Predicting Bahrain's Fixed Broadband Network Faults Through Logs and Tickets Analysis
Linked Agent
Al-Ammal, Hesham , Thesis advisor
Albalooshi, Fatema A. , Thesis advisor
Date Issued
2022
Language
English
Extent
[1],11, 138, pages
Place of institution
Sakhir, Bahrain
Thesis Type
Thesis (Master)
Institution
"""University of Bahrain, College of Science, Department of Postgraduate Programs
English Abstract
Abstract:
In the current research, we present a supervised classification methodology with
Light Gradient Boosting Machine (LightGBM) and Random Forest (RF) to
predict the broadband telecommunication network customers' trouble tickets
caused by network failures. Efficient fault diagnostics is of great concern for
service providers when it comes to network management. Preventive or proactive
maintenance measures are good in reducing the number of faults in the network,
thus improving its availability and mitigation of network failures causing service
interruption. Such measures help improve preventive maintenance, operational
network maintenance, and workforce collaboration. The model in the current
study is based on three datasets: Customer Trouble Tickets (CTT), Network
Alarm data (NA), and Customer Premise Equipment (CPE). The forecasted
model used historical trouble tickets on a Broadband Service provider in
Kingdom of Bahrain, to predict future failures. In each phase, data sets are filtered
according to specific criteria based on which predictive models are built using
LightGBM and RF methods. RF is used to identify the most critical features. The
predictive analysis results demonstrate that RF performs with an accuracy of
0.8442 which is the highest in comparison to other classification methods used in
the current study. Therefore, we will choose the RF as our final model to predict
the Alarm types.
Keywords: Fixed Bahrain Broadband, Random Forest, LightGBM,
Customer Experience, Network Fault Prediction
Member of
Identifier
https://digitalrepository.uob.edu.bh/id/ec0ac28a-644d-4b70-ae14-7c37a072cc23