Using machine learning for real-time estimates of snow water equivalent in the watersheds of Afghanistan

Abstract

Abstract. In many mountains, snowmelt provides most of the runoff. In Afghanistan, few ground-based measurements of the snow resource exist. Operational estimates use imagery from optical and passive microwave sensors, but with their limitations. An accurate approach reconstructs spatially distributed snow water equivalent (SWE) by calculating snowmelt backward from a remotely sensed date of disappearance, but reconstructed SWE estimates are available only retrospectively; they do not provide a forecast. To estimate SWE early in the snowmelt season, we consider physiographic and remotely-sensed information as predictors and reconstructed SWE as the target. The period of analysis matches the AMSR-E radiometer's lifetime from 2003 to 2011, for the months of April through June. The spatial resolution of the predictions is 3.125 km, to match the resolution of a microwave brightness temperature product. Two machine learning techniques – bagged regression trees and feed-forward neural networks – produced similar mean results, with 0–14 % bias and 46–48 mm RMSE on average. Daily SWE climatology and fractional snow-covered area are the most important predictors. We conclude that the methods can accurately estimate SWE during the snow season in remote mountains.

Document Details

Document Type
Pub Defense Publication
Publication Date
Oct 11, 2017
Source ID
10.5194/tc-2017-196

Entities

People

  • Andre Abreu Calfa
  • Edward H. Bair
  • Jeff Dozier
  • Karl Rittger

Organizations

  • Engineer Research and Development Center
  • National Aeronautics and Space Administration

Tags

Fields of Study

  • Environmental science

Readers

  • Atmospheric Remote Sensing.
  • Atmospheric Science/Meteorology

Technology Areas

  • AI & ML
  • AI & ML - Neural Networks