Litcius/Paper detail

Environment Features-Based Model for Path Loss Prediction

Yutong Sun, Jianhua Zhang, Yuxiang Zhang, Li Yu, Zhiqiang Yuan, Guangyi Liu, Qixing Wang

2022IEEE Wireless Communications Letters42 citationsDOI

Abstract

Conventionally statistical path loss models are high-dimensional data-based without utilizing specific environment features. In this letter, a novel environment features-based model (EFBM) for path loss prediction is presented. We connect the propagation environment and channel by representing the environment with low-dimensional features: distance, deviation, volume, and blockage. The features are propagation-related, which can predict path loss directly by utilizing the Random Forest (RF) method. Compared with the data-based method, the proposed method can reduce the Root Mean Squared Error (RMSE) by 0.33 and 0.89 dB at 6 and 28 GHz and provide closer results to the Ray-Tracing (RT)-based ground-truth values.

Topics & Concepts

Path lossMean squared errorGround truthLog-distance path loss modelComputer sciencePath (computing)Standard deviationRadio propagation modelAlgorithmData modelingRandom forestStatisticsRadio propagationArtificial intelligenceMathematicsWirelessTelecommunicationsDatabaseProgramming languageMillimeter-Wave Propagation and ModelingTelecommunications and Broadcasting TechnologiesPower Line Communications and Noise