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Modeling a 3G Mobile Phone base Radio using Artificial Intelligence Techniques

Authors

Eduardo Calo1, 5, Gabriel Vaca1, Cristina Sánchez2, David Jines3, Giovanny Amancha3, Ángel Flores3, Alex Santana G3 and Fernanda Oñate4, 1Carrera Electricidad, Instituto Superior María Natalia Vaca, Ecuador, 2Carrera Mecánica Automotriz, Instituto Superior María Natalia Vaca, Ecuador, 3Carrera Electrónica, Instituto Superior María Natalia Vaca, Ecuador, 4Instituto Superior Tecnológico Pelileo-Baños, Ecuador, 5UNIR, Spain

Abstract

The main objective of this work is to be able to use artificial intelligence techniques to be able to design a predictive model of the performance of a third-generation mobile phone base radio, using the analysis of KPIs obtained in a statistical data set of the daily behaviour of an RBS. For the realization of these models, various techniques such as Decision Trees, Neural Networks and Random Forest were used. which will allow faster progress in the deep analysis of large amounts of data statistics and get better results. In this part of the work, data was obtained from the behaviour of a third-party mobile phone base radio generation of the Claro operator in Ecuador, it should be noted that. The data are KPIs of the daily and hourly performance of a radio base of third generation mobile telephony, these data were obtained through the operator's remote monitoring and management tool Sure call PRS. To specify this practical case, several models were generated based on in various artificial intelligence technique for the prediction of performance results of a mobile phone base radio of third generation, the same ones that after several tests were creation of a predictive model that determines the performance of a mobile phone base radio. As a conclusion of this work, it was determined that the development of a predictive model based on artificial intelligence techniques is very useful for the analysis of large amounts of data in order to find or predict complex results, more quickly and trustworthy.

Keywords

Neural Networks, Performance, Radio Base, Random Forest, Throughput.

Full Text  Volume 11, Number 23