2021
DOI
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Scientific and Human Errors in a Snow Model Intercomparison
Cécile B. Ménard,
Richard Essery,
Gerhard Krinner,
Gabriele Arduini,
Paul Bartlett,
Aaron Boone,
Claire Brutel-Vuilmet,
Eleanor Burke,
Matthias Cuntz,
Yongjiu Dai,
Bertrand Decharme,
Emanuel Dutra,
Xing Fang,
Charles Fierz,
Yeugeniy M. Gusev,
Stefan Hagemann,
Vanessa Haverd,
Hyungjun Kim,
Matthieu Lafaysse,
Thomas Marke,
О. Н. Насонова,
Tomoko Nitta,
Masashi Niwano,
John W. Pomeroy,
Gerd Schädler,
В. А. Семенов,
Tatiana G. Smirnova,
Ulrich Strasser,
Sean Swenson,
Dmitry Turkov,
Nander Wever,
Hua Yuan
Bulletin of the American Meteorological Society, Volume 102, Issue 1
Abstract Twenty-seven models participated in the Earth System Model–Snow Model Intercomparison Project (ESM-SnowMIP), the most data-rich MIP dedicated to snow modeling. Our findings do not support the hypothesis advanced by previous snow MIPs: evaluating models against more variables and providing evaluation datasets extended temporally and spatially does not facilitate identification of key new processes requiring improvement to model snow mass and energy budgets, even at point scales. In fact, the same modeling issues identified by previous snow MIPs arose: albedo is a major source of uncertainty, surface exchange parameterizations are problematic, and individual model performance is inconsistent. This lack of progress is attributed partly to the large number of human errors that led to anomalous model behavior and to numerous resubmissions. It is unclear how widespread such errors are in our field and others; dedicated time and resources will be needed to tackle this issue to prevent highly sophisticated models and their research outputs from being vulnerable because of avoidable human mistakes. The design of and the data available to successive snow MIPs were also questioned. Evaluation of models against bulk snow properties was found to be sufficient for some but inappropriate for more complex snow models whose skills at simulating internal snow properties remained untested. Discussions between the authors of this paper on the purpose of MIPs revealed varied, and sometimes contradictory, motivations behind their participation. These findings started a collaborative effort to adapt future snow MIPs to respond to the diverse needs of the community.
2020
DOI
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Snow cover duration trends observed at sites and predicted by multiple models
Richard Essery,
Hyungjun Kim,
Libo Wang,
Paul Bartlett,
Aaron Boone,
Claire Brutel-Vuilmet,
Eleanor Burke,
Matthias Cuntz,
Bertrand Decharme,
Emanuel Dutra,
Xing Fang,
Yeugeniy M. Gusev,
Stefan Hagemann,
Vanessa Haverd,
Anna Kontu,
Gerhard Krinner,
Matthieu Lafaysse,
Yves Lejeune,
Thomas Marke,
Danny Marks,
Christoph Marty,
Cécile B. Ménard,
О. Н. Насонова,
Tomoko Nitta,
John W. Pomeroy,
Gerd Schädler,
В. А. Семенов,
Tatiana G. Smirnova,
Sean Swenson,
Dmitry Turkov,
Nander Wever,
Hua Yuan
The Cryosphere, Volume 14, Issue 12
Abstract. The 30-year simulations of seasonal snow cover in 22 physically based models driven with bias-corrected meteorological reanalyses are examined at four sites with long records of snow observations. Annual snow cover durations differ widely between models, but interannual variations are strongly correlated because of the common driving data. No significant trends are observed in starting dates for seasonal snow cover, but there are significant trends towards snow cover ending earlier at two of the sites in observations and most of the models. A simplified model with just two parameters controlling solar radiation and sensible heat contributions to snowmelt spans the ranges of snow cover durations and trends. This model predicts that sites where snow persists beyond annual peaks in solar radiation and air temperature will experience rapid decreases in snow cover duration with warming as snow begins to melt earlier and at times of year with more energy available for melting.