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Toward understanding the MJO through the MERRA data- assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

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Page 1: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Toward understanding

the MJO through the MERRA

data-assimilating model

Brian Mapes, U. Miami

Stefan Tulich, CIRES

Julio Bacmeister, GSFC

and

Page 2: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

37 years of studying the MJO: Progress in description, but still no widely accepted theory

Madden and Julian 1972 Benedict and Randall 2007

Page 3: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

37 years of studying the MJO: Progress in description, but still no widely accepted theory

Madden and Julian 1972 Benedict and Randall 2007

Page 4: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Outline1. Previous GCM studies of moisture

preconditioning & the MJO

2. Using novel MERRA data-assimilating model to study this and other MJO science issues

3. Structure of the MJO in MERRA Not new, but shows model biases

“Analysis tendencies” provide a new aspect to the problem

4. Future work: Model improvement as a path towards understanding

Page 5: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

One of the first GCM moisture preconditioning experiments

• Tokioka et al. (1988): The equatorial 30-60 oscillation and the Arakawa-Schubert cumulus parameterization (J. Meteor. Soc. Japan)

Control No non-entraining plumes

Page 6: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

One of the first GCM moisture preconditioning experiments

• Tokioka et al. (1988): The equatorial 30-60 oscillation and the Arakawa-Schubert cumulus parameterization (J. Meteor. Soc. Japan)

Control No non-entraining plumes

Page 7: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

This modification also improves the MJO in the CAM 3.1

Maloney (2009)

Page 8: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

This modification also improves the MJO in the CAM 3.1

Maloney (2009)

Page 9: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Still the model is not perfect

Page 10: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Even worse when looking at rainfall variance

Maloney (2009)

Page 11: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Improvements are also model dependent

Lee et al. (2009; in press)

Page 12: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

How do we proceed further?

• Standard approach: Tinker with the model physics, run long time integration, diagnose model performance/feedbacks, repeat – Drawback: Time-consuming, tedious, feedbacks may

impact other aspects of the simulation in unintended ways

• Our alternative: Assimilation-based science to study the MJO in global models (illustration of concept here)

Page 13: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

MERRA

• Modern Era Reanalysis for Research and Applications (GEOS-5 based)

• NASA’s new atm. reanalysis, 1979-present

• Still running (3 streams), ~90% available

• Attractive features:

- nowOpenDAP access (you needn’t download)

- many budget terms, not just state variables

- “analysis tendencies” available

Page 14: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

time

analyzed variable

Z at discrete

times

free model solution: Żana= 0 (biased, unsynchronized, may lack oscillation altogether)

initialized free model

ΔZ/Δt = Żmodel + Żana

ΔZ/Δt = (Żdyn + Żphys) + Żana

use piecewise constant Żana(t) to make above equations exactly true in each time interval*

Modeling system integrates:

*through clever predictor-corrector time integration

Page 15: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Learning from analysis tendencies

(ΔZ/Δt)obs = (Żdyn + Żphys) + Żana

• If state is accurate (including flow & gradients), then (ΔZ/Δt)obs and advective terms Żdyn will be accurate

• and thus

Żana ≅ -(error in Żphys)

Page 16: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Choosing MJO cases

good(COARE)

MJO amplitude index

MERRA data available when I started

MERRA stream 2

bestavail

MERRA stream 3

Page 17: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Satellite OLR 15N-15S& MJO-filtered (contours) – used as reference lines below

Filtered OLR courtesy G. Kiladis eastward wavenumbers 0-9, 30-96 days

I averaged this over 15N-15S

Page 18: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

15N-15S

GIBBS image archive

Page 19: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

MJO phase definition

05

Page 20: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

excluded

IO WP

Objective MJO phase categories

PHASE

Page 21: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

10 phases relative to Benedict and Randall (2007)

9 8 7 6 5 4 3 2 1 0 ‘back (W)’ ‘front (E)’

5 = filtered OLR min.

Benedict & Randall 2007

Page 22: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

MERRA rainrate compared to SSMI (SSMI over water only)

MERRA

SSMI

0

x 10-4 mm/s

too rainy phase 1-2

Page 23: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

MERRA’s rain:

convective:

anvil:

large-scale cloud:

premature rain in phase 2 is mainly convective

Page 24: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

deep Mc

Phase dependent mass flux

Page 25: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

9 8 7 6 5 4 3 2 1 0 ‘back’ (W) ‘front (E)’

5 = filtered OLR min.

Model seems to be choking on the shallow-to-deep transition (even

with Tokioka modification)

Impact? Look at analysis tendencies

Page 26: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Phase dependent part of qv analysis tendency

1990 1992-3

Page 27: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Blame the convection scheme!

• seems to act too deep too soon in the early stages of the MJO.

• Analysis qv tendency has to compensate with moistening

Page 28: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Future work: Improving the model as path towards understanding

• Convection parameterization seems to be too insensitive to low- and mid-level moisture (even with Tokioka modification)

• Question: can we somehow further tighten/adjust the Tokioka limiter to reduce model errors?

Strategy: perform short assimilation runs; does Żana get smaller?

If so, something scientific learned from this technical activity.

Page 29: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Future work: Use analysis tendencies to develop a better forecast tool?

Consider MJO index of Wheeler and Hendon (2004):

Page 30: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Future work: Use analysis tendencies to develop a better forecast tool?

Idea: First, composite model analysis tendencies in this phase space

Page 31: Toward understanding the MJO through the MERRA data-assimilating model Brian Mapes, U. Miami Stefan Tulich, CIRES Julio Bacmeister, GSFC and

Future work: Use analysis tendencies to develop a better forecast tool?

Idea: First, composite model analysis tendencies in this phase space

Next, perform multi-day forecasts with these composite tendencies added during runtime.

Forecast improved?