Published October 31, 2022 | Version v1
Journal article Open

Prediction of user throughput in the mobile network along the motorway and trunk road

  • 1. University of East Sarajevo, Faculty of Transport and Traffic Engineering Doboj, Bosnia and Herzegovina
  • 2. University of East Sarajevo, Faculty of Philosophy Pale - Department for computer science & systems, Pale, Bosnia and Herzegovina

Description

The main goal of this research is to create a machine learning model for predicting user throughput in the mobile 4G network of the network provider M:tel Banja Luka, Bosnia and Herzegovina. The geographical area of the research is limited to the section of Motorway "9th January" (M9J) Banja Luka - Doboj, between the node Johovac and the town of Prnjavor (P-J section), and the area of the section of trunk road M17, between the node Johovac and the town of Doboj (J-D section). Based on the set of collected data, several models based on machine learning techniques were trained and tested together with the application of the Correlation-based Feature Selection (CFS) method to reduce the space of input variables. The test results showed that the models based on k-Nearest Neighbors (k-NN) have the lowest relative prediction error, for both sections, while the model created for the trunk road section has significantly better performance.

Files

vol2no2pp23-30_Prediction+of+User+Throughput+in+the+Mobile+Network+Along+the+Motorway+and+Trunk+Road.pdf