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Comparative Analysis of Methods and Model of Protection Against Electromagnetic Fields in Cellular Communication

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The impacts of electromagnetic radiation (EMR) of cellular phones on the human body are studied worldwide. Some groups of scientists claim that the use of cellular phones leads to diseases that have a latent period of development. In this regard, measures are necessary in order to reduce the impact of EMR on humans in advance. Reducing the EMR impact on the body of a biological object can be achieved in various ways. One of the directions is the development of shielding materials and the mathematical simulation of the distribution of EMR sources in order to prevent people from getting into their biologically hazardous areas. In the conducted study, fuzzy logic has been used to simulate the calculation of the biologically hazardous area radius. The Mamdani fuzzy inference algorithm has been used as a fuzzy output model. A comparative analysis based on the Mean Absolute Percentage Error (MAPE) indices and the accuracy with regression models has demonstrated that the developed model is 4% superior over them.
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Biologically Hazardous Area Radius; Biological Object; Cellular Phone; Fuzzy Logic; Radio-Frequency Radiation

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