2020
DOI: 10.3788/aos202040.0301001
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Remote-Sensing Monitoring of Green Tide and Its Drifting Trajectories in Yellow Sea Based on Observation Data of Geostationary Ocean Color Imager

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Cited by 7 publications
(5 citation statements)
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“…However, these algorithms require complex and accurate atmospheric correction procedures, which can increase the complexity of interpretation. To address this, Zhang Hailong et al developed the Floating Algae Index (FGTI) based on the DN values of different satellite data, and Chen Ying et al [89] proposed the Green Tide Index (TCT-GTI) algorithm based on the Tassel Cap Transformation method, which requires no atmospheric correction. The effect of atmospheric molecular scattering is removed, making the NDAI more sensitive to the radiance signal from the marine surface [85].…”
Section: Semi-analytical Modelmentioning
confidence: 99%
“…However, these algorithms require complex and accurate atmospheric correction procedures, which can increase the complexity of interpretation. To address this, Zhang Hailong et al developed the Floating Algae Index (FGTI) based on the DN values of different satellite data, and Chen Ying et al [89] proposed the Green Tide Index (TCT-GTI) algorithm based on the Tassel Cap Transformation method, which requires no atmospheric correction. The effect of atmospheric molecular scattering is removed, making the NDAI more sensitive to the radiance signal from the marine surface [85].…”
Section: Semi-analytical Modelmentioning
confidence: 99%
“…Unlike previous studies (Hu 2009;Chen et al 2020), this study realized the quantitative division of the life cycle of U. prolifera based on the five characteristic points in its life cycle curve. We obtained the time nodes of each stage of U. prolifera.…”
Section: Staged Characteristics Of U Prolifera In the Spatio-temporal Distributionmentioning
confidence: 99%
“…The key to control such disasters is to monitor the spatio-temporal distribution characteristics and drift trajectory accurately. Existing studies have made significant achievements in terms of understanding the origin of U. prolifera disaster (Qing et al 2018), its spatio-temporal distribution (Qi et al 2016;Yang et al 2017), drift monitoring (Zhang et al 2018a(Zhang et al , 2018bChen et al 2020), biomass estimation (Hu et al 2017;Xiao et al 2017), and environmental factors (Feng et al 2012;Zhang et al 2020a). Among the representative studies, Gower et al (2006) used 300 m resolution data from MERIS to monitor a large area of Sargasso seaweed in the Gulf of Mexico, laying a foundation for the monitoring of U. prolifera disasters based on remote sensing data.…”
Section: Introductionmentioning
confidence: 99%
“…The diurnal variation in the Ulva prolifera coverage area tended to increase and then decrease. Based on the band characteristics of the GOCI sensor, Chen et al (2020) designed a new green tides index algorithm based on the tasseled cap transformation method. They proved that the new method has high reliabilityand also explained that the monitored green tides coverage area reached a maximum expansion at noon, which may be affected by photosynthesis.…”
Section: Introductionmentioning
confidence: 99%