Remote sensing and machine learning based framework for the assessment of spatio-temporal water quality in the Middle Ganga Basin

dc.contributor.authorKrishnaraj, A.
dc.contributor.authorHonnasiddaiah, R.
dc.date.accessioned2026-02-04T12:27:45Z
dc.date.issued2022
dc.description.abstractUnderstanding the dynamics of water quality in any water body is vital for the sustainability of our water resources. Thus, investigating spatio-temporal changes of dominant water quality parameters (WQPs) in any study is indeed critical for proposing the appropriate treatment for the water bodies. Traditionally, concentrations of WQPs have been measured through intensive fieldwork. Additionally, many studies have attempted to retrieve concentrations of WQPs from satellite images using regression-based methods. However, the relationship between WQPs and satellite data is complex to be modeled accurately by using simple regression-based methods. Our study attempts to develop a machine learning model for mapping the concentrations of dominant optical and non-optical WQPs such as electrical conductivity (EC), pH, temperature (Temp), total dissolved solids (TDS), silicon dioxide (SiO<inf>2</inf>), and dissolved oxygen (DO). In this context, a remote sensing framework based on the extreme gradient boosting (XGBoost) and multi-layer perceptron (MLP) regressor with optimized hyper parameters (HPs) to quantify concentrations of different WQPs from the Landsat-8 satellite imagery is developed. We evaluated six years of satellite data stretching spatially from upstream to downstream Ankinghat to Chopan (20 stations under Central Water Commission (CWC), Middle Ganga Basin) for characterizing the trends of dominant physico-chemical WQPs across the four clusters identified in our previous study. Through the developed XGBoost and MLP regression models between measured WQPs and the reflectance of the pixels corresponding to the sampling stations, a significant coefficient of determination (R2) in the range of 0.88–0.98 for XGBoost and 0.72–0.97 for MLP were generated, with bands B1–B4 and their ratios more consistent. Indeed, these findings indicate that from a small number of in-situ measurements, we can develop reliable models to estimate the spatio-temporal variations of physico-chemical and biological WQPs. Therefore, models generated from Landsat-8 could facilitate the environmental, economic, and social management of any waterbody. © 2022, The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature.
dc.identifier.citationEnvironmental Science and Pollution Research, 2022, 29, 43, pp. 64939-64958
dc.identifier.issn9441344
dc.identifier.urihttps://doi.org/10.1007/s11356-022-20386-9
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/22437
dc.publisherSpringer Science and Business Media Deutschland GmbH
dc.subjectDissolved oxygen
dc.subjectLandsat
dc.subjectLearning algorithms
dc.subjectMachine learning
dc.subjectOptical remote sensing
dc.subjectRegression analysis
dc.subjectRivers
dc.subjectSilica
dc.subjectSilicon oxides
dc.subjectSiO2 nanoparticles
dc.subjectSustainable development
dc.subjectWater treatment
dc.subjectGrid search
dc.subjectGridsearch CV
dc.subjectHyper-parameter optimizations
dc.subjectMachine-learning
dc.subjectMulti-layer perceptron regressor
dc.subjectMultilayers perceptrons
dc.subjectOptuna
dc.subjectRiver water quality
dc.subjectWater quality parameters
dc.subjectXgboost regressor
dc.subjectWater quality
dc.subjectmachine learning
dc.subjectoptimization
dc.subjectphysicochemical property
dc.subjectregression analysis
dc.subjectremote sensing
dc.subjectsatellite data
dc.subjectsatellite imagery
dc.subjectspatiotemporal analysis
dc.subjectsustainability
dc.subjectwater quality
dc.subjectGanges Basin
dc.subjectoxygen
dc.subjectsilicon dioxide
dc.subjectenvironmental monitoring
dc.subjectprocedures
dc.subjectEnvironmental Monitoring
dc.subjectMachine Learning
dc.subjectOxygen
dc.subjectRemote Sensing Technology
dc.subjectSilicon Dioxide
dc.subjectWater Quality
dc.titleRemote sensing and machine learning based framework for the assessment of spatio-temporal water quality in the Middle Ganga Basin

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