The precision of satellite-based net irrigation quantification in the Indus and Ganges basins

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Standard

The precision of satellite-based net irrigation quantification in the Indus and Ganges basins. / Kragh, Søren J.; Fensholt, Rasmus; Stisen, Simon; Koch, Julian.

I: Hydrology and Earth System Sciences, Bind 27, Nr. 13, 2023, s. 2463-2478.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Kragh, SJ, Fensholt, R, Stisen, S & Koch, J 2023, 'The precision of satellite-based net irrigation quantification in the Indus and Ganges basins', Hydrology and Earth System Sciences, bind 27, nr. 13, s. 2463-2478. https://doi.org/10.5194/hess-27-2463-2023

APA

Kragh, S. J., Fensholt, R., Stisen, S., & Koch, J. (2023). The precision of satellite-based net irrigation quantification in the Indus and Ganges basins. Hydrology and Earth System Sciences, 27(13), 2463-2478. https://doi.org/10.5194/hess-27-2463-2023

Vancouver

Kragh SJ, Fensholt R, Stisen S, Koch J. The precision of satellite-based net irrigation quantification in the Indus and Ganges basins. Hydrology and Earth System Sciences. 2023;27(13):2463-2478. https://doi.org/10.5194/hess-27-2463-2023

Author

Kragh, Søren J. ; Fensholt, Rasmus ; Stisen, Simon ; Koch, Julian. / The precision of satellite-based net irrigation quantification in the Indus and Ganges basins. I: Hydrology and Earth System Sciences. 2023 ; Bind 27, Nr. 13. s. 2463-2478.

Bibtex

@article{3e728f7fefea41288a245c933089e1b4,
title = "The precision of satellite-based net irrigation quantification in the Indus and Ganges basins",
abstract = "Even though irrigation is the largest direct anthropogenic interference in the natural terrestrial water cycle, limited knowledge of the amount of water applied for irrigation exists. Quantification of irrigation via evapotranspiration (ET) or soil moisture residuals between remote-sensing models and hydrological models, with the latter acting as baselines without the influence of irrigation, have successfully been applied in various regions. Here, we implement a novel ensemble methodology to estimate the precision of ET-based net irrigation quantification by combining different ET and precipitation products in the Indus and Ganges basins. A multi-model calibration of 15 models independently calibrated to simulate rainfed ET was conducted before the irrigation quantification. Based on the ensemble average, the 2003–2013 net irrigation amounts to 233 mm yr−1 (74 km3 yr−1) and 101 mm yr−1 (67 km3 yr−1) in the Indus and Ganges basins, respectively. Net irrigation in the Indus Basin is evenly split between dry and wet periods, whereas 70 % of net irrigation occurs during the dry period in the Ganges Basin. We found that, although annual ET from remote-sensing models varied by 91.5 mm yr−1, net irrigation precision was within 25 mm per season during the dry period for the entire study area, which emphasizes the robustness of the applied multi-model calibration approach. Net irrigation variance was found to decrease as ET uncertainty decreased, which is related to the climatic conditions, i.e., high uncertainty under arid conditions. A variance decomposition analysis showed that ET uncertainty accounted for 73 % of the overall net irrigation variance and that the influence of precipitation uncertainty was seasonally dependent, i.e., with an increase during the monsoon season. The results underline the robustness of the framework to support large-scale sustainable water resource management of irrigated land.",
author = "Kragh, {S{\o}ren J.} and Rasmus Fensholt and Simon Stisen and Julian Koch",
year = "2023",
doi = "10.5194/hess-27-2463-2023",
language = "English",
volume = "27",
pages = "2463--2478",
journal = "Hydrology and Earth System Sciences",
issn = "1027-5606",
publisher = "Copernicus GmbH",
number = "13",

}

RIS

TY - JOUR

T1 - The precision of satellite-based net irrigation quantification in the Indus and Ganges basins

AU - Kragh, Søren J.

AU - Fensholt, Rasmus

AU - Stisen, Simon

AU - Koch, Julian

PY - 2023

Y1 - 2023

N2 - Even though irrigation is the largest direct anthropogenic interference in the natural terrestrial water cycle, limited knowledge of the amount of water applied for irrigation exists. Quantification of irrigation via evapotranspiration (ET) or soil moisture residuals between remote-sensing models and hydrological models, with the latter acting as baselines without the influence of irrigation, have successfully been applied in various regions. Here, we implement a novel ensemble methodology to estimate the precision of ET-based net irrigation quantification by combining different ET and precipitation products in the Indus and Ganges basins. A multi-model calibration of 15 models independently calibrated to simulate rainfed ET was conducted before the irrigation quantification. Based on the ensemble average, the 2003–2013 net irrigation amounts to 233 mm yr−1 (74 km3 yr−1) and 101 mm yr−1 (67 km3 yr−1) in the Indus and Ganges basins, respectively. Net irrigation in the Indus Basin is evenly split between dry and wet periods, whereas 70 % of net irrigation occurs during the dry period in the Ganges Basin. We found that, although annual ET from remote-sensing models varied by 91.5 mm yr−1, net irrigation precision was within 25 mm per season during the dry period for the entire study area, which emphasizes the robustness of the applied multi-model calibration approach. Net irrigation variance was found to decrease as ET uncertainty decreased, which is related to the climatic conditions, i.e., high uncertainty under arid conditions. A variance decomposition analysis showed that ET uncertainty accounted for 73 % of the overall net irrigation variance and that the influence of precipitation uncertainty was seasonally dependent, i.e., with an increase during the monsoon season. The results underline the robustness of the framework to support large-scale sustainable water resource management of irrigated land.

AB - Even though irrigation is the largest direct anthropogenic interference in the natural terrestrial water cycle, limited knowledge of the amount of water applied for irrigation exists. Quantification of irrigation via evapotranspiration (ET) or soil moisture residuals between remote-sensing models and hydrological models, with the latter acting as baselines without the influence of irrigation, have successfully been applied in various regions. Here, we implement a novel ensemble methodology to estimate the precision of ET-based net irrigation quantification by combining different ET and precipitation products in the Indus and Ganges basins. A multi-model calibration of 15 models independently calibrated to simulate rainfed ET was conducted before the irrigation quantification. Based on the ensemble average, the 2003–2013 net irrigation amounts to 233 mm yr−1 (74 km3 yr−1) and 101 mm yr−1 (67 km3 yr−1) in the Indus and Ganges basins, respectively. Net irrigation in the Indus Basin is evenly split between dry and wet periods, whereas 70 % of net irrigation occurs during the dry period in the Ganges Basin. We found that, although annual ET from remote-sensing models varied by 91.5 mm yr−1, net irrigation precision was within 25 mm per season during the dry period for the entire study area, which emphasizes the robustness of the applied multi-model calibration approach. Net irrigation variance was found to decrease as ET uncertainty decreased, which is related to the climatic conditions, i.e., high uncertainty under arid conditions. A variance decomposition analysis showed that ET uncertainty accounted for 73 % of the overall net irrigation variance and that the influence of precipitation uncertainty was seasonally dependent, i.e., with an increase during the monsoon season. The results underline the robustness of the framework to support large-scale sustainable water resource management of irrigated land.

U2 - 10.5194/hess-27-2463-2023

DO - 10.5194/hess-27-2463-2023

M3 - Journal article

VL - 27

SP - 2463

EP - 2478

JO - Hydrology and Earth System Sciences

JF - Hydrology and Earth System Sciences

SN - 1027-5606

IS - 13

ER -

ID: 362058611