Combined Active & Passive Rain Retrieval for QuikSCAT Satellite Khalil A. Ahmad Central Florida Remote Sensing Laboratory University of Central Florida.

Slides:



Advertisements
Similar presentations
The Aquarius Salinity Retrieval Algorithm Frank J. Wentz and Thomas Meissner, Remote Sensing Systems Gary S. Lagerloef, Earth and Space Research David.
Advertisements

1 Analysis of Airborne Microwave Polarimetric Radiometer Measurements in the Presence of Dynamic Platform Attitude Errors Jean Yves Kabore Central Florida.
All-Weather Wind Vector Measurements from Intercalibrated Active and Passive Microwave Satellite Sensors Thomas Meissner Lucrezia Ricciardulli Frank Wentz.
TRMM Tropical Rainfall Measurement (Mission). Why TRMM? n Tropical Rainfall Measuring Mission (TRMM) is a joint US-Japan study initiated in 1997 to study.
End of Semester Meeting Conically Scanning Active/Passive Sensor Simulation Tool (CAPS) Pete Laupattarakasem Liang Hong.
Hurricane Wind Retrieval Algorithm Development for the Imaging Wind and Rain Airborne Profiler (IWRAP) MS Thesis Project Santhosh Vasudevan End of Semester.
Passive Microwave Rain Rate Remote Sensing Christopher D. Elvidge, Ph.D. NOAA-NESDIS National Geophysical Data Center E/GC2 325 Broadway, Boulder, Colorado.
ATS 351 Lecture 8 Satellites
Using Scatterometers and Radiometers to Estimate Ocean Wind Speeds and Latent Heat Flux Presented by: Brad Matichak April 30, 2008 Based on an article.
Comparison and Evaluation of Scatterometer (SCR) observed wind data with buoy wind data Xinzhong Zhang Remote Sensing December 8 th, 2009.
Andrew Burton Bureau of Meteorology, Perth, Australia Use of Scatterometer Winds in TC Forecasting Tropical Cyclone Warning Centre Perth.
This poster concerns the on-orbit validation of the antenna beam pointing and corresponding instantaneous field of view (IFOV) earth location for the CONAE.
Andrea Santos-Garcia 1, Maria M. Jacob 2, Linwood Jones 1, and William Asher 3 1 Central Florida Remote Sensing Lab., University of Central Florida, Orlando,
Brigham Young University DGL Dec 03 Rain/Wind Backscatter Model  Model for measured backscatter  Radar signal scattered by falling droplets  Surface.
MWR Algorithms (Wentz): Provide and validate wind, rain and sea ice [TBD] retrieval algorithms for MWR data Between now and launch (April 2011) 1. In-orbit.
Polarimetric Radiometer and Scatterometer Measurements Simon H. Yueh Jet Propulsion Laboratory Operational SVW Requirement Workshop, Miami 7 June 2006.
ATMS 373C.C. Hennon, UNC Asheville Observing the Tropics.
Initial Results on the Cross- Calibration of QuikSCAT and Oceansat-2 Scatterometers David G. Long Department of Electrical and Computer Engineering Brigham.
MWR Roughness Correction Algorithm for the Aquarius SSS Retrieval W. Linwood Jones, Yazan Hejazin, Salem Al-Nimri Central Florida Remote Sensing Lab University.
Experiments with the microwave emissivity model concerning the brightness temperature observation error & SSM/I evaluation Henning Wilker, MIUB Matthias.
SMOS STORM KO meeting 30/01/2012 ESRIN Ocean Surface Remote Sensing at High Winds with SMOS.
Erich Franz Stocker * and Yimin Ji + * NASA Goddard Space Flight Center, + Wyle Inc/PPS The Global Precipitation Measurement (GPM) Mission: GPM Near-realtime.
Precipitation and altimeter missions Jean Tournadre Laboratoire d’Océanographie Spatiale IFREMER Plouzane France.
SMOS+ STORM Evolution Kick-off Meeting, 2 April 2014 SOLab work description Zabolotskikh E., Kudryavtsev V.
Problems and Future Directions in Remote Sensing of the Ocean and Troposphere Dahai Jeong AMP.
Evaluation of Microwave Scatterometers and Radiometers as Satellite Anemometers Frank J. Wentz, Thomas Meissner, and Deborah Smith Presented at: NOAA/NASA.
Precipitation Retrievals Over Land Using SSMIS Nai-Yu Wang 1 and Ralph R. Ferraro 2 1 University of Maryland/ESSIC/CICS 2 NOAA/NESDIS/STAR.
Passive Microwave Remote Sensing
Connecting Sensors: SSM/I and QuikSCAT -- the Polar A Train.
Development and evaluation of Passive Microwave SWE retrieval equations for mountainous area Naoki Mizukami.
Improved Near Real-Time Hurricane Ocean Vector Winds Retrieval using QuikSCAT PI: W. Linwood Jones Central Florida Remote Sensing Lab. (CFRSL) University.
Satellite-derived Sea Surface Temperatures Corey Farley Remote Sensing May 8, 2002.
Characterization of Ocean Wind Vector Retrievals Using ERS-2 Scatterometer High-Resolution Long-term Dataset and Buoy Measurements Supervisor: Prof.
Level 2 Algorithm. Definition of Product Levels LevelDescription Level 1 1A Reconstructed unprocessed instrument data 1B Geolocated, calibrated sensor.
Corrections to Scatterometer Wind Vectors from the Effects of Rain, Using High Resolution NEXRAD Radar Collocations David E. Weissman Hofstra University.
David E. Weissman Hofstra University Hempstead, New York IGARSS 2011 July 26, 2011 Mark A. Bourassa Center for Ocean Atmosphere Prediction Studies.
A Novel Ocean Vector Winds Retrieval Technique for Tropical Cyclones Peth Laupattarakasem 1, Suleiman Alsweiss1, W. Linwood Jones 1, and Christopher C.
Applications of Satellite Derived
WATER VAPOR RETRIEVAL OVER CLOUD COVER AREA ON LAND Dabin Ji, Jiancheng Shi, Shenglei Zhang Institute for Remote Sensing Applications Chinese Academy of.
The New Geophysical Model Function for QuikSCAT: Implementation and Validation Outline: GMF methodology GMF methodology New QSCAT wind speed and direction.
A New Inter-Comparison of Three Global Monthly SSM/I Precipitation Datasets Matt Sapiano, Phil Arkin and Tom Smith Earth Systems Science Interdisciplinary.
1 Airborne Measurements of Ocean Backscatter Work In Progress by D. Esteban, Z. Jelenak, T. Mavor, P. Chang, NOAA/NESDIS/ORA D. Esteban, Z. Jelenak, T.
Trends & Variability of Liquid Water Clouds from Eighteen Years of Microwave Satellite Data: Initial Results 6 July 2006 Chris O’Dell & Ralf Bennartz University.
SeaWiFS Views the Agulhas Retroflection Gene Feldman NASA GSFC, Laboratory for Hydrospheric Processes, SeaWiFS Project Office
Kazumasa Aonashi (MRI/JMA) Takuji Kubota (Osaka Pref. Univ.) Nobuhiro Takahashi (NICT) 3rd IPWG Workshop Oct.24, 2006 Developnemt of Passive Microwave.
High Quality Wind Retrievals for Hurricanes Using the SeaWinds Scatterometer W. Linwood Jones and Ian Adams Central Florida Remote Sensing Lab Univ. of.
Improved Aquarius Salinity Retrievals using Auxiliary Products from the CONAE Microwave Radiometer (MWR) W. Linwood Jones Central Florida Remote Sensing.
IOVWST Meeting May 2011 Maryland Calibration and Validation of Multi-Satellite scatterometer winds Topics  Estimation of homogeneous long time.
Response of active and passive microwave sensors to precipitation at mid- and high altitudes Ralf Bennartz University of Wisconsin Atmospheric and Oceanic.
T. Meissner and F. Wentz Remote Sensing Systems 2014 Aquarius / SAC-D Science Team Meeting November , 2014 Seattle. Washington,
Challenges and Strategies for Combined Active/Passive Precipitation Retrievals S. Joseph Munchak 1, W. S. Olson 1,2, M. Grecu 1,3 1: NASA Goddard Space.
The Inter-Calibration of AMSR-E with WindSat, F13 SSM/I, and F17 SSM/IS Frank J. Wentz Remote Sensing Systems 1 Presented to the AMSR-E Science Team June.
A Novel Hurricane OVW Retrieval Technique for QuikSCAT W. Linwood Jones 1, Peth Laupattarakasem 1, Suleiman Alsweiss 1, Christopher C. Hennon 2, and Svetla.
Satellites Storm “Since the early 1960s, virtually all areas of the atmospheric sciences have been revolutionized by the development and application of.
RAIN ACCUMULATION (RA) PRODUCT FOR AQUARIUS Andrea Santos-Garcia 1, Maria Marta Jacob 2, Linwood Jones 1 1 Central Florida Remote Sensing Laboratory, University.
A step toward operational use of AMSR-E horizontal polarized radiance in JMA global data assimilation system Masahiro Kazumori Numerical Prediction Division.
SVW Requirements Workshop Miami, FL 5-7 June, 2006 Airborne Measurements of Ocean Backscatter Daniel Esteban Fernandez Acknowledgements: NOAA NESDIS Office.
Seubson Soisuvarn Khalil Ahmad Zorana Jelenak Joseph Sienkiewicz Paul S. Chang 9-11 May 2011IOVWST Meeting, Annapolis, MD, USA1.
Apr 17, 2009F. Iturbide-Sanchez A Regressed Rainfall Rate Based on TRMM Microwave Imager Data and F16 Rainfall Rate Improvement F. Iturbide-Sanchez, K.
Satellite Derived Ocean Surface Vector Winds Joe Sienkiewicz, NOAA/NWS Ocean Prediction Center Zorana Jelenak, UCAR/NOAA NESDIS.
In order to accurately estimate polar air/sea fluxes, sea ice drift and then ocean circulation, global ocean models should make use of ice edge, sea ice.
Passive Microwave Remote Sensing
T. Meissner, F. Wentz, J. Scott, K. Hilburn Remote Sensing Systems 2014 Aquarius / SAC-D Science Team Meeting November , 2014.
SOLab work description
Roughness Correction for Aquarius (AQ) Sea Surface Salinity (SSS) Algorithm using MicroWave Radiometer (MWR) W. Linwood Jones, Yazan Hejazin Central FL.
David E. Weissman Hofstra University Hempstead, New York 11549
Calibration, Validation and Status of OSI SAF ScatSat-1 products
OC Remote Sensing of the Atmosphere and Ocean - Summer 2001
Ocean Winds.
Presentation transcript:

Combined Active & Passive Rain Retrieval for QuikSCAT Satellite Khalil A. Ahmad Central Florida Remote Sensing Laboratory University of Central Florida Orlando, FL, USA End of Semester Group Presentation Dec 10, 2005

Presentation Outline:  Description of QuikSCAT Rain Algorithm  Passive Rain Rate retrievals (QRad Algorithm)  Physical Basis  QRad Algo. Tuning  Validation of QRad retrievals (JPL L2B Data Product)  Active rain rate algorithm development  Physical Basis  Sigma-0 Forward Model  Summary & Concluding Remarks

 Oceanic instantaneous integrated rain rate, 0.25 deg grid resolution.  Uses SeaWinds remote sensor on the QuikSCAT satellite Polarized Microwave brightness temperatures. Polarized Microwave brightness temperatures. Polarized normalized radar cross section (Sigma-0s) Polarized normalized radar cross section (Sigma-0s) Retrieved wind speeds Retrieved wind speeds   Based upon near-simultaneous collocations with TRMM Microwave Imager (TMI) oceanic rain rates (TRMM 2A12 Data product) QuikSCAT Rain Algorithm Description

 Passive rain retrieval component (QRad):  Statistical retrieval algorithm (Tex – IRR relationship)  Improved  T by averaging / spatial filtering  Provides simultaneous, collocated precipitation measurements with QuikSCAT ocean surface wind vectors for rain-flagging contaminated wind vector retrievals  Increase Oceanic rain sampling by ~ 10% QuikSCAT Rain Algorithm Description

SeaWinds Measurement Geometry

Passive Rain Retrieval (QRad Algorithm tuning)

Excess Brightness Temperature  Rain absorbs and re-emits radiation, thus increases the observed microwave brightness temperature  The polarized microwave “excess brightness” (Tex p ) is proportional to the integrated rain rate –T b ocean = ocean background (includes atmospheric Emissions without rain) based upon 7 year SSMI climatology –T b w.speed = wind speed brightness bias

Instantaneous Rain Rate Product By orbit, 25 km resolution QRad Rain Rate Block Diagram Calc. Polarized Excess Brightness T 25 km Combine using a weighted average Using ( T ex - IRR ) Calc. Polarized Instantaneous Rain Rate QRad Tb (L2A) Ocean Tb background QuikSCAT wind Speed (L2B) Spatial Filtering 3x3 Window Apply threshold

QRad – TRMM Collocation Data Base 1 st Quarter ~ nd Quarter~ rd Quarter~ th Quarter~ 27

Remove Tex Biases H-pol eToh= 1 k V-pol eTov= k ~ 300 Revs ~ 15,000,000 points Tex

QRad Tex – TMI IRR Transfer Functions (421 Collocated Rain events) 3 rd order polynomial Odd symmetry

QRad – TMI IRR scatter

QRad – Rain Threshold TMI Oceanic Coverage

Comparisons of QRad Retrievals with TMI 2A12 Rain Rates (JPL L2B Validation)

Validation Data Set  JPL Data: 173 Revs, sampled from April ~ Oct ’03  Rain Collocation Data: 70 Collocated Rain events < 30 min

Tex Biases / Rain (173 Revs Apr’03~ Oct’03) ± 1 K ± 1 km mm/hr

Comparison of ~ 70 Instantaneous QRad – TRMM 2A12 Collocated Rain Events

Rain Statistics – ( 70 Collocated events)  Rain Pattern:  Agreement percentage ~ %  Mis-Rain ~ 7.42%  False Alarm ~ 9.14 %  Rain Magnitude :  Within 3dB ~ %  Within 1dB ~ %  Within 0.5 dB ~ 52.52%

Rain Image Comparison QRadTMI

TMI >0, QRad >0 TMI =0, QRad >0 TMI >0, QRad =0 TMI =0, QRad=0 Agree = % False alram = 6.08% Mis-rain = 3.35% QRad / TMI Rain Pattern Classification

Rain Image Comparison QRadTMI

QRad / TMI Rain Pattern Classification TMI >0, QRad >0 TMI =0, QRad >0 TMI >0, QRad =0 TMI =0, QRad=0 Agree = % False alram =3.94% Mis-rain = 6.76%

Active Rain Retrieval Algorithm Development

SeaWinds Scatterometer: Ocean Surface   o : Normalized Radar Cross Section (NRCS) of the ocean surface

Ocean Backscattering:  is a function of incidence angle, frequency, polarization and ocean wind vector (speed and direction)   o is a function of incidence angle, frequency, polarization and ocean wind vector (speed and direction)  The geophysical model function (GMF): An empirical relationship between and the ocean near surface wind velocity:  The geophysical model function (GMF): An empirical relationship between  o and the ocean near surface wind velocity:

Rain Effects on Ocean Rain Effects on Ocean  o  In the presence of Rain, three major factors affect the measured ocean surface :  In the presence of Rain, three major factors affect the measured ocean surface  o : – Two way path attenuation Reduces received power Reduces received power – Volume backscatter Enhances received power Enhances received power – Surface perturbation “Splash Effect” Alters ocean surface roughness structure Alters ocean surface roughness structure

SeaWinds Backscatter Forward Model SeaWinds Backscatter Forward Model σ 0 m : Measured SeaWinds backscatter σ 0 w ind : Wind induced backscatter σ 0 rain-vol : Volume-backscatter due to rain σ 0 surf : Surface perturbation due to rain σ 0 Ex-rain : Excess-backscatter due to rain α : Two-way path attenuation

Wind Induced Backscatter (σ 0 wind ) Model H/V Polarized Wind induced Sigma-0’s By orbit, 25 km resolution Combine FWD/AFT & Earth Locate L2A Data Product L2B Data Product Model Wind speed Model Wind Dir WVC Geolocation Cell Azimuth Cell Incidence Co-register On L2B Grid QuikSCAT GMF QSCAT-1 Calc. Relative Azimuth L2B Cell Incidence 4-flavour σ 0 w L2B Cell Azimuth

Wind Induced Backscatter (σ 0 w )

Attenuation derived from PR: H-PolV-Pol

Rain Volume BackScatter derived from PR:

Rain Backscatter (σ 0 EX-rain ) H-Pol V-Pol

Future Work  Combine/Validate Sigma-0 Model  Develop a complementary active rain retrieval  Combine Active/Passive Rain retrievals Minimize:

Summary:  JPL rain processing is in excellent agreement with CFRSL processing  QRad provides quantitative estimates of instantaneous rain rates over oceans  QRad rain measurements are in good agreement with TRMM 2A12