8 results on '"Sebastian J. Castro"'
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2. Improving the spatiotemporal resolution of remotely sensed ET information for water management through Landsat, Sentinel-2, ECOSTRESS and VIIRS data fusion
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Jie Xue, Martha C. Anderson, Feng Gao, Christopher Hain, Kyle R. Knipper, Yun Yang, William P. Kustas, Yang Yang, Nicolas Bambach, Andrew J. McElrone, Sebastian J. Castro, Joseph G. Alfieri, John H. Prueger, Lynn G. McKee, Lawrence E. Hipps, and María del Mar Alsina
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- 2022
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3. Application of a remote-sensing three-source energy balance model to improve evapotranspiration partitioning in vineyards
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Vicente Burchard-Levine, Héctor Nieto, William P. Kustas, Feng Gao, Joseph G. Alfieri, John H. Prueger, Lawrence E. Hipps, Nicolas Bambach-Ortiz, Andrew J. McElrone, Sebastian J. Castro, Maria Mar Alsina, Lynn G. McKee, Einara Zahn, Elie Bou-Zeid, and Nick Dokoozlian
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- 2022
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4. Effects of meteorological and land surface modeling uncertainty on errors in winegrape ET calculated with SIMS
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Conor T. Doherty, Lee F. Johnson, John Volk, Meagan S. Mauter, Nicolas Bambach, Andrew J. McElrone, Joseph G. Alfieri, Lawrence E. Hipps, John H. Prueger, Sebastian J. Castro, Maria Mar Alsina, William P. Kustas, and Forrest S. Melton
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Crop and Pasture Production ,Life on Land ,Soil Science ,Agronomy & Agriculture ,Other Agricultural and Veterinary Sciences ,Agronomy and Crop Science ,Water Science and Technology - Abstract
Characterization of model errors is important when applying satellite-driven evapotranspiration (ET) models to water resource management problems. This study examines how uncertainty in meteorological forcing data and land surface modeling propagate through to errors in final ET data calculated using the Satellite Irrigation Management Support (SIMS) model, a computationally efficient ET model driven with satellite surface reflectance values. The model is applied to three instrumented winegrape vineyards over the 2017-2020 time period and the spatial and temporal variation in errors are analyzed. We illustrate how meteorological data inputs can introduce biases that vary in space and at seasonal timescales, but that can persist from year to year. We also observe that errors in SIMS estimates of land surface conductance can have a particularly strong dependence on time of year. Overall, meteorological inputs introduced RMSE of 0.33-0.65mm/day (7-27%) across sites, while SIMS introduced RMSE of 0.55-0.83mm/day (19-24%). The relative error contribution from meteorological inputs versus SIMS varied across sites; errors from SIMS were larger at one site, errors from meteorological inputs were larger at a second site, and the error contributions were of equal magnitude at the third site. The similar magnitude of error contributions is significant given that many satellite-driven ET models differ in their approaches to estimating land surface conductance, but often rely on similar or identical meteorological forcing data. The finding is particularly notable given that SIMS makes assumptions about the land surface (no soil evaporation or plant water stress) that do not always hold in practice. The results of this study show that improving SIMS by eliminating these assumptions would result in meteorological inputs dominating the error budget of the model on the whole. This finding underscores the need for further work on characterizing spatial uncertainty in the meteorological forcing of ET.Supplementary informationThe online version contains supplementary material available at 10.1007/s00271-022-00808-9.
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- 2022
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5. Improving the spatiotemporal resolution of remotely sensed ET information for water management through Landsat, Sentinel-2, ECOSTRESS and VIIRS data fusion
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Jie Xue, Martha C. Anderson, Feng Gao, Christopher Hain, Kyle R. Knipper, Yun Yang, William P. Kustas, Yang Yang, Nicolas Bambach, Andrew J. McElrone, Sebastian J. Castro, Joseph G. Alfieri, John H. Prueger, Lynn G. McKee, Lawrence E. Hipps, and María del Mar Alsina
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Crop and Pasture Production ,Clinical Research ,Soil Science ,Agronomy & Agriculture ,Other Agricultural and Veterinary Sciences ,Agronomy and Crop Science ,Water Science and Technology - Abstract
Robust information on consumptive water use (evapotranspiration, ET) derived from remote sensing can significantly benefit water decision-making in agriculture, informing irrigation schedules and water management plans over extended regions. To be of optimal utility for operational usage, these remote sensing ET data should be generated at the sub-field spatial resolution and daily-to-weekly timesteps commensurate with the scales of water management activities. However, current methods for field-scale ET retrieval based on thermal infrared (TIR) imaging, a valuable diagnostic of canopy stress and surface moisture status, are limited by the temporal revisit of available medium-resolution (100 m or finer) thermal satellite sensors. This study investigates the efficacy of a data fusion method for combining information from multiple medium-resolution sensors toward generating high spatiotemporal resolution ET products for water management. TIR data from Landsat and ECOSTRESS (both at ~ 100-m native resolution), and VIIRS (375-m native) are sharpened to a common 30-m grid using surface reflectance data from the Harmonized Landsat-Sentinel dataset. Periodic 30-m ET retrievals from these combined thermal data sources are fused with daily retrievals from unsharpened VIIRS to generate daily, 30-m ET image timeseries. The accuracy of this mapping method is tested over several irrigated cropping systems in the Central Valley of California in comparison with flux tower observations, including measurements over irrigated vineyards collected in the GRAPEX campaign. Results demonstrate the operational value added by the augmented TIR sensor suite compared to Landsat alone, in terms of capturing daily ET variability and reduced latency for real-time applications. The method also provides means for incorporating new sources of imaging from future planned thermal missions, further improving our ability to map rapid changes in crop water use at field scales.
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- 2022
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6. Evaluating different metrics from the thermal-based two-source energy balance model for monitoring grapevine water stress
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Héctor Nieto, María Mar Alsina, William P. Kustas, Omar García-Tejera, Fan Chen, Nicolas Bambach, Feng Gao, Joseph G. Alfieri, Lawrence E. Hipps, John H. Prueger, Lynn G. McKee, Einara Zahn, Elie Bou-Zeid, Andrew J. McElrone, Sebastian J. Castro, Nick Dokoozlian, National Aeronautics and Space Administration (US), Department of Agriculture (US), Agricultural Research Service (US), Conferencia de Rectores de las Universidades Españolas, Consejo Superior de Investigaciones Científicas (España), and Nieto, Héctor
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Soil Science ,Agronomy and Crop Science ,Water Science and Technology - Abstract
Precision irrigation management requires operational monitoring of crop water status. However, there is still some controversy on how to account for crop water stress. To address this question, several physiological, several physiological metrics have been proposed, such as the leaf/stem water potentials, stomatal conductance, or sap flow. On the other hand, thermal remote sensing has been shown to be a promising tool for efficiently evaluating crop stress at adequate spatial and temporal scales, via the Crop Water Stress Index (CWSI), one of the most common indices used for assessing plant stress. CWSI relates the actual crop evapotranspiration ET (related to the canopy radiometric temperature) to the potential ET (or minimum crop temperature). However, remotely sensed surface temperature from satellite sensors includes a mixture of plant canopy and soil/substrate temperatures, while what is required for accurate crop stress detection is more related to canopy metrics, such as transpiration, as the latter one avoids the influence of soil/substrate in determining crop water status or stress. The Two-Source Energy Balance (TSEB) model is one of the most widely used and robust evapotranspiration model for remote sensing. It has the capability of partitioning ET into the crop transpiration and soil evaporation components, which is required for accurate crop water stress estimates. This study aims at evaluating different TSEB metrics related to its retrievals of actual ET, transpiration and stomatal conductance, to track crop water stress in a vineyard in California, part of the GRAPEX experiment. Four eddy covariance towers were deployed in a Variable Rate Irrigation system in a Merlot vineyard that was subject to different stress periods. In addition, root-zone soil moisture, stomatal conductance and leaf/stem water potential were collected as proxy for in situ crop water stress. Results showed that the most robust variable for tracking water stress was the TSEB derived leaf stomatal conductance, with the strongest correlation with both the measured root-zone soil moisture and stomatal conductance gas exchange measurements. In addition, these metrics showed a better ability in tracking stress when the observations are taken early after noon., Funding and logistical support for the GRAPEX project were provided by E. & J. Gallo Winery and from the NASA Applied Sciences-Water Resources Program (Grant no. NNH17AE39I). This research was also supported in part by the U.S. Department of Agriculture, Agricultural Research Service. Open Access funding provided thanks to the CRUE-CSIC agreement with Springer Nature.
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- 2022
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7. Application of the vineyard data assimilation (VIDA) system to vineyard root-zone soil moisture monitoring in the California Central Valley
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Fan Chen, Fangni Lei, Kyle Knipper, Feng Gao, Lynn McKee, Maria del Mar Alsina, Joseph Alfieri, Martha Anderson, Nicolas Bambach, Sebastian J. Castro, Andrew J. McElrone, Karrin Alstad, Nick Dokoozlian, Felix Greifender, William Kustas, Claudia Notarnicola, Nurit Agam, John H. Prueger, Lawrence E. Hipps, and Wade T. Crow
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Soil Science ,Agronomy and Crop Science ,Water Science and Technology - Published
- 2022
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8. Application of a remote-sensing three-source energy balance model to improve evapotranspiration partitioning in vineyards
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Vicente Burchard-Levine, Héctor Nieto, William P. Kustas, Feng Gao, Joseph G. Alfieri, John H. Prueger, Lawrence E. Hipps, Nicolas Bambach-Ortiz, Andrew J. McElrone, Sebastian J. Castro, Maria Mar Alsina, Lynn G. McKee, Einara Zahn, Elie Bou-Zeid, and Nick Dokoozlian
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Crop and Pasture Production ,Soil Science ,Agronomy & Agriculture ,Other Agricultural and Veterinary Sciences ,Agronomy and Crop Science ,Water Science and Technology - Abstract
Improved accuracy of evapotranspiration (ET) estimation, including its partitioning between transpiration (T) and surface evaporation (E), is key to monitor agricultural water use in vineyards, especially to enhance water use efficiency in semi-arid regions such as California, USA. Remote-sensing methods have shown great utility in retrieving ET from surface energy balance models based on thermal infrared data. Notably, the two-source energy balance (TSEB) has been widely and robustly applied in numerous landscapes, including vineyards. However, vineyards add an additional complexity where the landscape is essentially made up of two distinct zones: the grapevine and the interrow, which is often seasonally covered by an herbaceous cover crop. Therefore, it becomes more complex to disentangle the various contributions of the different vegetation elements to total ET, especially through TSEB, which assumes a single vegetation source over a soil layer. As such, a remote-sensing-based three-source energy balance (3SEB) model, which essentially adds a vegetation source to TSEB, was applied in an experimental vineyard located in California's Central Valley to investigate whether it improves the depiction of the grapevine-interrow system. The model was applied in four different blocks in 2019 and 2020, where each block had an eddy-covariance (EC) tower collecting continuous flux, radiometric, and meteorological measurements. 3SEB's latent and sensible heat flux retrievals were accurate with an overall RMSD ~ 50W/m2 compared to EC measurements. 3SEB improved upon TSEB simulations, with the largest differences being concentrated in the spring season, when there is greater mixing between grapevine foliage and the cover crop. Additionally, 3SEB's modeled ET partitioning (T/ET) compared well against an EC T/ET retrieval method, being only slightly underestimated. Overall, these promising results indicate 3SEB can be of great utility to vineyard irrigation management, especially to improve T/ET estimations and to quantify the contribution of the cover crop to ET. Improved knowledge of T/ET can enhance grapevine water stress detection to support irrigation and water resource management.Supplementary informationThe online version contains supplementary material available at 10.1007/s00271-022-00787-x.
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- 2022
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