Abstract

Wireless sensor network is a hot research topic with massive applications in different domains. Generally, wireless sensor network comprises hundreds to thousands of sensor nodes, which communicate with one another by the use of radio signals. Some of the challenges exist in the design of wireless sensor network are restricted computation power, storage, battery and transmission bandwidth. To resolve these issues, clustering and routing processes have been presented. Clustering and routing processes are considered as an optimization problem in wireless sensor network which can be resolved by the use of swarm intelligence–based approaches. This article presents a novel swarm intelligence–based clustering and multihop routing protocol for wireless sensor network. Initially, improved particle swarm optimization technique is applied for choosing the cluster heads and organizes the clusters proficiently. Then, the grey wolf optimization algorithm–based routing process takes place to select the optimal paths in the network. The presented improved particle swarm optimization–grey wolf optimization approach incorporates the benefits of both the clustering and routing processes which leads to maximum energy efficiency and network lifetime. The proposed model is simulated under an extension set of experimentation, and the results are validated under several measures. The obtained experimental outcome demonstrated the superior characteristics of the improved particle swarm optimization–grey wolf optimization technique under all the test cases.

Highlights

  • Wireless sensor network (WSN) comprises numerous sensors that collects information from corresponding atmosphere and transfers to base station (BS).[1]

  • The grey wolf optimization (GWO) algorithm–based routing process takes place to select the optimal paths in the network

  • The presented improved particle swarm optimization (IPSO)–GWO approach incorporates the benefits of both the clustering and routing processes which leads to maximum energy efficiency and network lifetime

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Summary

Introduction

Wireless sensor network (WSN) comprises numerous sensors that collects information from corresponding atmosphere and transfers to base station (BS).[1]. Local energy consumption prediction-based clustering (LECP-CP) model is projected in Yu et al.[18] comprising a new CH selection technique, inter-cluster transmission and routing tree creation technique It depends on the distributed energy predicted and utilization ratio of sensors. CLHng, while the collection non- CH nodes as Cg LH In this presented model, the CH is conscientious in organizing between the nodes in the cluster, collecting intra-cluster information and communicates through RNs. The energy level and positions of the nodes are treated while choosing the CHs. The BS be inclined to choose the CHs by high residual work and optimal positions, and form the clusters with the same allotment of the sensor nodes. The stable a denotes the involvement of RCenLgHy and RCloLcH in the suitability function FCLH: RCenHgy indicates the ratios of CHs’ average residual work to non-

E CLH ECgLH
D CgLH D CLH
Results analysis
Conclusion
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