University Links: Home Page | Site Map
Covenant University Repository

Development of a Machine Learning Based Fault Detection Model for Received Signal Level in Telecommunication Enterprise Infrastructure

Okokpujie, Kennedy O. and Nwokolo, Innocent Ozulonye and ADENUGBA, FAVOUR TOLUWANIMI and Awomoyi, Morayo E. (2024) Development of a Machine Learning Based Fault Detection Model for Received Signal Level in Telecommunication Enterprise Infrastructure. International Journal of Safety and Security Engineering, 14 (3). pp. 679-690.

[img] PDF
Download (1MB)

Abstract

This research develops a machine-learning fault detection model for received signal levels in telecommunication infrastructure. The methodology involves modeling an enterprise point-to-multipoint wireless network using pathloss 5.0 software. Data from the simulated network, including free space pathloss, transmit power output, transmit antenna gain, transmitter loss, miscellaneous loss, and receiver loss, is used to train three regression models: gradient boosting regression (GBR), random forest regression (RFR), and KNearest Neighbor (KNN). The algorithm compares the received signal levels (RSL) of new data with a threshold value, triggering a "Fault" or "No-fault" condition. A "Fault" indicates a deviation in the RSL, prompting maintenance by the field support team. A "No-fault" means the RSL is within the accepted range, requiring no maintenance. Performance evaluation metrics such as mean absolute error (MAE), mean square error (MSE), R-squared, and root mean square error (RMSE) were compared to select the optimal model. Experimental results show that the RFR model outperforms GBR and KNN with MAE: 0.007101, MSE: 0.000610, R-squared: 0.999992, and RMSE: 0.024697. Leveraging these machine learning-based fault detection models enables telecom service providers to optimize network performance, reduce downtime, and increase customer satisfaction.

Item Type: Article
Uncontrolled Keywords: Machine learning, enterprise wireless, telecommunication, received signal levels (RSL)
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
T Technology > TK Electrical engineering. Electronics Nuclear engineering
Divisions: Faculty of Engineering, Science and Mathematics > School of Electronics and Computer Science
Depositing User: Patricia Nwokealisi
Date Deposited: 27 Nov 2024 16:11
Last Modified: 27 Nov 2024 16:11
URI: http://eprints.covenantuniversity.edu.ng/id/eprint/18623

Actions (login required)

View Item View Item