With the advancement of 5G and emerging wireless communication technologies, accurate modeling of wave propagation in indoor environments has become increasingly crucial. This study focuses on demonstrating how machine learning (ML) techniques can be applied to predict path loss within the millimeter wave (mmWave) spectrum in a specific indoor environment. We address high-frequency challenges like path loss and complex building layouts that impact signal propagation. We employ various ML models, including Artificial Neural Networks (ANNs), hybrid models integrating linear regression, ANNs, and Gaussian Processes, and Extreme Gradient Boosting (XGBoost), to predict and analyze the propagation loss in a controlled indoor setting. The models were trained and validated using data collected from a comprehensive measurement campaign at 28 GHz, which involved high precision radio equipment in a complex indoor environment. Our results demonstrate that while traditional models provide a baseline for understanding path loss, advanced ML models, particularly hybrid approaches, significantly enhance prediction accuracy and provide a deeper understanding of indoor propagation dynamics within this specific environment. The study highlights the potential of ML in overcoming the limitations of empirical models and showcases methodologies that can be adapted for similar indoor scenarios. This research advances our understanding of mmWave propagation indoors and sets a framework for utilizing ML in telecommunication system design and optimization in specific environments.
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Geospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
SmartSat Cooperative Research CentreGeospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
Harikesh Singh
LiMinn Ang
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School of Science Technology and Engineering,University of the Sunshine CoastGeospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
LiMinn Ang
Tom Lewis
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Queensland Forest Consulting ServicesGeospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
Tom Lewis
Dipak Paudyal
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APAC GeospatialGeospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
Dipak Paudyal
Mauricio Acuna
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Forest Research Institute,University of the Sunshine CoastGeospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
Mauricio Acuna
Prashant Kumar Srivastava
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Remote Sensing Laboratory,Institute of Environment and Sustainable Development,Banaras HinduGeospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
Prashant Kumar Srivastava
Sanjeev Kumar Srivastava
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Geospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine CoastGeospatial Analytics for Conservation and Management,School of Science Technology and Engineering,University of the Sunshine Coast
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Govt Med Coll, Omandurar Govt Estate, 169 Wallahjah Rd, Chennai 600002, Tamil Nadu, IndiaGovt Med Coll, Omandurar Govt Estate, 169 Wallahjah Rd, Chennai 600002, Tamil Nadu, India