The Great Lakes Runoff Intercomparison Project Phase 4: the Great Lakes (GRIP-GL)

Model intercomparison studies are carried out to test and compare the simulated outputs of various model setups over the same study domain. The Great Lakes region is such a domain of high public interest as it not only resembles a challenging region to model with its transboundary location, strong l...

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Veröffentlicht in:Hydrology and earth system sciences 2022-07, Vol.26 (13), p.3537-3572
Hauptverfasser: Mai, Juliane, Shen, Hongren, Tolson, Bryan A., Gaborit, Étienne, Arsenault, Richard, Craig, James R., Fortin, Vincent, Fry, Lauren M., Gauch, Martin, Klotz, Daniel, Kratzert, Frederik, O'Brien, Nicole, Princz, Daniel G., Rasiya Koya, Sinan, Roy, Tirthankar, Seglenieks, Frank, Shrestha, Narayan K., Temgoua, André G. T., Vionnet, Vincent, Waddell, Jonathan W.
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Sprache:eng
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Zusammenfassung:Model intercomparison studies are carried out to test and compare the simulated outputs of various model setups over the same study domain. The Great Lakes region is such a domain of high public interest as it not only resembles a challenging region to model with its transboundary location, strong lake effects, and regions of strong human impact but is also one of the most densely populated areas in the USA and Canada. This study brought together a wide range of researchers setting up their models of choice in a highly standardized experimental setup using the same geophysical datasets, forcings, common routing product, and locations of performance evaluation across the 1×106 km2 study domain. The study comprises 13 models covering a wide range of model types from machine-learning-based, basin-wise, subbasin-based, and gridded models that are either locally or globally calibrated or calibrated for one of each of the six predefined regions of the watershed. Unlike most hydrologically focused model intercomparisons, this study not only compares models regarding their capability to simulate streamflow (Q) but also evaluates the quality of simulated actual evapotranspiration (AET), surface soil moisture (SSM), and snow water equivalent (SWE). The latter three outputs are compared against gridded reference datasets. The comparisons are performed in two ways – either by aggregating model outputs and the reference to basin level or by regridding all model outputs to the reference grid and comparing the model simulations at each grid-cell. The main results of this study are as follows: The comparison of models regarding streamflow reveals the superior quality of the machine-learning-based model in the performance of all experiments; even for the most challenging spatiotemporal validation, the machine learning (ML) model outperforms any other physically based model. While the locally calibrated models lead to good performance in calibration and temporal validation (even outperforming several regionally calibrated models), they lose performance when they are transferred to locations that the model has not been calibrated on. This is likely to be improved with more advanced strategies to transfer these models in space. The regionally calibrated models – while losing less performance in spatial and spatiotemporal validation than locally calibrated models – exhibit low performances in highly regulated and urban areas and agricultural regions in the USA. Comparisons of
ISSN:1607-7938
1027-5606
1607-7938
DOI:10.5194/hess-26-3537-2022