2022
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Vegetation type is an important predictor of the arctic summer land surface energy budget
Jacqueline Oehri,
Gabriela Schaepman‐Strub,
Jin‐Soo Kim,
Raleigh Grysko,
Heather Kropp,
Inge Grünberg,
Vitalii Zemlianskii,
Oliver Sonnentag,
Eugénie Euskirchen,
Merin Reji Chacko,
Giovanni Muscari,
Peter D. Blanken,
Joshua Dean,
Alcide di Sarra,
R. J. Harding,
Ireneusz Sobota,
Lars Kutzbach,
Elena Plekhanova,
Aku Riihelä,
Julia Boike,
Nathaniel B. Miller,
Jason Beringer,
Efrèn López‐Blanco,
Paul C. Stoy,
Ryan C. Sullivan,
Marek Kejna,
Frans‐Jan W. Parmentier,
John A. Gamon,
Mikhail Mastepanov,
Christian Wille,
Marcin Jackowicz-Korczyński,
Dirk Nikolaus Karger,
William L. Quinton,
Jaakko Putkonen,
Dirk van As,
Torben R. Christensen,
Maria Z. Hakuba,
Robert S. Stone,
Stefan Metzger,
Baptiste Vandecrux,
G. V. Frost,
Martin Wild,
Birger Ulf Hansen,
Daniela Meloni,
Florent Dominé,
Mariska te Beest,
Torsten Sachs,
Aram Kalhori,
A. V. Rocha,
Scott Williamson,
Sara Morris,
A. L. Atchley,
Richard Essery,
Benjamin R. K. Runkle,
David Holl,
Laura Riihimaki,
Hiroyasu Iwata,
Edward A. G. Schuur,
Christopher Cox,
Andrey A. Grachev,
J. P. McFadden,
Robert S. Fausto,
Mathias Goeckede,
Masahito Ueyama,
Norbert Pirk,
Gijs de Boer,
M. Syndonia Bret‐Harte,
Matti Leppäranta,
Konrad Steffen,
Thomas Friborg,
Atsumu Ohmura,
C. Edgar,
Johan Olofsson,
Scott D. Chambers
Nature Communications, Volume 13, Issue 1
Abstract Despite the importance of high-latitude surface energy budgets (SEBs) for land-climate interactions in the rapidly changing Arctic, uncertainties in their prediction persist. Here, we harmonize SEB observations across a network of vegetated and glaciated sites at circumpolar scale (1994–2021). Our variance-partitioning analysis identifies vegetation type as an important predictor for SEB-components during Arctic summer (June-August), compared to other SEB-drivers including climate, latitude and permafrost characteristics. Differences among vegetation types can be of similar magnitude as between vegetation and glacier surfaces and are especially high for summer sensible and latent heat fluxes. The timing of SEB-flux summer-regimes (when daily mean values exceed 0 Wm −2 ) relative to snow-free and -onset dates varies substantially depending on vegetation type, implying vegetation controls on snow-cover and SEB-flux seasonality. Our results indicate complex shifts in surface energy fluxes with land-cover transitions and a lengthening summer season, and highlight the potential for improving future Earth system models via a refined representation of Arctic vegetation types.
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Impact of measured and simulated tundra snowpack properties on heat transfer
Victoria Dutch,
Nick Rutter,
Leanne Wake,
Melody Sandells,
Chris Derksen,
Branden Walker,
Gabriel Gosselin,
Oliver Sonnentag,
Richard Essery,
Richard Kelly,
Phillip Marsh,
Joshua King,
Julia Boike
The Cryosphere, Volume 16, Issue 10
Abstract. Snowpack microstructure controls the transfer of heat to, as well as the temperature of, the underlying soils. In situ measurements of snow and soil properties from four field campaigns during two winters (March and November 2018, January and March 2019) were compared to an ensemble of CLM5.0 (Community Land Model) simulations, at Trail Valley Creek, Northwest Territories, Canada. Snow micropenetrometer profiles allowed for snowpack density and thermal conductivity to be derived at higher vertical resolution (1.25 mm) and a larger sample size (n=1050) compared to traditional snowpit observations (3 cm vertical resolution; n=115). Comparing measurements with simulations shows CLM overestimated snow thermal conductivity by a factor of 3, leading to a cold bias in wintertime soil temperatures (RMSE=5.8 ∘C). Two different approaches were taken to reduce this bias: alternative parameterisations of snow thermal conductivity and the application of a correction factor. All the evaluated parameterisations of snow thermal conductivity improved simulations of wintertime soil temperatures, with that of Sturm et al. (1997) having the greatest impact (RMSE=2.5 ∘C). The required correction factor is strongly related to snow depth (R2=0.77,RMSE=0.066) and thus differs between the two snow seasons, limiting the applicability of such an approach. Improving simulated snow properties and the corresponding heat flux is important, as wintertime soil temperatures are an important control on subnivean soil respiration and hence impact Arctic winter carbon fluxes and budgets.
2021
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Impact of measured and simulated tundra snowpack properties on heat transfer
Victoria Dutch,
Nick Rutter,
Leanne Wake,
Melody Sandells,
Chris Derksen,
Branden Walker,
Gabriel Gosselin,
Oliver Sonnentag,
Richard Essery,
Richard Kelly,
Philip Marsh,
Joshua King
Abstract. Snowpack microstructure controls the transfer of heat to, and the temperature of, the underlying soils. In situ measurements of snow and soil properties from four field campaigns during two different winters (March and November 2018, January and March 2019) were compared to an ensemble of CLM5.0 (Community Land Model) simulations, at Trail Valley Creek, Northwest Territories, Canada. Snow MicroPenetrometer profiles allowed snowpack density and thermal conductivity to be derived at higher vertical resolution (1.25 mm) and a larger sample size (n = 1050) compared to traditional snowpit observations (3 cm vertical resolution; n = 115). Comparing measurements with simulations shows CLM overestimated snow thermal conductivity by a factor of 3, leading to a cold bias in wintertime soil temperatures (RMSE = 5.8 °C). Bias-correction of the simulated thermal conductivity (relative to field measurements) improved simulated soil temperatures (RMSE = 2.1 °C). Multiple linear regression shows the required correction factor is strongly related to snow depth (R2 = 0.77, RMSE = 0.066) particularly early in the winter. Furthermore, CLM simulations did not adequately represent the observed high proportions of depth hoar. Addressing uncertainty in simulated snow properties and the corresponding heat flux is important, as wintertime soil temperatures act as a control on subnivean soil respiration, and hence impact Arctic winter carbon fluxes and budgets.
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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,
Michio 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
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Snow cover duration trends observed at sites and predicted bymultiple 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 Schaedler,
В. А. Семенов,
Tatiana G. Smirnova,
Sean Swenson,
Dmitry Turkov,
Nander Wever,
Hua Yuan
Abstract. Thirty-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.
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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.
2019
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Effect of snow microstructure variability on Ku-band radar snow water equivalent retrievals
Nick Rutter,
Melody Sandells,
Chris Derksen,
Joshua King,
Peter Toose,
Leanne Wake,
Tom Watts,
Richard Essery,
Alexandre Roy,
A. Royer,
Philip Marsh,
C. F. Larsen,
Matthew Sturm
The Cryosphere, Volume 13, Issue 11
Abstract. Spatial variability in snowpack properties negatively impacts our capacity to make direct measurements of snow water equivalent (SWE) using satellites. A comprehensive data set of snow microstructure (94 profiles at 36 sites) and snow layer thickness (9000 vertical profiles across nine trenches) collected over two winters at Trail Valley Creek, NWT, Canada, was applied in synthetic radiative transfer experiments. This allowed for robust assessment of the impact of estimation accuracy of unknown snow microstructural characteristics on the viability of SWE retrievals. Depth hoar layer thickness varied over the shortest horizontal distances, controlled by subnivean vegetation and topography, while variability in total snowpack thickness approximated that of wind slab layers. Mean horizontal correlation lengths of layer thickness were less than a metre for all layers. Depth hoar was consistently ∼30 % of total depth, and with increasing total depth the proportion of wind slab increased at the expense of the decreasing surface snow layer. Distinct differences were evident between distributions of layer properties; a single median value represented density and specific surface area (SSA) of each layer well. Spatial variability in microstructure of depth hoar layers dominated SWE retrieval errors. A depth hoar SSA estimate of around 7 % under the median value was needed to accurately retrieve SWE. In shallow snowpacks <0.6 m, depth hoar SSA estimates of ±5 %–10 % around the optimal retrieval SSA allowed SWE retrievals within a tolerance of ±30 mm. Where snowpacks were deeper than ∼30 cm, accurate values of representative SSA for depth hoar became critical as retrieval errors were exceeded if the median depth hoar SSA was applied.
In this study, we assess the impact of forcing data errors, model structure, and parameter choices on 1‐D snow simulations simultaneously within a global variance‐based sensitivity analysis framework. This approach allows inclusion of interaction effects, drawing a more representative picture of the resulting sensitivities. We utilize all combinations of a multiphysics snowpack model to mirror the influence of model structure. Uncertainty ranges of model parameters and input data are extracted from the literature. We evaluate a suite of 230,000 model realizations at the snow monitoring station Kühtai (Tyrol, Austria, 1,920 m above sea level) against snow water equivalent observations. The results show throughout the course of 25 winter seasons (1991–2015) and different model performance criteria a large influence of forcing data uncertainty and its interactions on the model performance. Mean interannual total sensitivity indices are in the general order of parameter choice < model structure < forcing error, with precipitation, air temperature, and the radiative forcings controlling the variance during the accumulation period and air temperature and longwave irradiance controlling the variance during the ablation period, respectively. Model skill is highly sensitive to the snowpack liquid water transport scheme throughout the whole winter period and to albedo representation during the ablation period. We found a sufficiently long evaluation period (>10 years) is required for robust averaging. A considerable interaction effect was revealed, indicating that an improvement in the knowledge (i.e., reduction of uncertainty) of one factor alone might not necessarily improve model results.
2018
Abstract Chinooks are the North American variety of foehn: strong, warm and dry winds that descend lee mountain slopes. The strong wind speeds, high temperatures and substantial humidity deficits have been hypothesized to remove important prairie near-surface water storage from agricultural fields via evaporation, sublimation and blowing snow, as well as change the phase of near surface water via snowmelt and ground thaw. This paper presents observations of surface energy and water balances from eddy covariance instrumentation deployed at three open sites in southern Alberta, Canada during winter 2011–2012. Energy balances, snow and soil moisture budgets of three select chinook events were analysed in detail. These three events ranged in duration from two to nine days, and are representative of winter through early spring chinooks. Precipitation data from gauges and reanalyses (CaPA and ERA-interim) were used to assess water balances. Variations in precipitation and snowpacks caused the greatest differences in energy and water balances. Cumulative winter precipitation varied by a factor of two over the three sites: heaviest at the more northern site immediately east of the Rocky Mountains and lightest at the easternmost and southernmost site. The temporal progression of chinook-driven surface water loss is explained, beginning with strong blowing snow events through to evaporation of meltwater as snowpacks disappear. At the two sites with considerable winter precipitation and snowcover, large upward latent heat fluxes, often exceeding 100 W m−2, were driven by downward sensible heat fluxes but were unrelated to net radiation. Conversely, at the southernmost site with little snowcover, upward latent heat fluxes were much smaller (less than 50 W m−2) and were associated with periods of positive net radiation. Upward sensible heat fluxes during periods of positive net radiation were observed at this site throughout winter, but were not observed at the more northerly sites until March when the snowcovers ablated. Daily sublimation plus evaporation rates during chinooks at the sites with heaviest and lightest precipitation were 1.3–2.1 mm/day and 0.1–0.3 mm/day, respectively. Evaporation of soil water occurred while soils were partially to fully unfrozen in November. There was little change in soil water content between fall freeze-up and spring thaw (December through most of March), indicating that over-winter infiltration was balanced by soil water evaporation and both terms were likely to be small. Winter precipitation resulted in only 2% to 4% increases in near-surface water storage at the more northern sites with greater precipitation, whereas there was a net loss over winter at the southernmost site.
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ESM-SnowMIP: assessing snow models and quantifying snow-related climate feedbacks
Gerhard Krinner,
Chris Derksen,
Richard Essery,
M. Flanner,
Stefan Hagemann,
Martyn P. Clark,
Alex Hall,
Helmut Rott,
Claire Brutel‐Vuilmet,
Hyungjun Kim,
Cécile B. Ménard,
Lawrence Mudryk,
Chad W. Thackeray,
Libo Wang,
Gabriele Arduini,
Gianpaolo Balsamo,
Paul Bartlett,
Julia Boike,
Aaron Boone,
F. Chéruy,
Jeanne Colin,
Matthias Cuntz,
Yongjiu Dai,
Bertrand Decharme,
Jeff Derry,
Agnès Ducharne,
Emanuel Dutra,
Xing Fang,
Charles Fierz,
Josephine Ghattas,
Yeugeniy M. Gusev,
Vanessa Haverd,
Anna Kontu,
Matthieu Lafaysse,
R. M. Law,
David M. Lawrence,
Weiping Li,
Thomas Marke,
Danny Marks,
Martin Ménégoz,
О. Н. Насонова,
Tomoko Nitta,
Michio Niwano,
John W. Pomeroy,
Mark S. Raleigh,
Gerd Schaedler,
В. А. Семенов,
Tanya Smirnova,
Tobias Stacke,
Ulrich Strasser,
Sean Svenson,
Dmitry Turkov,
Tao Wang,
Nander Wever,
Hua Yuan,
Wenyan Zhou,
Dan Zhu
Geoscientific Model Development, Volume 11, Issue 12
Abstract. This paper describes ESM-SnowMIP, an international coordinated modelling effort to evaluate current snow schemes, including snow schemes that are included in Earth system models, in a wide variety of settings against local and global observations. The project aims to identify crucial processes and characteristics that need to be improved in snow models in the context of local- and global-scale modelling. A further objective of ESM-SnowMIP is to better quantify snow-related feedbacks in the Earth system. Although it is not part of the sixth phase of the Coupled Model Intercomparison Project (CMIP6), ESM-SnowMIP is tightly linked to the CMIP6-endorsed Land Surface, Snow and Soil Moisture Model Intercomparison (LS3MIP).
2016
Abstract The snow surface temperature (SST) is essential for estimating longwave radiation fluxes from snow. SST can be diagnosed using finescale multilayer snow physics models that track changes in snow properties and internal energy; however, these models are heavily parameterized, have high predictive uncertainty, and require continuous simulation to estimate prognostic state variables. Here, a relatively simple model to estimate SST that is not reliant on prognostic state variables is proposed. The model assumes that the snow surface is poorly connected thermally to the underlying snowpack and largely transparent for most of the shortwave radiation spectrum, such that a snow surface energy balance among only sensible heat, latent heat, longwave radiation, and near-infrared radiation is possible and is called the radiative psychrometric model (RPM). The RPM SST is sensitive to air temperature, humidity, ventilation, and longwave irradiance and is secondarily affected by absorption of near-infrared radiation at the snow surface that was higher where atmospheric deposition of particulates was more likely to be higher. The model was implemented with neutral stability, an implicit windless exchange coefficient, and constant shortwave absorption factors and aerodynamic roughness lengths. It was evaluated against radiative SST measurements from the Canadian Prairies and Rocky Mountains, French Alps, and Bolivian Andes. With optimized and global shortwave absorption and aerodynamic roughness length parameters, the model is shown to accurately predict SST under a wide range of conditions, providing superior predictions when compared to air temperature, dewpoint, or ice bulb calculation approaches.