Data from: Enhancing Evapotranspiration Estimates in Composite Terrain Through the Integration of Satellite Remote Sensing and Eddy Covariance Measurements
Abstract: Accurate evaluation of water resource systems is essential for informed planning and decision-making. Evapotranspiration (ET), a key component of water resource management, is often estimated using remote sensing techniques; however, such estimates can be subject to significant uncertainties under certain conditions. In this study, we present a novel approach to improving the accuracy of ET estimates in composite terrains. The methodology involves optimizing the Surface Energy Balance Algorithm for Land (SEBAL-OPT) by integrating ground-based eddy covariance (EC) flux tower data into the satellite-based ET retrieval process. The approach was evaluated at four sites in California, each representing different land uses. Parameter optimization was achieved through Bayesian inference using the Differential Evolution Adaptive Metropolis (DREAM) algorithm, which minimized discrepancies between ET estimates derived from Landsat 8 and 9 imagery and the observed ET from EC measurements. Results from the global sensitivity analysis identified solar radiation and hot/cold pixel selection as the most sensitive parameters in the SEBAL algorithm, highlighting their critical role in reducing uncertainty in ET estimates. SEBAL-OPT demonstrated significantly improved accuracy, with root mean square error (RMSE) values ranging from 0.72 mm to 1.33 mm, compared to the original SEBAL parameterization (SEBAL-ORG), which produced RMSE values between 1.03 mm and 2.14 mm. This approach highlights that, when properly calibrated, the model can be effectively applied across diverse agricultural landscapes, regardless of the specific land use at individual sites. These findings have significant implications for water resource planning, agricultural water management, and water rights adjudication and could be applied to other remote sensing of ET models.
Funding
USDA-NIFA: 2021-68012-35914
History
Data contact name
Karbalaye Ghorbanpour, AliData contact email
akghorbanpour@ucdavis.eduPublisher
Ag Data CommonsTemporal Extent Start Date
2018-05-01Temporal Extent End Date
2022-01-01Theme
- Non-geospatial
Geographic location - description
California's Central Valley, including a commercial almond orchard and three eddy covariance flux tower stations within the AmeriFlux network.ISO Topic Category
- climatologyMeteorologyAtmosphere
National Agricultural Library Thesaurus terms
planning; decision making; evapotranspiration; water management; remote sensing; uncertainty; landscapes; energy balance; algorithms; eddy covariance; California; land use; Bayesian theory; Landsat; solar radiation; image analysis; cold; models; agricultural land; water rightsOMB Bureau Code
- 005:20 - National Institute of Food and Agriculture
OMB Program Code
- 005:040 - National Research
Pending citation
- No
Public Access Level
- Public