Three Dimensional Optimum Node Localization in Dynamic Wireless Sensor Networks

Location information plays an important role in most of the applications in Wireless Sensor Network (WSN). Recently, many localization techniques have been proposed, while most of these deals with two Dimensional applications. Whereas, in Three Dimensional applications the task is complex and there...

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Veröffentlicht in:Computers, materials & continua materials & continua, 2022-01, Vol.70 (1), p.305-321
Hauptverfasser: Singh Walia, Gagandeep, Singh, Parulpreet, Singh, Manwinder, Abouhawwash, Mohamed, Ju Park, Hyung, Kang, Byeong-Gwon, Mahajan, Shubham, Kant Pandit, Amit
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container_end_page 321
container_issue 1
container_start_page 305
container_title Computers, materials & continua
container_volume 70
creator Singh Walia, Gagandeep
Singh, Parulpreet
Singh, Manwinder
Abouhawwash, Mohamed
Ju Park, Hyung
Kang, Byeong-Gwon
Mahajan, Shubham
Kant Pandit, Amit
description Location information plays an important role in most of the applications in Wireless Sensor Network (WSN). Recently, many localization techniques have been proposed, while most of these deals with two Dimensional applications. Whereas, in Three Dimensional applications the task is complex and there are large variations in the altitude levels. In these 3D environments, the sensors are placed in mountains for tracking and deployed in air for monitoring pollution level. For such applications, 2D localization models are not reliable. Due to this, the design of 3D localization systems in WSNs faces new challenges. In this paper, in order to find unknown nodes in Three-Dimensional environment, only single anchor node is used. In the simulation-based environment, the nodes with unknown locations are moving at middle & lower layers whereas the top layer is equipped with single anchor node. A novel soft computing technique namely Adaptive Plant Propagation Algorithm (APPA) is introduced to obtain the optimized locations of these mobile nodes. These mobile target nodes are heterogeneous and deployed in an anisotropic environment having an Irregularity (Degree of Irregularity (DOI)) value set to 0.01. The simulation results present that proposed APPA algorithm outperforms as tested among other meta-heuristic optimization techniques in terms of localization error, computational time, and the located sensor nodes.
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Recently, many localization techniques have been proposed, while most of these deals with two Dimensional applications. Whereas, in Three Dimensional applications the task is complex and there are large variations in the altitude levels. In these 3D environments, the sensors are placed in mountains for tracking and deployed in air for monitoring pollution level. For such applications, 2D localization models are not reliable. Due to this, the design of 3D localization systems in WSNs faces new challenges. In this paper, in order to find unknown nodes in Three-Dimensional environment, only single anchor node is used. In the simulation-based environment, the nodes with unknown locations are moving at middle &amp; lower layers whereas the top layer is equipped with single anchor node. A novel soft computing technique namely Adaptive Plant Propagation Algorithm (APPA) is introduced to obtain the optimized locations of these mobile nodes. These mobile target nodes are heterogeneous and deployed in an anisotropic environment having an Irregularity (Degree of Irregularity (DOI)) value set to 0.01. 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subjects Adaptive algorithms
Air monitoring
Computing time
Heuristic methods
Irregularities
Localization
Mountains
Nodes
Optimization
Optimization techniques
Pollution levels
Pollution monitoring
Sensors
Soft computing
Two dimensional models
Wireless networks
Wireless sensor networks
title Three Dimensional Optimum Node Localization in Dynamic Wireless Sensor Networks
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