• Aucun résultat trouvé

Stochastic Modeling of Uncertainties in Fast Essential Antarctic Ice Sheet Models

N/A
N/A
Protected

Academic year: 2021

Partager "Stochastic Modeling of Uncertainties in Fast Essential Antarctic Ice Sheet Models"

Copied!
1
0
0

Texte intégral

(1)

Stochastic Modeling of Uncertainties in Fast Essential

An-tarctic Ice Sheet Models

Kevin Bulthuis (1,2), Frank Pattyn (2), Lionel Favier (2) and Maarten Arnst (1)

(1) Department of Aerospace and Mechanical Engineering, Université de Liège, Belgium (2) Labo-ratory of Glaciology, Université Libre de Bruxelles, Belgium

Quantifying the uncertainty in projections of sea-level rise induced by ice-sheet dynamics is a pi-votal problem in assessing climate-change consequences. Sources of uncertainty in ice-sheet models include uncertain climate forcing, basal friction, sub-shelf melting, initialization, and other model features. Accounting for uncertainty in ice-sheet models (ISMs) is challenging : (i) the stochastic modeling of sources of uncertainty can be challenged by data scarcity and imperfect representations of physical processes, and (ii) the computational cost of ISMs can hinder their integration in Earth system models and limit the number of simulations available for uncertainty propagation.

In this talk, we address the uncertainty quantification of sea-level rise projections by using the new fast essential ISM f.ETISh that affords computational tractability by limiting its complexity to the essential interactions and feedback mechanisms of ice-sheet flow. After highlighting how simulations require an initialization procedure that precedes their use in predicting climate-change effects, we will discuss the sources of uncertainty in this ISM and the information available for their stochastic modeling. We will show the stochastic modeling of a subset of these sources of uncertainty, followed by a propagation of uncertainty through the ISM and a sensitivity analysis to help identify the dominant sources of uncertainty in sea-level rise projections.

Références

Documents relatifs

Bars represent mean values of the log(+1)-transformed total duration ±SEM. Significant p-values are in bold... eggs compared to partners, but more grooming/antennation toward

We used statistics calculated from multilocus microsatellite data- sets to estimate population ages in data generated through coalescent simulations and in samples from populations

Whereas the uncertainties in calculated annual runoff volume due to the choice of the RCM remain within 20% of the reference model throughout the modeling period, August runoff by

Without going into the details, we take into account the surface slope at the medium scale by fitting a bi-quadratic form (6 parameters), we take into account the effect of

Ainsi, la Cour du travail de Lie`ge avait conside´re´ dans un arreˆt du 24 juin 2003 8 que : « ce n’est pas parce que le motif grave est e´tabli qu’il ne peut y avoir abus de

To estimate the normalization of the multijet background, we fit the di-EM invariant mass distribution of the selected data events with a linear combination of the physics and

Spatial patterns of basal drag inferred using control methods from a full-Stokes and simpler models for Pine Island Glacier, West Antarctica. A mass conservation approach for