Application of the vineyard data assimilation (VIDA) system to vineyard root-zone soil moisture monitoring in the California Central Valley

被引:0
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作者
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
Wade T. Crow
机构
[1] USDA ARS Hydrology and Remote Sensing Laboratory,Department of Winegrowing Research
[2] SSAI Inc.,Department of Land, Air and Water Resources
[3] Geosystems Research Institute,Department of Viticulture and Enology
[4] Mississippi State University,Interagency Ecological Program
[5] USDA ARS Sustainable Water Systems Research Laboratory,Institute for Earth Observation
[6] E and J Gallo Winery,French Associates Institute for Agriculture and Biotechnology of Drylands, Blaustein Institutes for Desert Research
[7] University of California,Plants, Soils and Climate Department, College of Agriculture and Applied Sciences
[8] USDA-ARS,undefined
[9] Crops Pathology and Genetics Research Unit,undefined
[10] University of California,undefined
[11] California Department of Fish and Wildlife,undefined
[12] Eurac Research,undefined
[13] Ben-Gurion University of the Negev,undefined
[14] USDA-ARS,undefined
[15] National Laboratory for Agriculture and the Environment,undefined
[16] Utah State University,undefined
来源
Irrigation Science | 2022年 / 40卷
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摘要
Efforts to apply gridded root-zone soil moisture (RZSM) products for irrigation decision-support in vineyards are currently hampered by the difficulty of obtaining RZSM products that meet required accuracy, resolution, and data latency requirements. In particular, the operational application of soil water balance modeling is complicated by the difficulty of obtaining accurate irrigation inputs and representing complex sub-surface water-flow processes within vineyards. Here, we discuss prospects for addressing these shortcomings using the Vineyard Data Assimilation (VIDA) system based on the assimilation of high-resolution (30-m) soil moisture information obtained from synthetic aperture radar and thermal-infrared (TIR) remote sensing into a one-dimensional soil water balance model. The VIDA system is tested retrospectively (2017–2020) for two vineyard sites in the California Central Valley that have been instrumented as part of the Grape Remote sensing Atmospheric Profile and Evapotranspiration eXperiment (GRAPEX). Results demonstrate that VIDA can generally capture daily temporal variations in RZSM for vertical depths of 30–60 cm beneath the vine row, and the assimilation of remote sensing products is shown to produce modest improvement in the temporal accuracy of VIDA RZSM estimates. However, results also reveal shortcomings in the ability of VIDA to correct biases in assumed irrigation applications—particularly during well-watered portions of the growing season when TIR-based evapotranspiration observations are not moisture limited and, therefore, decoupled from RZSM. Prospects for addressing these limitations and plans for the near-real-time operational application of the VIDA system are discussed.
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页码:779 / 799
页数:20
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