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Erschienen in: Water Resources Management 2/2024

08.12.2023

Machine Learning For Groundwater Quality Classification: A Step Towards Economic and Sustainable Groundwater Quality Assessment Process

verfasst von: Aymen Zegaar, Samira Ounoki, Abdelmoutia Telli

Erschienen in: Water Resources Management | Ausgabe 2/2024

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Abstract

Evaluation of water quality is essential for protecting both the environment and human wellbeing. There is a paucity of research on using machine learning for classification of groundwater used for irrigation with fewer input parameters and still getting satisfactory results, despite earlier studies exploring its application in evaluating water quality. Studies are required to determine the feasibility of using machine learning to classify groundwater used for irrigation using minimal input parameters. In this study, we developed machine learning models to simulate the Irrigation Water Quality Index (IWQI) and an economic model that used an optimal number of inputs with the highest possible accuracy. We utilized eight classification algorithms, including the LightGBM classifier, CatBoost, Extra Trees, Random Forest, Gradient Boosting classifiers, Support Vector Machines, Multi-Layer Perceptrons, and K-Nearest Neighbors Algorithm. Two scenarios were considered, the first using six inputs, including conductivity, chloride (\(\mathrm{Cl}^{-}\)), bicarbonate (\(\mathrm{HCO}_3{}^{-}\)), sodium (\(\mathrm{Na}^{+}\)), calcium (\(\mathrm{Ca}^{2+}\)), and magnesium (\(\mathrm{Mg}^{2+}\)), and the second using three parameters, including total hardness (TH), chloride (\(\mathrm{Cl}^{-}\)), and sulfate (\({\mathrm{SO}_4{}^{2-}}\)) that were selected based on the Mutual Information (MI) result. The models achieved satisfactory performance, with the LightGBM classifier as the best model, yielding a 91.08% F1 score using six inputs, and the Extra Trees classifier as the best model, yielding an 86.30% F1 score using three parameters. Our findings provide a valuable contribution to the development of accurate and efficient machine learning models for water quality evaluation.

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Literatur
Zurück zum Zitat Boser BE, Guyon IM, Vapnik VN (1992) A training algorithm for optimal margin classifiers. Proceedings of the fifth annual workshop on computational learning theory (pp 144–152) Boser BE, Guyon IM, Vapnik VN (1992) A training algorithm for optimal margin classifiers. Proceedings of the fifth annual workshop on computational learning theory (pp 144–152)
Zurück zum Zitat Friedman JH (2001) Greedy function approximation: a gradient boosting machine. Ann Stat, pp 1189–1232 Friedman JH (2001) Greedy function approximation: a gradient boosting machine. Ann Stat, pp 1189–1232
Zurück zum Zitat Meireles ACM, de Andrade EM, Chaves LCG, Frischkorn H, Crisostomo LA (2010) A new proposal of the classification of irrigation water. Revista Ciência Agronômica, pp 41349-357 Meireles ACM, de Andrade EM, Chaves LCG, Frischkorn H, Crisostomo LA (2010) A new proposal of the classification of irrigation water. Revista Ciência Agronômica, pp 41349-357
Zurück zum Zitat Rahimi D, Hasheminasab S (2017) Analysis water quality by artificial neural network in bazoft river (iran). J Chem Pharm Res 9:115–121 Rahimi D, Hasheminasab S (2017) Analysis water quality by artificial neural network in bazoft river (iran). J Chem Pharm Res 9:115–121
Metadaten
Titel
Machine Learning For Groundwater Quality Classification: A Step Towards Economic and Sustainable Groundwater Quality Assessment Process
verfasst von
Aymen Zegaar
Samira Ounoki
Abdelmoutia Telli
Publikationsdatum
08.12.2023
Verlag
Springer Netherlands
Erschienen in
Water Resources Management / Ausgabe 2/2024
Print ISSN: 0920-4741
Elektronische ISSN: 1573-1650
DOI
https://doi.org/10.1007/s11269-023-03690-y

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