2021
Abstract. The snowpack over the Mediterranean mountains constitutes a key water resource for the downstream populations. However, its dynamics have not been studied in detail yet in many areas, mostly because of the scarcity of snowpack observations. In this work, we present a characterization of the snowpack over the two mountain ranges of Lebanon. To obtain the necessary snowpack information, we have developed a 1 km regional-scale snow reanalysis (ICAR_assim) covering the period 2010–2017. ICAR_assim was developed by means of an ensemble-based data assimilation of Moderate Resolution Imaging Spectroradiometer (MODIS) fractional snow-covered area (fSCA) through an energy and mass snow balance model, the Flexible Snow Model (FSM2), using the particle batch smoother (PBS). The meteorological forcing data were obtained by a regional atmospheric simulation from the Intermediate Complexity Atmospheric Research model (ICAR) nested inside a coarser regional simulation from the Weather Research and Forecasting model (WRF). The boundary and initial conditions of WRF were provided by the ERA5 atmospheric reanalysis. ICAR_assim showed very good agreement with MODIS gap-filled snow products, with a spatial correlation of R=0.98 in the snow probability (P(snow)) and a temporal correlation of R=0.88 on the day of peak snow water equivalent (SWE). Similarly, ICAR_assim has shown a correlation with the seasonal mean SWE of R=0.75 compared with in situ observations from automatic weather stations (AWSs). The results highlight the high temporal variability in the snowpack in the Lebanese mountain ranges, with the differences between Mount Lebanon and the Anti-Lebanon Mountains that cannot only be explained by hypsography as the Anti-Lebanon Mountains are in the rain shadow of Mount Lebanon. The maximum fresh water stored in the snowpack is in the middle elevations, approximately between 2200 and 2500 m a.s.l. (above sea level). Thus, the resilience to further warming is low for the snow water resources of Lebanon due to the proximity of the snowpack to the zero isotherm.
Abstract. The interaction of mountain terrain with meteorological processes causes substantial temporal and spatial variability in snow accumulation and ablation. Processes impacted by complex terrain include large-scale orographic enhancement of snowfall, small-scale processes such as gravitational and wind-induced transport of snow, and variability in the radiative balance such as through terrain shadowing. In this study, a multi-scale modelling approach is proposed to simulate the temporal and spatial evolution of high-mountain snowpacks. The multi-scale approach combines atmospheric data from a numerical weather prediction system at the kilometre scale with process-based downscaling techniques to drive the Canadian Hydrological Model (CHM) at spatial resolutions allowing for explicit snow redistribution modelling. CHM permits a variable spatial resolution by using the efficient terrain representation by unstructured triangular meshes. The model simulates processes such as radiation shadowing and irradiance to slopes, blowing-snow transport (saltation and suspension) and sublimation, avalanching, forest canopy interception and sublimation, and snowpack melt. Short-term, kilometre-scale atmospheric forecasts from Environment and Climate Change Canada's Global Environmental Multiscale Model through its High Resolution Deterministic Prediction System (HRDPS) drive CHM and are downscaled to the unstructured mesh scale. In particular, a new wind-downscaling strategy uses pre-computed wind fields from a mass-conserving wind model at 50 m resolution to perturb the mesoscale HRDPS wind and to account for the influence of topographic features on wind direction and speed. HRDPS-CHM was applied to simulate snow conditions down to 50 m resolution during winter 2017/2018 in a domain around the Kananaskis Valley (∼1000 km2) in the Canadian Rockies. Simulations were evaluated using high-resolution airborne light detection and ranging (lidar) snow depth data and snow persistence indexes derived from remotely sensed imagery. Results included model falsifications and showed that both wind-induced and gravitational snow redistribution need to be simulated to capture the snowpack variability and the evolution of snow depth and persistence with elevation across the region. Accumulation of windblown snow on leeward slopes and associated snow cover persistence were underestimated in a CHM simulation driven by wind fields that did not capture lee-side flow recirculation and associated wind speed decreases. A terrain-based metric helped to identify these lee-side areas and improved the wind field and the associated snow redistribution. An overestimation of snow redistribution from windward to leeward slopes and subsequent avalanching was still found. The results of this study highlight the need for further improvements of snowdrift-permitting models for large-scale applications, in particular the representation of subgrid topographic effects on snow transport.
2020
Abstract. The interaction of mountain terrain with meteorological processes causes substantial temporal and spatial variability in snow accumulation and ablation. Processes impacted by complex terrain include large-scale orographic enhancement of snowfall, small-scale processes such as gravitational and wind-induced transport of snow, and variability in the radiative balance such as through terrain shadowing. In this study, a multi-scale modeling approach is proposed to simulate the temporal and spatial evolution of high mountain snowpacks using the Canadian Hydrological Model (CHM), a multi-scale, spatially distributed modelling framework. CHM permits a variable spatial resolution by using the efficient terrain representation by unstructured triangular meshes. The model simulates processes such as radiation shadowing and irradiance to slopes, blowing snow redistribution and sublimation, avalanching, forest canopy interception and sublimation and snowpack melt. Short-term, km-scale atmospheric forecasts from Environment and Climate Change Canada's Global Environmental Multiscale Model through its High Resolution Deterministic Prediction System (HRDPS) drive CHM, and were downscaled to the unstructured mesh scale using process-based procedures. In particular, a new wind downscaling strategy combines meso-scale HRDPS outputs and micro-scale pre-computed wind fields to allow for blowing snow calculations. HRDPS-CHM was applied to simulate snow conditions down to 50-m resolution during winter 2017/2018 in a domain around the Kananaskis Valley (~1000 km2) in the Canadian Rockies. Simulations were evaluated using high-resolution airborne Light Detection and Ranging (LiDAR) snow depth data and snow persistence indexes derived from remotely sensed imagery. Results included model falsifications and showed that both blowing snow and gravitational snow redistribution need to be simulated to capture the snowpack variability and the evolution of snow depth and persistence with elevation across the region. Accumulation of wind-blown snow on leeward slopes and associated snow-cover persistence were underestimated in a CHM simulation driven by wind fields that did not capture leeside flow recirculation and associated wind speed decreases. A terrain-based metric helped to identify these lee-side areas and improved the wind field and the associated snow redistribution. An overestimation of snow redistribution from windward to leeward slopes and subsequent avalanching was still found. The results of this study highlight the need for further improvements of snowdrift-permitting models for large-scale applications, in particular the representation of subgrid topographic effects on snow transport.
Abstract. The snowpack over the Mediterranean mountains constitutes a key water resource for the downstream populations. However, its dynamics have not been studied in detail yet in many areas, mostly because of the scarcity of snowpack observations. In this work, we present a characterization of the snowpack over the two mountain ranges of Lebanon. To obtain the necessary snowpack information, we have developed a 1 km regional scale snow reanalysis (ICAR_assim) covering the period 2010–2017. ICAR_assim was developed by means of ensemble-based data assimilation of MODIS fractional snow-covered area (fSCA) through the energy and mass balance model the Flexible Snow Model (FSM2), using the Particle Batch Smoother (PBS). The meteorological forcing data was obtained by a regional atmospheric simulation developed through the Intermediate Complexity Atmospheric Research model (ICAR) nested inside a coarser regional simulation developed by the Weather Research and Forecasting model (WRF). The boundary and initial conditions of WRF were provided by the ERA5 atmospheric reanalysis. ICAR_assim showed very good agreement with MODIS gap-filled snow products, with a spatial correlation of R = 0.98 in the snow probability (P(snow)), and a temporal correlation of R = 0.88 in the day of peak snow water equivalent (SWE)Similarly, ICAR_assim has shown a correlation with the seasonal mean SWE of R = 0.75 compared with in-situ observations from Automatic Weather Stations (AWS). The results highlight the high temporal variability of the snowpack in the Lebanon ranges, with differences between Mount Lebanon and Anti-Lebanon that cannot be only explained by its hypsography been Anti-Lebanon in the rain shadow of Mount Lebanon. The maximum fresh water stored in the snowpack is in the middle elevations approximately between 2200 and 2500 m. a.s.l. Thus, the resilience to further warming is low for the snow water resources of Lebanon due to the proximity of the snowpack to the zero isotherm.
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Long‐term trends (1958–2017) in snow cover duration and depth in the Pyrenees
J. I. López‐Moreno,
Jean Michel Soubeyroux,
Simon Gascoin,
Esteban Alonso‐González,
Nuria Durán-Gómez,
Matthieu Lafaysse,
Matthieu Vernay,
Carlo Maria Carmagnola,
Samuel Morin
International Journal of Climatology, Volume 40, Issue 14
This study investigated the temporal variability and changes in snow cover duration and the average snow depth from December to April in the Pyrenees at 1,500 and 2,100 m a.s.l. for the period 1958–2017. This is the first such analysis for the entire mountain range using SAFRAN‐Crocus simulations run for this specific purpose. The SAFRAN‐Crocus simulations were evaluated for the period 1980–2016 using 28 in situ snow depth data time series, and for the period 2000–2017 using MODIS observations of the snow cover duration. Following confirmation that the simulated snow series satisfactorily reproduced the observed evolution of the snowpack, the Mann–Kendall test showed that snow cover duration and average depth decreased during the full study period, but this was only statistically significant at 2,100 m a.s.l. The temporal evolution in the snow series indicated marked differences among massifs, elevations, and snow variables. In general, the most western massifs of the French Pyrenees underwent a greater decrease in the snowpack, while in some eastern massifs the snowpack did not decrease, and in some cases increased at 1,500 m a.s.l. The results suggest that the trends were consistent over time, as they were little affected by the start and end year of the study period, except if trends are computed only starting after 1980, when no significant trends were apparent. Most of the observed negative trends were not correlated with changes in the atmospheric circulation patterns during the snow season. This suggests that the continuous warming in the Pyrenees since the beginning of the industrial period, and particularly the sharp increase since 1955, is a major driver explaining the snow cover decline in the Pyrenees.
The aim of this work is to understand aerosol transfers to the snowpack in the Spanish Pyrenees (Southern Europe) by determining their episodic mass-loading and composition, and to retrieve their regional impacts regarding optical properties and modification of snow melting. Regular aerosol monitoring has been performed during three consecutive years. Complementarily, short campaigns have been carried out to collect dust-rich snow samples. Atmospheric samples have been chemically characterized in terms of elemental composition and, in some cases, regarding their mineralogy. Snow albedo has been determined in different seasons along the campaign, and temporal variations of snow-depth from different observatories have been related to concentration of impurities in the snow surface. Our results noticed that aerosol flux in the Central Pyrenees during cold seasons (from November to May, up to 12–13 g m−2 of insoluble particles overall accumulated) is much higher than the observed during the warm period (from June to October, typically around 2.1–3.3 g m−2). Such high values observed during cold seasons were driven by the impact of severe African dust episodes. In absence of such extreme episodes, aerosol loadings in cold and warm season appeared comparable. Our study reveals that mineral dust particles from North Africa are a major driver of the aerosol loading in the snowpack in the southern side of the Central Pyrenees. Field data revealed that the heterogeneous spatial distribution of impurities on the snow surface led to differences close to 0.2 on the measured snow albedo within very short distances. Such impacts have clear implications for modelling distributed energy balance of snow and predicting snow melting from mountain headwaters.
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Estimating Fractional Snow Cover in Open Terrain from Sentinel-2 Using the Normalized Difference Snow Index
Simon Gascoin,
Zacharie Barrou Dumont,
César Deschamps-Berger,
Florence Marti,
Germain Salgues,
Juan I. López‐Moreno,
Jesús Revuelto,
Timothée Michon,
Paul Schattan,
Olivier Hagolle
Remote Sensing, Volume 12, Issue 18
Sentinel-2 provides the opportunity to map the snow cover at unprecedented spatial and temporal resolutions on a global scale. Here we calibrate and evaluate a simple empirical function to estimate the fractional snow cover (FSC) in open terrains using the normalized difference snow index (NDSI) from 20 m resolution Sentinel-2 images. The NDSI is computed from flat surface reflectance after masking cloud and snow-free areas. The NDSI–FSC function is calibrated using Pléiades very high-resolution images and evaluated using independent datasets including SPOT 6/7 satellite images, time lapse camera photographs, terrestrial lidar scans and crowd-sourced in situ measurements. The calibration results show that the FSC can be represented with a sigmoid-shaped function 0.5 × tanh(a × NDSI + b) + 0.5, where a = 2.65 and b = −1.42, yielding a root mean square error (RMSE) of 25%. Similar RMSE are obtained with different evaluation datasets with a high topographic variability. With this function, we estimate that the confidence interval on the FSC retrievals is 38% at the 95% confidence level.
Abstract. Accurate knowledge of snow depth distributions in mountain catchments is critical for applications in hydrology and ecology. Recently, a method was proposed to map snow depth at meter-scale resolution from very-high-resolution stereo satellite imagery (e.g., Pléiades) with an accuracy close to 0.5 m. However, the validation was limited to probe measurements and unmanned aircraft vehicle (UAV) photogrammetry, which sampled a limited fraction of the topographic and snow depth variability. We improve upon this evaluation using accurate maps of the snow depth derived from Airborne Snow Observatory laser-scanning measurements in the Tuolumne river basin, USA. We find a good agreement between both datasets over a snow-covered area of 138 km2 on a 3 m grid, with a positive bias for a Pléiades snow depth of 0.08 m, a root mean square error of 0.80 m and a normalized median absolute deviation (NMAD) of 0.69 m. Satellite data capture the relationship between snow depth and elevation at the catchment scale and also small-scale features like snow drifts and avalanche deposits at a typical scale of tens of meters. The random error at the pixel level is lower in snow-free areas than in snow-covered areas, but it is reduced by a factor of 2 (NMAD of approximately 0.40 m for snow depth) when averaged to a 36 m grid. We conclude that satellite photogrammetry stands out as a convenient method to estimate the spatial distribution of snow depth in high mountain catchments.
2019
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Twenty-three unsolved problems in hydrology (UPH) – a community perspective
Günter Blöschl,
M. F. Bierkens,
António Chambel,
Christophe Cudennec,
Georgia Destouni,
Aldo Fiori,
J. W. Kirchner,
Jeffrey J. McDonnell,
H. H. G. Savenije,
Murugesu Sivapalan,
Christine Stumpp,
Elena Toth,
Elena Volpi,
Gemma Carr,
Claire Lupton,
José Luis Salinas,
Borbála Széles,
Alberto Viglione,
Hafzullah Aksoy,
Scott T. Allen,
Anam Amin,
Vazken Andréassian,
Berit Arheimer,
Santosh Aryal,
Victor R. Baker,
Earl Bardsley,
Marlies Barendrecht,
Alena Bartošová,
Okke Batelaan,
Wouter Berghuijs,
Keith Beven,
Theresa Blume,
Thom Bogaard,
Pablo Borges de Amorim,
Michael E. Böttcher,
Gilles Boulet,
Korbinian Breinl,
Mitja Brilly,
Luca Brocca,
Wouter Buytaert,
Attilio Castellarin,
Andrea Castelletti,
Xiaohong Chen,
Yangbo Chen,
Yuanfang Chen,
Peter Chifflard,
Pierluigi Claps,
Martyn P. Clark,
Adrian L. Collins,
Barry Croke,
Annette Dathe,
Paula Cunha David,
Felipe P. J. de Barros,
Gerrit de Rooij,
Giuliano Di Baldassarre,
Jessica M. Driscoll,
Doris Duethmann,
Ravindra Dwivedi,
Ebru Eriş,
William Farmer,
James Feiccabrino,
Grant Ferguson,
Ennio Ferrari,
Stefano Ferraris,
Benjamin Fersch,
David C. Finger,
Laura Foglia,
Keirnan Fowler,
Б. И. Гарцман,
Simon Gascoin,
Éric Gaumé,
Alexander Gelfan,
Josie Geris,
Shervan Gharari,
Tom Gleeson,
Miriam Glendell,
Alena Gonzalez Bevacqua,
M. P. González‐Dugo,
Salvatore Grimaldi,
A.B. Gupta,
Björn Guse,
Dawei Han,
David M. Hannah,
A. A. Harpold,
Stefan Haun,
Kate Heal,
Kay Helfricht,
Mathew Herrnegger,
Matthew R. Hipsey,
Hana Hlaváčiková,
Clara Hohmann,
Ladislav Holko,
C. Hopkinson,
Markus Hrachowitz,
Tissa H. Illangasekare,
Azhar Inam,
Camyla Innocente,
Erkan Istanbulluoglu,
Ben Jarihani,
Zahra Kalantari,
Andis Kalvāns,
Sonu Khanal,
Sina Khatami,
Jens Kiesel,
M. J. Kirkby,
Wouter Knoben,
Krzysztof Kochanek,
Silvia Kohnová,
Alla Kolechkina,
Stefan Krause,
David K. Kreamer,
Heidi Kreibich,
Harald Kunstmann,
Holger Lange,
Margarida L. R. Liberato,
Eric Lindquist,
Timothy E. Link,
Junguo Liu,
Daniel P. Loucks,
Charles H. Luce,
Gil Mahé,
Olga Makarieva,
Julien Malard,
Shamshagul Mashtayeva,
Shreedhar Maskey,
Josep Mas-Plá,
Maria Mavrova-Guirguinova,
Maurizio Mazzoleni,
Sebastian H. Mernild,
Bruce Misstear,
Alberto Montanari,
Hannes Müller-Thomy,
Alireza Nabizadeh,
Fernando Nardi,
Christopher M. U. Neale,
Nataliia Nesterova,
Bakhram Nurtaev,
V.O. Odongo,
Subhabrata Panda,
Saket Pande,
Zhonghe Pang,
Georgia Papacharalampous,
Charles Perrin,
Laurent Pfister,
Rafael Pimentel,
María José Polo,
David Post,
Cristina Prieto,
Maria‐Helena Ramos,
Maik Renner,
José Eduardo Reynolds,
Elena Ridolfi,
Riccardo Rigon,
Mònica Riva,
David E. Robertson,
Renzo Rosso,
Tirthankar Roy,
João Henrique Macedo Sá,
Gianfausto Salvadori,
Melody Sandells,
Bettina Schaefli,
Andreas Schumann,
Anna Scolobig,
Jan Seibert,
Éric Servat,
Mojtaba Shafiei,
Ashish Sharma,
Moussa Sidibé,
Roy C. Sidle,
Thomas Skaugen,
Hugh G. Smith,
Sabine M. Spiessl,
Lina Stein,
Ingelin Steinsland,
Ulrich Strasser,
Bob Su,
Ján Szolgay,
David G. Tarboton,
Flavia Tauro,
Guillaume Thirel,
Fuqiang Tian,
Rui Tong,
Kamshat Tussupova,
Hristos Tyralis,
R. Uijlenhoet,
Rens van Beek,
Ruud J. van der Ent,
Martine van der Ploeg,
Anne F. Van Loon,
Ilja van Meerveld,
Ronald van Nooijen,
Pieter van Oel,
Jean‐Philippe Vidal,
Jana von Freyberg,
Sergiy Vorogushyn,
Przemysław Wachniew,
Andrew J. Wade,
Philip J. Ward,
Ida Westerberg,
Christopher White,
Eric F. Wood,
Ross Woods,
Zongxue Xu,
Koray K. Yılmaz,
Yongqiang Zhang
Hydrological Sciences Journal, Volume 64, Issue 10
This paper is the outcome of a community initiative to identify major unsolved scientific problems in hydrology motivated by a need for stronger harmonisation of research efforts. The procedure involved a public consultation through online media, followed by two workshops through which a large number of potential science questions were collated, prioritised, and synthesised. In spite of the diversity of the participants (230 scientists in total), the process revealed much about community priorities and the state of our science: a preference for continuity in research questions rather than radical departures or redirections from past and current work. Questions remain focused on the process-based understanding of hydrological variability and causality at all space and time scales. Increased attention to environmental change drives a new emphasis on understanding how change propagates across interfaces within the hydrological system and across disciplinary boundaries. In particular, the expansion of the human footprint raises a new set of questions related to human interactions with nature and water cycle feedbacks in the context of complex water management problems. We hope that this reflection and synthesis of the 23 unsolved problems in hydrology will help guide research efforts for some years to come.
2017
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Different sensitivities of snowpacks to warming in Mediterranean climate mountain areas
Juan I. López‐Moreno,
Simon Gascoin,
Javier Herrero,
E. A. Sproles,
Marc Pons,
Esteban Alonso‐González,
Lahoucine Hanich,
Abdelghani Boudhar,
K. N. Musselman,
N. P. Molotch,
James O. Sickman,
John W. Pomeroy
Environmental Research Letters, Volume 12, Issue 7
In this study we quantified the sensitivity of snow to climate warming in selected mountain sites having a Mediterranean climate, including the Pyrenees in Spain and Andorra, the Sierra Nevada in Spain and California (USA), the Atlas in Morocco, and the Andes in Chile. Meteorological observations from high elevations were used to simulate the snow energy and mass balance (SEMB) and calculate its sensitivity to climate. Very different climate sensitivities were evident amongst the various sites. For example, reductions of 9%–19% and 6–28 days in the mean snow water equivalent (SWE) and snow duration, respectively, were found per °C increase. Simulated changes in precipitation (±20%) did not affect the sensitivities. The Andes and Atlas Mountains have a shallow and cold snowpack, and net radiation dominates the SEMB; and explains their relatively low sensitivity to climate warming. The Pyrenees and USA Sierra Nevada have a deeper and warmer snowpack, and sensible heat flux is more important in the SEMB; this explains the much greater sensitivities of these regions. Differences in sensitivity help explain why, in regions where climate models project relatively greater temperature increases and drier conditions by 2050 (such as the Spanish Sierra Nevada and the Moroccan Atlas Mountains), the decline in snow accumulation and duration is similar to other sites (such as the Pyrenees and the USA Sierra Nevada), where models project stable precipitation and more attenuated warming. The snowpack in the Andes (Chile) exhibited the lowest sensitivity to warming, and is expected to undergo only moderate change (a decrease of <12% in mean SWE, and a reduction of < 7 days in snow duration under RCP 4.5). Snow accumulation and duration in the other regions are projected to decrease substantially (a minimum of 40% in mean SWE and 15 days in snow duration) by 2050.