4.5 Article

Snow permittivity retrieval inversion algorithm for estimating snow wetness

Journal

GEOCARTO INTERNATIONAL
Volume 25, Issue 3, Pages 187-212

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/10106040903486130

Keywords

SAR; remote sensing; backscattering coefficient (BSC); snow wetness; DEM

Funding

  1. European Space Agency [2524]

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The environmental satellite (ENVISAT) advanced synthetic aperture radar (ASAR) offers the opportunity for monitoring snow parameters with dual polarization and multi-incidence angle. Snow wetness is an important index for indicating snow avalanche, snowmelt runoff modelling, water supply for irrigation and hydropower stations, weather forecasts and understanding climate change. We used a first-order scattering model that includes both volume and air/snow surface scattering based on a developed inversion model to estimate snow dielectric constant, which can be further related for estimating snow wetness. Comparison with field measurement showed that the correlation coefficient for snow permittivity estimated from ASAR data was observed to be 0.8 at 95% confidence interval and model bias was observed as 2.42% by volume at 95% confidence interval. The comparison of ASAR-derived snow permittivity with ground measurements shows the average absolute error 2.5%. The snow wetness range varies from 0 to 15% by volume.

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