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Genetic-Chicken Swarm Algorithm for Minimizing Energy in Wireless Sensor Network

Authors
Basha, A. JameerAswini, S.Aarthini, S.Nam, YunyoungAbouhawwash, Mohamed
Issue Date
Jan-2023
Publisher
C R L Publishing Ltd.
Keywords
Energy eff i ciency; sensor nodes; chicken swarm optimization; load; balanced clustering method; wireless sensor network; cluster heads; load-; balancing; fi tness function
Citation
Computer Systems Science and Engineering, v.44, no.2, pp 1451 - 1466
Pages
16
Journal Title
Computer Systems Science and Engineering
Volume
44
Number
2
Start Page
1451
End Page
1466
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/21657
DOI
10.32604/csse.2023.025503
ISSN
0267-6192
Abstract
Wireless Sensor Network (WSN) technology is the real-time application that is growing rapidly as the result of smart environments. Battery power is one of the most significant resources in WSN. For enhancing a power factor, the clustering techniques are used. During the forward of data in WSN, more power is consumed. In the existing system, it works with Load Balanced Clustering Method (LBCM) and provides the lifespan of the network with scalability and reliability. In the existing system, it does not deal with end-to-end delay and delivery of packets. For overcoming these issues in WSN, the proposed Genetic Algorithm based on Chicken Swarm Optimization (GA-CSO) with Load Balanced Clustering Method (LBCM) is used. Genetic Algorithm generates chromosomes in an arbitrary method then the chromosomes values are calculated using Fitness Function. Chicken Swarm Optimization (CSO) helps to solve the complex optimization problems. Also, it consists of chickens, hens, and rooster. It divides the chicken into clusters. Load Balanced Clustering Method (LBCM) maintains the energy during communication among the sensor nodes and also it balances the load in the gateways. The proposed GA-CSO with LBCM improves the lifespan of the network. Moreover, it minimizes the energy consumption and also balances the load over the network. The proposed method outperforms by using the following metrics such as energy efficiency, ratio of packet delivery, throughput of the network, lifetime of the sensor nodes. Therefore, the evaluation result shows the energy efficiency that has achieved 83.56% and the delivery ratio of the packet has reached 99.12%. Also, it has attained linear standard deviation and reduced the end-to-end delay as 97.32 ms.
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