How Accurate Is an Unmanned Aerial Vehicle Data-Based Model Applied on Satellite Imagery for Chlorophyll-a Estimation in Freshwater Bodies?

被引:5
作者
El-Alem, Anas [1 ]
Chokmani, Karem [1 ]
Venkatesan, Aarthi [1 ]
Rachid, Lhissou [1 ]
Agili, Hachem [1 ]
Dedieu, Jean-Pierre [2 ]
机构
[1] INRS, Ctr Eau Terre Environm, 490 Rue Couronne, Quebec City, PQ G1K 9A9, Canada
[2] Univ Grenoble Alpes CNRS IRD Grenoble INP, Inst Geosci & Environm Res IGE, F-38058 Grenoble, France
关键词
Sentinel-2; unmanned aerial vehicle; remote sensing; chlorophyll-a; machine learning; ensemble-based system; freshwaters; water quality; ENSEMBLE-BASED SYSTEM; REMOTE ESTIMATION; INLAND WATERS; DECISION-SUPPORT; NEURAL-NETWORK; ALGAL BLOOM; PHYTOPLANKTON; QUALITY; SPECTRORADIOMETER; REFLECTANCE;
D O I
10.3390/rs13061134
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Optical sensors are increasingly sought to estimate the amount of chlorophyll a (chl_a) in freshwater bodies. Most, whether empirical or semi-empirical, are data-oriented. Two main limitations are often encountered in the development of such models. The availability of data needed for model calibration, validation, and testing and the locality of the model developed-the majority need a re-parameterization from lake to lake. An Unmanned aerial vehicle (UAV) data-based model for chl_a estimation is developed in this work and tested on Sentinel-2 imagery without any re-parametrization. The Ensemble-based system (EBS) algorithm was used to train the model. The leave-one-out cross validation technique was applied to evaluate the EBS, at a local scale, where results were satisfactory (R-2 = Nash = 0.94 and RMSE = 5.6 mu g chl_a L-1). A blind database (collected over 89 lakes) was used to challenge the EBS' Sentine-2-derived chl_a estimates at a regional scale. Results were relatively less good, yet satisfactory (R-2 = 0.85, RMSE= 2.4 mu g chl_a L-1, and Nash = 0.79). However, the EBS has shown some failure to correctly retrieve chl_a concentration in highly turbid waterbodies. This particularity nonetheless does not affect EBS performance, since turbid waters can easily be pre-recognized and masked before the chl_a modeling.
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页数:27
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