Abstract

Wireless sensor network (WSN) comprises the distributed sensors for aggregating and organizing the data. Data aggregation is the major concern in WSN since it relies on several factors, namely energy constraints of sensors, network topology, links conditions and so on. The conventional approach does not perform efficient data aggregation due to their battery power of nodes and degrade the network lifetime. To improve data aggregation and network lifetime, An Energy-Efficient Ensembled Elbow Fuzzy C-means Clustering based Data Aggregation (EEEEFCC-DA) method is designed. Initially, residual energy of each sensor node (SN) is calculated. To determine the number of clusters, the elbow method is used in fuzzy c-means clustering algorithm. Then, Centroids value is calculated for every cluster to group SNs. Bray-Curtis Similarity Index is used to compute the similarity between the SN and Centroids value of cluster. SNs are grouped depends on the similarity value. The process gets iterated until every SNs gets clustered to the suitable clusters. After that, the SN with higher residual energy is selected as cluster head (CH). CH gathers data from each SNs and send to sink node. This, assist to enhance the data gathering accuracy and lessen the energy consumption. Simulation of EEEEFCC-DA method is carried out with various metrics namely energy consumption, network lifetime, data aggregation accuracy (DAA) and data aggregation time with number of SNs and number of data packets (DP). Results show that EEEEFCC-DA method provides better performance in term of DAA , network lifetime , energy consumption and data aggregation time than the conventional methods.

Highlights

  • A Wireless sensor network (WSN) comprises sensor devices for gathering and organizing the environmental data

  • Network lifetime measured as the ratio of number of energy efficient sensor nodes are selected for data aggregation to total number of SN

  • EEEEFCC-DA method is introduced for enhancing the data aggregation and network lifetime by minimizing energy consumption

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Summary

Introduction

A WSN comprises sensor devices for gathering and organizing the environmental data. SNs are deployed in network and coordinate with each other to accomplish a certain task. An Energy-aware Compressive sensing based Data Aggregation (ECDA) model was introduced in [3] to overcome the problem of network lifetime. To conserve node energy and improve the network lifetime, a dynamic mobile agentbased data collection method was presented in [6]. It failed to enhance the accuracy of data aggregation. A cluster-ring method was introduced in [8] for energy efficient data gathering and enhancing the lifetime of the network. In [15], a spawn multi-mobile agent itinerary planning (SMIP) method was developed to enhance the data gathering processes with minimal energy utilization and time. Process of the EEEEFCC-DA method with the neat diagram is presented

Methodology
Ensembled Elbow method based Fuzzy Cmeans clustering for Data aggregation
Energy consumption
Network lifetime
Data aggregation accuracy
Data aggregation time
Findings
Conclusions
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