Hybrid grasshopper and Harris hawk optimization algorithm‐based energy efficient routing protocol for extending network lifetime in wireless sensor networks

Author:

Kodati Sarangam1ORCID,Dhasaratham Meghavath2,Kishor Bodla3,Narayana Garlapati4

Affiliation:

1. Department of Information Technology CVR College of Engineering Hyderabad India

2. Department of Information Technology TKR College of Engineering and Technology Hyderabad India

3. Department of CSE CMR Engineering College Hyderabad India

4. Department of CSE (AIML) Chaitanya Bharathi Institute of Technology Hyderabad India

Abstract

SummaryIn wireless sensor networks (WSNs), routing based on cluster construction is highly preferred as it greatly supports reliable data communication, load balancing, and fault tolerance with extended network lifetime. In specific, metaheuristic approach‐based dynamic cluster heads (CHs) selection has the possibility of enhancing the lifespan of network and at the same time is capable in reducing the energy consumption. In this paper, hybrid grasshopper and Harris hawk optimization algorithm‐based energy efficient routing protocol (HGHHOA) is propounded for optimal CH selection. This proposed HGHHOA approach adopted a fitness function that incorporated the factors of residual energy, distance between CH and cluster members, distance between selected CHs and the sink, node centrality, and node degree into account. The fitness function values of optimality facilitate a potential CH selection with significant cost‐effective routing. It is proposed with primary objective of improving the network lifespan through optimized selection of CHs that balances the available energy in a predominant way. It is proposed with significance of handling premature convergence with minimized energy consumption and network lifetime through the possibility of establishing an ideal balance between number of alive and dead nodes. The results of this proposed HGHHOA approach with varying rounds of implementation exhibited better results in throughput and residual energy which is 23.98% and 29.21%, better than the bassline CH selection mechanisms.

Publisher

Wiley

Reference36 articles.

1. A novel cluster head selection using Hybrid Artificial Bee Colony and Firefly Algorithm for network lifetime and stability in WSNs

2. Energy efficient CH selection using improved sparrow search algorithm in wireless sensor networks;Kathiroli P;J King Saud Univ ‐ Comput Inf Sci,2021

3. Hybrid metaheuristic algorithm for optimal cluster head selection in wireless sensor network

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