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Published byMartha Wetzel Modified over 6 years ago
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Matt Lebsock Chris Kummerow Graeme Stephens Tristan L’Ecuyer
Comparison of warm rain detection and quantification from spaceborne passive microwave and radar sensors Matt Lebsock Chris Kummerow Graeme Stephens Tristan L’Ecuyer
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Questions What does CloudSat tell us about warm rain?
How does this compare with AMSR/E and PR? Can this inform our understanding of the capabilities of GPM?
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The Roll of Various Satellite Rainfall Sensors
Passive Microwave (e.g. AMSR/E) Long term climate record & Frequent global sampling Imprecise, Cloud/Rain separation TRMM-Precipitation Radar (PR) The standard Minimum detectable signal (0.5 – 1.0 mmh-1) CloudSat-Cloud Profiling Radar (CPR) Extreme sensitivity to light rain Signal saturates in heavy rain Complementary role (light rain)
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CloudSat Algorithm Sensitivity: Reflectivity vs. Attenuation
Observations Challenges Attenuation Multiple-scattering Limited sensitivity at high rates Opportunities Extreme sensitivity to light/moderate rain ~1km Spatial resolution Useful for quantifying rain from shallow isolated moist convection that other sensors may miss Rain Rates Attenuation Solution Reflectivity Solution Lebsock & L’Ecuyer, 2011 JGR
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Precipitation Occurrence from CloudSat
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Warm Rain Distribution
Global annual average intensity = 0.23 mmd-1 ~7% of global precipitation Areas of largest accumulation: East-Pacific ITCZ Subtropical cumulus regimes (not Scu) Liu & Zipser, 2009 J. Clim.
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CloudSat-AMSR/E GPROF Comparison
AMSR-E subset to CloudSat ground Track Common Data screening: 1 degree boxes in which CloudSat observes no clouds colder than 273 K retained. Warm rain near deep convection or cirrus screened. Missed Accumulation (89%) Missed Accumulation (11%) Large regional bias remains
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GPROF database bias GPROF database is stratified in terms of SST and CWV GPROF database is built from TRMM-PR/TMI observations Bias inherent in the PR will manifest itself in AMSR/E product. Regime dependent biases separate sharply Extended Database
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CloudSat-TRMM/PR Comparison
Hit Miss TRMM-PR 429 133 4204 77139 Colocation mismatch: Requires bias adjustment Year: 2006, DOY: 227, 2oS, 95oE, CloudSat Granual: 01594 PR Probability of warm rain detection = (11.8%) (unadjusted = 9.3%) PR/CloudSat warm rain accumulation (46.6%) Weighted by area Oceanic TRMM region
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PR probability of detection: resolution vs. sensitivity
limited Sensitivity limited
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Implication for GPM: Sensitivity ~88% ~42% GPM
These figures show global means integrated over all areas (land&ocean)
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Implication for GPM: Resolution Occurrence Accumulation 14%
Rough estimate of spatial resolution effects on PR/DPR accumulation Occurrence dominated (60%) by events with horizontal dimensions < 5 km
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Summary CloudSat provides a unique view of warm rain that complements the TRMM-PR and passive microwave sensors. Global mean warm rain rate ~ 0.23 mm/day (~7% of the global rainfall) AMSR/E captures ~89% of warm rain accumulation Huge improvement in new GPROF2010 product Significant regional biases remain TRMM-PR captures ~45% of warm rain accumulation. Outlook for GPM-DPR is positive Can reasonably expect this ‘observed accumulation’ to be greater than 88% based on increased sensitivity and 86% based on resolution (>74%). 98-99% of total rain accumulation
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