4.7 Article

Surface Water Salinity Evaluation and Identification for Using Remote Sensing Data and Machine Learning Approach

Journal

Publisher

MDPI
DOI: 10.3390/jmse10020257

Keywords

correlation analysis; GIS; linear regression; remote sensing; maritime; water salinity

Funding

  1. Ministry of Science and Higher Education of the Russian Federation [075-15-2020-903]

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This study used machine learning techniques to evaluate the salinity level in a hypersaline lake and built eight salinity evaluation models. It was found that with an increase in salinity, the wavelength of absorbing light shifts from the ultraviolet part to the infrared part, which enables continuous monitoring of hypersaline water bodies using remote sensing data.
Knowledge of the spatio-temporal distribution of salinity provides valuable information for understanding different processes between biota and environment, especially in hypersaline lakes. Remote sensing techniques have been used for monitoring different components of the environment. Currently, one of the biggest challenges is the spatio-temporal monitoring of the salinity level in water bodies. Due to some limitations, such as the inability to be located there permanently, it is difficult to obtain these data directly. In this study, machine learning techniques were used to evaluate the salinity level in hypersaline East Sivash Bay. In total, 93 in situ data samples and 6 Sentinel-2 datasets were used, according to field measurements. Using linear regression, random forest and AdaBoost models, eight water salinity evaluation models were built (six with simple, one with random forest and one with AdaBoost). The accuracy of the best-fitted simple linear regression model was 0.8797; for random forest, it was equal, at 0.808, and for AdaBoost, it was -0.72. Furthermore, it was found that with an increase in salinity, the absorbing light shifts from the ultraviolet part of the spectrum to the infrared and short-wave infrared parts, which makes it possible to produce continuous monitoring of hypersaline water bodies using remote sensing data.

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