Title: MURI Quarterly Meeting 1/31/02
1MURI Quarterly Meeting 1/31/02
APL Presentations
2Overview
- Three presentations
- David-Thoughts on the METOC Task
- Scott- Ensemble Verification
- Keith- Visualization Framework
- APLs POC
- David-MURI proj. mgnt, CTA, Navy METOC ops
- Scott-Mesoscale modeling, ensem., verification
- Keith-METOC visualization workflow
- Jim-Statistical issues w/ uncertainty
3Updates
- Recent Visits
- Susan David-NPMOF Whidbey Nov
- Scott David-FNMOC Pt Magu Dec
- David NPMOC San Diego, USS Constellation,
NAVSPECWAR Mission Support Center (SEALS) Jan - General impression- all forecasters deal w/
uncertainty but that uncertainty is not conveyed
to user
4Updates (cont.)
- What are we doing?
- Conducting CTA other investigations to
understand how uncertainty affects the domain - Evaluating verification strategies for ensemble
systems - Exploring alternative design strategies a
visualization framework
5METOC Task Analysis Literature Review
- Task analysis, as opposed to task description,
should be a way of producing answers to questions
(i.e., identifying potential performance failures
or training needs and indicating how these
problems might be solved.) - Annett (2000)
6METOC Task Analysis Literature Review
- Hoffman (1991) provides good review of task
analysis for forecaster domain and human factor
design considerations for Advance Meteorological
Workstation, but - Task analysis of researchers, not forecasters
- There has been a change in the chartroom paradigm
7METOC Task Analysis A General Model
- July 2000- Human Systems Checklist for METOC
Forecasting (Appendix A) - Work in Progress (Appendix B)
- Information Networks- here be uncertainty
8A Specific METOC Task
- The Terminal Aerodrome Forecast (TAF)
- KNUW 200909 15025G35KT 9999 FEW018 SCT045
QNH2967INS - TEMPO 1018 -RA SCT015 BKN040 BKN100
- BECMG 1820 14015G25KT 9999 SCT020 BKN060 BKN100
BKN200 QNH2973INS - TEMPO 2209 SHRA BKN020 BKN060 OVC100
9A Specific METOC Task
- Flight Weather Briefing Form (DD 175-1)
Where the rubber meets the road!
10Visualizing UncertaintyinMesoscale Meteorology
Thoughts On Verifying Ensemble Forecasts 31 Jan
2002 Scott Sandgathe
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1436km Ensemble Mean and Selected Members SLP,
1000-500mb Thickness 2002 Jan 2200Z
1512km Ensemble Mean and Selected Members SLP,
Temperature, Wind 2002 Jan 2200Z
16Verification of Mesoscale Features in NWP
Models Baldwin, Lakshmivarahan, and Klein 9th
Conf. On Mesoscale Processes, 2001
17Tracking of global ridge-trough patterns from
Tribbia, Gilmour and Baumhaufner
18Current global forecast and climate models
produce ridge-trough transitions however, the
frequency of predicted occurrence is much less
than the frequency of actual occurrence
19Creating Concensus From Selected Ensemble
Members - Carr and Elsberry
20Necessary Actions for Improved Dynamical Track
Prediction
(48 h)
Large Spread (806 n mi) Large Error
Small Spread (229 n mi) Large Error
No forecaster reasoning possible. Help needed
from modelers and data sources to improve
prediction accuracy
Recognize erroneous guidance group or
outlier, and formulate SCON that improves on NCON
Large Spread (406 n mi) Small Error
Small Spread (59 n mi) Small Error
Recognize situation as having inherently low
predictability must detect error mechanisms
in both outliers to avoid making SCONgtgtNCON
No forecaster reasoning required -- use
the non-selective consensus (NCON)
21References
Cannon, A. J., P.H. Whitfield, and E.R. Lord,
2002 Automated, supervised synoptic map-pattern
classification using recursive partitioning
trees. AMS Symposium on Observations, Data
Assimilation, and Probabilistic Prediction,
pJ103-J109. Carr. L.E. III, R.L. Elsberry, and
M.A. Boothe, 1997 Condensed and updated version
of the systematic approach meteorological
knowledge base Western North Pacific.
NPS-MR-98-002, pp169. Ebert, E.E., 2001 Ability
of a poor mans ensemble to predict the
probability and distribution of precipitation.
Mon. Wea. Rev., 129, 2461-2480. Gilmour, I., L.A.
Smith, R. Buizza, 2001 Is 24 hours a long time
in synoptic weather forecasting. J. Atmos. Sci.,
58, -. Grumm, R. and R. Hart, 2002 Effective use
of regional ensemble data. AMS Symposium on
Observations, Data Assimilation, and
Probabilistic Prediction, pJ155-J159. Marzban,
C., 1998 Scalar measures of performance in
rare-event situations. Wea. and Forecasting, 13,
753-763.
22Visualization in the METOC Environment
23Visualization
- A broad definition in the context of our work
- The mental representation of concepts (spatially,
temporally, and operationally) that serve to
refine and enhance the efficiency and accuracy of
a defined suite of tasks executed within a
particular workflow context.
24The Visualization Framework
- Must blend
- Capturing of the workflow process for a suite
of individual tasks that constitute a product - Integrate a varied range of workflows within
common user-interface paradigms
25Framework (cont.)
- Might involve
- Automated reasoning and process control
- Analytic plots
- Geospatial (map-based) plots
- Data resource management
- Presentation tools
- Specialized viewing environments
26Visualization Flow
Mental task model
Ontological representation
Reasoning (inference) engine
Process controller
METOC interface components
Products
27Software Engineering Goals
- Design component architecture for visualization
of METOC information - Help implement useful research results within
software prototype - Integrate prototype within METOC Information
Management Framework - Install, maintain and support prototype in chosen
test environment(s) - Research implementations of cognitive paradigms
within workflow software
28Current Development Efforts
- Developing design requirements based on task
analysis - Refining design of previously developed
components (data retrieval, inference, etc.) - Working with METOC community to define a modern
information framework - Investigating relationship between ontology and
the reasoning engine
29Current Development Efforts
- Developing design requirements based on task
analysis - Refining design of previously developed
components (data retrieval, inference, etc.) - Working with METOC community to define a modern
information framework - Investigating relationship between ontology and
the reasoning engine
30Platform-independent,Three-tiered Services
Arbitrary Data Sources Web, METOC data bases,
models, Local archives, etc.
METOC Center(s) Server(s) Java Enterprise
Environment (Servlets, Server Pages, WebStart,
Applets), Process Management, Reasoning engine
Client Displays Both static and dynamic
interaction, Local process management and
reasoning, METOC product creation tools,
workflow monitoring
31XIS one size fits all?
- Extremely sophisticated programming model
- Excellent information handling and abstraction
facilities - Already adopted by some Naval units and DII/COE
certified - But..as of today, lacks METOC annotational tools
and fine-grained user interactivity with very
large data sets (models)
32XIS Viewpoint