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http://dx.doi.org/10.7319/kogsis.2017.25.1.071

The Detection of Heat Emission to Solar Cell using UAV-based Thermal Infrared Sensor  

Lee, Geun Sang (Department of Cadastre & Civil Engineering, Vision College of Jeonju)
Lee, Jong Jo (Noori Space Industry Ltd.)
Publication Information
Journal of Korean Society for Geospatial Information Science / v.25, no.1, 2017 , pp. 71-78 More about this Journal
Abstract
Many studies have been implemented to manage solar plant being supplied widely in recent years. This study analyzed heat emission of solar cell using unmanned aerial vehicle(UAV)-based thermal infrared sensor, and major conclusions are as belows. Firstly, orthomosaic image and digital surface model(DSM) data were acquired using UAV-based RGB sensor, and solar light module layer necessary to analyze the heat emission of solar cell was constructed by these data. Also as a result of horizontal error into validation points using virtual reference service(VRS) survey for evaluating the location accuracy of solar light module layer, higher location accuracy could be acquired like standard error of $dx={\pm}2.4cm$ and $dy={\pm}3.2cm$. And this study installed rubber patch to test the heat emission of solar cell and could analyzed efficiently the location of rubber patch being emitted heat using UAV-based thermal infrared sensor. Also standard error showd as ${\pm}3.5%$ in analysis between calculated cell ratio by rubber patch and analyzed cell ratio by UAV-based thermal infrared sensor. Therefore, it could be efficiently analyzed to heat emission of solar cell using UAV-based thermal infrared sensor. Also efficient maintenance of solar plant could be possible through extracting the code of solar light module being emitted of heat automatically.
Keywords
Unmanned Aerial Vehicle(UAV); Solar Cell; Thermal Infrared Sensor; Heat Emission;
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Times Cited By KSCI : 7  (Citation Analysis)
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