The US CLIVAR Drought Working Group (formed in December 2006) U.S. Membership Tom Delworth NOAA GFDL Rong Fu Georgia Institute of Technology Dave Gutzler.

Slides:



Advertisements
Similar presentations
VEGETATION FEEDBACK AND DROUGHTS Russell Bird – 3 rd Year Atmospheric Science.
Advertisements

The Perfect Ocean for Drought, Martin Hoerling & Arun Kumar On the Cause of the 1930s Dust Bowl, Siegfried D. Schubert, Max J. Suarez, Philip J. Pegion,
Seasonal Climate Predictability over NAME Region Jae-Kyung E. Schemm CPC/NCEP/NWS/NOAA NAME Science Working Group Meeting 5 Puerto Vallarta, Mexico Nov.
Proposed Model Simulations The idea is for several modeling groups to do identical (somewhat idealized) experiments to address issues of model dependence.
Drought simulation over west US. --- Final Report Haifeng QIan Wen Mi.
Drought Modeling Experiments Alfredo Ruiz-Barradas & Sumant Nigam University of Maryland 12 th Annual CCSM Workshop Breckenridge, CO June 19-21, 2007.
Interannual Variability of Warm-Season Rainfall over the US Great Plains in NCAR/CAM and NASA/NSIPP Simulations: Intercomparisons for NAME. Alfredo Ruiz–Barradas.
Interannual Variability in Summer Hydroclimate over North America in CAM2.0 and NSIPP AMIP Simulations By Alfredo Ruiz–Barradas 1, and Sumant Nigam University.
Response of the Atmosphere to Climate Variability in the Tropical Atlantic By Alfredo Ruiz–Barradas 1, James A. Carton, and Sumant Nigam University of.
Interannual Variability of Warm-Season Rainfall over the US Great Plains in NASA/NSIPP and NCAR/CAM2.0 AMIP Simulations By Alfredo Ruiz-Barradas and Sumant.
CLIVAR Drought Modeling Experiments with CAM3.5: Interim Report Alfredo Ruiz-Barradas ^, Sumant Nigam ^, Adam Phillips *, Clara Deser * ^ University of.
Contemporaneous and Antecedent Links of Atlantic and Pacific Circulation Features with North American Hydroclimate: Structure and Interannual Variability.
Interannual Variability of North American Summer Precipitation in NASA/NSIPP and NCAR/CAM2.0 AMIP Simulations By Alfredo Ruiz-Barradas and Sumant Nigam.
Natural Climate Variability: Floods in Veracruz, Mexico in 2010: Alfredo Ruiz-Barradas 1 University of Maryland ----o---- WCRP Open Science Conference:
Diagnosis of Summer Hydroclimate Variability over North America in 20 th Century Climate Simulations By Alfredo Ruiz-Barradas 1,and Sumant Nigam University.
Diagnosis of North American Hydroclimate Variability in IPCC’s Climate Simulations Alfredo Ruiz–Barradas 1 and Sumant Nigam University of Maryland ----o----
Interannual Variability of Great Plains Summer Rainfall in Reanalyses and NCAR and NASA AMIP-like Simulations Alfredo Ruiz-Barradas Sumant Nigam Department.
A Link between Tropical Precipitation and the North Atlantic Oscillation Matt Sapiano and Phil Arkin Earth Systems Science Interdisciplinary Center, University.
Pacific vs. Indian Ocean warming: How does it matter for global and regional climate change? Joseph J. Barsugli Sang-Ik Shin Prashant D. Sardeshmukh NOAA-CIRES.
1 Assessment of the CFSv2 real-time seasonal forecasts for Wanqiu Wang, Mingyue Chen, and Arun Kumar CPC/NCEP/NOAA.
Tropical Pacific Ocean forcing of the decadal shift in global precipitation Lyon, Barnston, DeWitt, Climate Dynamics (revised)
Impact of common SST anomalies on global drought and pluvial frequency Kirsten Findell and Tom Delworth Geophysical Fluid Dynamics Laboratory Princeton,
Potential Predictability of Drought and Pluvial Conditions over the Central United States on Interannual to Decadal Time Scales Siegfried Schubert, Max.
Sub-Saharan rainfall variability as simulated by the ARPEGE AGCM, associated teleconnection mechanisms and future changes. Global Change and Climate modelling.
Intensification of Summer Rainfall Variability in the Southeastern United States in Recent Decades Hui Wang 1,2, Wenhong Li 1, and Rong Fu 1,3 1 Georgia.
Atlantic Multidecadal Variability and Its Climate Impacts in CMIP3 Models and Observations Mingfang Ting With Yochanan Kushnir, Richard Seager, Cuihua.
The US CLIVAR Working Group on Drought Siegfried Schubert (NASA/GMAO) and Dave Gutzler (Univ New Mexico) Cochairs USCLIVAR Annual Summit Annapolis, MD.
On the Causes of the 1930s Dust Bowl Siegfried Schubert, Max Suarez, Philip Pegion, Randal Koster and Julio Bacmeister Global Modeling and Assimilation.
Seasonal Moisture Flux Variability over North America in NASA/NSIPP’s AMIP Simulation and Atmospheric Reanalysis By Alfredo Ruiz-Barradas and Sumant Nigam.
How much do different land models matter for climate simulation? Jiangfeng Wei with support from Paul Dirmeyer, Zhichang Guo, Li Zhang, Vasu Misra, and.
C20C Workshop ICTP Trieste 2004 The Influence of the Ocean on the North Atlantic Climate Variability in C20C simulations with CSRIO AGCM Hodson.
The Role of Antecedent Soil Moisture on Variability of the North American Monsoon System Chunmei Zhu a, Yun Qian b, Ruby Leung b, David Gochis c, Tereza.
Diagnostics, Special Projects and Phenomena of Interest Review of 2 nd C20C Workshop for 3 rd C20C Workshop ICTP, Trieste, Italy, 21 April 2004.
The USCLIVAR Working Group on Drought: A Multi-Model Assessment of the Impact of SST Anomalies on Regional Drought.
Motivation Quantify the impact of interannual SST variability on the mean and the spread of Probability Density Function (PDF) of seasonal atmospheric.
The European Heat Wave of 2003: A Modeling Study Using the NSIPP-1 AGCM. Global Modeling and Assimilation Office, NASA/GSFC Philip Pegion (1), Siegfried.
Mechanisms of drought in present and future climate Gerald A. Meehl and Aixue Hu.
Dynamical Prediction of Indian Monsoon Rainfall and the Role of Indian Ocean K. Krishna Kumar CIRES Visiting Fellow, University of Colorado, Boulder Dynamical.
Oceanic forcing of Sahel rainfall on interannual to interdecadal time scales A. Giannini (IRI) R. Saravanan (NCAR) and P. Chang (Texas A&M) IRI for climate.
Multi-Model Ensembles for Climate Attribution Arun Kumar Climate Prediction Center NCEP/NOAA Acknowledgements: Bhaskar Jha; Marty Hoerling; Ming Ji & OGP;
Alex Jovich- Atmospheric Sciences The Perfect Ocean for Drought On the Cause of the 1930s Dust Bowl Martin Hoerling Science Vol Jan Siegfried.
Application of T382 CFS Forecasts for Dynamic Hurricane Season Prediction J. Schemm, L. Long, S. Saha and S. Moorthi NOAA/NWS/NCEP October 21, 2008 The.
Dynamic Hurricane Season Prediction Experiment with the NCEP CFS Jae-Kyung E. Schemm January 21, 2009 COLA CTB Seminar Acknowledgements: Lindsey Long Suru.
David M. Legler U.S. CLIVAR Office U.S. Climate Variability and Predictability Program usclivar.org CLIVAR Welcome Climate Diagnostics.
One-year re-forecast ensembles with CCSM3.0 using initial states for 1 January and 1 July in Model: CCSM3 is a coupled climate model with state-of-the-art.
1 Hydro-climate Review for the water year 2008 Kingtse C. Mo and Wanru Wu Kingtse C. Mo and Wanru Wu Climate Prediction Center/NCEP/NWS Climate Prediction.
Effects of trends in anthropogenic aerosols on drought risk in the Central United States Dan H. Cusworth Eric M. Leibensperger, Loretta J. Mickley Corn.
Using the National Multi-Model Ensemble (NMME) System Johnna Infanti Advisor: Ben Kirtman.
A Proposed US CLIVAR DROUGHT WORKING GROUP US CLIVAR Summit Breckinridge, CO July 2006.
Reconciling droughts and landfalling tropical cyclones in the southeastern US Vasu Misra and Satish Bastola Appeared in 2015 in Clim. Dyn.
1 An Assessment of the CFS real-time forecasts for Wanqiu Wang, Mingyue Chen, and Arun Kumar CPC/NCEP/NOAA.
Interannual Variability of Warm-Season Rainfall over the US Great Plains in NCAR/CAM and NASA/NSIPP Simulations: Intercomparisons for NAME Alfredo Ruiz–Barradas.
Multidecadal simulations of the Indian monsoon in SPEEDY- AGCM and in a coupled model Annalisa Bracco, Fred Kucharski and Franco Molteni The Abdus Salam.
Relationship of U.S. Summer Droughts with SST and Soil Moisture: Distinguishing the Time Scale of Droughts Renguang Wu Center for Ocean-Land-Atmosphere.
The USCLVAR Drought Working Group: A Multi-Model Assessment of the Impact of SST Anomalies on Drought By The USCLIVAR Drought Working Group Presented by.
1 An Assessment of the CFS real-time forecasts for Wanqiu Wang, Mingyue Chen, and Arun Kumar CPC/NCEP/NOAA.
NAME SWG th Annual NOAA Climate Diagnostics and Prediction Workshop State College, Pennsylvania Oct. 28, 2005.
To clarify, coordinate and synthesize research devoted to achieve a better understanding of ENSO diversity, including: surface and sub-surface characteristics,
1 A review of CFS forecast skill for Wanqiu Wang, Arun Kumar and Yan Xue CPC/NCEP/NOAA.
The Great 20 th Century Drying of Africa Ninth Annual CCSM Workshop Climate Variability Working Group 9 July 2004, Santa Fe Jim Hurrell, Marty Hoerling,
Principal Investigator: Siegfried Schubert
Climate and Global Dynamics Laboratory, NCAR
Alfredo Ruiz-Barradas, and Sumant Nigam
Alfredo Ruiz-Barradas Sumant Nigam
Workshop 1: GFDL (Princeton), June 1-2, 2006
Precipitation variability over Arizona and
CLIVAR Drought Modeling Experiments with CAM3.5: Interim Report
Atlantic Ocean Forcing of North American and European Summer Climate
20th Century Sahel Rainfall Variability in IPCC Model Simulations and Future Projection Mingfang Ting With Yochanan Kushnir, Richard Seager, Cuihua Li,
1 GFDL-NOAA, 2 Princeton University, 3 BSC, 4 Cerfacs, 5 UCAR
Presentation transcript:

The US CLIVAR Drought Working Group (formed in December 2006) U.S. Membership Tom Delworth NOAA GFDL Rong Fu Georgia Institute of Technology Dave Gutzler (co-chair) University of New Mexico Wayne HigginsNOAA/CPC Marty HoerlingNOAA/CDC Randy KosterNASA/GSFC Arun KumarNOAA/CPC Dennis LettenmaierUniversity of Washington Kingtse MoNOAA CPC Sumant NigamUniversity of Maryland Roger Pulwarty NOAA- NIDIS Director David Rind NASA - GISS Siegfried Schubert (co-chair) NASA GSFC Richard Seager Columbia University/LDEO Mingfang Ting Columbia University/LDEO Ning Zeng University of Maryland International Membership: Ex Officio Bradfield Lyon International Research Institute for Climate Victor O. Magana Mexico Tim Palmer ECMWF Ronald Stewart Canada Jozef Syktus Australia Jose Marengo CPTEC/INPE

Terms of Reference 1) Propose a working definition of drought and related model predictands of drought (developed model-based indices); 2) Coordinate evaluations of existing relevant model simulations (developed list of relevant simulations); 3) Suggest new experiments (coupled and uncoupled) designed to address some of the outstanding uncertainties mentioned above (carried out a coordinated set of experiments); 4) Coordinate and encourage the analysis of observational data sets to reveal antecedent linkages of multi-year drought (developed list of datasets); and 5) Organize a community workshop to present and discuss the results (joint with CDPW in October 2008)

Coordinated Global Model Experiments Addressing the Role of SSTs and Soil Moisture in Regional Drought The idea is that several modelling groups would do identical idealized experiments to address issues of model dependence on the response to SSTs (and the role of soil moisture), and to look in more detail at the physical mechanisms linking the SST changes to drought All runs 50+ years, fixed SST patterns added to seasonally varying SST climatology Participating groups/models: NASA (NSIPP1), Lamont(CCM3), NCEP(GFS), GFDL (AM2.1), NCAR (CAM3.5), and COLA/Univ. of Miami/ (CCM3.0)

SST Forcing Leading patterns of annual mean SST variability –(base on on HADISST) Climatological SST (control run) Separate patterns of low (decadal) and high (ENSO) SST variability Tropics-only component of above SST forcing Uniform SST warming Fixed soil moisture AMIP runs (provide link to observed variations)

Leading EOFs and Time series (annual mean SST ) Linear Trend Pattern (LT) Pacific Pattern (Pac) Atlantic Pattern (Atl)

Annual 200mb Height Anomalies (m) Pacific WarmPacific Cold

Annual Tskin Anomalies (°C) Pacific WarmPacific Cold

Annual 200mb Height Anomalies (m) Atlantic warmAtlantic cold

Annual Tskin Anomalies (°C) Atlantic warmAtlantic cold

Composite of the Atlantic Warm Pool (AWP) ERSST from AWP variability is large. Large AWPs are almost three times larger than the small ones. Courtesy Chunzai Wang NOAA AOML

The Caribbean Low-Level Jet (CLLJ) and Great Plains Low-Level Jet (GPLLJ) transport moisture from the AWP to the eastern North Pacific and the central United States, respectively. Vertically integrated moisture flux in summer (JJA): CLLJ GPLLJ Version 3.1; CAM3.1

Annual Precipitation (mm/day) Pacific Cold and Atlantic WarmPacific Warm and Atlantic Cold

Multi Model Annual Mean response to idealized SST forcing Surface Temperature (K) Contours are the multi model mean and shading indicates where all model have the same sign anomaly. Multi model mean for Pacific and Atlantic responses include NSIPP, GFS, GFDL, CCM3, and CAM3.5 models. The linear trend response does not include CAM mb Height (m) Courtesy Phil Pegion NOAA/CPC

Precipitation (mm/day) Courtesy Phil Pegion NOAA/CPC

Annual Mean GP Precipitation (Y-axis) and Temperature (X-axis) Pacific WarmPacific Cold

Annual Mean GP Precipitation (Y-axis) and Temperature (X-axis) Atlantic WarmAtlantic Cold

T anomaly (JJA) during driest years minus mean T for control (PnAn) Mean T for experiment minus mean T for control (PnAn) T anomaly (JJA) during driest years minus mean T for experiment =+ ( ) Land Impacts on Temperature During Drought Total T anomaly during drought T change from climate shift impact of land-atmosphere feedback (strengthened or weakened) Courtesy Randy Koster NASA/GMAO

T anomaly (JJA) during driest years minus mean T for control (PnAn) Mean T for experiment minus mean T for control (PnAn) T anomaly (JJA) during driest years minus mean T for experiment For PwAc, drastically reduced drought warming relative to control… …is due in part to a climate shift… …and in part to changes in the feedback character of the land surface. =+ ( ) Land Impacts on Temperature During Drought Total T anomaly during drought T change from climate shift impact of land- atmosphere feedback (strengthened or weakened)

Perpetual ENSO and Drought over the United States Kingtse Mo and Jae Schemm Climate Prediction Center NCEP/NWS/NOAA

ENSO composites Project SSTA from onto the first REOF for annual SSTA to obtain RPC For each season, composites of SPI6, Soil moisture anomalies and SRI6 (for runoff) for warm and cold ENSO were formed when the RPC was greater (less) than one (negative) standard deviation. Plot composite difference between cold and warm ENSO and average over 4 seasons together (Fig.1) Drought: SPI6 < -0.8 and SRI6 < -0.8

Multi model ensemble ENSO Composites Cold-warm (Obs) Multi model ensemble captures the relationships between ENSO & drought over the United States

Conclusions Drought is measured by persistent positive precipitation, soil moisture and runoff anomalies using indices SPI6, SRI6 and SM anomalies. All indices indicate that drought is more likely to occur over the Southwest, and the Great Plains during cold ENSO. The individual model experiment differs, but the multi model ensemble captures the relationships between ENSO and drought well

Evaluation of the links between SE US summer rainfall variability and SSTA simulated by NSIPP, GFDL AM2.0 and CCSM3 (we do not have AMIP run for CCSM3.5) Courtesy Rong Fu Georgia Tech

How well can models reproduce the relationship between SE US summer rainfall anomalies (  P) and N. tropical Atlantic SSTA? GFDL AM2.1 Observed 0 o : in phase 90 o : NAtl Leads PI CCM3 NSIPP capture the observed correlation between Natl SSTA and  P at 1- year period during early 80s and early 90s, but phase relation is not realistic. The correlation at 4-year scale is too strong in all three models compared to observation. Period (Year) NSIPP

Great Plains Precipitation Anomaly Seasonal precipitation anomalies smoothed by 12 applications of averaging The smoothed PRECIP index mimics PDSI (correlation of detrended series ~0.85) Full Century ( ) Correlations [CRU_P, CCM3_P] =0.36 (0.37 detrend) [CRU_P, CAM3.5_P]=0.32 (0.33 detrend) [CRU_P, GFDLAM2.1_P]=0.26 (0.37 detrend) [CRU_P, PDSI] =0.82 (0.84 detrend) Half Century ( ) Correlations [CRU_P, CCM3_P] =0.58 (0.50 detrend) [CRU_P, CAM3.5_P]=0.38 (0.19 detrend) [CRU_P, GFS_P] =0.28 (0.19 detrend) [CRU_P, GFDLAM2.1_P] =0.49 (0.46 detrend) [CRU_P, NSIPP_P] =0.27 (0.04 detrend) Full Century ( ) Half Century ( ) Simulation of 20 th Century North American Hydroclimate Variability by the Drought Working Group Models Alfredo Ruiz-Barradas, Sumant Nigam, U of Maryland Dust Bowl1950s Drought

SST Correlations of the Great Plains Summer PRECIP Indices ( ) All-season precipitation indices are first detrended and then smoothed (as before) to generate PDSI proxies. The summertime proxy indices are then correlated with detrended SSTs. GFS has fairly realistic correlations over the Pacific but not the Atlantic. CCM3’s Pacific correlations are too strong, NSIPP’s too weak, and CAM3.5’s and GFDLAM2.1’s somewhere in between. Atlantic links are comparable to the Pacific ones in observations but weaker in model simulations (with less accord among them as well). CCM3 and CAM3.5 exhibit Indian Ocean connectivity, with little support from observations CRUTS2.1 CAM3.5 GFS CCM3 NSIPP GFDLAM2.1 The spread in models’ performance makes the CLIVAR Drought Modeling exercise worthwhile

CMIP - Runs Courtesy Marty Hoerling (Link to Ben Kirtman’s Results)

Other Applications of the Runs E.g., hurricanes

Shear

Summary The USCLIVAR WG on drought is making progress on achieving its research goals to improve our understanding of long term regional drought A series of coordinated global model experiments is providing important new information on the mechanisms (SST and soil moisture) that lead to long term regional drought including an assessment of model dependence –The idealized runs represent a substantial community investment in computing (thousands of years of simulation involving most of the major US modeling centers) –Initial results will be presented and discussed in a joint CDP and USCLIVAR workshop in October –The results of all the experiments will be made available in October of this year to the general community for analysis (some groups have already made their runs available)

Relevant Publications Schubert, S., R. Koster, M. Hoerling, R. Seager, D. Lettenmaier, A. Kumar, and D. Gutzler, 2007: Predicting Drought on Seasonal-to-Decadal Time Scales. Bull. Amer. Meteor. Soc., 88, 1625– 1630 Gutzler, D. and S. Schubert, 2007: The U.S. CLIVAR Working Group on Long-Term Drought,”, U.S. CLIVAR Variations (Spring 2007, volume 5, No. 1). Drought WG +, 2008: A USCLIVAR Project to Assess and Compare the Responses of Global Climate Models to Drought-Related SST Forcing Patterns. Manuscript in preparation Schubert, S.D., M. J. Suarez, P. J. Pegion, R. D. Koster, H. Wang and J. T. Bacmeister, 2008: A mechanistic study of the impact of SSTs on drought and pluvial conditions over the United States. Manuscript in preparation. Wang, A., T. J. Bohn, D. P. Lettenmaier, S. Mahanama, and R. D. Koster, 2008: Multimodel ensemble reconstruction of drought over the continental United States. Manuscript in preparation. Koster, R. D., Z. Guo, P. A. Dirmeyer, R. Yang, and K. Mitchell, 2008: On the nature of soil moisture in land surface models. Manuscript in preparation Expect many more in the coming months on model results …

For cold ENSO, all indices show: Dryness over the Southwest, areas along the Gulf of Mexico and Great Plains For warm ENSO, the situation reverses Fig.1: composites based on the ENSO Pacific SST pattern

Procedures to analyze model runs Pool all monthly mean P together from all 9 experiments for a given model. Calculate 6 month standardized precipitation index (SPI6). For drought, the 6-month SPI needed to be less than For each experiment, we count the number of months (num) that SPI6 indicates drought. Obtain percentile by dividing num by the total months of the experiment. Multi model ensemble : Average of four models (GFS,NSIPP,CCM3 and GFDL) for each experiment. The statistical significant test was done using the Monte Carlo method.

For wPna: The ensemble shows that there are less drought events over the Southwest, Great Plains For cPna: There are more drought events over the above areas Fig.2 Ensemble: percentile of the number of months under drought averaged over GFS, NSIPP, CCM3 and GFDL.

How well can models AMIP runs reproduce the relationship between SE US summer rainfall anomalies (  P) and Nino? GFDL AM2.1 Observed 0 o : in phase 90 o : Nino Leads PI CCM3NSIPP Joint wavelet coherence: NSIPP and GFDLAM2.1 capture the observed correlation between Nino34 (lead) and SE US summer rainfall variability of year period during mid 80s and early 90s. ENSO forcing on  P seems to be too strong and too persistent in all models. Only NSIPP shows decadal variability of  P-NINO34 correlation. Period (Year) Correlation coefficient

NCAR Community Atmospheric Model (Version 3.1; CAM3.1) A global spectral model (T42 with 26 vertical layers; equivalent to a 2.8°  2.8° horizontal resolution). SST from the Hadley Centre (UK) as the model-forcing. The control (CTRL) ensemble (with 18 members) run: Climatological SST is prescribed globally. The large AWP (LAWP) ensemble run: SST composite for large AWP is used in the AWP region. The small AWP (SAWP) ensemble run: SST composite for small AWP is used in the AWP region. The difference is taken between the LAWP and SAWP runs.

Impact of the AWP on North Atlantic Subtropical High (NASH) The AWP weakens the NASH (especially at its southwestern edge) and strengthens summer continental low over the North American monsoon region. SLP’s response to AWP variability in JJA

Impact of the AWP on Rainfall during Summer (JJA) Large (small) AWP decreases (increases) rainfall in the United States east of the Rocky Mountains, in agreement with observations. Precipitation response to AWP variability

Simulation of 20 th Century North American Hydroclimate Variability by the Drought Working Group Models Objective: Assess capabilities of the DWG atmospheric models in simulating seasonal and low-frequency summer hydroclimate variability over North America Models examined: –NSIPP (NASA/GSFC; 2.5lon x 2.0lat, 5 th AMIP ens mem, ) –CCM3 (LDEO; T-42 goga_new runs atm, 1 st ens mem, ) –CAM3.5 (NCAR; T-85, one run completed recently, ) –GFS (NOAA/NCEP; T62L64 version of current CFS, ) –AM2.1 (NOAA/GFDL; 144x90, 7 th AMIP ens mem, ) Alfredo Ruiz-Barradas and Sumant Nigam University of Maryland