Optimizing water quality classification using random forest and machine learning

Описание

Тип публикации: доклад, тезисы доклада, статья из сборника материалов конференций

Конференция: International Scientific Conference on Biotechnology and Food Technology (BFT-2024); Saint Petersburg; Saint Petersburg

Год издания: 2024

Идентификатор DOI: 10.1051/bioconf/202413003007

Аннотация: <jats:p>Water is the most precious and essential resource among all natural resources. With the increase in industrialization and human activities over recent decades, the state of water resources has been significantly impacted. Effective water quality monitoring has become a priority for cities worldwide. Modern technologies suchПоказать полностьюas cloud computing, artificial intelligence, remote sensing, and the Internet of Things provide new opportunities to enhance water resource monitoring systems. This paper explores the application of the random forest model for water quality classification based on chemical attributes. The study includes three experiments: using the full set of features, excluding the pH feature, and using only the top three significant features. The random forest model trained on the full dataset achieved 100% accuracy. When the pH feature was excluded, the model maintained an accuracy of 76%, highlighting the importance of this feature but also showing the potential for compensation by other parameters. Using only the top three significant features (pH, conductivity, and nitrate), the model again achieved 100% accuracy. The results demonstrate that feature optimization without significant loss of model accuracy is a promising approach to improve water quality monitoring and assessment processes. This approach allows for reduced data collection time and costs while maintaining high predictive accuracy. The findings confirm that machine learning, particularly random forest models, can be effectively used for water quality classification, ultimately supporting better management and conservation of water resources.</jats:p>

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Издание

Журнал: BIO WEB OF CONFERENCES

Выпуск журнала: 130

Номера страниц: 03007

Место издания: Les Ulis

Персоны

  • Kukartsev Vladislav
  • Orlov Vasiliy
  • Semenova Evgenia
  • Rozhkova Alyona

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