Assessment of Water Hydrochemical Parameters Using Machine Learning Tools : научное издание

Описание

Тип публикации: статья из журнала

Год издания: 2025

Идентификатор DOI: 10.3390/su17020497

Аннотация: <jats:p>Access to clean water is a fundamental human need, yet millions of people worldwide still lack access to safe drinking water. Traditional water quality assessments, though reliable, are typically time-consuming and resource-intensive. This study investigates the application of machine learning (ML) techniques for analyzing Показать полностьюriver water quality in the Barnaul area, located on the Ob River in the Altai Krai. The research particularly highlights the use of the Water Quality Index (WQI) as a key factor in feature engineering. WQI, calculated using the Horton model, integrates nine hydrochemical parameters: pH, hardness, solids, chloramines, sulfate, conductivity, organic carbon, trihalomethanes, and turbidity. The primary objective was to demonstrate the contribution of WQI in enhancing predictive performance for water quality analysis. A dataset of 2465 records was analyzed, with missing values for parameters (pH, sulfate, and trihalomethanes) addressed using predictive imputation via neural network (NN) architectures optimized with genetic algorithms (GAs). Models trained without WQI achieved moderate predictive accuracy, but incorporating WQI as a feature dramatically improved performance across all tasks. For the trihalomethanes model, the R2 score increased from 0.68 (without WQI) to 0.86 (with WQI). Similarly, for pH, the R2 improved from 0.35 to 0.74, and for sulfate, from 0.27 to 0.69 after including WQI in the feature set.</jats:p>

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Издание

Журнал: Sustainability

Выпуск журнала: Т. 17, 2

Номера страниц: 497

ISSN журнала: 20711050

Персоны

  • Malashin Ivan (Artificial Intelligence Technology Scientific and Education Center, Bauman Moscow State Technical University, 105005 Moscow, Russia)
  • Nelyub Vladimir (Scientific Department, Far Eastern Federal University, 690922 Vladivostok, Russia)
  • Borodulin Aleksei (Artificial Intelligence Technology Scientific and Education Center, Bauman Moscow State Technical University, 105005 Moscow, Russia)
  • Gantimurov Andrei (Artificial Intelligence Technology Scientific and Education Center, Bauman Moscow State Technical University, 105005 Moscow, Russia)
  • Tynchenko Vadim (Artificial Intelligence Technology Scientific and Education Center, Bauman Moscow State Technical University, 105005 Moscow, Russia)

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