Feb. 6, 2024, 5:42 a.m. | Ahmed P. Mohamed Byunghyun Lee Yaguang Zhang Max Hollingsworth C. Robert Anderson James V. Krogmeier D

cs.LG updates on arXiv.org arxiv.org

Machine learning (ML) offers a promising solution to pathloss prediction. However, its effectiveness can be degraded by the limited availability of data. To alleviate these challenges, this paper introduces a novel simulation-enhanced data augmentation method for ML pathloss prediction. Our method integrates synthetic data generated from a cellular coverage simulator and independently collected real-world datasets. These datasets were collected through an extensive measurement campaign in different environments, including farms, hilly terrains, and residential areas. This comprehensive data collection provides vital …

augmentation availability cellular challenges coverage cs.lg data eess.sp generated machine machine learning novel paper prediction simulation solution synthetic synthetic data

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