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Application of classification machine learning algorithms for characterizing nutrient transport in a clay plain agricultural watershed.
Elsayed, Ahmed; Rixon, Sarah; Levison, Jana; Binns, Andrew; Goel, Pradeep.
Afiliação
  • Elsayed A; School of Engineering, Morwick G360 Groundwater Research Institute, University of Guelph, 50 Stone Road East, Guelph, Ontario, N1G 2W1, Canada; Irrigation and Hydraulics Department, Faculty of Engineering, Cairo University, 1 Gamaa Street, Giza, 12613, Egypt. Electronic address: aelsay03@uoguelph.ca
  • Rixon S; School of Engineering, Morwick G360 Groundwater Research Institute, University of Guelph, 50 Stone Road East, Guelph, Ontario, N1G 2W1, Canada.
  • Levison J; School of Engineering, Morwick G360 Groundwater Research Institute, University of Guelph, 50 Stone Road East, Guelph, Ontario, N1G 2W1, Canada.
  • Binns A; School of Engineering, Morwick G360 Groundwater Research Institute, University of Guelph, 50 Stone Road East, Guelph, Ontario, N1G 2W1, Canada.
  • Goel P; Ministry of the Environment, Conservation and Parks (MECP), 125 Resources Road, Etobicoke, Ontario, M9P 3V6, Canada.
J Environ Manage ; 345: 118924, 2023 Nov 01.
Article em En | MEDLINE | ID: mdl-37678017
ABSTRACT
Excess nutrients in surface water and groundwater can lead to water quality deterioration in available water resources. Thus, the classification of nutrient concentrations in water resources has gained significant attention during recent decades. Machine learning (ML) algorithms are considered an efficient tool to describe nutrient loss from agricultural land to surface water and groundwater. Previous studies have applied regression and classification ML algorithms to predict nutrient concentrations in surface water and/or groundwater, or to categorize an output variable using a limited number of input variables. However, there have been no studies that examined the application of different ML classification algorithms in agricultural settings to classify various output variables using a wide range of input variables. In this study, twenty-four ML classification algorithms were implemented on a dataset from three locations within the Upper Parkhill watershed, an agricultural watershed in southern Ontario, Canada. Nutrient concentrations in surface water were classified using geochemical and physical water parameters of surface water and groundwater (e.g., pH), climate and field conditions as the input variables. The performance of these algorithms was evaluated using four evaluation metrics (e.g., classification accuracy) to identify the optimal algorithm for classifying the output variables. Ensemble bagged trees was found to be the optimal ML algorithm for classifying nitrate concentration in surface water (accuracy of 90.9%), while the weighted KNN was the most appropriate algorithm for categorizing the total phosphorus concentration (accuracy of 87%). The ensemble subspace discriminant algorithm gave the highest overall classification accuracy for the concentration of soluble reactive phosphorus and total dissolved phosphorus in surface water with an accuracy of 79.2% and 77.9%, respectively. This study exemplifies that ML algorithms can be used to signify exceedance of recommended concentrations of nutrients in surface waters in agricultural watersheds. Results are useful for decision makers to develop nutrient management strategies.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Algoritmos / Aprendizado de Máquina Idioma: En Ano de publicação: 2023 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Algoritmos / Aprendizado de Máquina Idioma: En Ano de publicação: 2023 Tipo de documento: Article