Affiliation:
1. Hydro-Remote Sensing Applications (H-RSA) Group, Department Civil Engineering, Indian Institute of Technology Bombay, Mumbai 400076, India
2. Interdisciplinary Program in Climate Studies, Indian Institute of Technology Bombay, Mumbai 400076, India
Abstract
Monitoring snowpack depth is essential in many applications at regional and global scales. Space-borne passive microwave (PMW) remote sensing observations have been widely used to estimate snow depth (SD) information for over four decades due to their responsiveness to snowpack characteristics. Many approaches comprised of static and dynamic empirical models, non-linear, machine-learning-based models, and assimilation approaches have been developed using spaceborne PMW observations. These models cannot be applied uniformly over all regions due to inherent limitations in the modelling approaches. Further, the global PMW SD products have masked out in their coverage critical regions such as the Himalayas, as well as very high SD regions, due to constraints triggered by prevailing topographical and snow conditions. Therefore, the current review article discusses different models for SD estimation, along with their merits and limitations. Here in the review, various SD models are grouped into four types, i.e., static, dynamic, assimilation-based, and machine-learning-based models. To demonstrate the rationale behind these drawbacks, this review also details various causes of uncertainty, and the challenges present in the estimation of PMW SD. Finally, based on the status of the available PMW SD datasets, and SD estimation techniques, recommendations for future research are included in this article.
Subject
General Earth and Planetary Sciences
Reference186 articles.
1. Snow Cover Change as a Climate Indicator in Brunswick Peninsula, Patagonia;Aguirre;Front. Earth Sci.,2018
2. Changes in Climatology, Snow Cover, and Ground Temperatures at High Alpine Locations;Bender;Front. Earth Sci.,2020
3. Snow Cover Area Change and Its Relations with Climatic Variability in Kashmir Himalayas, India;Ahmed;Geocarto Int.,2019
4. A Long-Term Northern Hemisphere Snow Cover Extent Data Record for Climate Studies and Monitoring;Estilow;Earth Syst. Sci. Data,2015
5. Lemke, P., Ren, J., Alley, R.B., Allison, I., Carrasco, J., Flato, G., Fujii, Y., Kaser, G., Mote, P., and Thomas, R.H. (2007). Climate Change 2007: The Physical Science Basis. Contribution of Working Group I to the Fourth Assessment Report of the Intergovernmental Panel on Climate Change, Cambridge University Press.
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