Estimation of Water Quality Parameters through a Combination of Deep Learning and Remote Sensing Techniques in a Lake in Southern Chile

Author:

Rodríguez-López Lien1ORCID,Usta David Bustos2ORCID,Duran-Llacer Iongel3ORCID,Alvarez Lisandra Bravo4ORCID,Yépez Santiago5ORCID,Bourrel Luc6,Frappart Frederic7ORCID,Urrutia Roberto8

Affiliation:

1. Facultad de Ingeniería, Arquitectura y Diseño, Universidad San Sebastián, Lientur 1457, Concepción 4030000, Chile

2. Facultad de Oceanografía, Universidad de Concepción, Concepción 4030000, Chile

3. Hémera Centro de Observación de la Tierra, Facultad de Ciencias, Ingeniería y Tecnología, Universidad Mayor, Camino La Pirámide 5750, Huechuraba 8580745, Chile

4. Department of Electrical Engineering, Universidad de Concepción, Edmundo Larenas 219, Concepción 4030000, Chile

5. Department of Forest Management and Environment, Faculty of Forestry, Universidad de Concepcion, Calle Victoria, Concepción 4030000, Chile

6. Géosciences Environnement Toulouse, UMR 5563, Université de Toulouse, CNRS-IRD-OMP-CNES, 31000 Toulouse, France

7. INRAE, Bordeaux Sciences Agro, UMR 1391 ISPA, Université de Bordeaux, 33604 Talence, France

8. Facultad de Ciencias Ambientales, Universidad de Concepción, Concepción 4030000, Chile

Abstract

In this study, we combined machine learning and remote sensing techniques to estimate the value of chlorophyll-a concentration in a freshwater ecosystem in the South American continent (lake in Southern Chile). In a previous study, nine artificial intelligence (AI) algorithms were tested to predict water quality data from measurements during monitoring campaigns. In this study, in addition to field data (Case A), meteorological variables (Case B) and satellite data (Case C) were used to predict chlorophyll-a in Lake Llanquihue. The models used were SARIMAX, LSTM, and RNN, all of which showed generally good statistics for the prediction of the chlorophyll-a variable. Model validation metrics showed that all three models effectively predicted chlorophyll as an indicator of the presence of algae in water bodies. Coefficient of determination values ranging from 0.64 to 0.93 were obtained, with the LSTM model showing the best statistics in any of the cases tested. The LSTM model generally performed well across most stations, with lower values for MSE (<0.260 (μg/L)2), RMSE (<0.510 ug/L), MaxError (<0.730 μg/L), and MAE (<0.442 μg/L). This model, which combines machine learning and remote sensing techniques, is applicable to other Chilean and world lakes that have similar characteristics. In addition, it is a starting point for decision-makers in the protection and conservation of water resource quality.

Funder

CRHIAM

Chilean government

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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