A43D-0138 Towards a New AVHRR High Cloud Climatology from PATMOS-x Andrew K Heidinger, Michael J Pavolonis, Aleksandar Jelenak* and William Straka III.

Slides:



Advertisements
Similar presentations
Robin Hogan, Richard Allan, Nicky Chalmers, Thorwald Stein, Julien Delanoë University of Reading How accurate are the radiative properties of ice clouds.
Advertisements

Title: Applications of the AWG Cloud Height Algorithm (ACHA) Authors and AffiliationsAndrew Heidinger, NOAA/NESDIS/STAR Steve Wanzong, UW/CIMSS Topics:
SNPP VIIRS green vegetation fraction products and application in numerical weather prediction Zhangyan Jiang 1,2, Weizhong Zheng 3,4, Junchang Ju 1,2,
Improved Automated Cloud Classification and Cloud Property Continuity Studies for the Visible/Infrared Imager/Radiometer Suite (VIIRS) Michael J. Pavolonis.
A thermodynamic model for estimating sea and lake ice thickness with optical satellite data Student presentation for GGS656 Sanmei Li April 17, 2012.
1 1. FY08 GOES-R3 Project Proposal Title Page  Title: Investigation of Daytime-Nighttime Inconsistencies in Cloud Optical Parameters  Project Type: Product.
VIIRS LST Uncertainty Estimation And Quality Assessment of Suomi NPP VIIRS Land Surface Temperature Product 1 CICS, University of Maryland, College Park;
TRMM Tropical Rainfall Measurement (Mission). Why TRMM? n Tropical Rainfall Measuring Mission (TRMM) is a joint US-Japan study initiated in 1997 to study.
Evaluation of ECHAM5 General Circulation Model using ISCCP simulator Swati Gehlot & Johannes Quaas Max-Planck-Institut für Meteorologie Hamburg, Germany.
Exploring the similarities and differences between MODIS, PATMOS and ISCCP Amato Evan, Andrew Heidinger & Michael Pavolonis Collaborators: Brent Maddux,
Anthropogenic Aerosol – A Cause Of The Weekend Effect? A significant weekly cycle has been found in diurnal temperature range (DTR). A candidate for causing.
Characterizing and comparison of uncertainty in the AVHRR Pathfinder SST field, Versions 5 & 6 Robert Evans Guilllermo Podesta’ RSMAS Nov 8, 2010 with.
VIIRS Cloud Products Andrew Heidinger, Michael Pavolonis Corey Calvert
Surface Skin Temperatures Observed from IR and Microwave Satellite Measurements Catherine Prigent, CNRS, LERMA, Observatoire de Paris, France Filipe Aires,
1 NOAA’s National Climatic Data Center April 2005 Climate Observation Program Blended SST Analysis Changes and Implications for the Buoy Network 1.Plans.
Cooperative Institute for Meteorological Satellite Studies University of Wisconsin - Madison Steve Ackerman Director, Cooperative Institute for Meteorological.
Improved NCEP SST Analysis
Motivation Many GOES products are not directly used in NWP but may help in diagnosing problems in forecasted fields. One example is the GOES cloud classification.
R. Hollmann 1, C. Poulsen 2, U. Willen 3, C. Stubenrauch 4, M. Stengel 1, and the Cloud CCI consortium 1 Deutscher Wetterdienst, 2 RAL Space, 3 SMHI, 4.
Extending HIRS High Cloud Trends with MODIS Donald P. Wylie Richard Frey Hong Zhang W. Paul Menzel 12 year trends Effects of orbit drift and ancillary.
Applications and Limitations of Satellite Data Professor Ming-Dah Chou January 3, 2005 Department of Atmospheric Sciences National Taiwan University.
Diagnosing Climate Change from Satellite Sounding Measurements – From Filter Radiometers to Spectrometers William L. Smith Sr 1,2., Elisabeth Weisz 1,
Orbit Characteristics and View Angle Effects on the Global Cloud Field
Evaluation and applications of a new satellite-based surface solar radiation data set for climate analysis Jörg Trentmann1, Richard Müller1, Christine.
AGU 2002 Fall Meeting NASA Langley Research Center / Atmospheric Sciences Validation of GOES-8 Derived Cloud Properties Over the Southeastern Pacific J.
Towards Operational Satellite-based Detection and Short Term Nowcasting of Volcanic Ash* *There are research applications as well. Michael Pavolonis*,
1 Center for S a t ellite A pplications and R esearch (STAR) Applicability of GOES-R AWG Cloud Algorithms for JPSS/VIIRS AMS Annual Meeting Future Operational.
Initial Trends in Cloud Amount from the AVHRR Pathfinder Atmospheres Extended (PATMOS-x) Data Set Andrew K Heidinger, Michael J Pavolonis**, Aleksandar.
Towards Operational Satellite-based Detection and Short Term Nowcasting of Volcanic Ash* *There are research applications as well. Michael Pavolonis*,
Andrew Heidinger and Michael Pavolonis
J AMS Annual Meeting - 16SATMET New Automated Methods for Detecting Volcanic Ash and Retrieving Its Properties from Infrared Radiances Michael.
Retrieval of Methane Distributions from IASI
Trends & Variability of Liquid Water Clouds from Eighteen Years of Microwave Satellite Data: Initial Results 6 July 2006 Chris O’Dell & Ralf Bennartz University.
Center for Satellite Applications and Research (STAR) Review 09 – 11 March 2010 Using CALIPSO to Explore the Sensitivity to Cirrus Height in the Infrared.
Investigations of Artifacts in the ISCCP Datasets William B. Rossow July 2006.
Use of Solar Reflectance Hyperspectral Data for Cloud Base Retrieval Andrew Heidinger, NOAA/NESDIS/ORA Washington D.C, USA Outline " Physical basis for.
Use of a high-resolution cloud climate data set for validation of Rossby Centre climate simulations Presentation at the EUMETSAT Meteorological Satellite.
Consistency of reflected moonlight based nighttime precipitation product with its daytime equivalent. Andi Walther 1, Steven Miller 3, Denis Botambekov.
Cloud Products and Applications: moving from POES to NPOESS (A VIIRS/NOAA-biased perspective) Andrew Heidinger, Fuzhong Weng NOAA/NESDIS Office of Research.
Point Comparison in the Arctic (Barrow N, 156.6W ) Part I - Assessing Satellite (and surface) Capabilities for Determining Cloud Fraction, Cloud.
The Orbiting Carbon Observatory (OCO) Mission: Retrieval Characterisation and Error Analysis H. Bösch 1, B. Connor 2, B. Sen 1, G. C. Toon 1 1 Jet Propulsion.
Visible optical depth,  Optically thicker clouds correlate with colder tops Ship tracks Note, retrievals done on cloudy pixels which are spatially uniform.
Cloud property retrieval from hyperspectral IR measurements Jun Li, Peng Zhang, Chian-Yi Liu, Xuebao Wu and CIMSS colleagues Cooperative Institute for.
AVHRR Visible Band Calibration / Intercalibration (for Climate Studies) Andrew Heidinger and Michael Pavolonis* Changyong Cao, Aleksandar Jelenak, Jerry.
Cloud Fraction from Cloud Mask vs Total Sky Imager Comparison of 1 and 4 km Data The native resolution of the vis channel on GOES Imager is roughly 1 km.
SeaWiFS Views Equatorial Pacific Waves Gene Feldman NASA Goddard Space Flight Center, Lab. For Hydrospheric Processes, This.
Evidence in ISCCP for regional patterns of cloud response to climate change Joel Norris Scripps Institution of Oceanography ISCCP at 30 Workshop City College.
A New Ocean Suite Algorithm for AMSR2 David I. Duncan September 16 th, 2015 AMSR Science Team Meeting Huntsville, AL.
UCLA Vector Radiative Transfer Models for Application to Satellite Data Assimilation K. N. Liou, S. C. Ou, Y. Takano and Q. Yue Department of Atmospheric.
AVHRR Stewardship Project Pathfinder Atmospheres – Extended (PATMOS-x) Andrew Heidinger, Aleksandar Jelenak, Michael Pavolonis NOAA/NESDIS/ORA.
Barbuda Antigua MISR 250 m The Climatology of Small Tropical Oceanic Cumuli New Findings to Old Problems (Analysis of EOS-Terra data) Larry Di Girolamo,
(Towards) A New AVHRR Cloud Climatology Andrew Heidinger, Mitch Goldberg, Dan Tarpley NOAA/NESDIS Office of Research and Applications Michael Pavolonis.
Preliminary results from the new AVHRR Pathfinder Atmospheres Extended (PATMOS-x) Data Set Andrew Heidinger a, Michael Pavolonis b and Mitch Goldberg a.
TS 15 The Great Salt Lake System ASLO 2005 Aquatic Sciences Meeting Climatology and Variability of Satellite-derived Temperature of the Great Salt Lake.
MOLLY E. BROWN, PHD NASA GODDARD GIMMS Group Challenges of AVHRR Vegetation Data for Real Time Applications.
The MODIS SST hypercube is a multi-dimensional look up table of SST retrieval uncertainty, bias and standard deviation, determined from comprehensive analysis.
A comparison of AMSR-E and AATSR SST time-series A preliminary investigation into the effects of using cloud-cleared SST data as opposed to all-sky SST.
© Crown copyright Met Office Assimilating infra-red sounder data over land John Eyre for Ed Pavelin Met Office, UK Acknowledgements: Brett Candy DAOS-WG,
Global Multi-layer Cloud Distribution from AVHRR
CLAVR-x in CSPP Andrew Heidinger, NOAA/NESDIS/STAR, Madison WI
PATMOS-x Reflectance Calibration and Reflectance Time-Series
Winds in the Polar Regions from MODIS: Atmospheric Considerations
VIIRS Cloud Mask Validation Exercises
Validation of Satellite-derived Lake Surface Temperatures
HIRS Observations of a Decline in High Clouds since 1995 February 2002
Global Multi-layer Cloud Distribution from AVHRR
Using dynamic aerosol optical properties from a chemical transport model (CTM) to retrieve aerosol optical depths from MODIS reflectances over land Fall.
Andrew Heidinger and Michael Pavolonis
Igor Appel Alexander Kokhanovsky
Andrew Heidinger JPSS Cloud Team Lead
Presentation transcript:

A43D-0138 Towards a New AVHRR High Cloud Climatology from PATMOS-x Andrew K Heidinger, Michael J Pavolonis, Aleksandar Jelenak* and William Straka III NOAA/NESDIS/Center for Satellite Applications and Research Advanced Satellite Product Branch, Madison Wisconsin *UCAR, Washington D.C. Cooperative Institute for Meteorological Studies, Madison, Wisconsin Visual Comparison with MODIS The two images show a comparison of the cloud temperature for Hurricane Ivan from MODIS/AQUA (MOD06) and the split-window approach applied to NOAA-16 AVHRR. The two data sets are separated in time by 20 minutes. This image qualitatively indicates that the split-window method is successfully placing thin cirrus (edges of outer bands) at high levels. References Giraud, V., Buriez, J. C., Fouquart, Y., Parol, F., Seze, G., Jun Large-Scale Analysis of Cirrus Clouds from AVHRR Data: Assessment of Both a Microphysical Index and the Cloud-Top Temperature. Journal of Applied Meteorology 36, 664–675. Heidinger, Andrew and M. J. Pavolonis, 2005: Global Daytime Distribution of Overlapping Cirrus Cloud from NOAA's Advanced Very High Resolution Radiometer. Journal of Climate, Vol. 18, No. 22, pages 4772–4784 Michael J. Pavolonis, Andrew K. Heidinger and Taneil Uttal. 2005: Daytime Global Cloud Typing from AVHRR and VIIRS: Algorithm Description, Validation, and Comparisons. Journal of Applied Meteorology: Vol. 44, No. 6, pp. 804– 826. Contact Information Web: Retrieval Approach We adopt a 1d-variation retrieval approach where we use the 11 mm brightness temperature and  m brightness temperature difference (BTD) to estimate the cloud temperature (T c ) and cloud emissivity (e c ). The images below show the retrieval performance for one scene and some of the diagnostic measures from the 1d-var approach. The higher the reliance of the retrieved parameter on the observations, the less the reliance on the first guess. The results show successful retrieval is achieved with under 5 iterations and with minimal reliance on the first guess except for very thin clouds as seen near the edges of this storm, Background The AVHRR Pathfinder Atmospheres Extended (PATMOS-x) is a new reprocessing effort with a goal of improving the AVHRR data quality and deriving some improved cloud,aerosol and surface parameters. This poster reports on our progress on the PATMOS-x climatology of high cloud properties (amount, temperature and emissivity). PATMOS-x processes the 4km GAC data into a series of products at 55 km resolution for climate studies. All 5-channel AVHRR data is used including data from both orbits (morning and afternoon). Some results from PATMOS-x are in a recent Journal of Climate paper (Heidinger and Pavolonis, 2005) Accuracy of Split-Window to VIS/IR and IR-window Method The split-window measurements are fundamentally sensitive to T c, e c and . We have chosen to fix  and estimate T c and e c. To explore the errors in b, we have used the measurements of  from Giraud (1997) who measured the mean of  to be 1.1 with a standard deviation of Plots below show simulated performance of split-window method compared to VIS/IR and IR ISCCP uses a VIS/IR approach during day and an IR-window approach at night Split-Window simulations assume errors in  of one standard deviation (1  )– values based on Giraud (1997) VIS/IR simulations assume 30% error in optical depth – conservative given uncertainty in ice scattering properties Split-window T c estimates appears to always outperform IR-window and VIS/IR for e c > 0.2 Split-Window estimates of e c are better than VIS/IR with 30% error in optical depth Why Use this Approach (the Split-Window)? Results indicate its performance is comparable to VIS/IR approaches (ISCCP day) in the estimation of T c and e c. Because it uses only infrared channels, its performance is similar for day/night and terminator Because it offers comparable performance, all AVHRR data (4 views/day) can be used to study diurnal effects and improve the daily average. While ISCCP provides 8 views/day, it’s use of very different algorithms for cloud height estimation during the day and night limits its ability for diurnal studies. This method has been studied previously, but has never been applied globally Why Attempt this? The AVHRR data spans from 1981 to 2012(est) and therefore relevant to decadal climate studies. The large day/night differences in the ISCCP high cloud properties limit its use for diurnal studies. High Cloud Properties are critical important in modulating radiative fluxes are best observed from satellites on a global scale. Our goal is use is to derive properties that are physically consistent with MODIS where the limited spectral information of AVHRR allows. Comparisons with Other Climatologies We are concerned with lack of consensus of many cloud climatologies and pursuing methods to reduce these discrepancies. As predicted by our rough agreement with MODIS in terms of cloud temperature and emissivity, the MODIS/AQUA and PATMOS-x high cloud amount time-series agree more closely than others. Performance Relative to MODIS A comparison was done for one month of level 3 MODIS/AQUA data and PATMOS-x data for July The data shown here are for gridcells filled by ice clouds with near simultaneous data from both sensors. The results are shown for all ice clouds and but are done for all CLAVR-x cloud types (Pavolonis et al, 2005). The results show a strong correlation with a <2 K bias in cloud temperature and very small bias in cloud emissivity. We plan to improve this analysis by going to pixel level comparisons and we think some of this bias is due to limitations in the comparisons. Again, results show a strong correlation in the cloud emissivities even for optically thin cloud. Cloud Emissivity Results Cloud Temperature Results Regional Trends in High Cloud Amount Mean for all Julys Linear Trend Explained Variance of Linear Fit Example Time Series with High Exp. Var. circled region We are beginning to analyze the climate variability signals in PATMOS-x. While we may not see large scale in cloudiness, certain regions do possess significant sustained changes over the past three decades as shown below where the mean July High Cloud Amount as an example. We are developing and collaborating with others to conduct more extensive analyses. Conclusions The Split-Window approach provides a day/night consistent approach for determining a cloud temperature and emissivity. Based on published variations of  (Giraud, 1997), a fixed-  approach appears to outperform IR and VIR/IR approaches such as used by ISCCP. The PATMOS-x method appears to be consistent with MODIS The Split-window appears to offer excellent estimates of ice cloud emissivity (optical depth) for semitransparent ice clouds. The PATMOS-x time series are stable and we are beginning to analyze them. Long Term Time Series Our initial goal was to make time-series that were free of discontinuities from the transition from one satellite to another. It appears from time- series such as those shown that these effects are minimal. Having met this goal, we are beginning to explore the information content of the 25 year time series from PATMOS-x Data from the Tropics (20S – 20N), monthly and daily averaged