://dx.doi.org/10.3390/s21165520 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Nguyen, Phi Le
La, Van Quan
Nguyen, Anh Duy
Nguyen, Thanh Hung
Nguyen, Kien
An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning †
title An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning †
title_full An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning †
title_fullStr An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning †
title_full_unstemmed An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning †
title_short An On-Demand Charging for Connected Target Coverage in WRSNs Using Fuzzy Logic and Q-Learning †
title_sort on-demand charging for connected target coverage in wrsns using fuzzy logic and q-learning †
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8401319/
https://www.ncbi.nlm.nih.gov/pubmed/34450962
http://dx.doi.org/10.3390/s21165520
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