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| |38|| Puygrenier || Vincent || Météo France || France || [[Image:France.gif]] || A new spectrally consistent adiabatic method to derive cloud properties from MODIS measurement || poster || no | | |38|| Puygrenier || Vincent || Météo France || France || [[Image:France.gif]] || A new spectrally consistent adiabatic method to derive cloud properties from MODIS measurement || poster || no |
| |- | | |- |
- | |39|| Rauch || John || University of Wisconsin-Madison || USA || [[Image:USA.gif]] ||Estimation of cloud properties though a spectrally consistent adiabatic model || poster || | + | |39|| Rausch || John || University of Wisconsin-Madison || USA || [[Image:USA.gif]] ||Estimation of cloud properties though a spectrally consistent adiabatic model || poster || |
| |- | | |- |
| |40|| Riedi || Jérôme || University of Lille 1 || France || [[Image:France.gif]] || Intercomparison of liquid cloud properties retrieved from POLDER/PARASOL, MODIS/AQUA and SEVIRI/MSG<br>Use of A-Train observations to assess cloud phase retrievals from SEVIRI/MSG || 2 x oral || yes | | |40|| Riedi || Jérôme || University of Lille 1 || France || [[Image:France.gif]] || Intercomparison of liquid cloud properties retrieved from POLDER/PARASOL, MODIS/AQUA and SEVIRI/MSG<br>Use of A-Train observations to assess cloud phase retrievals from SEVIRI/MSG || 2 x oral || yes |
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| |41|| Roebeling || Rob || KNMI || Netherlands || [[Image:Netherlands.gif]]|| The CREW workshop: an overview || oral || yes | | |41|| Roebeling || Rob || KNMI || Netherlands || [[Image:Netherlands.gif]]|| The CREW workshop: an overview || oral || yes |
| |- | | |- |
- | |42|| Schultz || Jörg || Eumetsat || Europe || [[Image:Europe.gif]] || ''Keynote lecture instrument calibration'' (GSICS) || oral || | + | |42|| Schulz || Jörg || Eumetsat || Europe || [[Image:Europe.gif]] || ''Keynote lecture instrument calibration'' (GSICS) || oral || |
| |- | | |- |
- | |43|| Sèze || Geneviève || LMD || France || [[Image:France.gif]] || Evaluation of the global cloud cover distribution obtained from multi-geostationary data in the frame of the MEGHA-TROPIQUES mission with CALIPSO lidar observations || oral || no | + | |43|| Scheirer || Ronald || SMHI || Sweden || [[Image:Sweden.gif]] || Adding uncertainty tbc || oral || no |
| |- | | |- |
- | |44|| Smith || William L Jr. || NASA, Langley || USA || [[Image:USA.gif]] || Improved Methods To Resolve The Vertical Distribution Of Cloud Water From Passive Satellite Data || o or p || no | + | |44|| Sèze || Geneviève || LMD || France || [[Image:France.gif]] || Evaluation of the global cloud cover distribution obtained from multi-geostationary data in the frame of the MEGHA-TROPIQUES mission with CALIPSO lidar observations || oral || no |
| |- | | |- |
- | |45|| Stengel || Martin || DWD || Germany || [[Image:Germany.gif]] || The inter-comparison of retrieved cloud properties within the ESA Cloud CCI project || oral || no | + | |45|| Smith || William L Jr. || NASA, Langley || USA || [[Image:USA.gif]] || Improved Methods To Resolve The Vertical Distribution Of Cloud Water From Passive Satellite Data || o or p || no |
| |- | | |- |
- | |46|| Stephans || Graeme || Atmosphere Colorado State University || USA || [[Image:USA.gif]] || ''Keynote lecture active sensors'' || oral || | + | |46|| Stengel || Martin || DWD || Germany || [[Image:Germany.gif]] || The inter-comparison of retrieved cloud properties within the ESA Cloud CCI project || oral || no |
| |- | | |- |
- | |47|| Thomas || Gareth || University of Oxford || UK|| [[Image:Europe.gif]] || Application and evaluation of the Oxford-RAL Retrieval of Aerosol and Cloud algorithm to MODIS data || poster || no | + | |47|| Stephans || Graeme || Atmosphere Colorado State University || USA || [[Image:USA.gif]] || ''Keynote lecture active sensors'' || oral || |
| |- | | |- |
- | |48|| Trepte || Qing || Science Systems & Application Inc. || USA || [[Image:USA.gif]] || A Comparison of Cloud Detection between CERES Ed4 Cloud Mask and CALIPSO Version 3 Vertical Feature Mask || o or p || no | + | |48|| Thomas || Gareth || University of Oxford || UK|| [[Image:Europe.gif]] || Application and evaluation of the Oxford-RAL Retrieval of Aerosol and Cloud algorithm to MODIS data || poster || no |
| |- | | |- |
- | |49|| Vidot || Jerome || Météo France || France || [[Image:France.gif]] || - || none || no | + | |49|| Thoss || Anke || SMHI || Sweden || [[Image:Sweden.gif]] || tbc || tbc || tbc |
| |- | | |- |
- | |50|| Walther || Andi || University of Wisconsin-Madison || USA || [[Image:USA.gif]] || Sources of error in satellite derived cloud products || o and p || yes | + | |50|| Trepte || Qing || Science Systems & Application Inc. || USA || [[Image:USA.gif]] || A Comparison of Cloud Detection between CERES Ed4 Cloud Mask and CALIPSO Version 3 Vertical Feature Mask || o or p || no |
| |- | | |- |
- | |51|| Watts || Philip || Eumetsat || Europe || [[Image:Europe.gif]] || Progress on optimal estimation cloud property retrieval from SEVIRI observations || oral || yes | + | |51|| Vidot || Jerome || Météo France || France || [[Image:France.gif]] || - || none || no |
| |- | | |- |
- | |52|| Wind || Galina || NASA GSFC / SSAI, Inc || USA || [[Image:USA.gif]] || Improvements in Night-time Low Cloud Detection and MODIS-Style Cloud Optical Properties from MSG SEVIRI || oral || yes | + | |52|| Walther || Andi || University of Wisconsin-Madison || USA || [[Image:USA.gif]] || Sources of error in satellite derived cloud products || o and p || yes |
| |- | | |- |
- | |53|| Wolters || Erwin || KNMI || Netherlands || [[Image:Netherlands.gif]]|| Evaluation of a 30-year NOAA-AVHRR cloud property climate data record || oral || no | + | |53|| Watts || Philip || Eumetsat || Europe || [[Image:Europe.gif]] || Progress on optimal estimation cloud property retrieval from SEVIRI observations || oral || yes |
| |- | | |- |
- | |54|| Xiong || Xianxiong (Jack) || NASA GSFC || USA || [[Image:USA.gif]] || MODIS Radiometric Calibration and Uncertainty Assessment || oral || no | + | |54|| Wind || Galina || NASA GSFC / SSAI, Inc || USA || [[Image:USA.gif]] || Improvements in Night-time Low Cloud Detection and MODIS-Style Cloud Optical Properties from MSG SEVIRI || oral || yes |
| |- | | |- |
- | |55|| Zhang || Zhibo || University of Maryland || USA || [[Image:USA.gif]] || An assessment of differences between cloud effective particle radius retrievals for marine water clouds from three MODIS spectral bands: observational and modeling studies || oral || no | + | |55|| Wolters || Erwin || KNMI || Netherlands || [[Image:Netherlands.gif]]|| Evaluation of a 30-year NOAA-AVHRR cloud property climate data record || oral || no |
| + | |- |
| + | |56|| Xiong || Xianxiong (Jack) || NASA GSFC || USA || [[Image:USA.gif]] || MODIS Radiometric Calibration and Uncertainty Assessment || oral || no |
| + | |- |
| + | |57|| Zhang || Zhibo || University of Maryland || USA || [[Image:USA.gif]] || An assessment of differences between cloud effective particle radius retrievals for marine water clouds from three MODIS spectral bands: observational and modeling studies || oral || no |
| |- | | |- |
| |} | | |} |
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| data
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1 | Ackerman | Steve | University of Wisconsin-Madison | USA | | Keynotes passive instruments | oral |
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2 | Baum | Bryan | University of Wisconsin-Madison | USA | | MODIS Collection 6 Cloud Top Height and IR Thermodynamic Phase | oral |
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3 | Bennartz | Ralf | University of Wisconsin-Madison | USA | | Cloud liquid water path of warm clouds from passive microwave and visible/near-infrared imagers | oral |
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4 | Bojkov | Bojan | ESA/ESRIN | Europe | | - | none | no
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5 | Bugliaro | Luca | DLR Oberpfaffenhofen | Germany | | Realistic Simulations of MSG/SEVIRI Scenes for Cloud Algorithm Validation | oral | yes
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6 | Carbajal Henken | Cintia | Free University of Berlin | Germany | | Synergistic MERIS-AATSR cloud properties retrievals using optimal estimation technique | poster | yes
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7 | Chang | Fu-Lung | NASA, Science Systems & Applications Inc. | USA | | Using CALIPSO/CloudSat Data to Evaluate the Multilayer Cloud Properties Retrieved from MODIS and SEVIRI Data | oral |
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8 | Delanoë | Julien | Observations Spatiales (LATMOS)/UVSQ/CNRS/IPSL | France | | DARDAR: CloudSat and CALIPO synergy product for cloud studies | oral | yes
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9 | Deneke | Hartwig | Leibniz Institute for Tropospheric Research | Germany | | Cloud analyses with passive satellite imagery viewed from the radiative perspective | oral | no
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10 | Derrien | Marcel | Météo France | France | | coauther | none | no
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11 | Doelling | Dave | NASA, Langley | USA | | The calibration of geostationary visible sensors using MODIS as a reference | oral | no
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12 | Hamann | Ulrich | KNMI | Netherlands | | The CREW workshop: an overview | oral | no
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13 | Heck | Patrick W. | University of Wisconsin-Madison | USA | | Improved Methods for and Validation of Nighttime Cloud Property Retrievals from SEVIRI, GOES and MODIS | poster | no
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14 | Heidinger | Andrew | NASA, Nesdis | USA | | State of the NOAA AWG Cloud Algorithms and their application in the Great Lakes Region | oral | yes
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15 | Horváth | Ákos | MPI, Hamburg | Germany | | Evaluation of MISR Stereo Cloud-Top Height Retrievals | oral | yes
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16 | Hünerbein | Anja | Leibniz Institute for Tropospheric Research | Germany | | Synergetic cloud top height retrieval for a passive and an active sensor | oral | no
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17 | Jonkheid | Bastiaan | KNMI | Netherlands | | A MSG/SEVIRI simulator for the validation of climate models | oral | yes
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18 | Joro | Sauli | Eumetsat | Europe | | - | none | no
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19 | Kahn | Brian | NASA, JPL | USA | | New AIRS Version 6 cloud retrievals: cloud thermodynamic phase, cirrus cloud optical thickness and effective diameter | o or p | yes
|
20 | Karlsson | Karl-Göran | SMHI | Sweden | | Adding uncertainty information to cloud mask products – impact on Level 2 and Level 3 products | oral | no
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21 | King | Michael | University of Colorado | USA | | - | none | no
|
22 | Kinne | Stefan | University Hamburg | Germany | | GEWEX Cloud Assessment: a review | oral | no
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23 | Kokhanovsky | Alexander | University of Bremen | Germany | | Retrieval of cloud properties using synthetic datasets | oral | yes
|
24 | Le Gleau | Hervé | Météo France | France | | SAFNWC / MSG cloud products | oral | yes
|
25 | Lockhoff | Maarit | DWD | Germany | | Accuracy Assessment of SEVIRI Cloud Detection and Cloud Top Height Retrievals Using Active Remote Sensing Data from CloudSat and CALIPSO | oral | yes
|
26 | Lutz | Hans Joachim | Eumetsat | Europe | | Multi-layer cloud detection within the SCE/CLA algorithm | oral | yes
|
27 | Marchant | Benjamin | NASA Goddard Space Flight Center | USA | | Optical Property Cloud Phase Retrievals for MODIS Collection 6: assessment from CALIOP/CALIPSO | poster | no
|
28 | Meirink | Jan-Focke | KNMI | Netherlands | | Using MSG-SEVIRI for the inter-calibration of visible and near-infrared reflectance from polar imagers | oral | no
|
29 | Minnis | Patrick | NASA, LaRC | USA | | Updated NASA Langley Cloud Property Retrievals | oral | yes
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30 | Moroney | Catherine | NASA, Jet Propulsion Laboratory | USA | | | coauther | no
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31 | Müller | Jennifer | Institute for Space Science | Germany | | Integrating Cloud Observations from Ground and Space – a Way to Combine Time and Space Information
| poster | no
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32 | Musial | Jan | University of Bern | Switzerland | | An Enhanced cloud classification scheme based on radiative transfer simulations and aggregated ratings | oral | no
|
33 | Palikonda | Rabindra | NASA, Langley | USA | | LaRC real-time satellite derived products – Overview: Applications and Limitations | oral | no
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34 | Pavolonis | Michael | NOAA/NESDIS/STAR | USA | | Cloud phase determination using infrared absorption optical depth ratios | oral | yes
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35 | Pincus | Robert | University of Colorado | USA | | Small decisions with big impacts: MODIS, ISCCP, and the evaluation of clouds in climate models | oral | no
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36 | Placidi | Simone | TU Delft | Netherlands | | A novel technique for validating liquid water cloud properties | oral | no
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37 | Platnick | Steven | NASA, GSFC | USA | | Overview of the MODIS Collection 6 Optical Property Algorithm MODIS Optical Property Pixel-Level Uncertainty Estimates in Collection 6 | 2 x oral | yes
|
38 | Puygrenier | Vincent | Météo France | France | | A new spectrally consistent adiabatic method to derive cloud properties from MODIS measurement | poster | no
|
39 | Rausch | John | University of Wisconsin-Madison | USA | | Estimation of cloud properties though a spectrally consistent adiabatic model | poster |
|
40 | Riedi | Jérôme | University of Lille 1 | France | | Intercomparison of liquid cloud properties retrieved from POLDER/PARASOL, MODIS/AQUA and SEVIRI/MSG Use of A-Train observations to assess cloud phase retrievals from SEVIRI/MSG | 2 x oral | yes
|
41 | Roebeling | Rob | KNMI | Netherlands | | The CREW workshop: an overview | oral | yes
|
42 | Schulz | Jörg | Eumetsat | Europe | | Keynote lecture instrument calibration (GSICS) | oral |
|
43 | Scheirer | Ronald | SMHI | Sweden | | Adding uncertainty tbc | oral | no
|
44 | Sèze | Geneviève | LMD | France | | Evaluation of the global cloud cover distribution obtained from multi-geostationary data in the frame of the MEGHA-TROPIQUES mission with CALIPSO lidar observations | oral | no
|
45 | Smith | William L Jr. | NASA, Langley | USA | | Improved Methods To Resolve The Vertical Distribution Of Cloud Water From Passive Satellite Data | o or p | no
|
46 | Stengel | Martin | DWD | Germany | | The inter-comparison of retrieved cloud properties within the ESA Cloud CCI project | oral | no
|
47 | Stephans | Graeme | Atmosphere Colorado State University | USA | | Keynote lecture active sensors | oral |
|
48 | Thomas | Gareth | University of Oxford | UK | | Application and evaluation of the Oxford-RAL Retrieval of Aerosol and Cloud algorithm to MODIS data | poster | no
|
49 | Thoss | Anke | SMHI | Sweden | | tbc | tbc | tbc
|
50 | Trepte | Qing | Science Systems & Application Inc. | USA | | A Comparison of Cloud Detection between CERES Ed4 Cloud Mask and CALIPSO Version 3 Vertical Feature Mask | o or p | no
|
51 | Vidot | Jerome | Météo France | France | | - | none | no
|
52 | Walther | Andi | University of Wisconsin-Madison | USA | | Sources of error in satellite derived cloud products | o and p | yes
|
53 | Watts | Philip | Eumetsat | Europe | | Progress on optimal estimation cloud property retrieval from SEVIRI observations | oral | yes
|
54 | Wind | Galina | NASA GSFC / SSAI, Inc | USA | | Improvements in Night-time Low Cloud Detection and MODIS-Style Cloud Optical Properties from MSG SEVIRI | oral | yes
|
55 | Wolters | Erwin | KNMI | Netherlands | | Evaluation of a 30-year NOAA-AVHRR cloud property climate data record | oral | no
|
56 | Xiong | Xianxiong (Jack) | NASA GSFC | USA | | MODIS Radiometric Calibration and Uncertainty Assessment | oral | no
|
57 | Zhang | Zhibo | University of Maryland | USA | | An assessment of differences between cloud effective particle radius retrievals for marine water clouds from three MODIS spectral bands: observational and modeling studies | oral | no
|