@inproceedings{3ca9c6235d304cdc9163e9d0de760c2e,
title = "Data assimilation for improving soil moisture estimation at hillslope scales: Experiments with synthetic SMAP radar data",
abstract = "In a series of synthetic experiments we test the hypothesis that data assimilation algorithms can be employed to improve soil moisture estimation at spatial scales of hillslopes (e.g. 10°- 102 m). We use the Ensemble Kalman Filter (EnKF) to update an ensemble of hillslope-scale soil moisture fields simulated by a physically-based ecohydrology model with synthetic SMAP radar observations. For sparse vegetation, assimilation of the synthetic observations substantially reduces estimation error in near-surface soil moisture (e.g. top 5 cm), relative to the synthetic true soil moisture conditions. Key components of our data assimilation system are: (1) explicit representation of the impact of hillslope-scale topography on microwave observation, and (2) a Latin Hypercube-based soil parameter generator that preserves the correlation between soil properties and improves the reproducibility of soil moisture ensemble statistics.",
keywords = "Data assimilation, Ensemble Kalman Filter, Hillslopes, Radar, Soil moisture",
author = "Flores, {Alejandro N.} and Dara Entekhabi and Bras, {Rafael L.}",
year = "2012",
language = "English",
isbn = "9781907161278",
series = "IAHS-AISH Publication",
pages = "308--311",
booktitle = "Remote Sensing and Hydrology",
note = "Remote Sensing and Hydrology Symposium ; Conference date: 27-09-2010 Through 30-09-2010",
}