Dynamic data collection algorithm based on mobile edge computing in underwater internet of things

Abstract The Underwater Internet of Things (UIoT) has emerged as one of the prominent technologies in the development of future ocean monitoring systems, where mobile edge elements (such as autonomous underwater vehicles (AUVs)) provide a promising method for the data collection from sensor nodes. H...

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Published in:Journal of Cloud Computing: Advances, Systems and Applications
Main Authors: Xiaoyun Guang, Chunfeng Liu, Wenyu Qu, Zhao Zhao
Format: Article
Language:English
Published: SpringerOpen 2023-03-01
Subjects:
Online Access:https://doi.org/10.1186/s13677-023-00413-x
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author Xiaoyun Guang
Chunfeng Liu
Wenyu Qu
Zhao Zhao
author_facet Xiaoyun Guang
Chunfeng Liu
Wenyu Qu
Zhao Zhao
author_sort Xiaoyun Guang
collection DOAJ
container_title Journal of Cloud Computing: Advances, Systems and Applications
description Abstract The Underwater Internet of Things (UIoT) has emerged as one of the prominent technologies in the development of future ocean monitoring systems, where mobile edge elements (such as autonomous underwater vehicles (AUVs)) provide a promising method for the data collection from sensor nodes. However, as an important part of the UIoT, underwater wireless sensor networks (UWSNs) are severely affected by the underwater dynamic environment. For instance, node locations change continuously, which significantly increases the difficulty of data collection. To solve this problem, the concept of an inevitable communication space (ICS) is proposed. The ICS is calculated by analyzing the variation in the position of nodes and the communication range. Furthermore, an ICS-based dynamic data collection algorithm (ICS-DDCA) for UIoT is proposed to collect underwater data. This method utilizes the ICS instead of the initial location of the node for data collection to further improve the performance of the algorithm and shorten the data collection time. The simulation results demonstrate that compared with the energy-efficient data collection over AUV-assisted (EEDA) and data collection algorithms based on probabilistic neighborhood (PNCS-GHA), ICS-DDCA can effectively reduce the collection time, while ensuring the full completion of data collection.
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spelling doaj-art-d85f12fc3d2f407eb2f52e3f3e7dfc8d2025-08-19T21:31:20ZengSpringerOpenJournal of Cloud Computing: Advances, Systems and Applications2192-113X2023-03-0112111410.1186/s13677-023-00413-xDynamic data collection algorithm based on mobile edge computing in underwater internet of thingsXiaoyun Guang0Chunfeng Liu1Wenyu Qu2Zhao Zhao3College of Intelligence and Computing, Tianjin UniversityCollege of Intelligence and Computing, Tianjin UniversityCollege of Intelligence and Computing, Tianjin UniversityCollege of Intelligence and Computing, Tianjin UniversityAbstract The Underwater Internet of Things (UIoT) has emerged as one of the prominent technologies in the development of future ocean monitoring systems, where mobile edge elements (such as autonomous underwater vehicles (AUVs)) provide a promising method for the data collection from sensor nodes. However, as an important part of the UIoT, underwater wireless sensor networks (UWSNs) are severely affected by the underwater dynamic environment. For instance, node locations change continuously, which significantly increases the difficulty of data collection. To solve this problem, the concept of an inevitable communication space (ICS) is proposed. The ICS is calculated by analyzing the variation in the position of nodes and the communication range. Furthermore, an ICS-based dynamic data collection algorithm (ICS-DDCA) for UIoT is proposed to collect underwater data. This method utilizes the ICS instead of the initial location of the node for data collection to further improve the performance of the algorithm and shorten the data collection time. The simulation results demonstrate that compared with the energy-efficient data collection over AUV-assisted (EEDA) and data collection algorithms based on probabilistic neighborhood (PNCS-GHA), ICS-DDCA can effectively reduce the collection time, while ensuring the full completion of data collection.https://doi.org/10.1186/s13677-023-00413-xUIoTUnderwater wireless sensor networksData collectionAUVPath planningMobile node
spellingShingle Xiaoyun Guang
Chunfeng Liu
Wenyu Qu
Zhao Zhao
Dynamic data collection algorithm based on mobile edge computing in underwater internet of things
UIoT
Underwater wireless sensor networks
Data collection
AUV
Path planning
Mobile node
title Dynamic data collection algorithm based on mobile edge computing in underwater internet of things
title_full Dynamic data collection algorithm based on mobile edge computing in underwater internet of things
title_fullStr Dynamic data collection algorithm based on mobile edge computing in underwater internet of things
title_full_unstemmed Dynamic data collection algorithm based on mobile edge computing in underwater internet of things
title_short Dynamic data collection algorithm based on mobile edge computing in underwater internet of things
title_sort dynamic data collection algorithm based on mobile edge computing in underwater internet of things
topic UIoT
Underwater wireless sensor networks
Data collection
AUV
Path planning
Mobile node
url https://doi.org/10.1186/s13677-023-00413-x
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AT chunfengliu dynamicdatacollectionalgorithmbasedonmobileedgecomputinginunderwaterinternetofthings
AT wenyuqu dynamicdatacollectionalgorithmbasedonmobileedgecomputinginunderwaterinternetofthings
AT zhaozhao dynamicdatacollectionalgorithmbasedonmobileedgecomputinginunderwaterinternetofthings