Comparing Machine Learning Methods for Air-to-Ground Path Loss Prediction

2021 10th International Conference on Modern Circuits and Systems Technologies (MOCAST)(2021)

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摘要
Machine Learning-based models gain increasingly momentum regarding the problem of path loss prediction. The work at hand deploys four machine learning algorithms (k Nearest Neighbors - kNN, Support Vector Regression - SVR, Random Forest - RF and AdaBoost), in order to simulate the radio coverage provided from a flying base station in the greek city of Tripolis. Their comparison shows that tree-based ensemble models (RF and AdaBoost) can be used as fast and reliable alternatives to the Ray Tracing technique.
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关键词
mobile communications,ray tracing,path loss,machine learning,Support Vector Regression,Random Forest,k-Nearest Neighbors,AdaBoost
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