Evaluating the effectiveness of machine learning models for path loss prediction at 3.5GHz with focus on feature extraction
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Date
2024
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Publisher
Nigerian Journal of Technology
Abstract
Accurate path loss prediction is vital for efficient resource allocation,
interference reduction, and overall network reliability in 5G networks,
particularly in the widely deployed mid-band frequency spectrum (such as 3.5
GHz). This study evaluates the effectiveness of machine learning models for path
loss prediction at 3.5 GHz with a focus on feature prioritization. A feature
selection method, recursive feature elimination, was used to identify significant
features from datasets obtained through measurement campaigns, weather
stations, 3-D ray tracing, geographical data, and simulations. Out of eighteen
features, eleven, including new environmental features, were identified as
significant features contributing to path loss. These selected variables were then
utilized to optimize and train four common machine learning models (ANN,
XGBoost, RF, and k-NN) to evaluate their performance in predicting path loss
in a specific urban area called an irregular urban environment. The
performance of these models was assessed by comparing their predictions with
the measured path loss. The Random Forest model closely matched the
measured path loss over the entire path length in both LoS and NLoS scenarios,
achieving the lowest MAE of 0.15 dB and RMSE of 0.57 dB in the LoS scenario
and 0.62 dB and 1.42 dB in the NLoS scenario, with R2 scores of 0.999995437
and 0.999996828, respectively. This indicates its superior performance in
predicting path loss in the urban environment
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Keywords
Feature selection, Path Loss, 5G Network, Machine Learning Model, Urban Environment