temperature (ºc)
DESCRIPTION
EXPERIMENTAL DESIGN. Factors to consider. Setup. Research Components. - Simulation length - Ensembles - Spin up - Choice of domain - Resolution - Output data - Surface configuration. - 31 years (Jan/1960 to Dec/1990) - Three members - 1 year spin-up - South America - PowerPoint PPT PresentationTRANSCRIPT
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Performance of the HadRM3P model for downscaling of Performance of the HadRM3P model for downscaling of present climate in South Americanpresent climate in South American
Lincoln Muniz Alves*, José A. Marengo*
*Centro de Previsão de Tempo e Estudos Climáticos (CPTEC/INPE)12630-000 Cachoeira Paulista, São Paulo, Brazil (Contact: [email protected])
SCIENCE GOALA regional program led by CPTEC/INPE is CREAS (Regional Climate Change Scenarios for South America). CREAS represents a collaboration between the UK-Met Hadley Centre Regional and various programs from the Brazilian government funded by GEF. In CREAS, the HadAM3P global model is used together with the HadRM3P regional model to downscale climate variability and change in South America at the resolution of 50 km. In this poster, we analyze simulations of climate variability for South America during the present (1961-1990), at the annual and seasonal levels.
CONTROL CLIMATE SIMULATED BY THE RCM
REGIONAL CHARACTERISTICS AND TIME VARIABILITY
EXPERIMENTAL DESIGN
Factors to consider- Simulation length- Ensembles- Spin up- Choice of domain- Resolution- Output data- Surface configuration
- 31 years (Jan/1960 to Dec/1990)- Three members- 1 year spin-up- South America- approximately 50Kmx50Km- standard diagnostics: daily- standard
Setup Research ComponentsModel validation:- Assessing the consistency between the RCM and GCM- Assessing how well the RCM represents the present day climate
Climate change scenario construction:- To generate high resolution climate change scenarios for use in climate impacts and adaptation studies.
SKILL OF THE MODEL SIMULATION
Anomaly correlation, considering the ensemble mean. Precipitation (top) and Temperature (below)
Brier Skill Score of the RCM for various rainfall indices in several regions.
How HadRM3P add value to the AGCM?How far does the RCM diverge from its driving AGCM (HadAM3P)?
Table - Bias, standard deviation (STD), root mean square error (rmse) and correlation coefficient () of annual cycle.
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1989
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Sam = Amazonia (southern)Nam = Amazonia (northern)
NNEB = Northeast Brazil (northern) SNEB = Northeast Brazil (southern)
SBr-U = Southern Brazil-UruguayNWP-E = Northwest Peru-Equador
SUMMARY AND CONCLUSIONS• In general the HadRM3P is capalbe of simulating the mean climatological features over South America;• The HadRM3P resolves features on finer scales than the GCM. This is particularly clear for precipitation. • The model is found to represent quite accurately the primary features of observed circulation, temperature and precipitation patterns, including their seasonal cycle and the main modes of interannual variability. But, there are significant biases.• The model must be adequalety tuned in order to give reliabe for climate change, but there are a number of uncertainties and caveats associated with the RCM´s predictions of climate change over South America.
AcknowledgementsThis poster is part of the a Master Degree Thesis of the first autor. We thank WMO and CPTEC for partially grants this conference. Thanks also to the UK-Met Office`s staffs for the valuable assistance. CREAS is funded by the UK FCO-GOF Program and the PROBIO-MMA-GEF project (Brazil)
Simulated precipitation, temperature and atmospheric circulation at 850 and 200 hPa for DFJ 1983 and 1985. HadAM3P (first column), HadRM3P (center), Observed (third column).
NAm
SAmSNEB
NNEBNWP-E
SBr-U
Regions of the SA
Annual cycle of observed (CRU) and modeled rainfall and temperature in several regions of SA. Tick orange line shows observations. Thick black line represents the mean from the model ensemble. Others colors represent each member of the ensemble.
Temperature (ºC) Precipitation (mm/day)
Temperature Precipitation
Hit rates versus false-alarm rates for seasonal area-averaged rainfall at the peak season for selected regions. Results are shown for the simulation of rainfall above (gray) and below (black). The area beneath the ROC curves is indicated also for above and below precipitation
Above area - 0.78
Below area - 0.67
Above area - 0.57
Below area - 0.60
Above area - 0.33
Below area - 0.40
Above area - 0.33
Below area - 0.45
Above area - 0.60
Below area - 0.72Above area - 0.50
Below area - 0.50
HadRM3P OBSERVATION
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HadAM3P HadRM3P OBSERVATION
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19851983
Interannual variability of observed and modeled normalized rainfall departures during the peak of the rainy season. Tick black line represents the mean rainfall from the model ensemble. Thin blue lines represent each member of the ensemble. Tick red line shows the observed rainfall