COLA Contribution to India’s Monsoon Mission Monsoon Mission International Consultancy Meeting...
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Transcript of COLA Contribution to India’s Monsoon Mission Monsoon Mission International Consultancy Meeting...
COLA Contribution to India’s Monsoon Mission
Monsoon Mission International Consultancy Meeting IITM, Pune
September 2012
Jim KinterCenter for Ocean-Land-Atmosphere Studies
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
• COLA has been interested in, and making fundamental contributions to Indian monsoon research for more than two decades
• The Charney-Shukla (1981) hypothesis undergirds much of the research in this area …
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Conceptual Model for Indian Monsoon Rainfall
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
Can we use this knowledge to predict the Indian monsoon?
Yes, but …
The Charney-Shukla hypothesis has its limitations: The boundary conditions that apply to the atmosphere are neither fixed in space and time nor external to the coupled ocean-atmosphere-land oscillations that modulate tropical circulation and rainfall …
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
The role of air-sea coupling in seasonal prediction of Asia-Pacific
summer monsoon rainfall
Jieshun Zhu and Jagadish Shukla
To be submitted to Geophys. Res. Lett.
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Model, Experiments and Validated Datasets
• Model: CFS v2
• Hindcast Experiments: 1) One-Tier (coupled) prediction: CFS v2 predictions starting from ECMWF ORA-S4
ocean initial conditions;
2) Two-Tier prediction: GFS (the atmospheric component of CFS v2) forced by the daily mean SST From One-Tier predictions
In both predictions, (a) ATM and LND initial data from CFSRR
(b) starting from every April during 1982-2009
(c) 4 ensemble members with different ATM/LND ICs
• Validation Dataset: CMAP precipitation analysis
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Summary
• Two-Tier prediction (without coupling processes) produces higher rainfall biases and unrealistically high interannual rainfall variability in the tropical western North Pacific and some coastal regions, e.g. west of Philippines and west of the Indo-China Peninsula – suggests an important “damping” role by coupling
• The differences in anomaly correlation between One-Tier (coupled) and Two-Tier predictions are not significant, but RMSE is clearly larger in Two-Tier prediction in this region.
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
How, then, can we predict the Indian monsoon? • Statistical models have been employed for
many decades, but there is now evidence that dynamical models are superior to statistical models …
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Dynamical Models Outperform Statistical
The skill in forecasts of all-India monsoon rainfall from May ICs with dynamical models (ENSEMBLES Project) is statistically significant, and greater than empirical forecasts based on observed SST.
DelSole & Shukla 2012: GRL
ISMR=India Summer Monsoon
Rainfall
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
• There is also evidence that other factors influence the Indian monsoon on decadal time scales
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Krishnamurthy and Krishnamurthy
Decadal SST Influences on Indian MonsoonAMV PDV Atlantic Tripole
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
• … and, the Indian monsoon exhibits a rich spectrum of variability on intraseasonal to decadal and longer time scales
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
R. Shukla and J. M. Wallace 2012
OLR (colors)V850 (vectors)
PC1
PC2
PC1+PC2
-PC1+PC2
Depiction of half a cycle of the Monsoon Intra-Seasonal Oscillation (MISO)
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
• … and the Indian monsoon is strongly influenced by details of the underlying topography and associated atmospheric circulation
• There is evidence that our current models are not capable of simulating (or even analyzing) this level of complexity
• Could this be inadequate resolution? Improper model physics? We have evidence for both possibilities.
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
• … and, there is evidence that climate change may influence the Indian monsoon
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Mean JJAS EIMR
EIMR (70E-110E, 10N-30N) Thanks to Bohar Singh
Ensemble Average of CCSM4, CM2.1, MPI-ESM, HadGEM2, MIROC5
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Mean JJAS EIMR
Thanks to Bohar Singh
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA and the Indian Monsoon
• All these indicators suggest that our current dynamical models, while superior to statistical models, are not fully up to the task of predicting the Indian monsoon
• We have separate evidence that model fidelity is positively correlated with predictability, i.e., models that more faithfully represent the mean climate are better at quantifying predictability and potentially better at making predictions
• WE NEED BETTER MODELS!
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
COLA Monsoon Mission• Land-Atmosphere Feedbacks
– Hypothesis: reducing model errors related to the coupling between atmosphere and land can improve monsoon rainfall forecasts• Diagnose impact of improper representation of L-A feedbacks in CFSv2• Design a superior LS initialization method that can positively influence Indian monsoon
prediction skill
• Multiple Analysis Ocean Initialization– Hypothesis: errors in oceanic initialization are limiting prediction skill of Indo-Pacific
SST anomalies on seasonal time scales impact on Indian monsoon prediction skill• Use multiple ODA method to improve initial state of Pacific and Indian Oceans• Test whether oceanic anomalies in Indian Ocean add value to monsoon prediction
• Ocean-Atmosphere Feedbacks– Hypothesis: reducing model errors related to the coupling between atmosphere and
ocean can improve monsoon rainfall forecasts• Examine sensitivity of CFSv2 predictions to improved parameterization of cloud processes
developed by CPT• Experiment with regionally coupled model to design coupled ENSO-monsoon rainfall
forecasting system
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India23
Strong Drifts• CFSv2 reanalysis mean
precipitation during JJA (top) and the drift in the first month of reforecasts validating during JJA (bottom).
• There are very strong drifts in the vicinity of the northern Indian Ocean and South Asia, which have major consequences for intra-seasonal forecasts in the area with CFSv2.
mm/day
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India24
Drift with Lead Time
• Reanalysis precipitation (black) is higher and has more interannual variability (whiskers) than forecasts (colors).
• Forecast monsoon precipitation gets weaker at longer leads.
• That dries the soil in those forecasts (bottom), exacerbating the problem.
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India25
How Does CFSv2 Land-Atmosphere Coupling
Compare?
• July index for CFSv2 with Noah is considerably weaker (+&-) than:– GSWP-2 (Land Multi-Model
Ensemble)– IFS (ECMWF) run in climate
mode– MERRA (NASA) reanalysis
(both L-A and the land-only “replay”).
Left panels from Dirmeyer (2011):GRL doi:10.1029/2011GL048268
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India26
Drift in July Coupling
• Changes in coupling index shows strong feedbacks are well placed over NW India, but the rest of the country becomes “hot” at longer leads.
• These changes come because soil moisture drops - drifts into the semi-arid “sweet spot” for flux sensitivity.
• Could this drift contribute to reduced skill (cf GLACE-2)?
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India29
Proposed Land-Atmosphere Feedback Investigation (Task 1)
• CFSv2 has weak correlation of past soil moisture to future precipitation compared to observations– Conduct specified persisted initial SM anomaly hindcasts
• Determine CFS atmospheric response to soil moisture – is it too weak?• Does skill improve with persisted anomalies?
• CFSv2 mean climate significantly different from obs– Develop an anomaly-based initialization strategy for LS
• Consistent with CFSv2 climatology by scaling means and variances• CFSRR provides a rich dataset for this development
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India30
Multiple Analysis Ocean Initialization
What are the effects of uncertainty in Indian Ocean heat content on monsoon prediction?
Will ensemble predictions initialized with multiple ocean analyses improve Indo-Pacific SST and monsoon predictive skills?
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
ECMWF: ORA-S3, COMBINE-NV NCEP: GODAS, CFSR UM/TAMU: SODA GFDL : ECDA
DATA SOURCE
ODA Heat Content Uncertainty (1979-2007)
moderate high low
Hea
t Con
tent
Ano
mal
y
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Prediction skill of the NINO3.4 is sensitive to Ocean ICs
(April ICs: 1979-2007)
Predictive skill varies substantially across individual ocean ICsES_Mean is comparable to the best of individual predictions ES_Mean is close to the upper limit set by super-ensemble diagnostics
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Indian Ocean SST Prediction Skill, JJAS
1982-2007Initialized in April
Multi-ocean initialization achieves higher skill than individual ocean IC cases
Higher skill near Madagascar corresponds to subsurface memory
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India34
Proposed Work – Task 2
• Monsoon season hindcasts (Jun-Sep; 1982-present), using CFSv2 with multiple analysis ocean initialization (NCEP GODAS, CFSR; ECMWF ORA3-4) with leads from Jan to May
• Ocean anomaly initialization to reduce initial shock and climate drift
• Skill comparison with CFSRR, ECMWF S4 and ENSEMBLES
Expected Results
• Improved prediction skill of the Indo-Pacific SST anomalies • Added value to the monsoon rainfall prediction• Better ensemble spread and more realistic pdf distribution
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Ocean-Atmosphere Feedbacks
Hypothesis: reducing model errors related to the coupling between atmosphere and ocean can improve monsoon rainfall forecasts
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Coupled Model Development
• Serious errors in low clouds have been shown to affect the ocean-atmosphere interaction (e.g. Hu et al. 2011)
• The Stratocumulus to Cumulus Transition Climate Process Team (external to COLA) has given COLA permission to use their improved representation of shallow clouds implemented in CFS
• A subset of the CFSRR hindcasts will be repeated with the improved shallow cloud scheme included in CFS
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Improving O-A Feedbacks
• CGCMs, including CFSv2, have large biases in both the climatological mean and variances
• SST-forced two-tier prediction might be the answer, but, as shown above, it introduces errors by overestimating the variance
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Improving O-A Feedbacks
• CGCMs, including CFSv2, have large biases in both the climatological mean and variances
• SST-forced two-tier prediction might be the answer, but, as shown above, it introduces errors by overestimating the variance
• Alternative approach of regional coupling requires knowledge of future SST, e.g., in ENSO region
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Summary – Task 3• Hypothesis: the best monsoon predictions will be made
with models that filter out the influence of weather noise and maximize the role of the ocean initial conditions.1. A bias-corrected CFSv2 (specified SST in tropical
Pacific; mixed layer model elsewhere) will be validated against the observed record for 1982-present to determine the best specified oceanic heat flux and mixed layer model depth
2. A version of CFSv2 in which the dynamical ocean is replaced outside the tropical Pacific with the mixed layer model determined in Step 1 will be used to produce hindcasts for the same period
COLA - KinterMonsoon Mission International Consultancy :: 11 September 2012 :: Pune, India
Conclusion
• A collaboration between COLA and IITM is very timely and has great potential– COLA is one of the world leaders in climate
modeling, but is deliberately not funded by the US agencies to do model development
– IITM has launched the Monsoon Mission to improve monsoon predictions
– Working together, we can dramatically advance the science of monsoon prediction