4.7 Article Proceedings Paper

Hydrology Laboratory Research Modeling System (HL-RMS) of the US National Weather Service

期刊

JOURNAL OF HYDROLOGY
卷 291, 期 3-4, 页码 297-318

出版社

ELSEVIER
DOI: 10.1016/j.jhydrol.2003.12.039

关键词

distributed model; conceptual model; water balance; kinematic routing; parameter estimation; radar

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This study investigates an approach that combines physically-based and conceptual model features in two stages of distributed modeling: model structure development and estimation of spatially variable parameters. The approach adds more practicality to the process of model parameterization, and facilitates an easier transition from current lumped model-based operational systems to more powerful distributed systems. This combination of physically-based and conceptual model features is implemented within the Hydrology Laboratory Research Modeling System (HL-RMS). HL-RMS consists of a well-tested conceptual wader balance model applied on a regular spatial grid linked to physically-based kinematic hillslope and channel routing model!;. Parameter estimation procedures that combine spatially distributed and 'integrated' basin-outlet properties have been developed for the water balance and routing components. High-resolution radar-based precipitation data over a large region are used in testing HL-RMS. Initial tests show that HL-RMS yields results comparable to well-calibrated lumped model simulations in several headwater basins, and it outperforms a lumped model in basins where spatial rainfall variability effects are significant. It is important to note that simulations for two nested basins (not calibrated directly, but parameters from the calibration of the parent basin were applied instead) outperformed lumped simulations even more consistently, which means that HL-RMS has the potential to improve the accuracy and resolution of river runoff forecasts. Published by Elsevier B.V.

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