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Development of Ocean Environmental Algorithms for Geostationary Ocean Color Imager (GOCI)
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2010
Year
Korean PeninsulaGoci AlgorithmEnvironmental MonitoringEngineeringOcean Environmental AlgorithmsMarine SensorMarine ChemistryOceanographyEarth ScienceMarine EnvironmentUnderwater ImagingOcean MonitoringMarine PollutionOceanographic ResearchWater QualityOcean Remote SensingPhytoplankton EcologyGoci Ss AlgorithmRemote SensingOptical Remote SensingMarine Biology
Several ocean color algorithms have been developed for GOCI (Geostationary Ocean Color Imager) using in-situ bio-optical data sets. These data sets collected around the Korean Peninsula between 1998 and 2009 include chlorophyll-a concentration (Chl-a), suspended sediment concentration (SS), absorption coefficient of dissolved organic matter (), and remote sensing reflectance () obtained from 1348 points. The GOCI Chl-a algorithm was developed using a 4-band remote sensing reflectance ratio that account for the influence of suspended sediment and dissolved organic matter. The GOCI Chl-a algorithm reproduced in-situ chlorophyll concentration better than the other algorithms. In the SeaWiFS images, this algorithm reduced an average error of 46 % in chlorophyll concentration retrieved by standard chlorophyll algorithms of SeaWiFS. For the GOCI SS algorithm, a single band was used (Ahn et al., 2001) instead of a band ratio that is commonly used in chlorophyll algorithms. The GOCI algorithm was derived from the relationship between remote sensing reflectance band ratio () and ). The GOCI Chl-a fluorescence and GOCI red tide algorithms were developed by Ahn and Shanmugam (2007) and Ahn and Shanmugam (2006), respectively. If the launch of GOCI in June 2010 is successful, then the developed algorithms will be analyzed in the GOCI CAL/VAL processes, and improved by incorporating more data sets of the ocean optical properties data that will be obtained from waters around the Korean Peninsula.