Benoît Hingray
École Polytechnique Fédérale de Lausanne
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Publication
Featured researches published by Benoît Hingray.
Journal of Climate | 2014
Benoît Hingray; Mériem Saïd
AbstractA simple and robust framework is proposed for the partitioning of the different components of internal variability and model uncertainty in an unbalanced multimember multimodel ensemble (MM2E) of climate projections obtained for a suite of statistical downscaling models (SDMs) and global climate models (GCMs). It is based on the quasi-ergodic assumption for transient climate simulations. Model uncertainty components are estimated from the noise-free signals of the different modeling chains using a two-way analysis of variance (ANOVA) framework. The residuals from the noise-free signals are used to estimate the large- and small-scale internal variability components associated with each considered GCM–SDM configuration. This framework makes it possible to take into account all members available from any climate ensemble of opportunity. Uncertainty is quantified as a function of lead time for projections of changes in temperature and precipitation produced for a mesoscale alpine catchment. Internal v...
Journal of Climate | 2014
Jérémy Chardon; Benoît Hingray; Anne-Catherine Favre; Philemon Autin; Joël Gailhard; Isabella Zin; Charles Obled
AbstractHigh-resolution weather scenarios generated for climate change impact studies from the output of climate models must be spatially consistent. Analog models (AMs) offer a high potential for the generation of such scenarios. For each prediction day, the scenario they provide is the weather observed for days in a historical archive that are analogous according to different predictors. When the same “analog date” is chosen for a prediction at several sites, spatial consistency is automatically satisfied. The optimal predictors and consequently the optimal analog dates, however, are expected to depend on the location for which the prediction is to be made.In the present work, the predictor (1000- and 500-hPa geopotential heights) domain of a benchmark AM is optimized for the probabilistic daily prediction of 8981 local precipitation “stations” over France. The corresponding 8981 locally domain-optimized AMs are used to explore the spatial transferability and similarity of the optimal analog dates obtai...
Hydrological Sciences Journal-journal Des Sciences Hydrologiques | 2002
Gilles Drogue; T. Leviandier; L. Pfister; A. El Idrissi; J.-F. Iffly; L. Hoffmann; Frédéric Guex; Benoît Hingray; J. Humbert
Abstract The Hydrological Recursive Model (HRM), a conceptual rainfall-runoff model, was applied for local and regional simulation of hourly discharges in the transnational Alzette River basin (Luxembourg-France-Belgium). The model was calibrated for a range of various sub-basins with a view to analysing its ability to reproduce the variability of basin responses during flood generation. The regionalization of the model parameters was obtained by fitting simultaneously the runoff series of calibration sub-basins after their spatial discretization in lithological contrasting isochronal zones. The runoff simulations of the model agreed well with the recorded runoff series. Significant correlations with some basin characteristics and, noticeably, the permeability of geological formations, could be found for two of the four free model parameters. The goodness of fit for runoff predictions using the derived regional parameter set was generally satisfactory, particularly for the statistical characteristics of streamflow. A more physically-based modelling approach, or at least an explicit treatment of quick surface runoff, is expected to give better results for high peak discharge.
Journal of Hydrometeorology | 2016
Jérémy Chardon; Anne-Catherine Favre; Benoît Hingray
AbstractThe effects of spatial aggregation on the skill of downscaled precipitation predictions obtained over an 8 × 8 km2 grid from circulation analogs for metropolitan France are explored. The Safran precipitation reanalysis and an analog approach are used to downscale the precipitation where the predictors are taken from the 40-yr ECMWF Re-Analysis (ERA-40). Prediction skill—characterized by the continuous ranked probability score (CRPS), its skill score, and its decomposition—is generally found to continuously increase with spatial aggregation. The increase is also greater when the spatial correlation of precipitation is lower. This effect is shown from an empirical experiment carried out with a fully uncorrelated dataset, generated from a space-shake experiment, where the precipitation time series of each grid cell is randomly assigned to another grid cell. The underlying mechanisms of this effect are further highlighted with synthetic predictions simulated using a stochastic spatiotemporal generator...
Hydrological Processes | 2006
Pascal Horton; Bettina Schaefli; Abdelkader Mezghani; Benoît Hingray; André Musy
Hydrology and Earth System Sciences | 2007
Bettina Schaefli; Benoît Hingray; André Musy
Hydrology and Earth System Sciences | 2005
Bettina Schaefli; Benoît Hingray; Markus Niggli; André Musy
River Research and Applications | 2004
Lucien Hoffmann; Abdelkhalak El Idrissi; Laurent Pfister; Benoît Hingray; Frédéric Guex; André Musy; J. Humbert; G. Drogue; Thierry Leviandier
Atmospheric Research | 2005
Benoît Hingray; M. Ben Haha
Hydrology and Earth System Sciences | 2007
Benoît Hingray; A. Mezghani; T. A. Buishand