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Section 1: Publication
Publication Type
Journal Article
Authorship
Brown, G., & Craig, J. R.
Title
Structural calibration of an semi-distributed hydrological model of the Liard River basin
Year
2020
Publication Outlet
Canadian Water Resources Journal/Revue canadienne des ressources hydriques, 1-17
DOI
ISBN
ISSN
Citation
Brown, G., & Craig, J. R. (2020). Structural calibration of an semi-distributed hydrological model of the Liard River basin. Canadian Water Resources Journal/Revue canadienne des ressources hydriques, 1-17.
https://doi.org/10.1080/07011784.2020.1803143
Abstract
The development of hydrological models that produce practically useful and physically defensible results is an ongoing challenge in hydrology. This challenge is further compounded in large, spatially variable basins with sparse data, where a detailed understanding of a basin’s hydrological response may be limited. This study presents an iterative and stepwise calibration strategy for model structure and parameters for a hydrological model of the 275,000 km2 Liard River basin in northern Canada. The calibration procedure was optimized to exploit and represent available data at 29 stream gauges and included the use of multiple data sources to constrain model calibration and improve model function. A flexible modelling framework was used to allow the explicit inclusion of locally varied model structure within the calibration procedure. The final model exhibits strong performance in both calibration and validation, and represents significantly different hydrological responses in different portions of the basin well. The calibration procedure helped to identify differences in hydrological processes within the basin which have not been considered by other models of the Liard. The ability to modify model structure in order to account for different hydrological regimes in different parts of the basin is demonstrated to improve model performance locally and globally.
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