An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS Imagery
The purpose of this study is to assess the performance of an adaptive model (AM) in estimating chlorophyll‑a concentration (Chl‑a) in optically complex inland waters. Chl‑a modeling using remote sensing data is usually based on a single model that generally follows an exponential function. The estim...
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doaj-0d295cd6f4474da685ec045842f5ee4e2020-11-24T21:54:04ZengMDPI AGRemote Sensing2072-42922014-07-01676446647110.3390/rs6076446rs6076446An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS ImageryAnas El-Alem0Karem Chokmani1Isabelle Laurion2Sallah E. El-Adlouni3Centre Eau Terre Environnement, INRS, 490 De la Couronne Street, Québec, QC G1K 9A9, CanadaCentre Eau Terre Environnement, INRS, 490 De la Couronne Street, Québec, QC G1K 9A9, CanadaCentre Eau Terre Environnement, INRS, 490 De la Couronne Street, Québec, QC G1K 9A9, CanadaMathematics and Statistics Department, Moncton University, 18 Antonine-Maillet Avenue, Moncton, NB E1A 3E9, CanadaThe purpose of this study is to assess the performance of an adaptive model (AM) in estimating chlorophyll‑a concentration (Chl‑a) in optically complex inland waters. Chl‑a modeling using remote sensing data is usually based on a single model that generally follows an exponential function. The estimates produced by such models are relatively accurate at high Chl‑a concentrations, but accuracy drops at low concentrations. Our objective was to develop an approach combining spectral response classification and three semi-empirical algorithms. The AM discriminates between three blooming classes (waters poorly, moderately, and highly loaded in Chl‑a), with discrimination thresholds set using the classification and regression tree (CART) technique. The calibration of three specific estimators for each class was achieved using a multivariate stepwise regression. Compared to published models (Floating Algae Index, Kahru model, and APProach by ELimination) using the same data set, the AM provided better Chl‑a concentration estimates (R2 of 0.96, relative RMSE of 23%, relative Bias of −2%, and a relative NASH criterion of 0.9). Moreover, the AM achieved an overall success rate of 67% in the estimation of blooming classes (corresponding to low, moderate, and high Chl‑a concentration classes). This was done using an independent data set collected from 22 inland water bodies for the period 2007–2010 and for which the only information available was the blooming class.http://www.mdpi.com/2072-4292/6/7/6446remote sensingMODISinland watersHABsChl‑aclassificationCARTmultivariate regressionstepwise |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Anas El-Alem Karem Chokmani Isabelle Laurion Sallah E. El-Adlouni |
spellingShingle |
Anas El-Alem Karem Chokmani Isabelle Laurion Sallah E. El-Adlouni An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS Imagery Remote Sensing remote sensing MODIS inland waters HABs Chl‑a classification CART multivariate regression stepwise |
author_facet |
Anas El-Alem Karem Chokmani Isabelle Laurion Sallah E. El-Adlouni |
author_sort |
Anas El-Alem |
title |
An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS Imagery |
title_short |
An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS Imagery |
title_full |
An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS Imagery |
title_fullStr |
An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS Imagery |
title_full_unstemmed |
An Adaptive Model to Monitor Chlorophyll-a in Inland Waters in Southern Quebec Using Downscaled MODIS Imagery |
title_sort |
adaptive model to monitor chlorophyll-a in inland waters in southern quebec using downscaled modis imagery |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2014-07-01 |
description |
The purpose of this study is to assess the performance of an adaptive model (AM) in estimating chlorophyll‑a concentration (Chl‑a) in optically complex inland waters. Chl‑a modeling using remote sensing data is usually based on a single model that generally follows an exponential function. The estimates produced by such models are relatively accurate at high Chl‑a concentrations, but accuracy drops at low concentrations. Our objective was to develop an approach combining spectral response classification and three semi-empirical algorithms. The AM discriminates between three blooming classes (waters poorly, moderately, and highly loaded in Chl‑a), with discrimination thresholds set using the classification and regression tree (CART) technique. The calibration of three specific estimators for each class was achieved using a multivariate stepwise regression. Compared to published models (Floating Algae Index, Kahru model, and APProach by ELimination) using the same data set, the AM provided better Chl‑a concentration estimates (R2 of 0.96, relative RMSE of 23%, relative Bias of −2%, and a relative NASH criterion of 0.9). Moreover, the AM achieved an overall success rate of 67% in the estimation of blooming classes (corresponding to low, moderate, and high Chl‑a concentration classes). This was done using an independent data set collected from 22 inland water bodies for the period 2007–2010 and for which the only information available was the blooming class. |
topic |
remote sensing MODIS inland waters HABs Chl‑a classification CART multivariate regression stepwise |
url |
http://www.mdpi.com/2072-4292/6/7/6446 |
work_keys_str_mv |
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