Litcius/Paper detail

Random Forests Based Path Loss Prediction in Mobile Communication Systems

Rongrong He, Yuping Gong, Wei Bai, Yangyang Li, Ximing Wang

202032 citationsDOI

Abstract

When deploying communication systems, an accurate wireless propagation model is important to ensure the quality of service covering the region. Due to the complex radio environment, the traditional wireless propagation models need massive data for correction and calculation. To address this issue, this paper proposes a wireless propagation method to predict path loss. We use the random forest network structure to fit the complex model, accurately predicting the received signal power in the target area. To improve the training efficiency of the model, we construct the preliminary features according to the previous knowledge. A filtering feature selection method is adopted to select features as input of model. Evaluating the model on four typical terrains, the experiment results show that the proposed model outperforms the four existing models in all types of terrains.

Topics & Concepts

Path lossComputer scienceTerrainRandom forestWirelessConstruct (python library)Radio propagation modelWireless networkRadio propagationPath (computing)Data miningArtificial intelligenceModel selectionReal-time computingMachine learningComputer networkTelecommunicationsBiologyEcologyMillimeter-Wave Propagation and ModelingWireless Signal Modulation ClassificationIndoor and Outdoor Localization Technologies