Beta
406863

Effective Fault Clustering Management Approach Based Self-recovery Mechanism for Decentralized Wireless Sensor Networks

Article

Last updated: 01 Feb 2025

Subjects

-

Tags

Computer Networks

Abstract

Wireless sensor networks (WSNs) have several uses and provide endless future possibilities. Nodes in wireless sensor networks are prone to failure owing to energy depletion, communication link problems, malicious attacks, and so on. As a result, self-recovery mechanisms are one of the most important challenges in WSNs. Fault detection is the primary strategy in the self- recovery mechanism in wireless sensor networks (WSNs), with each cluster head frequently checking the readings of its members. According to previous research, most comparing approaches will fail if more than half of a sensor's nearby nodes are incorrect. Furthermore, these comparing approaches cannot discover common mode failures. The suggested fault self-recovery method works by comparing the pulse sequence number generated by surrounding nodes and disseminating the choice made regarding each node. This paper presents an approach which can both locate and recover malfunctioning nodes in sensor networks. The proposed model is integrating capabilities of isolating the defective cluster sensors, which cause WSN malfunctions, from the cluster cycling and advertising the new path coordinates for the base station (BS). The simulation findings reveal that the suggested Effective Fault Clustering Management (EFCM) approach is very precise in discovering malfunctioning nodes and very fast in finding a cover free of such nodes when using the NS3 simulator

DOI

10.21608/djis.2025.349258.1002

Keywords

WSNs, Clustering, Node failure, Self-detect, Self-recovery

Authors

First Name

Walaa

Last Name

Elsayed

MiddleName

-

Affiliation

Department of information technology, Faculty of computer and information systems, Damanhour University, Egypt

Email

walaazaid@cis.dmu.edu.eg

City

-

Orcid

-

Volume

1

Article Issue

1

Related Issue

52014

Issue Date

2025-01-01

Receive Date

2024-12-31

Publish Date

2025-01-24

Print ISSN

3062-5017

Link

https://djis.journals.ekb.eg/article_406863.html

Detail API

http://journals.ekb.eg?_action=service&article_code=406863

Order

406,863

Type

Original Article

Type Code

3,325

Publication Type

Journal

Publication Title

Damanhour Journal of Intelligent Systems and Informatics

Publication Link

https://djis.journals.ekb.eg/

MainTitle

Effective Fault Clustering Management Approach Based Self-recovery Mechanism for Decentralized Wireless Sensor Networks

Details

Type

Article

Created At

01 Feb 2025