Is it possible to quantify irrigation water-use by assimilating a high-resolution satellite soil moisture product?

Irrigation is the largest human intervention in the water cycle that can modulate climate extremes, yet irrigation water use (IWU) remains largely unknown in most regions. Microwave remote sensing offers a practical way to quantify IWU by monitoring changes in soil moisture caused by irrigation. However, high-resolution satellite soil moisture data is typically infrequent (e.g., 6-12 days) and thus may miss irrigation events. This study evaluates the ability to quantify IWU by assimilating high-resolution (1 km) SMAP-Sentinel 1 remotely sensed soil moisture with a physically based land surface model (LSM) using a particle batch smoother (PBS). A suite of synthetic experiments is devised to evaluate different error sources. Results from the synthetic experiments show that unbiased simulations with known irrigation timing can produce an accurate irrigation estimate with a mean annual bias of 0.45% and a mean R-2 of 0.97, relative to observed IWU. Unknown irrigation timing can significantly deteriorate the model performance, resulting in an increased mean annual bias to 23% and decreased mean R-2 to 0.36. Adding random noise to synthetic observations does not significantly decrease model performance except for the experiments with low observation frequency (>12 days). In real-world experiments, the PBS data assimilation approach underestimates observed IWU by 18.6% when the timing of IWU is known. IWU estimates are consistently significantly higher over irrigated pixels compared to the non-irrigated pixels, indicating data assimilation skillfully conveys irrigation signals to the LSM.

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Related Links

Related Dataset #1 : SMAP/Sentinel-1 L2 Radiometer/Radar 30-Second Scene 3 km EASE-Grid Soil Moisture, Version 3

Related Dataset #2 : MCD15A2H MODIS/Terra+Aqua Leaf Area Index/FPAR 8-day L4 Global 500m SIN Grid V006

Related Dataset #3 : MCD43A3 MODIS/Terra+Aqua BRDF/Albedo Daily L3 Global - 500m V006

Related Dataset #4 : MYD13A1 MODIS/Aqua Vegetation Indices 16-day L3 Global 500m SIN Grid V006

Related Dataset #5 : A 1km experimental dataset for the Mediterranean terrestrial region of Soil Moisture, Land Surface Temperature and Vegetation Optical Depth from passive microwave data

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Copyright 2023 American Geophysical Union.


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Author Jalilvand, E.
Abolafia-Rosenzweig, Ronnie
Tajrishy, M.
Kumar, S. V.
Mohammadi, M. R.
Das, N. N.
Publisher UCAR/NCAR - Library
Publication Date 2023-04-01T00:00:00
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Topic Category geoscientificInformation
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Metadata Date 2025-07-11T15:53:13.495003
Metadata Record Identifier edu.ucar.opensky::articles:26276
Metadata Language eng; USA
Suggested Citation Jalilvand, E., Abolafia-Rosenzweig, Ronnie, Tajrishy, M., Kumar, S. V., Mohammadi, M. R., Das, N. N.. (2023). Is it possible to quantify irrigation water-use by assimilating a high-resolution satellite soil moisture product?. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d75b06ff. Accessed 31 July 2025.

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