Title: OSSEs for Pacific Predictability Josh Hacker, NCAR
1OSSEs for Pacific PredictabilityJosh Hacker,
NCAR
- Contributors J. Anderson, R. Atlas, S. Benjamin,
D. Emmitt, R. Frehlich, G. Hakim, J. Hansen, T.
Hamill, R. Morss, C. Snyder, J. Whitaker
2Large shops and small shops
- Some questions clearly require a (nearly)
complete operational data stream and
state-of-the-art assimilation system - Some questions can be addressed independently
- Is there room for both?
3Operational questions
- Value of existing and proposed observations to
analysis and forecast skill - Impact of observations in the context of all
other observations - Cost associated with ingestion, QC, and
assimilation of an additional observation
4Operational OSSE themes
- Must be carefully designed
- Multiple models (a credibility issue)
- Total observation error is difficult to estimate
- Interpretation can be done collaboratively
5Example Observation error
- Rawinsonde in center of grid cell
- Large variations in sampling error
- Dominant component of total observation error in
high turbulence regions - Very accurate observations in low turbulence
regions
Courtesy R. Frehlich
6Small shops as an interpreter
- Only need to deal with output and know experiment
details - Interpretation of large-shop OSSEs
- Eliminating complications and using simpler
models to aid interpretation
7Hierarchical OSSEs
- Simpler models can be a useful complement to
larger, more complex systems - More accessible to smaller shops
- If questions are posed carefully, many results
can be extrapolated to full systems - Can rule out observations with simpler models
(caveats)
8OSSEs to develop paradigms
- Data assimilation methodology
- Approaches to understanding model error
- Approaches to understanding model phenomenology
- A (near) perfect-model OSSE makes these things
far more tractable and serve as a test-bed
9Examples from A Community White Paper
- State estimation adaptive observing strategies
for different forecast objectives - Model error proposing frameworks for quantifying
it - Error dynamics understanding the interaction
between observation networks and phenomenological
error growth - Observing network design basic information
content of classes of observations in the context
of different DA systems
10State estimation adaptive observing strategies
for different forecast objectives
Rocket Buoy System
COSMIC
Aerosonde
11Observing network design
sample case 500 hPa geopotential
5500 m contour is thickened Black dots show
pressure ob locations
Full CDAS (120,000 obs)
EnSRF 1895 (214 surface pressure obs)
RMS 39.8 m
Optimal Interpolation 1895 (214 surface pressure
obs)
RMS 82.4 m
Courtesy Hamill/Whitaker
12An incomplete laundry list
- Projection of observations on gravity or spurious
modes - Testing a variety of (new?) metrics
- Observations to impact societal benefit
- Disparate and similar observing and model scales
- Understanding scale interactions in models