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Evaluation of snow water equivalent in NARCCAP simulations, including measures of observational uncertainty

    • National Center for Atmospheric Research

    Research output: Contribution to journalArticlepeer-review

    24 Scopus citations

    Abstract

    This study evaluates snow water equivalent (SWE) over North America in the reanalysis-driven NARCCAP regional climate model (RCM) experiments. Examination of SWE in these runs allows for the identification of bias due to RCM configuration, separate from inherited GCM bias. SWE from the models is compared to SWE from a new ensemble observational product to evaluate the RCMs' ability to capture the magnitude, spatial distribution, duration, and timing of the snow season. This new dataset includes data from 14 different sources in five different types. Consideration of the associated uncertainty in observed SWE strongly influences the appearance of bias in RCM-generated SWE. Of the six NARCCAP RCMs, the version of MM5 run by Iowa State University (MM5I) is found to best represent SWE despite its use of the Noah land surface model. CRCM overestimates SWE because of cold temperature biases and surface temperature parameterization options, while RegCM3 (RCM3) does so because of excessive precipitation. HadRM3 (HRM3) underestimates SWE because of warm temperature biases, while in the version of WRF using the Grell scheme (WRFG) and ECPC-RSM (ECP2), the misrepresentation of snow in the Noah land surface model plays the dominant role in SWE bias, particularly in ECP2 where sublimation is too high.

    Original languageEnglish
    Pages (from-to)2425-2452
    Number of pages28
    JournalJournal of Hydrometeorology
    Volume18
    Issue number9
    DOIs
    StatePublished - Sep 1 2017

    Keywords

    • Climate models
    • Land surface model
    • Model evaluation/performance
    • Regional models
    • Snowpack

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