TY - JOUR
T1 - Using radiometric surface temperature for surface energy flux estimation in Mediterranean drylands from a two-source perspective
AU - Morillas, L.
AU - Garcia Garcia, Monica
AU - Nieto Solana, Hector
AU - Villagarcia, L.
AU - Sandholt, Inge
AU - Gonzalez-Dugo, M.P.
AU - Zarco-Tejada, P.J.
AU - Domingo, F.
PY - 2013/9
Y1 - 2013/9
N2 - A two-source model (TSM) for surface energy balance, considering explicitly soil and vegetation components, was tested under water stress conditions. The TSM evaluated estimates the sensible heat flux (H) using the surface-air thermal gradient and the latent heat flux (LE) as a residual from the surface energy balance equation. The analysis was performed in a semiarid Mediterranean tussock grassland in southeast Spain, where H is the dominant flux and LE rates are low, challenging conditions under which the TSM has not been validated before. We evaluated two different resistance schemes: series and parallel; as well as the iterative algorithm included in the TSM to disaggregate the soil-surface composite temperature into its separate components. Continuous field measurements of composite soil-vegetation surface temperature (TR) and bare soil temperature (Ts) from thermal infrared sensors were used for model testing along with canopy temperature estimates (T'c), derived from TR and Ts.Comparisons with Eddy covariance and field data showed that the TSM produced reliable estimates of net radiation (Rn) and H fluxes, with errors of ~30% and ~10%, respectively, but not for LE, with errors ~90%. Despite of lower errors (~10%) in estimating H using parallel resistance, the series scheme was more robust showing slightly higher correlations (r2=0.78-0.80 vs. r2=0.75-0.77) and allowing a better disaggregation of soil and canopy fluxes. Differences between model runs using the iterative algorithm to disaggregate TR and the simplified version that uses separate inputs of Ts and T'c were minor. This demonstrates the robustness of the iterative procedure to disaggregate a composite soil-vegetation temperature into separate soil and vegetation components in semiarid environments with good prospects for image applications.
AB - A two-source model (TSM) for surface energy balance, considering explicitly soil and vegetation components, was tested under water stress conditions. The TSM evaluated estimates the sensible heat flux (H) using the surface-air thermal gradient and the latent heat flux (LE) as a residual from the surface energy balance equation. The analysis was performed in a semiarid Mediterranean tussock grassland in southeast Spain, where H is the dominant flux and LE rates are low, challenging conditions under which the TSM has not been validated before. We evaluated two different resistance schemes: series and parallel; as well as the iterative algorithm included in the TSM to disaggregate the soil-surface composite temperature into its separate components. Continuous field measurements of composite soil-vegetation surface temperature (TR) and bare soil temperature (Ts) from thermal infrared sensors were used for model testing along with canopy temperature estimates (T'c), derived from TR and Ts.Comparisons with Eddy covariance and field data showed that the TSM produced reliable estimates of net radiation (Rn) and H fluxes, with errors of ~30% and ~10%, respectively, but not for LE, with errors ~90%. Despite of lower errors (~10%) in estimating H using parallel resistance, the series scheme was more robust showing slightly higher correlations (r2=0.78-0.80 vs. r2=0.75-0.77) and allowing a better disaggregation of soil and canopy fluxes. Differences between model runs using the iterative algorithm to disaggregate TR and the simplified version that uses separate inputs of Ts and T'c were minor. This demonstrates the robustness of the iterative procedure to disaggregate a composite soil-vegetation temperature into separate soil and vegetation components in semiarid environments with good prospects for image applications.
UR - http://www.scopus.com/inward/record.url?scp=84878714718&partnerID=8YFLogxK
U2 - 10.1016/j.rse.2013.05.010
DO - 10.1016/j.rse.2013.05.010
M3 - Journal article
AN - SCOPUS:84878714718
SN - 0034-4257
VL - 136
SP - 234
EP - 246
JO - Remote Sensing of Environment
JF - Remote Sensing of Environment
ER -