Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration

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Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration. / Soltani, Mohsen; Bjerre, Elisa; Koch, Julian; Stisen, Simon.

I: Journal of Hydrology, Bind 603, Nr. B, 127026, 12.2021.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Soltani, M, Bjerre, E, Koch, J & Stisen, S 2021, 'Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration', Journal of Hydrology, bind 603, nr. B, 127026. https://doi.org/10.1016/j.jhydrol.2021.127026

APA

Soltani, M., Bjerre, E., Koch, J., & Stisen, S. (2021). Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration. Journal of Hydrology, 603(B), [127026]. https://doi.org/10.1016/j.jhydrol.2021.127026

Vancouver

Soltani M, Bjerre E, Koch J, Stisen S. Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration. Journal of Hydrology. 2021 dec.;603(B). 127026. https://doi.org/10.1016/j.jhydrol.2021.127026

Author

Soltani, Mohsen ; Bjerre, Elisa ; Koch, Julian ; Stisen, Simon. / Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration. I: Journal of Hydrology. 2021 ; Bind 603, Nr. B.

Bibtex

@article{a5111bd6d41f442e8eda2a074352955b,
title = "Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration",
abstract = "Hydrological models have traditionally been calibrated and evaluated against point-scale observations, such as streamflow, emphasizing the temporal, but not necessarily the spatial component of a model. The main goal of this study is to improve the spatial pattern performance of simulated actual evapotranspiration (AET), a key variable in the land–atmosphere interface, for the entire land-phase of Denmark. This is achieved by integrating fully distributed remote-sensing (RS) data and robust objective functions in the regionalization and optimization of the national water resources model of Denmark (DK-model). For this, monthly spatial patterns of MODIS16 ET at 1 km resolution are used as a reference RS ET estimate in the model calibration. We applied a gradient-based nonlinear Gauss-Marquardt-Levenberg (GML) algorithm for parameter estimation via inverse modeling. The proposed optimization framework includes three calibration strategies: Cal01 represents the traditional calibration approach against discharge and groundwater head observations only, Cal02 expands Cal01 by means of a spatial pattern-oriented objective function, namely the spatial efficiency (SPAEF) metric, targeting ET pattern performance, Cal03 adds to Cal02 an additional parameter regionalization scheme, where the original fixed land use class dependent distribution and seasonal development of leaf area index (LAI), crop coefficient (Kc) and root depth (RD) are replaced with empirical schemes driven by distributed vegetation (NDVI) and soil texture (clay fraction) data. Our results reveal that a significant improvement in the simulated spatial patterns of AET is obtained when combining regionalization schemes and a spatial pattern oriented objective function in Cal03, which is highlighted by a Copula analysis also. At the same time, a very limited trade-off in the model performance of AET patterns, streamflow and groundwater-heads is observed. Finally, the regionalization scheme (Cal03) affected the simulated groundwater recharge according to changes of AET. The findings of this study contribute to further improve spatial representation and evaluation of hydrological models and highlight the need to carefully design regionalization schemes as well as objective functions in fully distributed models.",
keywords = "Hydrological modeling, Model parameterization and calibration, Satellite remote sensing, Spatial evapotranspiration patterns, Streamflow and groundwater-heads",
author = "Mohsen Soltani and Elisa Bjerre and Julian Koch and Simon Stisen",
note = "Funding Information: The authors would like to acknowledge the financial support received for the SPACE project provided by the Villum Foundation (http://villumfonden.dk/) through their Young Investigator Program (grant VKR023443). Publisher Copyright: {\textcopyright} 2021 Elsevier B.V.",
year = "2021",
month = dec,
doi = "10.1016/j.jhydrol.2021.127026",
language = "English",
volume = "603",
journal = "Journal of Hydrology",
issn = "0022-1694",
publisher = "Elsevier",
number = "B",

}

RIS

TY - JOUR

T1 - Integrating remote sensing data in optimization of a national water resources model to improve the spatial pattern performance of evapotranspiration

AU - Soltani, Mohsen

AU - Bjerre, Elisa

AU - Koch, Julian

AU - Stisen, Simon

N1 - Funding Information: The authors would like to acknowledge the financial support received for the SPACE project provided by the Villum Foundation (http://villumfonden.dk/) through their Young Investigator Program (grant VKR023443). Publisher Copyright: © 2021 Elsevier B.V.

PY - 2021/12

Y1 - 2021/12

N2 - Hydrological models have traditionally been calibrated and evaluated against point-scale observations, such as streamflow, emphasizing the temporal, but not necessarily the spatial component of a model. The main goal of this study is to improve the spatial pattern performance of simulated actual evapotranspiration (AET), a key variable in the land–atmosphere interface, for the entire land-phase of Denmark. This is achieved by integrating fully distributed remote-sensing (RS) data and robust objective functions in the regionalization and optimization of the national water resources model of Denmark (DK-model). For this, monthly spatial patterns of MODIS16 ET at 1 km resolution are used as a reference RS ET estimate in the model calibration. We applied a gradient-based nonlinear Gauss-Marquardt-Levenberg (GML) algorithm for parameter estimation via inverse modeling. The proposed optimization framework includes three calibration strategies: Cal01 represents the traditional calibration approach against discharge and groundwater head observations only, Cal02 expands Cal01 by means of a spatial pattern-oriented objective function, namely the spatial efficiency (SPAEF) metric, targeting ET pattern performance, Cal03 adds to Cal02 an additional parameter regionalization scheme, where the original fixed land use class dependent distribution and seasonal development of leaf area index (LAI), crop coefficient (Kc) and root depth (RD) are replaced with empirical schemes driven by distributed vegetation (NDVI) and soil texture (clay fraction) data. Our results reveal that a significant improvement in the simulated spatial patterns of AET is obtained when combining regionalization schemes and a spatial pattern oriented objective function in Cal03, which is highlighted by a Copula analysis also. At the same time, a very limited trade-off in the model performance of AET patterns, streamflow and groundwater-heads is observed. Finally, the regionalization scheme (Cal03) affected the simulated groundwater recharge according to changes of AET. The findings of this study contribute to further improve spatial representation and evaluation of hydrological models and highlight the need to carefully design regionalization schemes as well as objective functions in fully distributed models.

AB - Hydrological models have traditionally been calibrated and evaluated against point-scale observations, such as streamflow, emphasizing the temporal, but not necessarily the spatial component of a model. The main goal of this study is to improve the spatial pattern performance of simulated actual evapotranspiration (AET), a key variable in the land–atmosphere interface, for the entire land-phase of Denmark. This is achieved by integrating fully distributed remote-sensing (RS) data and robust objective functions in the regionalization and optimization of the national water resources model of Denmark (DK-model). For this, monthly spatial patterns of MODIS16 ET at 1 km resolution are used as a reference RS ET estimate in the model calibration. We applied a gradient-based nonlinear Gauss-Marquardt-Levenberg (GML) algorithm for parameter estimation via inverse modeling. The proposed optimization framework includes three calibration strategies: Cal01 represents the traditional calibration approach against discharge and groundwater head observations only, Cal02 expands Cal01 by means of a spatial pattern-oriented objective function, namely the spatial efficiency (SPAEF) metric, targeting ET pattern performance, Cal03 adds to Cal02 an additional parameter regionalization scheme, where the original fixed land use class dependent distribution and seasonal development of leaf area index (LAI), crop coefficient (Kc) and root depth (RD) are replaced with empirical schemes driven by distributed vegetation (NDVI) and soil texture (clay fraction) data. Our results reveal that a significant improvement in the simulated spatial patterns of AET is obtained when combining regionalization schemes and a spatial pattern oriented objective function in Cal03, which is highlighted by a Copula analysis also. At the same time, a very limited trade-off in the model performance of AET patterns, streamflow and groundwater-heads is observed. Finally, the regionalization scheme (Cal03) affected the simulated groundwater recharge according to changes of AET. The findings of this study contribute to further improve spatial representation and evaluation of hydrological models and highlight the need to carefully design regionalization schemes as well as objective functions in fully distributed models.

KW - Hydrological modeling

KW - Model parameterization and calibration

KW - Satellite remote sensing

KW - Spatial evapotranspiration patterns

KW - Streamflow and groundwater-heads

U2 - 10.1016/j.jhydrol.2021.127026

DO - 10.1016/j.jhydrol.2021.127026

M3 - Journal article

AN - SCOPUS:85116931073

VL - 603

JO - Journal of Hydrology

JF - Journal of Hydrology

SN - 0022-1694

IS - B

M1 - 127026

ER -

ID: 282943829