Evaluating the Performance of Algorithms in Estimating the Chl-a Concentration of Lake Bafa
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Published:2022-06-30
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ISSN:2717-7696
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Container-title:Turkish Journal of Geosciences
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language:en
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Short-container-title:turkgeo
Author:
KIRTILOĞLU Elif1, KARABÖRK Hakan1
Affiliation:
1. KONYA TECHNICAL UNIVERSITY
Abstract
Monitoring and mapping pigment concentrations in water bodies have a critical role in early intervention or investigation of causes for prevention. Remote sensing data is the most effective alternative due to its advantages as effortless, requiring less labor, and displaying large areas in a single frame. Analyzing and estimating Chlorophyll-a (Chl-a) concentrations constitute the most important research topics in water bodies because all phytoplankton contain Chl-a. In this study, we evaluated the performance of algorithms in estimating the Chl-a concentration of Lake Bafa based on Sentinel 2 bands which are simulated from in situ reflectance data. We used 1/R665xR705, 1/R665-1/R705, (1/R665-1/R705)xR740, R705/(R560+R665), and, Normalized Difference Chlorophyll Index (NDCI) algorithms for evaluation. Water samples and in situ measurements were collected and obtained in two field campaigns. Bands of Sentinel 2 were then simulated from in situ reflectance data and used to calibrate and validate models for Chl-a estimation. As a result of the analyzes results 0.679, 0.749, 0.395, 0.726, and 0.7 R² values and 1.882, 1.663, 1.737, and 1.818 µg/l RMSE values obtained respectively. Sentinel 2 images have been used for map validation. Our results show that 1/R665xR705 and NDCI algorithms performed better compared to the other three algorithms for our data range at Lake Bafa.
Publisher
Turkish Journal of Geoscience
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