Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node Coverage

With the rise of the Internet of Things, the application fields of wireless sensor networks (WSN) continue to expand. From agriculture to urban infrastructure monitoring, application requirements in various fields are increasing. The research focuses on designing and improving energy-efficient cover...

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Main Authors: Runliang Jia, Haiyu Zhang
Format: Article
Language:English
Published: IEEE 2024-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10433505/
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author Runliang Jia
Haiyu Zhang
author_facet Runliang Jia
Haiyu Zhang
author_sort Runliang Jia
collection DOAJ
description With the rise of the Internet of Things, the application fields of wireless sensor networks (WSN) continue to expand. From agriculture to urban infrastructure monitoring, application requirements in various fields are increasing. The research focuses on designing and improving energy-efficient coverage methods for wireless sensor network nodes, with the goal of improving energy efficiency and data transmission reliability. Through detailed research and analysis of hierarchical and flat routing protocols, the article explores how to ensure that each monitoring point is covered by at least one sensor node by designing an energy-saving sensor network node coverage model. At the same time, the study explores an energy-efficient coverage method based on the improved gray wolf algorithm, aiming to optimize the deployment of sensor nodes and enhance the effectiveness of node coverage. Research results show that the algorithm performs significantly in network coverage optimization and achieves 100% coverage of monitoring target points. Under the 30-dimensional condition, the improved gray wolf algorithm shows excellent average performance and the smallest standard deviation. When the number of nodes is 40, compared with other algorithms, the improved gray wolf algorithm improves the coverage rate by 5.08% and achieves 100% coverage performance in a more energy-saving manner. Research on the exploration of energy-saving wireless sensor network models will help to better meet the needs of future intelligent monitoring and control, improve resource utilization efficiency, reduce maintenance costs, and promote the sustainable development of wireless sensor networks.
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spelling doaj.art-ad38e7f79c914117b02dda35004f7ed12024-02-28T00:00:32ZengIEEEIEEE Access2169-35362024-01-0112275962761010.1109/ACCESS.2024.336551110433505Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node CoverageRunliang Jia0https://orcid.org/0009-0002-3413-5862Haiyu Zhang1https://orcid.org/0009-0001-9035-6224Information Technology Institute, Shanxi Finance and Taxation College, Taiyuan, ChinaInformation Technology Institute, Shanxi Finance and Taxation College, Taiyuan, ChinaWith the rise of the Internet of Things, the application fields of wireless sensor networks (WSN) continue to expand. From agriculture to urban infrastructure monitoring, application requirements in various fields are increasing. The research focuses on designing and improving energy-efficient coverage methods for wireless sensor network nodes, with the goal of improving energy efficiency and data transmission reliability. Through detailed research and analysis of hierarchical and flat routing protocols, the article explores how to ensure that each monitoring point is covered by at least one sensor node by designing an energy-saving sensor network node coverage model. At the same time, the study explores an energy-efficient coverage method based on the improved gray wolf algorithm, aiming to optimize the deployment of sensor nodes and enhance the effectiveness of node coverage. Research results show that the algorithm performs significantly in network coverage optimization and achieves 100% coverage of monitoring target points. Under the 30-dimensional condition, the improved gray wolf algorithm shows excellent average performance and the smallest standard deviation. When the number of nodes is 40, compared with other algorithms, the improved gray wolf algorithm improves the coverage rate by 5.08% and achieves 100% coverage performance in a more energy-saving manner. Research on the exploration of energy-saving wireless sensor network models will help to better meet the needs of future intelligent monitoring and control, improve resource utilization efficiency, reduce maintenance costs, and promote the sustainable development of wireless sensor networks.https://ieeexplore.ieee.org/document/10433505/Wireless sensor networknode coveragegrey wolf algorithmrouting protocolmonitoring area
spellingShingle Runliang Jia
Haiyu Zhang
Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node Coverage
IEEE Access
Wireless sensor network
node coverage
grey wolf algorithm
routing protocol
monitoring area
title Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node Coverage
title_full Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node Coverage
title_fullStr Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node Coverage
title_full_unstemmed Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node Coverage
title_short Wireless Sensor Network (WSN) Model Targeting Energy Efficient Wireless Sensor Networks Node Coverage
title_sort wireless sensor network wsn model targeting energy efficient wireless sensor networks node coverage
topic Wireless sensor network
node coverage
grey wolf algorithm
routing protocol
monitoring area
url https://ieeexplore.ieee.org/document/10433505/
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AT haiyuzhang wirelesssensornetworkwsnmodeltargetingenergyefficientwirelesssensornetworksnodecoverage