Green Optimization with Load balancing in Wireless Sensor Network using Elephant Herding Optimization

PDF (1147KB), PP.120-129

Views: 0 Downloads: 0

Author(s)

Rajit Ram Yadava 1,* Ranvijay Ranvijay

1. Motilal Nehru National Institute of Technology, Allahabad, Prayagraj, U.P., India

* Corresponding author.

DOI: https://doi.org/10.5815/ijcnis.2024.06.10

Received: 21 Dec. 2022 / Revised: 27 Feb. 2023 / Accepted: 30 Mar. 2023 / Published: 8 Dec. 2024

Index Terms

Wireless Sensor Networks, Energy Optimization, Cluster Head, Elephant Herding Optimization

Abstract

Wireless sensor networks (WSNs), which provide sensing capabilities to Internet of Things (IoT) equipment with limited energy resources, are made up of specialized transducers. Since substitution or re-energizing of batteries in sensor hubs is extremely difficult, power utilization becomes one of the pivotalmattersin WSN. Clustering calculation assumes a significant part in power management for the energy-compelled network. Optimal cluster head selection suitably adjusts the load in the sensor network, thereby reduces the energy consumption and elongates the lifetime of assisted sensors. This article centers around to an appropriate load balancing and routing technique by the utilization recently developed of Elephant Herding Optimization (EHO) algorithm that alternates the cluster location amongst nodes with the highest energy. The Scheme considered various parameter residual energy, initial energy and an optimum number of cluster head for the next cluster heads selection. The proposed model increases the lifetime of the network by keeping more nodes active even after the 2700th round. The experiment results of the trials show that the proposed EHO-based CH selection strategy outperforms the cutting-edge CH selection models. 

Cite This Paper

Rajit Ram Yadava, Ranvijay Ranvijay, "Green Optimization with Load balancing in Wireless Sensor Network using Elephant Herding Optimization", International Journal of Computer Network and Information Security(IJCNIS), Vol.16, No.6, pp.120-129, 2024. DOI:10.5815/ijcnis.2024.06.10

Reference

[1]Deif, D. S., & Gadallah, Y. (2017). An ant colony optimization approach for the deployment of reliable wireless sensor networks. IEEE Access, 5, 10744–10756.
[2]Sun, B., Gui, C., Song, Y., & Chen, H. (2014). A novel networkcoding and multipath routing approach for wireless sensor network. Wireless Personal Communications, 77(1), 87–99.
[3]Liu, X. (2017). Routing protocols based on ant colony optimization in wireless sensor networks: A survey. IEEE Access, 5, 26303–26317.
[4]Wohwe Sambo, Damien, et al. "Optimized clustering algorithms for large wireless sensor networks: A review." Sensors 19.2 (2019): 322.
[5]Shahraki, Amin, et al. "Clustering objectives in wireless sensor networks: A survey and research direction analysis." Computer Networks 180 (2020): 107376.
[6]Daanoune, Ikram, Baghdad Abdennaceur, and Abdelhakim Ballouk. "A comprehensive survey on LEACH-based clustering routing protocols in Wireless Sensor Networks." Ad Hoc Networks 114 (2021): 102409.
[7]Khedr, Ahmed M., Ahmed Aziz, and Walid Osamy. "Successors of PEGASIS protocol: A comprehensive survey." Computer Science Review 39 (2021): 100368.
[8]Gupta, Prateek, and Ajay K. Sharma. "Clustering-based heterogeneous optimized-HEED protocols for WSNs." Soft Computing 24 (2020): 1737-1761.
[9]Saranya, V., S. Shankar, and G. R. Kanagachidambaresan. "Energy efficient clustering scheme (EECS) for wireless sensor network with mobile sink." Wireless Personal Communications 100.4 (2018): 1553-1567.
[10]Daanoune, Ikram, Baghdad Abdennaceur, and Abdelhakim Ballouk. "A comprehensive survey on LEACH-based clustering routing protocols in Wireless Sensor Networks." Ad Hoc Networks 114 (2021): 102409.
[11]Beiranvand, Zahra, Ahmad Patooghy, and Mahdi Fazeli. "I-LEACH: An efficient routing algorithm to improve performance & to reduce energy consumption in Wireless Sensor Networks." The 5th Conference on Information and Knowledge Technology. IEEE, 2013.
[12]Ahlawat, Asha, and Vineeta Malik. "An extended vice-cluster selection approach to improve v leach protocol in WSN." 2013 Third International Conference on Advanced Computing and Communication Technologies (ACCT). IEEE, 2013.
[13]Yousaf, Adnan, et al. "Performance comparison of various LEACH protocols in wireless sensor networks." 2019 IEEE 15th International Colloquium on Signal Processing & Its Applications (CSPA). IEEE, 2019.
[14]Rao, P. C., Prasanta K. Jana, and Haider Banka. "A particle swarm optimization-based energy efficient cluster head selection algorithm for wireless sensor networks." Wireless networks 23.7 (2017): 2005-2020.
[15]Kathiroli, Panimalar. "An efficient cluster-based routing using sparrow search algorithm for heterogeneous nodes in wireless sensor networks." 2021 International Conference on Communication information and Computing Technology (ICCICT). IEEE, 2021.
[16]Merabtine, Nassima, et al. "Balanced clustering approach with energy prediction and round-time adaptation in wireless sensor networks." Int. J. Commun. Networks Distributed Syst. 22.3 (2019): 245-274.
[17]Shankar, T., S. Shanmugavel, and A. Rajesh. "Hybrid HSA and PSO algorithm for energy efficient cluster head selection in wireless sensor networks." Swarm and Evolutionary Computation 30 (2016): 1-10.
[18]D. Mehta and S. Saxena, “MCH-EOR: Multi-objective cluster head based energy-aware optimized routing algorithm in wireless sensornetworks,” Sustain. Comput. Informat. Syst., vol. 28, Dec. 2020,Art. no. 100406.
[19]H. Singh, M. Bala, and S. S. Bamber, “Augmenting network lifetime for heterogenous wsn assisted IoT using mobile agent,” Wireless Netw., vol. 26, no. 8, pp. 5965–5979, 2020.
[20]Khabiri, M., &Ghaffari, A. (2018). Energy-aware clustering-based routing in wireless sensor networks using cuckoo optimization algorithm. Wireless Personal Communications, 98(3), 2473–2495.
[21]RejinaParvin, J., &Vasanthanayaki, C. (2015). Particle swarm optimization-based clustering by preventing residual nodes in wireless sensor networks. IEEE Sensors Journal, 15(8), 4264–4274.
[22]Dohare, Indu, and Karan Singh. "Green communication in sensor enabled IoT: integrated physics inspired meta-heuristic optimization-based approach." Wireless Networks 26.5 (2020): 3331-3348.
[23]iang, A., et al. (2018). An effective hybrid routing algorithm in WSN: Ant colony optimization in combination with hop count minimization. Sensors, 18(4), 1020.
[24]Gupta, G. P., et al. (2018). Integrated clustering and routing protocol for wireless sensor networks using Cuckoo and Harmony Search based metaheuristic techniques. Engineering Applications of Artificial Intelligence, 68, 101–109. 
[25]Dohare, Indu, et al. "Modified sailfish optimization for energy efficient data transmission in IOT based sensor network." Annals of Operations Research (2022): 1-31.
[26]Liu, Xuxun, and Peiyu Zhang. "Data drainage: A novel load balancing strategy for wireless sensor networks." IEEE Communications Letters 22.1 (2017): 125-128.
[27]Wajgi, Dipak, and Nileshsingh V. Thakur. "Load balancing based approach to improve lifetime of wireless sensor network." International Journal of Wireless & Mobile Networks 4.4 (2012): 155.
[28]Dohare, Indu, and Karan Singh. "PSO-DEC: PSO based deterministic energy efficient clustering protocol for IoT." Journal of Discrete Mathematical Sciences and Cryptography 22.8 (2019): 1463-1475.
[29]Wang, Gai-Ge, Suash Deb, and Leandro dos S. Coelho. "Elephant herding optimization." 2015 3rd international symposium on computational and business intelligence (ISCBI). IEEE, 2015.
[30]Li, W., Wang, GG. Elephant herding optimization using dynamic topology and biogeography-based optimization based on learning for numerical optimization. Engineering with Computers 38, 1585–1613 (2022). https://doi.org/10.1007/s00366-021-01293-y
[31]Bayraklı, Selim, and Senol Zafer Erdogan. "Genetic algorithm-based energy efficient clusters (GABEEC) in wireless sensor networks." Procedia Computer Science 10 (2012): 247-254.
[32]Mehta, Komal, and Raju Pal. "Biogeography based optimization protocol for energy efficient evolutionary algorithm:(BBO: EEEA)." 2017 international conference on computing and communication technologies for smart nation (IC3TSN). IEEE, 2017.