Title: Current Research
1Current Research
- Roongroj (KIJ) Chokngamwong
- CEOSR/GMU
- Prof. Long Chiu
- NASA/GMU
- 01/04/2008
2Outline
- GPCP-PSPDC
- Satellite Rainfall Estimation using
Microwave-calibrated Infrared Split-window
Technique (MIST)
3Why We Estimate Rainfall from Space?
- Rain gauge networks are limited only to over land
and remain sparse over most of the globe. - Radar networks are limited to only a few areas
and a few countries. Inter-radar calibration,
mountain blockage - Satellite sensors provide an excellent complement
to continuous monitoring of rain event both
spatially and temporally. - Geostationary satellites VIR/IR observation,
good coverage - Low Earth orbiting satellites MW observation,
provide less frequent observations but direct
rainfall estimation
4The Global Precipitation Climatology Project
(GPCP)
- To combine the precipitation information
available from each of several sources into a
final merged product by taking advantage of the
strengths of each data type. - The infrared (IR) precipitation estimates are
computed primarily from geostationary satellites
(United States, Europe, Japan) - The Atmospheric Infrared Sounder (AIRS) data from
Aqua - Outgoing Longwave Radiation Precipitation Index
(OPI) data from NOAA series satellites - The gauge data are assembled and analyzed by the
Global Precipitation Climatology Centre (GPCC) - The microwave estimates are based on Special
Sensor Microwave/Imager (SSM/I) data from the
Defense Meteorological Satellite Program (DMSP,
United States) satellites - Adler et al. (2003) The Version 2 Global
Precipitation Climatology Project (GPCP) Monthly
Precipitation Analysis (1979-Present). J.
Hydrometeor., 4,1147-1167.
5The Polar Satellite Precipitation Data Centre
(PSPDC)
- Oceanic Rainfall derived from Special Sensor
Microwave Imager (SSM/I) data - IR can only provide cloud observations
- Microwave interacts directly with hydrometeors in
the rain column (more physical approach). - At microwave frequencies, the ocean is a highly
reflective background and the atmosphere is
highly transparent under most circumstances.
6Oceanic Rainfall Retrieval Algorithm
- Developed by Wilheit, Chang and Chiu (1991)
- The rain rate, r, (in mm/hr) can be empirically
related to the brightness temperature (Tb) via
the following relationship - where T0 is the average Tb for the non-raining
portion of the Tb histogram, rc is 25/FL1.2 and
FL is the freezing height (in kilometers) of the
rain layer. - Tb is the temperature that a blackbody would
need to have in order to emit radiation of the
observed intensity at a given wavelength.
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8Rainfall Estimation using Microwave Calibrated
Split-window Infrared Technique (MIST)
9TRMM
- Launched in November 1997 (altitude of 350 km)
- Boosted to 405 km altitude in August 2001
- Extends satellite life to 2009 (current decision)
- TRMM rain instruments VIRS, TMI and PR
- The VIRS measures scene radiance in five spectral
bands (0.6, 1.6, 3.8, 10.8 and 11.9 micron). - The five TMI frequencies are 10.65, 19.35, 37 and
85.5 GHz (vertical and horizontal polarization),
and 21 GHz (only vertical polarization). - The PR onboard TRMM, the first rain radar in
space, is a cross-track scanning instrument
operating at 13.8 GHz.
103B42 Version 5
- Coincident TCA and VIRS are analyzed to establish
transfer coefficient relationship. - Use the relationship to calibrate GOES IR rain
estimates by adjusting the GPI to form 3B42
(Adjusted GPI)
113B42 Version 6
- Put all available TCI-calibrated MW (TMI, SSMI,
AMSR and AMSU) into 3 hourly 0.25 degree bin and
fill missing bin with MW-calibrated IR rain rate - The data are summed over a month to create
monthly multi-satellite product (MS) - The MS and gauge analysis are merged to create
Gauge-Satellite (GS) product - 3B42 is scaled as the ratio of MS/GS limited to
0.2-2.
12Rainfall Climatology Comparison
13Daily Comparison
14Skill Score
- How well the TRMM algorithms estimate rain events
- POD A/(AB)
- FAR C/(AC)
- CSI A/(ABC)
Observation
Algorithm
- A is (Algorithm rain, observation rain)
- B is (Algorithm no, observation rain)
- C is (Algorithm rain, observation no)
- For perfect algorithm, POD 1, FAR 0 and CSI
1
15Sensitivity of CSI
16Comparison Summary
- The satellite-only product (V5) overestimates low
rain events and underestimates heavy rain events - The V6 TRMM algorithms show improvement over the
V5, in terms of the mean RR, error statistics,
correlation, rainfall CDF, and temporal and
spatial autocorrelation structure - The TRMM algorithms overestimate rain fraction
and underestimates conditional rain rates - No improvement of CSI from V5 to V6
17Rainfall Information using Split Window Technique
18Split Channel Technique
- Inoue (1987) has used a split window technique to
delineate raining areas from NOAA-7 AVHRR
imagery. - The principle that underlies this technique is
that while both cirrus and cumulonimbus clouds
may be cold and bright, the spectral dependence
of the emissivity of ice and water clouds differs
in the infrared window. - The two clouds can be discriminated by comparing
the difference in the brightness temperatures at
11 and 12 micron. - The split window technique yields a better false
alarm rate and also corrects the problem of the
rainfall overestimation due to the error in
rainfall area delineation when using only one
channel IR.
19Case 1 Mixed Clouds
- Blue refers to PR rain pixels
- Red refers to PR non-rain pixels
20Case 2 Warm Clouds
- Blue refers to PR rain pixels
- Red refers to PR non-rain pixels
21Case 3 Cold Clouds
- Blue refers to PR rain pixels
- Red refers to PR non-rain pixels
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23Summary
- The single threshold algorithm does not perform
well for rain/no-rain classification for all
cases - The use of the split window technique is
effective in eliminating non-raining pixels
24Rainfall Estimation using Microwave-calibrated
Infrared Split-window Technique (MIST)
25Operational Satellite Algorithms
26Comparison of CSI over Australia
27Goal of MIST
- Produce rainfall estimates by using only
satellite product without merging with gauge
measurements as an input - Produce rain rate at the IR pixel resolution
- Improve over AGPI
28Data Used
- Microwave Data (3B40RT)
- TMI, SSM/I, AMSR, AMSU
- IR data from GMS-5
- GMS-5 (0.75, 6.9, 10.8 and 11.5 µm)
29- Reference Hsu et al. (1997) Figure 2 (b).
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31July2002
32February2002
33Comparison over Thailand
34Skill Comparison
35February 2002Thailand
36July 2002Thailand
37Application of MIST to GOES data
- Microwave Data (3B40RT)
- IR data from GOES-12
38Oklahoma Comparison
39Skill Comparisons
40July 2006Oklahoma
41February 2006 Oklahoma
42Conclusion
- Develop Microwave-calibrated Infrared
Split-window Technique (MIST) - CSI can be improved by incorporating the split
window technique - The MIST algorithm provides reasonable
performance and is comparable to the V6 3B42 - No direct rain gauge input
- Easily portable to other sensors and platforms
43Previous and Ongoing Research
- Variation of Vegetation and Rainfall in Thailand
- Variability of aerosol optical depth and aerosol
forcing over India - Trends in Oceanic Rainfall Derived from Microwave
Brightness Temperature Histograms - Effect of TRMM boost on oceanic rain rate
estimates based on microwave brightness
temperature histograms - Variation of Oceanic Rain Rate Parameters from
SSM/I Mode of Brightness Temperature Histogram - "Trends" and variations of global oceanic
evaporation datasets from remote sensing - Thailand Daily Rainfall and Comparison with TRMM
Products - Development of the Microwave calibrated Infrared
Split-window Technique (MIST) for rainfall
estimation
44Next things to do
- V6 SSM/I PSPDC
- Reprocess data for 20 years for all satellites
(F8, F10, F11, F13, F14, F15) - Continue working on MIST
- Test the applicability of this technique with
other IR sensors and channels - Apply this technique to other Satellite
Platforms, such as FY and Meteosat - Incorporate the radar data which may improve the
accuracy since the radar has the ability to
detect fairly light rain - Aerosol-Precipitation Interaction
45 46Back up slides
47Tropical Rainfall Diurnal Cycle
- http//daac.gsfc.nasa.gov/precipitation/trmm_apps/
TRMM3G68_animation.shtml
48- Importance of Rainfall in Thailand
- Effects on agriculture
- Thailand is the worlds largest rice exporter.
Annual exports are 7.5, 7.2, 7.6, 10.13 (record
high) million tons in 2001, 2002, 2003, and 2004,
respectively (Source USDA)
49POD, FAR and CSI
50Sensitivity of CSI
Similar results are found by Katsanos et al.
(2004) over the central and eastern Mediterranean
51Temporal Autocorrelation
52February 2006
Cumulative Distribution Function
July 2006
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54Background (Cont.)
- Flood in August 2002 in Northern Region causing
many lives and property damages. The flood caused
about 32,000,000 damage (Source Dartmouth Flood
Observatory). Floods are associated with heavy
rain.
55Typhoon Xangsane (Elephant)
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58TRMM Satellite Algorithm Data Flow
59Principle of VIS/IR rainfall estimation
- The cloud information will be a good
discriminator of rain/no rain classification - No cloud, no rain
- Thick and cold clouds tend to rain
60Comparison with Version 5
61Comparison with Version 6
62TRMM V5 and V6 difference
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64The assumptions
- In the model, a Marshall-Palmer distribution of
raindrops as a function of rain rate is assumed
to exist from the ocean surface to the freezing
level in the atmosphere. - A nonprecipitating cloud containing 0.25 kg m-2
of integrated liquid water is assumed in the 0.5
km below the freezing level. - A constant lapse rate of 6.5 C/km is assumed.
- The relative humidity is assumed to increase
linearly with height from 80 at the ocean
surface to 100 at the freezing level and above.
65July 2006Oklahoma