Machine learning approach for simulation of heavy metal concentration in river water: The Crimean peninsula case study

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Abstract

This study proposes an approach for simulation of heavy metal concentration in river waters using machine learning techniques. A regression model was built and it captured the relationship between the concentration of heavy metal and metalloids (HMM) and several characteristics of studied catchment. Machine learning techniques allowed to simulate the annual concentration variability of HMM. This approach allows exploring the impact of different factors on studied processes.

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Malygin, E., & Lychagin, M. (2020). Machine learning approach for simulation of heavy metal concentration in river water: The Crimean peninsula case study. In E3S Web of Conferences (Vol. 163). EDP Sciences. https://doi.org/10.1051/e3sconf/202016306009

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