Comparing Machine Learning Algorithms for Improving the Maintenance of LTE Networks Based on Alarms Analysis

Bernabe, Batchakui and Michel, Deussom Djomadji Eric and Marie, Chana Anne and Fabrice, Mama Tsimi Serge (2022) Comparing Machine Learning Algorithms for Improving the Maintenance of LTE Networks Based on Alarms Analysis. Journal of Computer and Communications, 10 (12). pp. 125-137. ISSN 2327-5219

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Abstract

Mobile network operators are facing many challenges to satisfy their subscribers in terms of quality of service and quality of experience provided. To achieve this goal, technological progress and scientific advances offer good opportunities for efficiency in the management of faults occurring in a mobile network. Machine learning techniques allow systems to learn from past experiences and can predict, solutions to be applied to correct the root cause of a failure. This paper evaluates machine learning techniques and identifies the decision tree as a learning model that provides the most optimal error rate in predicting outages that may occur in a mobile network. Three machine learning techniques are presented in this study and compared with regard to accuracy. This study demonstrates that the appropriate machine learning technique improves the accuracy of the model. By using the decision tree as a machine learning model, it was possible to predict solutions to network failures, with an error rate less than 2%. In addition, the use of Machine Learning makes it possible to eliminate steps in the network failure processing chain; resulting in reduced service disruption time and improved the network availability which is a key network performance index.

Item Type: Article
Subjects: Science Repository > Medical Science
Depositing User: Managing Editor
Date Deposited: 18 Apr 2023 04:48
Last Modified: 03 Feb 2024 04:10
URI: http://research.manuscritpub.com/id/eprint/1955

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