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Using Machine-Learning Algorithms for Eutrophication Modeling: Case Study of Mar Menor Lagoon (Spain).

Patricia Jimeno-Sáez1, Javier Senent-Aparicio1, José M Cecilia2

  • 1Department of Civil Engineering, Universidad Católica San Antonio de Murcia, Campus de los Jerónimos s/n, 30107 Guadalupe, Murcia, Spain.

International Journal of Environmental Research and Public Health
|February 20, 2020
PubMed
Summary
This summary is machine-generated.

Machine learning models accurately predict chlorophyll-a levels in the Mar Menor lagoon, aiding in managing eutrophication. Support Vector Regression and Multilayer Neural Networks show promising results for water quality assessment.

Keywords:
Mar Menor coastal lagoonchlorophyll-aeutrophicationmultilayer neural network (MLNN)support vector regression (SVR)water quality

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Area of Science:

  • Environmental Science
  • Eutrophication Studies
  • Machine Learning Applications

Background:

  • The Mar Menor, a hypersaline lagoon in Spain, faces severe eutrophication crises impacting its ecological value.
  • Anthropogenic pressures have led to abrupt water quality degradation, causing significant public concern.

Purpose of the Study:

  • To investigate machine learning (ML) methods for predicting chlorophyll-a (Chl-a) levels.
  • To enhance the management of the Mar Menor's complex hydro-ecosystem through accurate Chl-a modeling.

Main Methods:

  • Evaluation of Multilayer Neural Networks (MLNNs) and Support Vector Regressions (SVRs) for Chl-a prediction.
  • Utilized water quality parameters as input data, with feature selection to identify optimal combinations.
  • Employed wrapper feature selection methods to simplify models and improve efficiency.

Main Results:

  • Both MLNNs and SVRs demonstrated satisfactory performance in predicting Chl-a concentrations.
  • Support Vector Regression (SVR) models exhibited superior performance during the validation phase compared to MLNNs.
  • The best-fit models achieved a cross-validated coefficient of determination (R²_CV) of up to 0.7.

Conclusions:

  • Machine learning algorithms, particularly SVR, are effective tools for predicting Chl-a in eutrophic coastal lagoons.
  • Feature selection enhances the accuracy and efficiency of ML models for water quality management.
  • These findings support the use of ML for proactive environmental management of sensitive ecosystems like the Mar Menor.