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March 24, 2010San Jose State University Measuring Precipitation from Space Past, Present, and Future Jian-Jian Wang University of Maryland Baltimore County and NASA Goddard Space flight Center, Greenbelt, MD
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The Importance of Rainfall Measurement To agriculture, measuring rainfall and monitoring flood/ drought is important to crop growing and harvest. Hydrologists monitor rainfall to predict river flows and flood stages, as well as the storage of water in lakes and reservoirs. To global weather and climate modeling, accurate rainfall information is crucial to improve forecasts of changes in our weather and climate.
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Rain Gauge Around 350 BC, the Indian author, Kautilya, described the first known rain gauge in his manuscript, Arthasastra. In 1247 AD, the Chinese reported the first known use of rain gauges during the Southern Song Dynasty. Ground-Based Rainfall Measurement Weather Radar In 1941, a 10-cm radar tracked a thunderstorm with hail on the south coast of England. In the late 1980s, highly sophisticated, ground-based Doppler weather radar systems, the Next-Generation Weather Radar (NEXRAD), now called the WSR-88D, were adapted for use.
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Rain Gauge Advantage “True” measurement of rain Disadvantage No coverage over oceans or remote regions Point measurement not representative of area Wind drift may cause the underestimates Different gauge designs
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Weather Radar Advantage Excellent Space and Time Resolution Observations in Real Time Disadvantage Little coverage over oceans or remote regions Corrections required for beam filling, attenuation, etc. Z-R relationship
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Precipitation is still the most difficult atmospheric variable to measure, mainly because of its concentration into a few cloud systems. Scarcity of quantitative precipitation information over ocean and remote regions has been a frustrating long-time bottleneck for atmospheric science. Global rainfall can be measured satisfactorily only from space.
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Rainfall Measurement from Space — Geostationary Satellite (VIS/IR) GOES Weather Satellites Geostationary Operational Environmental Satellite (GOES) system was developed by the NASA and NOAA. The first satellite of the series, GOES-1 with a resolution of ~1 km, was launched in 1975. Mesosat A series of geostationary satellites launched by the European Space Agency. The first generation series starting in 1977 had ~5 km resolution. The second generation series since 2004 improved the resolution to 3 km and a high resolution mode of 1 km.
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VIS/IR Advantage Good space and time resolution Observations in near real time Samples oceans and remote regions Consistent measurement system Disadvantage Measures cloud-top properties instead of rain
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Microwave Sounding Unit (MSU) Flown on NOAA's TIROS-N polar-orbiting satellite in 1978 and continued on the NOAA-6 through NOAA-14 in 1994. Rainfall Measurement from Space — Polar Orbiting Satellite (Passive Microwave) Special Sensor Microwave Imager (SSM/I) On board Defense Meteorological Satellite Program (DMSP) F-8 satellites in 1987 and continued through F-18 in 2009. Advanced Microwave Sounding Unit (AMSU) The first AMSU was launched on NOAA-15 in 1998 and continued through NOAA-19 in 2009.
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Passive Microwave Advantage Samples remote regions Consistent measurement system More physically based, more accurate than VIS/IR Estimates Disadvantage Poorer Time and Space Resolution (~6 h, ~5-25+ km)
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Geostationary Meteorological Satellites Coverage Polar Orbiting Meteorological Satellites Coverage 3
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METEOROLOGICAL SATELLITES
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Tropical Rainfall Measuring Mission (TRMM): A joint U.S. (NASA), Japan (Japan Aerospace Exploration Agency, JAXA) mission. A precessing low-inclination (35 o ) low-altitude (350 km) orbit to achieve high spatial resolution and capture the diurnal variation of tropical rainfall 1 day coverage 2 day coverage Orbit and Coverage
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TRMM Sensors Microwave radiometer (TMI) [U.S.] 10.7, 19.3, 21.3, 37.0 85.5 GHz (dual polarized except for 21.3 V-only) conical scanning (53 0 inc.) at 5.1 km resolution at 85.5 GHz 878 km swath Precipitation radar (PR) [Japan] 13.8 GHz cross-track scanning at 5 km resolution 247 km swath Visible/infrared radiometer (VIRS) [U.S.] 0.63, 1.61, 3.75, 10.8, and 12 m cross-track scanning at 2.4 km resolution 833 km swath Lightning Imaging Sensor (LIS) [U.S.] Staring optical array
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TRMM GOALS To advance understanding the global energy and water cycles by providing distributions of rainfall and latent heating over the global tropics. To understand the mechanisms through which changes in tropical rainfall influence global circulation, and to improve ability to model these processes in order to predict global circulations and rainfall variability at monthly and longer time scales To provide rain and latent heating distributions to improve the initialization of models ranging from 24 hour forecasts to short-range climate variations To help understand, diagnose and predict the onset and development of the El Niño, Southern Oscillation and the propagation of the 30-60 day oscillations in the tropics To help understand the effect that rainfall has on the ocean thermohaline circulations and the structure of the upper ocean To allow cross-calibration between TRMM and other sensors with life expectancies beyond that of TRMM itself To evaluate the diurnal variability of tropical rainfall To evaluate a space-based system for rainfall measurement
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Simultaneous PR, TMI, and VIRS Images
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The Lightning Imaging Sensor (LIS) Christian, Blakeslee, Goodman, Mach -- NASA/MSFC, UAH composite Land/ocean differences pronounced Consistent with NASA OTD climatology in both spatial distribution and rates Island effects pronounced Significant orographic signals (Himalayas, also in Colombia, Zaire, Indonesia) Lightning / precipitation ice relationship (LIS / TMI)
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10-year TRMM Composite Rain Climatology ( TCC) mm/day
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TCC Zonal Means and Comparison to GPCP Over Ocean Zonal mean at peak (7°N) 6.5 mm/d +/- 3% Zonal mean at 6°S 3.6 mm/d +/- 5.5% Zonal mean at 23°N 1.7 mm/d +/- 9% TCC ocean climatology confirms GPCP values in deep Tropics; indicates difference in sub-tropics into mid- latitudes
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Seasonal Variation of TRMM Composite Climatology July JanuaryApril October
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3-hr multi-satellite rain analysis in real-time
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Use of TRMM for Analysis of Extreme Precipitation Events Largest Daily Rainfall (mm/day)
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