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Multivariate Assimilation of Remotely Sensed Soil Moisture and Evapotranspiration for Drought Monitoring
by
Hain, Christopher
, Gavahi, Keyhan
, Moradkhani, Hamid
, Abbaszadeh, Peyman
, Zhan, Xiwu
in
Algorithms
/ Archives & records
/ Atmosphere
/ Data assimilation
/ Data collection
/ Drought
/ Drought monitoring
/ Environmental monitoring
/ Evapotranspiration
/ Fluxes
/ Hydrologic cycle
/ Hydrologic studies
/ Hydrological cycle
/ Hydrology
/ Land surface models
/ Multivariate analysis
/ Parallel processing
/ Parameter estimation
/ Precipitation
/ Remote sensing
/ Satellite observation
/ Satellite soil moisture estimates
/ Simulation
/ Soil
/ Soil improvement
/ Soil moisture
/ Spatial discrimination
/ Spatial resolution
/ Spring (season)
/ Variables
/ Weekly
2020
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Multivariate Assimilation of Remotely Sensed Soil Moisture and Evapotranspiration for Drought Monitoring
by
Hain, Christopher
, Gavahi, Keyhan
, Moradkhani, Hamid
, Abbaszadeh, Peyman
, Zhan, Xiwu
in
Algorithms
/ Archives & records
/ Atmosphere
/ Data assimilation
/ Data collection
/ Drought
/ Drought monitoring
/ Environmental monitoring
/ Evapotranspiration
/ Fluxes
/ Hydrologic cycle
/ Hydrologic studies
/ Hydrological cycle
/ Hydrology
/ Land surface models
/ Multivariate analysis
/ Parallel processing
/ Parameter estimation
/ Precipitation
/ Remote sensing
/ Satellite observation
/ Satellite soil moisture estimates
/ Simulation
/ Soil
/ Soil improvement
/ Soil moisture
/ Spatial discrimination
/ Spatial resolution
/ Spring (season)
/ Variables
/ Weekly
2020
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Multivariate Assimilation of Remotely Sensed Soil Moisture and Evapotranspiration for Drought Monitoring
by
Hain, Christopher
, Gavahi, Keyhan
, Moradkhani, Hamid
, Abbaszadeh, Peyman
, Zhan, Xiwu
in
Algorithms
/ Archives & records
/ Atmosphere
/ Data assimilation
/ Data collection
/ Drought
/ Drought monitoring
/ Environmental monitoring
/ Evapotranspiration
/ Fluxes
/ Hydrologic cycle
/ Hydrologic studies
/ Hydrological cycle
/ Hydrology
/ Land surface models
/ Multivariate analysis
/ Parallel processing
/ Parameter estimation
/ Precipitation
/ Remote sensing
/ Satellite observation
/ Satellite soil moisture estimates
/ Simulation
/ Soil
/ Soil improvement
/ Soil moisture
/ Spatial discrimination
/ Spatial resolution
/ Spring (season)
/ Variables
/ Weekly
2020
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Multivariate Assimilation of Remotely Sensed Soil Moisture and Evapotranspiration for Drought Monitoring
Journal Article
Multivariate Assimilation of Remotely Sensed Soil Moisture and Evapotranspiration for Drought Monitoring
2020
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Overview
Soil moisture (SM) and evapotranspiration (ET) are key variables of the terrestrial water cycle with a strong relationship. This study examines remotely sensed soil moisture and evapotranspiration data assimilation (DA) with the aim of improving drought monitoring. Although numerous efforts have gone into assimilating satellite soil moisture observations into land surface models to improve their predictive skills, little attention has been given to the combined use of soil moisture and evapotranspiration to better characterize hydrologic fluxes. In this study, we assimilate two remotely sensed datasets, namely, Soil Moisture Operational Product System (SMOPS) and MODIS evapotranspiration (MODIS16 ET), at 1-km spatial resolution, into the VIC land surface model by means of an evolutionary particle filter method. To achieve this, a fully parallelized framework based on model and domain decomposition using a parallel divide-and-conquer algorithm was implemented. The findings show improvement in soil moisture predictions by multivariate assimilation of both ET and SM as compared to univariate scenarios. In addition, monthly and weekly drought maps are produced using the updated root-zone soil moisture percentiles over the Apalachicola–Chattahoochee–Flint basin in the southeastern United States. The model-based estimates are then compared against the corresponding U.S. Drought Monitor (USDM) archive maps. The results are consistent with the USDM maps during the winter and spring season considering the drought extents; however, the drought severity was found to be slightly higher according to DA method. Comparing different assimilation scenarios showed that ET assimilation results in wetter conditions comparing to open-loop and univariate SM DA. The multivariate DA then combines the effects of the two variables and provides an in-between condition.
Publisher
American Meteorological Society
Subject
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