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http://dx.doi.org/10.6109/jkiice.2021.25.4.558

Research on 5G Base Station Evaluation Method through Electromagnetic Wave Intensity Prediction Model  

Lee, Yang-Weon (Department of Information and Communication Engineering, Honam University)
Abstract
With the recent introduction of 5G, electromagnetic radiation sources are spreading throughout life, so it is necessary to establish a citizen-centered electromagnetic safety management system. In particular, the beamforming method of the 5G antenna increases the power density measurement of electromagnetic waves by more than 10 times when the wireless base station is installed, so it is unreasonable to determine the safety by physical measurement. Therefore, it is necessary to determine the presence or absence of electromagnetic wave safety in daily life through a predictive method by calculation through systematic model analysis. In this paper, in order to check the possibility of a 5G wireless base station using an electromagnetic wave numerical analysis tool as a way to solve this problem, we compared the measured values of the actual base stations and the predicted values through the prediction model to compare the reliability. A method of constructing a real-time base station electromagnetic wave strength prediction evaluation system combined with software was also proposed.
Keywords
Base station; 5G; Electromagnetic; Evaluation method;
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