TY - JOUR
T1 - Impact of assimilating passive microwave observations on root-zone soil moisture under dynamic vegetation conditions
AU - Nagarajan, Karthik
AU - Judge, Jasmeet
AU - Monsivais-Huertero, Alejandro
AU - Graham, Wendy D.
N1 - Funding Information:
Manuscript received November 8, 2010; revised June 10, 2011 and October 28, 2011; accepted February 24, 2012. Date of publication June 6, 2012; date of current version October 24, 2012. This work was supported by the NASA-Terrestrial Hydrology Program (THP)-NNX09AK29G. Partial support for MicroWEX-5 was obtained from the NSF Earth Science Division (EAR-0337277) and the NASA New Investigator Program (NASA-NIP-00050655).
PY - 2012
Y1 - 2012
N2 - In this paper, L-band microwave observations were assimilated using the ensemble Kalman filter to improve root-zone soil moisture (RZSM) estimates from a coupled soil vegetation atmosphere transfer (SVAT)-vegetation model linked to a forward microwave model. Simultaneous state-parameter updates were performed by assimilating both synthetic and field observations during a growing season of sweet corn every three days, matching the temporal coverage of observations from the Soil Moisture and Ocean Salinity and Soil Moisture Active Passive missions. The sensitivities of parameters to the states were investigated using the information-theoretic measure of conditional entropy. Among the soil parameters, the pore-size index $(\lambda)$ was the most sensitive to brightness temperatures $(T-{B})$ during the early and midgrowth stages, while porosity $(\phi)$ was the most sensitive to $TB during the reproductive stage. In the microwave model, the soil roughness parameters, root mean square (RMS) height $(r)$, and correlation length $(l)$ were the most sensitive during the early and mid stages, while the vegetation regression parameter $(b)$ was the most sensitive during the reproductive stage. In the synthetic experiment, assimilation of $TB provided RMS error reductions in RZSM estimates of 70% compared to open loop estimates. Minimal variations in performance were observed across different stages of the season during the synthetic experiment. However, when field observations of $TB were assimilated, significant differences in RZSM estimates were observed during different growth stages. Maximum RMS difference (RMSD) reductions in RZSM estimates of 33.3% were observed compared to open loop estimates during the early stages, while improvements of 4.8% and 16.7% were observed in the mid-and reproductive stages, respectively. Further analyses of assimilation with field observations also suggest some improvements in the SVAT model are needed for moisture transport immediately following the precipitation/irrigation events. In the microwave model, the linear vegetation formulation for estimating canopy opacity, parameterized by $b$, was inadequate in capturing the complexities in $TB during stages of high vegetative and reproductive growth rates.
AB - In this paper, L-band microwave observations were assimilated using the ensemble Kalman filter to improve root-zone soil moisture (RZSM) estimates from a coupled soil vegetation atmosphere transfer (SVAT)-vegetation model linked to a forward microwave model. Simultaneous state-parameter updates were performed by assimilating both synthetic and field observations during a growing season of sweet corn every three days, matching the temporal coverage of observations from the Soil Moisture and Ocean Salinity and Soil Moisture Active Passive missions. The sensitivities of parameters to the states were investigated using the information-theoretic measure of conditional entropy. Among the soil parameters, the pore-size index $(\lambda)$ was the most sensitive to brightness temperatures $(T-{B})$ during the early and midgrowth stages, while porosity $(\phi)$ was the most sensitive to $TB during the reproductive stage. In the microwave model, the soil roughness parameters, root mean square (RMS) height $(r)$, and correlation length $(l)$ were the most sensitive during the early and mid stages, while the vegetation regression parameter $(b)$ was the most sensitive during the reproductive stage. In the synthetic experiment, assimilation of $TB provided RMS error reductions in RZSM estimates of 70% compared to open loop estimates. Minimal variations in performance were observed across different stages of the season during the synthetic experiment. However, when field observations of $TB were assimilated, significant differences in RZSM estimates were observed during different growth stages. Maximum RMS difference (RMSD) reductions in RZSM estimates of 33.3% were observed compared to open loop estimates during the early stages, while improvements of 4.8% and 16.7% were observed in the mid-and reproductive stages, respectively. Further analyses of assimilation with field observations also suggest some improvements in the SVAT model are needed for moisture transport immediately following the precipitation/irrigation events. In the microwave model, the linear vegetation formulation for estimating canopy opacity, parameterized by $b$, was inadequate in capturing the complexities in $TB during stages of high vegetative and reproductive growth rates.
KW - Conditional entropy (CH)
KW - Ensemble Kalman Filter (EnKF)
KW - dynamic vegetation
KW - parameter sensitivity
KW - passive microwave assimilation
KW - root-zone soil moisture (RZSM)
UR - http://www.scopus.com/inward/record.url?scp=84869502384&partnerID=8YFLogxK
U2 - 10.1109/TGRS.2012.2191154
DO - 10.1109/TGRS.2012.2191154
M3 - Artículo
SN - 0196-2892
VL - 50
SP - 4279
EP - 4291
JO - IEEE Transactions on Geoscience and Remote Sensing
JF - IEEE Transactions on Geoscience and Remote Sensing
IS - 11 PART1
M1 - 6213107
ER -