4.6 Article

Surface Water Quality Assessment through Remote Sensing Based on the Box-Cox Transformation and Linear Regression

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WATER
卷 15, 期 14, 页码 -

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MDPI
DOI: 10.3390/w15142606

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surface water quality; remote sensing; Box-Cox optimization; linear modeling; Landsat imagery

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In this study, a methodology for estimating surface water quality using remote sensing was developed. The methodology involved the use of Landsat satellite imagery and in situ measurements to generate mathematical models for three water quality parameters: total organic carbon (TOC), total dissolved solids (TDS), and chlorophyll a (Chl-a). The models were validated and found to have good to acceptable fits with real water quality data measurements. This alternative approach shows potential for accurately estimating water quality based on field measurements and satellite images.
A methodology to estimate surface water quality using remote sensing is presented based on Landsat satellite imagery and in situ measurements taken every six months at four separate sampling locations in a tropical reservoir from 2015 to 2019. The remote sensing methodology uses the Box-Cox transformation model to normalize data on three water quality parameters: total organic carbon (TOC), total dissolved solids (TDS), and chlorophyll a (Chl-a). After the Box-Cox transformation, a mathematical model was generated for every parameter using multiple linear regression to correlate normalized data and spectral reflectance from Landsat 8 imagery. Then, significant testing was conducted to discard spectral bands that did not show a statistically significant response (& alpha; = 0.05) from the different water quality models. The r(2) values achieved for TOC, TDS, and Chl-a water quality models after the band discrimination process were found 0.926, 0.875, and 0.810, respectively, achieving a fair fitting to real water quality data measurements. Finally, a comparison between estimated and measured water quality values not previously used for model development was carried out to validate these models. In this validation process, a good fit of 98% and 93% was obtained for TDS and TOC, respectively, whereas an acceptable fit of 81% was obtained for Chl-a. This study proposes an interesting alternative for ordered and standardized steps applied to generate mathematical models for the estimation of TOC, TDS, and Chl-a based on water quality parameters measured in the field and using satellite images.

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