Performance of Path Loss Models over Mid-Band and High-Band Channels for 5G Communication Networks: A Review
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Date
2023-11-07
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Publisher
MDPI
Abstract
The rapid development of 5G communication networks has ushered in a new era of highspeed, low-latency wireless connectivity, as well as the enabling of transformative technologies.
However, a crucial aspect of ensuring reliable communication is the accurate modeling of path
loss, as it directly impacts signal coverage, interference, and overall network efficiency. This review
paper critically assesses the performance of path loss models in mid-band and high-band frequencies
and examines their effectiveness in addressing the challenges of 5G deployment. In this paper, we
first present the summary of the background, highlighting the increasing demand for high-quality
wireless connectivity and the unique characteristics of mid-band (1–6 GHz) and high-band (>6 GHz)
frequencies in the 5G spectrum. The methodology comprehensively reviews some of the existing path
loss models, considering both empirical and machine learning approaches. We analyze the strengths
and weaknesses of these models, considering factors such as urban and suburban environments
and indoor scenarios. The results highlight the significant advancements in path loss modeling for
mid-band and high-band 5G channels. In terms of prediction accuracy and computing effectiveness,
machine learning models performed better than empirical models in both mid-band and high-band
frequency spectra. As a result, they might be suggested as an alternative yet promising approach to
predicting path loss in these bands. We consider the results of this review to be promising, as they
provide network operators and researchers with valuable insights into the state-of-the-art path loss
models for mid-band and high-band 5G channels. Future work suggests tuning an ensemble machine
learning model to enhance a stable empirical model with multiple parameters to develop a hybrid
path loss model for the mid-band frequency spectrum.
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Keywords
5G communication, empirical model, high-band, machine learning model, mid-band, path loss