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http://dx.doi.org/10.3741/JKWRA.2022.55.4.301

A study on the analysis of current status of Seonakdong River algae using hyperspectral imaging  

Kim, Jongmin (Department of Civil and Environmental Engineering, Myongji University)
Gwon, Yeonghwa (Department of Civil and Environmental Engineering, Dankook University)
Park, Yelim (Department of Environmental Science and Engineering, Inje University)
Kim, Dongsu (Department of Civil and Environmental Engineering, Dankook University)
Kwon, Jae Hyun (Department of Environmental Science and Engineering, Inje University)
Kim, Young Do (Department of Civil and Environmental Engineering, Myongji University)
Publication Information
Journal of Korea Water Resources Association / v.55, no.4, 2022 , pp. 301-308 More about this Journal
Abstract
Algae is an indispensable primary producer in the ecosystem by supplying energy to consumers in the aquatic ecosystem, and is largely divided into green algae, blue-green algae, and diatoms. In the case of blue-green algae, the water temperature rises, which occurs in the summer and overgrows, which is the main cause of the algae bloom. Recently, the change in the occurrence time and frequency of the algae bloom is increasing due to climate change. Existing algae survey methods are performed by collecting water and measuring through sensors, and time, cost and manpower are limited. In order to overcome the limitations of these existing monitoring methods, research has been conducted to perform remote monitoring using spectroscopic devices such as multispectral and hyperspectral using satellite image, UAV, etc. In this study, we tried to confirm the possibility of species classification of remote monitoring through laboratory-scale experiments through algal culture and river water collection. In order to acquire hyperspectral images, a hyperspectral sensor capable of analyzing at 400-1000 nm was used. In order to extract the spectral characteristics of the collected river water for classification of algae species, filtration was performed using a GF/C filter to prepare a sample and images were collected. Radiation correction and base removal of the collected images were performed, and spectral information for each sample was extracted and analyzed through the process of extracting spectral information of algae to identify and compare and analyze the spectral characteristics of algae, and remote sensing based on hyperspectral images in rivers and lakes. We tried to review the applicability of monitoring.
Keywords
Algae; Algae bloom; Remote sensing; Hyperspectral image; Library;
Citations & Related Records
Times Cited By KSCI : 6  (Citation Analysis)
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