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Dive into the research topics where Emanuel Dutra is active.

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Featured researches published by Emanuel Dutra.


Journal of Geophysical Research | 2009

Evaluation of forest snow processes models (SnowMIP2)

Nick Rutter; Richard Essery; John W. Pomeroy; Nuria Altimir; Kostas Andreadis; Ian T. Baker; Alan G. Barr; Paul Bartlett; Aaron Boone; Huiping Deng; H. Douville; Emanuel Dutra; Kelly Elder; C. R. Ellis; Xia Feng; Alexander Gelfan; Angus Goodbody; Yeugeniy M. Gusev; David Gustafsson; Rob Hellström; Yukiko Hirabayashi; Tomoyoshi Hirota; Tobias Jonas; Victor Koren; Anna Kuragina; Dennis P. Lettenmaier; Wei-Ping Li; Charlie Luce; E. Martin; Olga N. Nasonova

Thirty-three snowpack models of varying complexity and purpose were evaluated across a wide range of hydrometeorological and forest canopy conditions at five Northern Hemisphere locations, for up t ...


Journal of Hydrometeorology | 2010

An Improved Snow Scheme for the ECMWF Land Surface Model: Description and Offline Validation

Emanuel Dutra; Gianpaolo Balsamo; Pedro Viterbo; Pedro M. A. Miranda; Anton Beljaars; Christoph Schär; Kelly Elder

A new snow scheme for the European Centre for Medium-Range Weather Forecasts (ECMWF) land surface model has been tested and validated. The scheme includes a new parameterization of snow density, incorporating a liquid water reservoir, and revised formulations for the subgrid snow cover fraction and snow albedo. Offline validation (covering a wide range of spatial and temporal scales) includes simulations for several observation sites from the Snow Models Intercomparison Project-2 (SnowMIP2) and global simulations driven by the meteorological forcing from the Global Soil Wetness Project-2 (GSWP2) and by ECMWF Re-Analysis ERA-Interim. The new scheme reduces the end of season ablation biases from 10 to 2 days in open areas and from 21 to 13 days in forest areas. Global GSWP2 results are compared against basinscale runoff and terrestrial water storage. The new snow density parameterization increases the snow thermal insulation, reducing soil freezing and leading to an improved hydrological cycle. Simulated snow cover fraction is compared against NOAA/National Environmental Satellite, Data, and Information Service (NESDIS) with a reduction of the negative bias of snow-covered area of the original snow scheme. The original snow scheme had a systematic negative bias in surface albedo when compared against Moderate Resolution Imaging Spectroradiometer (MODIS) remote sensing data. The new scheme reduces the albedo bias, consequently reducing the spatial- and time-averaged surface net shortwave radiation bias by 5.2 W m 22 in 14% of the Northern Hemisphere land. The new snow scheme described in this paper was introduced in the ECMWF operational forecast system in September 2009 (cycle 35R3).


Bulletin of the American Meteorological Society | 2013

Toward global drought early warning capability: Expanding international cooperation for the development of a framework for monitoring and forecasting

W. Pozzi; Justin Sheffield; Robert Stefanski; Douglas Cripe; Roger Pulwarty; J. Vogt; Richard R. Heim; Michael J. Brewer; Mark Svoboda; Rogier Westerhoff; Albert Van Dijk; Benjamin Lloyd-Hughes; Florian Pappenberger; M. Werner; Emanuel Dutra; Fredrik Wetterhall; W. Wagner; Siegfried D. Schubert; Kingtse C. Mo; Margaret Nicholson; Lynette Bettio; Liliana Nunez; Rens van Beek; Marc F. P. Bierkens; Luis Gustavo Gonçalves de Gonçalves; João Gerd Zell de Mattos; Richard Lawford

Drought is a global problem that has far-reaching impacts, especially on vulnerable populations in developing regions. This paper highlights the need for a Global Drought Early Warning System (GDEWS), the elements that constitute its underlying framework (GDEWF), and the recent progress made toward its development. Many countries lack drought monitoring systems, as well as the capacity to respond via appropriate political, institutional, and technological frameworks, and these have inhibited the development of integrated drought management plans or early warning systems. The GDEWS will provide a source of drought tools and products via the GDEWF for countries and regions to develop tailored drought early warning systems for their own users. A key goal of a GDEWS is to maximize the lead time for early warning, allowing drought managers and disaster coordinators more time to put mitigation measures in place to reduce the vulnerability to drought. To address this, the GDEWF will take both a top-down approach...


Tellus A | 2012

On the contribution of lakes in predicting near-surface temperature in a global weather forecasting model

Gianpaolo Balsamo; R. Salgado; Emanuel Dutra; S. Boussetta; Timothy N. Stockdale; M. Potes

ABSTRACT The impact of lakes in numerical weather prediction is investigated in a set of global simulations performed with the ECMWF Integrated Forecasting System (IFS). A Fresh shallow-water Lake model (FLake) is introduced allowing the coupling of both resolved and subgrid lakes (those that occupy less than 50% of a grid-box) to the IFS atmospheric model. Global fields for the lake ancillary conditions (namely lake cover and lake depth), as well as initial conditions for the lake physical state, have been derived to initialise the forecast experiments. The procedure for initialising the lake variables is described and verified with particular emphasis on the importance of surface water temperature and freezing conditions. The response of short-range near surface temperature to the representation of lakes is examined in a set of forecast experiments covering one full year. It is shown that the impact of subgrid lakes is beneficial, reducing forecast error over the Northern territories of Canada and over Scandinavia particularly in spring and summer seasons. This is mainly attributed to the lake thermal effect, which delays the temperature response to seasonal radiation forcing.


Environmental Research Letters | 2016

The credibility challenge for global fluvial flood risk analysis

Mark A. Trigg; Cathryn E. Birch; Jeffrey C. Neal; Paul D. Bates; Andrew Paul Smith; Chris Sampson; Dai Yamazaki; Yukiko Hirabayashi; Florian Pappenberger; Emanuel Dutra; Philip J. Ward; Hessel C. Winsemius; Peter Salamon; Francesco Dottori; Roberto Rudari; Melanie Kappes; Alanna Leigh Simpson; Giorgis Hadzilacos; Tj Fewtrell

Quantifying flood hazard is an essential component of resilience planning, emergency response, and mitigation, including insurance. Traditionally undertaken at catchment and national scales, recently, efforts have intensified to estimate flood risk globally to better allow consistent and equitable decision making. Global flood hazard models are now a practical reality, thanks to improvements in numerical algorithms, global datasets, computing power, and coupled modelling frameworks. Outputs of these models are vital for consistent quantification of global flood risk and in projecting the impacts of climate change. However, the urgency of these tasks means that outputs are being used as soon as they are made available and before such methods have been adequately tested. To address this, we compare multi-probability flood hazard maps for Africa from six global models and show wide variation in their flood hazard, economic loss and exposed population estimates, which has serious implications for model credibility. While there is around 30%–40% agreement in flood extent, our results show that even at continental scales, there are significant differences in hazard magnitude and spatial pattern between models, notably in deltas, arid/semi-arid zones and wetlands. This study is an important step towards a better understanding of modelling global flood hazard, which is urgently required for both current risk and climate change projections.


Journal of Hydrometeorology | 2014

Water Balance in the Amazon Basin from a Land Surface Model Ensemble

Augusto Getirana; Emanuel Dutra; Matthieu Guimberteau; Jonghun Kam; Hong-Yi Li; Zhengqiu Zhang; Agnès Ducharne; Aaron Boone; Gianpaolo Balsamo; Matthew Rodell; Ally M. Toure; Yongkang Xue; Christa D. Peters-Lidard; Sujay V. Kumar; Kristi R. Arsenault; Guillaume Drapeau; L. Ruby Leung; Josyane Ronchail; Justin Sheffield

AbstractDespite recent advances in land surface modeling and remote sensing, estimates of the global water budget are still fairly uncertain. This study aims to evaluate the water budget of the Amazon basin based on several state-of-the-art land surface model (LSM) outputs. Water budget variables (terrestrial water storage TWS, evapotranspiration ET, surface runoff R, and base flow B) are evaluated at the basin scale using both remote sensing and in situ data. Meteorological forcings at a 3-hourly time step and 1° spatial resolution were used to run 14 LSMs. Precipitation datasets that have been rescaled to match monthly Global Precipitation Climatology Project (GPCP) and Global Precipitation Climatology Centre (GPCC) datasets and the daily Hydrologie du Bassin de l’Amazone (HYBAM) dataset were used to perform three experiments. The Hydrological Modeling and Analysis Platform (HyMAP) river routing scheme was forced with R and B and simulated discharges are compared against observations at 165 gauges. Simu...


Journal of Hydrometeorology | 2012

Complexity of Snow Schemes in a Climate Model and Its Impact on Surface Energy and Hydrology

Emanuel Dutra; Pedro Viterbo; Pedro M. A. Miranda; Gianpaolo Balsamo

ThreedifferentcomplexitysnowschemesimplementedintheECMWFlandsurfaceschemeHydrologyTiled ECMWF Scheme of Surface Exchanges over Land (HTESSEL) are evaluated within the EC-EARTH climate model.Thesnow schemesare(i) theoriginalHTESSELsingle-bulk-layersnow scheme,(ii)a new snow scheme in operations at ECMWF since September 2009, and (iii) a multilayer version of the previous. In offline site simulations, the multilayer scheme outperforms the single-layer schemes in deep snowpack conditions through its ability to simulate sporadic melting events thanks to the lower thermal inertial of the uppermost layer. Coupledatmosphere‐land/snowsimulationsperformedbytheEC-EARTHclimatemodelarevalidatedagainst remotesensedsnowcoverandsurfacealbedo.Theoriginalsnowschemehasasystematicearlymeltinglinkedto anunderestimationofsurfacealbedoduringspringthatwaspartiallyreducedwiththenewsnowschemes.Akey process to improve the realism of the near-surface atmospheric temperature and at the same time the soil freezing is the thermal insulation of the snowpack (tightly coupled with the accuracy of snow mass and density simulations).Themultilayersnowschemeoutperformsthesingle-layerschemesinopendeepsnowpack(suchas prairies or tundra in northern latitudes) and is instead comparable in shallow snowpack conditions. However, the representation of orography in current climate models implies limitations for accurately simulating the snowpack, particularly over complex terrain regions such as the Rockies and the Himalayas.


Climate Dynamics | 2016

Impact of land-surface initialization on sub-seasonal to seasonal forecasts over Europe

Chloé Prodhomme; Francisco J. Doblas-Reyes; Omar Bellprat; Emanuel Dutra

Land surfaces and soil conditions are key sources of climate predictability at the seasonal time scale. In order to estimate how the initialization of the land surface affects the predictability at seasonal time scale, we run two sets of seasonal hindcasts with the general circulation model EC-Earth2.3. The initialization of those hindcasts is done either with climatological or realistic land initialization in May using the ERA-Land re-analysis. Results show significant improvements in the initialized run occurring up to the last forecast month. The prediction of near-surface summer temperatures and precipitation at the global scale and over Europe are improved, as well as the warm extremes prediction. As an illustration, we show that the 2010 Russian heat wave is only predicted when soil moisture is initialized. No significant improvement is found for the retrospective prediction of the 2003 European heat wave, suggesting this event to be mainly large-scale driven. Thus, we confirm that late-spring soil moisture conditions can be decisive in triggering high-impact events in the following summer in Europe. Accordingly, accurate land-surface initial conditions are essential for seasonal predictions.


Monthly Weather Review | 2016

Improving Weather Predictability by Including Land Surface Model Parameter Uncertainty

René Orth; Emanuel Dutra; Florian Pappenberger

AbstractThe land surface forms an important component of Earth system models and interacts nonlinearly with other parts such as ocean and atmosphere. To capture the complex and heterogeneous hydrology of the land surface, land surface models include a large number of parameters impacting the coupling to other components of the Earth system model.Focusing on ECMWF’s land surface model Hydrology Tiled ECMWF Scheme of Surface Exchanges over Land (HTESSEL), the authors present in this study a comprehensive parameter sensitivity evaluation using multiple observational datasets in Europe. The authors select six poorly constrained effective parameters (surface runoff effective depth, skin conductivity, minimum stomatal resistance, maximum interception, soil moisture stress function shape, and total soil depth) and explore their sensitivity to model outputs such as soil moisture, evapotranspiration, and runoff using uncoupled simulations and coupled seasonal forecasts. Additionally, the authors investigate the po...


Journal of Geophysical Research | 2015

Soil temperature at ECMWF: An assessment using ground-based observations

Clément Albergel; Emanuel Dutra; J. Muñoz-Sabater; Thomas Haiden; Gianpaolo Balsamo; Anton Beljaars; Lars Isaksen; P. de Rosnay; Irina Sandu; Nils P. Wedi

Soil temperature is an important variable for the representation of many physical processes in numerical weather prediction (NWP). It is the key driver for all surface emissions of energy, carbon dioxide, and water and forward operator for all satellite sensors sensitive to land. Yet the forecast quality of this variable in NWP is largely unknown. In this study, in situ soil temperature measurements from nearly 700 stations belonging to four networks across the United States and Europe are used to assess the European Centre for Medium-Range Weather Forecasts (ECMWF) forecasts of soil temperature during 2012. Evaluation of the time series shows a good performance of the short-range forecasts (day one) in capturing both soil temperature annual and diurnal cycles with very high level of correlation (0.92 and over), averaged root-mean-square differences ranging from 2.54°C to 3.89°C and averaged biases ranging from −0.52°C to 0.94°C. The orography data set used in the forecast system was found to have a strong impact on the outcomes of the evaluation. The difference between elevation of a station and that of the corresponding grid cell in the ECMWF model may lead to large temperature differences linked to linear processes resulting in a constant bias, as well as nonlinear processes (e.g., to snow melt in spring). This verification study aims to contribute to a better understanding of the near-surface forecasts performance highlighting land-atmosphere processes that need to be better represented in future model development such as snow pack melting and heat diffusion in the soil.

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Gianpaolo Balsamo

European Centre for Medium-Range Weather Forecasts

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Florian Pappenberger

European Centre for Medium-Range Weather Forecasts

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Fredrik Wetterhall

European Centre for Medium-Range Weather Forecasts

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Anton Beljaars

European Centre for Medium-Range Weather Forecasts

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S. Boussetta

European Centre for Medium-Range Weather Forecasts

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Clément Albergel

European Centre for Medium-Range Weather Forecasts

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