Title: MesoWest Quality Checking
1MesoWest Quality Checking
- John Horel
- Mountain Meteorology Group
- Department of Meteorology
- University of Utah
- jhorel_at_met.utah.edu
2The Mix of Observing Assets
http//www.met.utah.edu/mesowest
3Google API User Interface
4ADAS
- Near-real time surface
- analysis of T, RH, V
- (Lazarus et al. 2002 WAF
- Myrick et al. 2005 WAF
- Myrick Horel 2006 WAF)
- Analyses on NWS GFE
- grid at 5 km spacing
- Background field RUC
- Horizontal, vertical anisotropic weighting
5MesoWest Data Flow
MesoWest Database _at_WR
MADIS/LDM Delivery
Preprocessing _at_ WR
Data Streams
Other WR/WFO Apps
MesoWest Database _at_UU
Web Server _at_ UU
Metadata/QC/ ADAS _at_ UU
ROMAN Database _at_WR
Preprocessing _at_ WR
ROMAN Web Server _at_ WR
RAWS In ASCADS
6MesoWest Quality Checking
- See Splitt et al. (WMO 2001), Horel et al. (BAMS
2002) - Focus on temperature, wind, pressure, and
relative humidity - Current automated MesoWest QC is crude
- Designed to identify quickly provisional
observations that have egregious problems or are
inconsistent with surrounding observations - One QC flag reported for each observation (not
specific variable) - Suspect (Red/-1) fails simple gross checks
- Unknown (0) QC flag not available
- Caution (Orange/1) significant departure from 3D
multivariate linear regression estimate or fails
wind persistence check - OK (Green/2) passes all checks
- Current manual MesoWest QC is cumbersome
- Designed to identify stations with consistently
poor observations prior to use in ADAS data
assimilation (ADAS blacklist file) - One QC flag reported for each station manually
(not specific observation) - Uncertainty regarding metadata
- Manual identification of problem with 1 or more
variables over extended period of time - Stations that frequently report observations that
differ extremely from ADAS are flagged
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83D Regression Check
9RUC/ADAS Temp. Analysis vs. Observations
10Qv (specific humidity)
11Wind Speed
12Probability of 1-hour Temp Change (F) at UT16
(2000-2006)
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15Quality Checking Issues
- Applications of RTMA as background field
- http//www.emc.ncep.noaa.gov/mmb/rtma
- Hourly analysis at 5 km resolution available 30
minutes past hour (T,RH,V,precip,cloud) - Taking full advantage of nearby observations
- Representativeness of nearby observations for
buddy checking - Impacts of differences in elevation, terrain
blocking, etc. on Barnes analysis
16RTMA
NCEP Real Time Mesoscale Analysis in development
testing 2DVar approach with RUC as background
17Sub-5km Variability in Terrain Height
Dark gt 200m
Myrick and Horel (2006)
18Observational (Measurement and Representativeness)
Temperature Error (oC) as a Function of Mesonet
estimated from covariance of observation
background differences (Myrick and Horel 2006,
WAF)
19Small Observation Error
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21Joint Probability
4062 pairs observations (2005-06)
UTDOG HOHU1(C)
UTDOG Temperature (C)
22Final Random Thoughts
- QC Information along with original data must be
accessible to the end user - Incomplete metadata affects application of QC
algorithms (low resolution lat/lon, incorrect
elevation) - Flexibility required as new mesonet stations
added frequently - QC work underway to
- improve automated methods (including use of
Kalman Filter) - Use climatological approaches as 10-year database
for some stations - integrate more completely QC from ADAS into
MesoWest - use MADIS and other (Clarus?) QC sources
23Inaccurate Metadata
24Large Observation Error
2438m
1829m