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Published in: Earth Science Informatics 1/2024

07-12-2023 | RESEARCH

Assessing temporal snow cover variation in the Sutlej river basin using google earth engine and machine learning models

Authors: Abhilash Gogineni, Madhusudana Rao Chintalacheruvu

Published in: Earth Science Informatics | Issue 1/2024

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Abstract

Snow cover information is essential for pursuing seasonal variation studies in Himalayan river basins. This study aims to investigate the seasonal variation of snow cover in the Sutlej river basin (Tibet to Bhakra dam in India) over three different seasons: Monsoon (June–September), winter (October-January), and summer (February-May) during the period 2010–2021. Landsat 7 and 8 Surface Reflectance (SR) data is used to develop 108 land use land cover (LULC) maps for 12 years, with three seasons per year and three machine-learning models. The study has conducted on the Google Earth Engine (GEE) platform, employing Random Forest (RF), Classification and Regression Trees (CART), and Support Vector Machine (SVM) models to classify the Landsat satellite data and assess the seasonal snow cover variation during the three seasons. The results show that among the three machine learning models, the RF model exhibits the highest average overall accuracy at 98.75%, followed by the CART model at 98.10%, and the SVM model with the lowest accuracy at 97.15%. In terms of snow cover area variability; there is a decline trend in summer snow cover and an increase in monsoon snow cover over the past three years (2019–2021). However, an increasing trend emerges when considering the decadal changes in all three seasons. In addition, the maximum percentages of snow cover area observed as 67.61%, 46.78%, and 30.58% in the summer period of 2013, the winter period of 2019, and the monsoon period of 2021, respectively. Similarly, the minimum percentage of snow cover is 23.22%, 11.36%, and 13.01%, observed in the summer period of 2014, the winter period of 2011, and the monsoon period of 2012, respectively. A comprehensive assessment procedure on temporal and seasonal snow cover variation in a large river basin have been presented in this work, which will help to plan and manage the sustainable water resources in study region.

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Literature
go back to reference Aman MA, Chu HJ (2023) Long-term river extent dynamics and transition detection using remote sensing: case studies of Mekong and Ganga River. Sci Total Environ 876:162774CrossRef Aman MA, Chu HJ (2023) Long-term river extent dynamics and transition detection using remote sensing: case studies of Mekong and Ganga River. Sci Total Environ 876:162774CrossRef
go back to reference Hartmann DL, Tank AMK, Rusticucci M, Alexander LV, Brönnimann S, Charabi YAR et al (2013) Climate change 2013 the physical science basis:Working group I contribution to the fifth assessment report of the intergovernmental panel on climate change. Cambridge University Press. Observations: Atmosphere and surface Hartmann DL, Tank AMK, Rusticucci M, Alexander LV, Brönnimann S, Charabi YAR et al (2013) Climate change 2013 the physical science basis:Working group I contribution to the fifth assessment report of the intergovernmental panel on climate change. Cambridge University Press. Observations: Atmosphere and surface
go back to reference Krishnan R, Shrestha AB, Ren G, Rajbhandari R, Saeed S, Sanjay J et al (2019) Unravelling climate change in the Hindu Kush Himalaya: Rapid warmingin the mountains and increasing extremes. In: Wester P, Mishra A, Mukherji A, Shrestha AB (eds) The Hindu Kush Himalayaassessment: Mountains, climate change, sustainability and people. Springer International Publishing, Cham. https://doi.org/10.1007/978-3-319-92288-1_3 Krishnan R, Shrestha AB, Ren G, Rajbhandari R, Saeed S, Sanjay J et al (2019) Unravelling climate change in the Hindu Kush Himalaya: Rapid warmingin the mountains and increasing extremes. In: Wester P, Mishra A, Mukherji A, Shrestha AB (eds) The Hindu Kush Himalayaassessment: Mountains, climate change, sustainability and people. Springer International Publishing, Cham. https://​doi.​org/​10.​1007/​978-3-319-92288-1_​3
go back to reference Langhorst T, Pavelsky T (2023) Global observations of riverbank erosion and accretion from Landsat imagery. J Geophys Res Earth Surf 128(2):e2022JF006774 Langhorst T, Pavelsky T (2023) Global observations of riverbank erosion and accretion from Landsat imagery. J Geophys Res Earth Surf 128(2):e2022JF006774
go back to reference Mahdianpari M, Salehi B, Mohammadimanesh F, Motagh M (2017) Random forest wetland classification using ALOS-2 L-band, RADARSAT-2 C-band and TerraSAR-X imagery. ISPRS J Photogramm Remote Sens 130:13–31CrossRef Mahdianpari M, Salehi B, Mohammadimanesh F, Motagh M (2017) Random forest wetland classification using ALOS-2 L-band, RADARSAT-2 C-band and TerraSAR-X imagery. ISPRS J Photogramm Remote Sens 130:13–31CrossRef
go back to reference Nijhawan R, Raman B, Das J (2018) Meta-classifier approach with ANN, SVM, rotation forest, and random forest for snow cover mapping. In: Proceedings of 2nd international conference on computer vision & image processing: CVIP 2017, Volume 2. Springer, Singapore, pp 279–287 Nijhawan R, Raman B, Das J (2018) Meta-classifier approach with ANN, SVM, rotation forest, and random forest for snow cover mapping. In: Proceedings of 2nd international conference on computer vision & image processing: CVIP 2017, Volume 2. Springer, Singapore, pp 279–287
go back to reference Panda S, Anilkumar R, Balabantaray BK, Chutia D, Bharti R (2022) Machine Learning-Driven Snow Cover Mapping Techniques using Google Earth Engine. In: 2022 IEEE 19th India Council International Conference (INDICON). IEEE, pp 1–6 Panda S, Anilkumar R, Balabantaray BK, Chutia D, Bharti R (2022) Machine Learning-Driven Snow Cover Mapping Techniques using Google Earth Engine. In: 2022 IEEE 19th India Council International Conference (INDICON). IEEE, pp 1–6
go back to reference Tahir AA, Adamowski JF, Chevallier P, Haq AU, Terzago S (2016) Comparative assessment of spatiotemporal snow cover changes and hydrological behavior of the Gilgit, Astore and Hunza River basins (Hindukush–Karakoram–Himalaya region, Pakistan). Meteorol Atmos Phys 128:793–811. https://doi.org/10.1007/s00703-016-0440-6CrossRef Tahir AA, Adamowski JF, Chevallier P, Haq AU, Terzago S (2016) Comparative assessment of spatiotemporal snow cover changes and hydrological behavior of the Gilgit, Astore and Hunza River basins (Hindukush–Karakoram–Himalaya region, Pakistan). Meteorol Atmos Phys 128:793–811. https://​doi.​org/​10.​1007/​s00703-016-0440-6CrossRef
go back to reference Van Beijma S, Comber A, Lamb A (2014) Random forest classification of salt marsh vegetation habitats using quad-polarimetric airborne SAR, elevation and optical RS data. Remote Sens Environ 149:118–129CrossRef Van Beijma S, Comber A, Lamb A (2014) Random forest classification of salt marsh vegetation habitats using quad-polarimetric airborne SAR, elevation and optical RS data. Remote Sens Environ 149:118–129CrossRef
Metadata
Title
Assessing temporal snow cover variation in the Sutlej river basin using google earth engine and machine learning models
Authors
Abhilash Gogineni
Madhusudana Rao Chintalacheruvu
Publication date
07-12-2023
Publisher
Springer Berlin Heidelberg
Published in
Earth Science Informatics / Issue 1/2024
Print ISSN: 1865-0473
Electronic ISSN: 1865-0481
DOI
https://doi.org/10.1007/s12145-023-01161-x

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