JOURNAL ARTICLE

Wireless Sensor Network Optimization Using Genetic Algorithm

Abstract

Wireless Sensor Network (WSN) is a high potential technology used in many fields (agriculture, earth, environmental monitoring, resources union, health, security, military, and transport, IoT technology). The band width of each cluster head is specific, thus, the number of sensors connected to each cluster head is restricted to a maximum limit and exceeding it will weaken the connection service between each sensor and its corresponding cluster head. This will achieve the research objective which refers to reaching the state where the proposed system energy is stable and not consuming further more cost. The main challenge is how to distribute the cluster heads regularly on a specified area, that’s why a solution was supposed in this research implies finding the best distribution of the cluster heads using a genetic algorithm. Where using an optimization algorithm, keeping in mind the cluster heads positions restrictions, is an important scientific contribution in the research field of interest. The novel idea in this paper is the crossover of two-dimensional integer encoded individuals that replacing an opposite region in the parents to produce the children of new generation. The mutation occurs with probability of 0.001, it changes the type of 0.05 sensors found in handled individual. After producing more than 1000 generations, the achieved results showed lower value of fitness function with stable behavior. This indicates the correct path of computations and the accuracy of the obtained results. The genetic algorithm operated well and directed the process towards improving the genes to be the best possible at the last generation. The behavior of the objective function started to be regular gradually throughout the produced generations until reaching the best product in the last generation where it is shown that all the sensors are connected to the nearest cluster head. As a conclusion, the genetic algorithm developed the sensors’ distribution in the WSN model, which confirms the validity of applying of genetic algorithms and the accuracy of the results.

Keywords:
Crossover Wireless sensor network Computer science Fitness function Genetic algorithm Algorithm Path (computing) Cluster (spacecraft) Process (computing) Field (mathematics) Computer network Mathematics Artificial intelligence Machine learning

Metrics

18
Cited By
2.99
FWCI (Field Weighted Citation Impact)
57
Refs
0.90
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

IoT-based Smart Home Systems
Physical Sciences →  Engineering →  Electrical and Electronic Engineering

Related Documents

JOURNAL ARTICLE

Optimization of Mobile Agent using Genetic Algorithm in Wireless Sensor Network

Harveen KaurMandeep Singh

Journal:   International Journal of Computer Applications Year: 2016 Vol: 134 (2)Pages: 31-46
JOURNAL ARTICLE

Survey On Energy Optimization In Wireless Sensor Network Using Genetic Algorithm

Aparna S. ShindeShruti Ambade

Journal:   Zenodo (CERN European Organization for Nuclear Research) Year: 2018
BOOK-CHAPTER

Genetic Algorithm with Heuristic Mutation for Wireless Sensor Network Optimization

Amit DuaPavel KrömerZbigniew J. CzechTomasz Jastrząb

Lecture notes on data engineering and communications technologies Year: 2023 Pages: 177-189
JOURNAL ARTICLE

Wireless Sensor Network Distribution Optimization Based on Quantum Genetic Algorithm

Hao WenHongliang Ren

Journal:   International Conference on Information Security Year: 2011 Pages: 393-396
© 2026 ScienceGate Book Chapters — All rights reserved.