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Regional climate modeling over South America: challenges and perspectives. Silvina A. Solman CIMA (CONICET-UBA) DCAO (FCEN-UBA). UMI- IFAECI 2nd Meeting, Buenos Aires. Argentina April 25-27- 2011. Outline. Why do we need Regional Climate models?
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Regional climate modeling over South America: challenges andperspectives Silvina A. Solman CIMA (CONICET-UBA) DCAO (FCEN-UBA) UMI- IFAECI 2nd Meeting, Buenos Aires. Argentina April 25-27- 2011
Outline • Why do we need Regional Climate models? • How well do models represent regional climate over South America? • Main shortcomings and strengths of RCMs over South America: the CLARIS-LPB contribution. • Sources of uncertainty in regional climate simulations • Possible research topics
La información climática a escala regional es crítica para los estudios de impacto Why do we need Regional Climate models? AOGCM Regional ClimateModel (RCM)
How well do models represent regional climate over South America? • CORDEX • Initiative promoted by the TFRCD /WCRP • Main goal: To Provide a quality-controlled data set of RCD-based information for the recent historical past and 21st century projections, covering the majority of populated land regions on the globe. • To Evaluate the ensemble of RCD simulations. • to provide a more solid scientific basis for impact assessments and other uses of downscaled climate information • CLARIS-LPB • The EU FP7 CLARIS LPB project • Main goal: To predictthe regional climatechangeimpactson La Plata Basin (LPB) in South America, and at designingadaptationstrategies • Toprovideanensemble of regional hydroclimatescenarios and theiruncertaintiesforclimateimpactstudies.
ENSEMBLES NARCCAP CLARIS LPB CORDEX Domains
CORDEX: South America/CLARIS-LPB Model Evaluation Framework Climate Projection Framework ERA-Interim LBC 1989-2008 A1B Continuous runs & Timeslices (2010-2040 and 2070-2100) Regional Analysis Regional Databanks Multiple AOGCMs HadCM3-Q0, ECHAM5OM-R3, IPSL
CLARIS-LPB coordinated experiments over South America: ERA-Interim boundary forcing
BIAS Mean Temperature (DJF) 1990-2006 RCMs Ensemble Warm/coldbias
Ensemble spread DJF JJA How large is the ensemble spread? RATIO=spread/IV
Precipitation (DJF) 1990-2006 BIAS RCMs Ensemble Wet/drybias
DJF JJA Ensemble spread RATIO=spread/IV
Up to date most RCMs evaluations have been focused on the mean climate, but what about higher order climate variability? Mesoscalevariability Diurnalcylce Intraseasonalvariability Examples of precipitationvariabilityoverdifferent time-scales Interannualtointerdecadalvariability
What do weknow? • Overall model performance of the mean climate • Systematic biases of the simulated mean climate • Largest biases mainly over tropical South America • Warm and dry biases over tropical regions: Land surface? • Dry and bias over LPB: resolution? • Uncertainty on simulating mean climate (inter-model spread) • Largest biases mainly over tropical regions Butwedon’tknowmuchabout … • Model performance on higher order variability patterns • Systematic biases on higher order variability patterns • Uncertainty in simulating higher order variability patterns
Internalvariability of a RCM over South America • MM5 model • OND 1986 • 4 members (Solman and Pessacg, 2010) • Howlargeistheinternalvariabilityforlong-termclimatesimulations? • Annualcycle of theinternalvariability?
CLARIS-LPB CORDEX Model Evaluation Framework Climate Projection Framework ERA-Interim LBC 1989-2008 A1B Continuous runs & Timeslices 2010-2040; 2070-2100 RCP4.5, RCP8.5 1951-2100 or timeslices Regional Analysis Regional Databanks Need for a collaborative framework to provide CORDEX projections over South America
RCM perspectives • Need for evaluating RCMs in terms of variability patterns. • Understanding the causes for the systematic biases of the simulated mean climate • Need for evaluating the internal variability of RCMs to put the climate response patterns in the context of the noise level. • Need for a collaborative framework to provide CORDEX projections over South America
Conclusions • South American climate is characterized by variability patterns on a broad range of timescales and different spatial distributions. • Regional climate models are able to simulate the mean climatic conditions, though large uncertainties and systematic biases can be identified over some regions /variables. • Studies using Regional Climate models focused on the response of the regional climate to external forcings (increasing CO2; land use changes or soil moisture conditions) show that the climate response is very heterogeneous both spatially and temporally. • Some particular regions of South America exhibit large responses, mainly in terms of changes in precipitation, temperature and moisture flux to these external forcings.