Type II Fuzzy Logic Based Cluster Head Selection for Wireless Sensor Network

Wireless Sensor Network (WSN) forms an essential part of IoT. It is embedded in the target environment to observe the physical parameters based on the type of application. Sensor nodes in WSN are constrained by different features such as memory, bandwidth, energy, and its processing capabilities. In...

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Veröffentlicht in:Computers, materials & continua materials & continua, 2022-01, Vol.70 (1), p.801-816
Hauptverfasser: Jean Justus, J., Thirunavukkarasan, M., Dhayalini, K., Visalaxi, G., Khelifi, Adel, Elhoseny, Mohamed
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container_start_page 801
container_title Computers, materials & continua
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creator Jean Justus, J.
Thirunavukkarasan, M.
Dhayalini, K.
Visalaxi, G.
Khelifi, Adel
Elhoseny, Mohamed
description Wireless Sensor Network (WSN) forms an essential part of IoT. It is embedded in the target environment to observe the physical parameters based on the type of application. Sensor nodes in WSN are constrained by different features such as memory, bandwidth, energy, and its processing capabilities. In WSN, data transmission process consumes the maximum amount of energy than sensing and processing of the sensors. So, diverse clustering and data aggregation techniques are designed to achieve excellent energy efficiency in WSN. In this view, the current research article presents a novel Type II Fuzzy Logic-based Cluster Head selection with Low Complexity Data Aggregation (T2FLCH-LCDA) technique for WSN. The presented model involves a two-stage process such as clustering and data aggregation. Initially, three input parameters such as residual energy, distance to Base Station (BS), and node centrality are used in T2FLCH technique for CH selection and cluster construction. Besides, the LCDA technique which follows Dictionary Based Encoding (DBE) process is used to perform the data aggregation at CHs. Finally, the aggregated data is transmitted to the BS where it achieves energy efficiency. The experimental validation of the T2FLCH-LCDA technique was executed under three different scenarios based on the position of BS. The experimental results revealed that the T2FLCH-LCDA technique achieved maximum energy efficiency, lifetime, Compression Ratio (CR), and power saving than the compared methods.
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subjects Agglomeration
Clustering
Compression ratio
Data management
Data transmission
Energy efficiency
Fuzzy logic
Parameters
Physical properties
Residual energy
Sensors
Wireless sensor networks
title Type II Fuzzy Logic Based Cluster Head Selection for Wireless Sensor Network
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