Abstract

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 (R2 = Nash = 0.94 and RMSE = 5.6 µg 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 (R2 = 0.85, RMSE= 2.4 µg 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.

Highlights

  • Man-made pollution towards the environment combined with global warming have made algal blooms in freshwater bodies more recurrent, intense, and harmful more than ever

  • TwoTwo main stepssteps werewere followed during this process: calibration, where two field field campaigns were performed over three lakes

  • The proposed decisions tree by the Classification and regression tree (CART) is optimal for the used training database, but not unique

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Summary

Introduction

Man-made pollution towards the environment combined with global warming have made algal blooms in freshwater bodies more recurrent, intense, and harmful more than ever. When they are massive, algal blooms can be a real threat to human and animal health [1]. Many readers make the common mistake of labelling massive algal blooms, known as HAB (Harmful algal blooms), as cyanobacteria. Dinoflagellates-based or diatoms blooms are not as harmful to citizens as cyanobacteriabased blooms, but their massive growth is as degrading to the freshwater quality and to the entire aquatic ecosystem as cyanobacteria blooms [3]. Long et al [4]

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