Design and assembly of an IoT-based device to determine the absorbed dose of gamma and UV radiation

Article Subjects > Engineering Ibero-american International University > Research > Scientific Production Cerrado Inglés Ionizing and non-ionizing radiations are part of our daily life, and when organisms are exposed to them for a long time, they may experience their lethal or sublethal effects. For this reason, technologies have been created to quantify them. In this study, Internet of Things (IoT) was used through connecting gamma meters and a low-cost UV radiation device. The validation of this structure was performed with meters calibrated in certified laboratories. The validation results matched those obtained by the other devices, with an error of 2%. metadata Baena Navarro, Ruben Enrique and Torres-Hoyos, F. and Uc-Rios, Carlos and Colmenares-Quintero, R.F. mail ruben.baena@campusucc.edu.co, UNSPECIFIED, carlos.uc@unini.edu.mx, UNSPECIFIED (2020) Design and assembly of an IoT-based device to determine the absorbed dose of gamma and UV radiation. Applied Radiation and Isotopes, 166. p. 109359. ISSN 09698043

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Abstract

Ionizing and non-ionizing radiations are part of our daily life, and when organisms are exposed to them for a long time, they may experience their lethal or sublethal effects. For this reason, technologies have been created to quantify them. In this study, Internet of Things (IoT) was used through connecting gamma meters and a low-cost UV radiation device. The validation of this structure was performed with meters calibrated in certified laboratories. The validation results matched those obtained by the other devices, with an error of 2%.

Item Type: Article
Uncontrolled Keywords: Dosimetry; Internet of Things (IoT); Meters; Radiations.
Subjects: Subjects > Engineering
Divisions: Ibero-american International University > Research > Scientific Production
Date Deposited: 14 Mar 2022 23:55
Last Modified: 14 Mar 2022 23:55
URI: https://repositorio.unini.edu.mx/id/eprint/559

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