Draft proposal to NASA Project SIMBIOS (Jan 19, 2000) Physically-Based Aerosol Models for Atmospheric Correction Algorithms Washington University, St.

Slides:



Advertisements
Similar presentations
FASTNET Report: 0409RegHazeEvents04 Eastern US Regional Haze Events: Automated Detection and Documentation for 2004 Contributed by the FASNET Community,
Advertisements

GEOS-5 Simulations of Aerosol Index and Aerosol Absorption Optical Depth with Comparison to OMI retrievals. V. Buchard, A. da Silva, P. Colarco, R. Spurr.
Aerosol Pattern over Southeastern Europe Rudolf B. Husar and Janja D. Husar CAPITA, Washington University, St. Louis, MO Conference on Visibility, Aerosols,
Liang APEIS Capacity Building Workshop on Integrated Environmental Monitoring of Asia-Pacific Region September 2002, Beijing,, China Atmospheric.
A Dictionary of Aerosol Remote Sensing Terms Richard Kleidman SSAI/NASA Goddard Lorraine Remer UMBC / JCET Short.
Retrieval of smoke aerosol loading from remote sensing data Sean Raffuse and Rudolf Husar Center for Air Pollution Impact and Trends Analysis Washington.
Fusion of SeaWIFS and TOMS Satellite Data with Surface Observations and Topographic Data During Extreme Aerosol Events Stefan Falke and Rudolf Husar Center.
Constraining aerosol sources using MODIS backscattered radiances Easan Drury - G2
Proposal Outline: Extensions to the VIEWS: General CATT Analysis Tool R. Husar, CAPITA Revised, June 26, 2003 Proposed Sub-Projects CATT for VIEWS$20k.
Using satellite-bourne instruments to diagnose the indirect effect A review of the capabilities and previous studies.
The Role of Aerosols in Climate Change Eleanor J. Highwood Department of Meteorology, With thanks to all the IPCC scientists, Keith Shine (Reading) and.
ESTEC July 2000 Estimation of Aerosol Properties from CHRIS-PROBA Data Jeff Settle Environmental Systems Science Centre University of Reading.
Satellite Remote Sensing of Surface Air Quality
1 Satellite Remote Sensing of Particulate Matter Air Quality ARSET Applied Remote Sensing Education and Training A project of NASA Applied Sciences Pawan.
1 Satellite Remote Sensing of Particulate Matter Air Quality ARSET Applied Remote Sensing Education and Training A project of NASA Applied Sciences Pawan.
(#694) Monitoring the Hawaii Volcano Plume From Satellite By John Porter School of Ocean Earth Science and Technology, University of Hawaii, Honolulu,
VRAME: Vertically Resolved Aerosol Model for Europe from a Synergy of EARLINET and AERONET data Elina Giannakaki, Ina Mattis, Detlef Müller, Olaf Krüger.
SeaDAS Training ~ NASA Ocean Biology Processing Group 1 Level-2 ocean color data processing basics NASA Ocean Biology Processing Group Goddard Space Flight.
Applications and Limitations of Satellite Data Professor Ming-Dah Chou January 3, 2005 Department of Atmospheric Sciences National Taiwan University.
Lidar Working Group on Space-Based Winds, Snowmass, Colorado, July 17-21, 2007 A study of range resolution effects on accuracy and precision of velocity.
Observation-Based Quantification of the PM and Ozone at the US-Global Boundary CAPITACAPITA, Washington University Rudolf B. Husar, PI In Cooperation with.
1 Satellite Remote Sensing of Particulate Matter Air Quality ARSET Applied Remote Sensing Education and Training A project of NASA Applied Sciences Pawan.
Translation to the New TCO Panel Beverly Law Prof. Global Change Forest Science Science Chair, AmeriFlux Network Oregon State University.
Properties of Particulate Matter Physical, Chemical and Optical Properties Size Range of Particulate Matter Mass Distribution of PM vs. Size: PM10, PM2.5.
Center for Satellite Applications and Research (STAR) Review 09 – 11 March 2010 Image: MODIS Land Group, NASA GSFC March 2000 Image: MODIS Land Group,
Regional Scale Air Pollution Rudolf B. Husar Center for Air Pollution Impact and Trend Analysis Washington University, St. Louis, MO, USA 6 th Int. Conf.
Global Distribution and Transport of Air Pollution Presented at The Haagen-Smit Symposium: From Los Angeles to Global Air Pollution Lake Arrowhead, April.
Project Outline: Technical Support to EPA and RPOs Estimation of Natural Visibility Conditions over the US Project Period: June May 2008 Reports:
Applications of Satellite Remote Sensing to Estimate Global Ambient Fine Particulate Matter Concentrations Randall Martin, Dalhousie and Harvard-Smithsonian.
In Situ and Remote Sensing Characterization of Spectral Absorption by Black Carbon and other Aerosols J. Vanderlei Martins, Paulo Artaxo, Yoram Kaufman,
1 of 26 Characterization of Atmospheric Aerosols using Integrated Multi-Sensor Earth Observations Presented by Ratish Menon (Roll Number ) PhD.
GE0-CAPE Workshop University of North Carolina-Chapel Hill August 2008 Aerosols: What is measurable and by what remote sensing technique? Omar Torres.
EG2234: Earth Observation Interactions - Land Dr Mark Cresswell.
The Second TEMPO Science Team Meeting Physical Basis of the Near-UV Aerosol Algorithm Omar Torres NASA Goddard Space Flight Center Atmospheric Chemistry.
Characterization of Aerosols using Airborne Lidar, MODIS, and GOCART Data during the TRACE-P (2001) Mission Rich Ferrare 1, Ed Browell 1, Syed Ismail 1,
Modelling the radiative impact of aerosols from biomass burning during SAFARI-2000 Gunnar Myhre 1,2 Terje K. Berntsen 3,1 James M. Haywood 4 Jostein K.
Fog- and cloud-induced aerosol modification observed by the Aerosol Robotic Network (AERONET) Thomas F. Eck (Code 618 NASA GSFC) and Brent N. Holben (Code.
Fusion of Satellite Remote Sensing and Elevation Data: Estimation of Aerosol Layer Height in Rugged Terrain Stefan Falke and Rudolf Husar Center for Air.
AT737 Aerosols.
Synergy of MODIS Deep Blue and Operational Aerosol Products with MISR and SeaWiFS N. Christina Hsu and S.-C. Tsay, M. D. King, M.-J. Jeong NASA Goddard.
ESTIMATION OF SOLAR RADIATIVE IMPACT DUE TO BIOMASS BURNING OVER THE AFRICAN CONTINENT Y. Govaerts (1), G. Myhre (2), J. M. Haywood (3), T. K. Berntsen.
Global and Local Dust over North America Initial Assessment by a Virtual Community on Dust Coordinated by R.
Co-Retrieval of Surface Color and Aerosols from SeaWiFS Satellite Data Outline of a Seminar Presentation at EPA May 2003 Sean Raffuse and Rudolf Husar.
Air and Waste Management Association Professional Development Course AIR-257: Satellite Detection of Aerosols Issues and Opportunities Fraction.
April 29, 2000, Day 120 July 18, 2000, Day 200October 16, 2000, Day 290 Results – Seasonal surface reflectance, Eastern US.
Click to edit Master title style Click to edit Master text styles –Second Level Third Level –Fourth Level »Fifth Level Atmospheric Aerosols as Indicators.
Co-Retrieval of Surface Color and Aerosols from SeaWiFS Satellite Data Outline of a Seminar Presentation at EPA May 2003 Sean Raffuse and Rudolf Husar.
Aerosol Characterization Using the SeaWiFS Sensor and Surface Data E. M. Robinson and R. B. Husar Washington University, St. Louis, MO
Center for Satellite Applications and Research (STAR) Review 09 – 11 March 2010 Image: MODIS Land Group, NASA GSFC March 2000 Image: MODIS Land Group,
CAPITA Center for Air Pollution Impact and Trend Analysis.
WORKSHOP ON CLIMATE CHANGE AND AIR QUALITY : part I: Intercontinental transport and climatic effects of pollutants OBJECTIVE: Define a near-term (-2003)
Future for APS and related. APS-2 Reflight Report.
Concepts on Aerosol Characterization R.B. Husar Washington University in St. Louis Presented at EPA – OAQPS Seminar Research Triangle Park, NC, April 4,
Application of NASA ESE Data and Tools to Particulate Air Quality Management A proposal to NASA Earth Science REASoN Solicitation CAN-02-OES-01 REASoN:
Aerosol Pattern over Southern North America Tropospheric Aerosols: Science and Decisions in an International Community A NARSTO Technical Symposium on.
New Aerosol Models for Ocean Color Retrievals Zia Ahmad NASA-Ocean Biology Processing Group (OBPG) MODIS Meeting May 18-20, 2011.
North American Visibility. rdyswth Seasonal Bext.
Proposal to MANE_VU: Extensions to the VIEWS: CATT Analysis Tool Full Proposal Text Full Proposal Text R. Husar, PI, CAPITA Revised, October 8, 2003 The.
University of Oxford EUMETSAT Satellite Conference 2004 Aerosol Retrieval Algorithm for Meteosat Second Generation Sam Dean, Steven Marsh and Don Grainger.
Concepts on Aerosol Characterization R.B. Husar Washington University in St. Louis Presented at EPA – OAQPS Seminar Research Triangle Park, NC, April 4,
References: 1)Ganguly, S., Samanta, A., Schull, M. A., Shabanov, N. V., Milesi, C., Nemani, R. R., Knyazikhin, Y., and Myneni, R. B., Generating vegetation.
Assessment on Phytoplankton Quantity in Coastal Area by Using Remote Sensing Data RI Songgun Marine Environment Monitoring and Forecasting Division State.
Fire, Smoke & Air Quality: Tools for Data Exploration & Analysis : Data Sharing/Processing Infrastructure This project integrates.
number Typical aerosol size distribution area volume
Properties of Particulate Matter
What Are the Implications of Optical Closure Using Measurements from the Two Column Aerosol Project? J.D. Fast 1, L.K. Berg 1, E. Kassianov 1, D. Chand.
Fourth TEMPO Science Team Meeting
Jian Wang, Ph.D IMCS Rutgers University
Shuyi S. Chen, Ben Barr, Milan Curcic and Brandon Kerns
Using dynamic aerosol optical properties from a chemical transport model (CTM) to retrieve aerosol optical depths from MODIS reflectances over land Fall.
Presentation transcript:

Draft proposal to NASA Project SIMBIOS (Jan 19, 2000) Physically-Based Aerosol Models for Atmospheric Correction Algorithms Washington University, St. Louis, MO Center for Air Pollution Impact and Trend Analysis (CAPITA).

Table of Contents

Abstract The objective of the project is to improve the quality of atmospheric correction algorithms by applying physically based aerosol models, multi-sensory data fusion and signal decomposition procedures. The aerosol is composed of multiple aerosol layers, each consisting of a specific aerosol type such as windblown dust, biomass smoke, sea salt, volcanic, biogenic and urban-industrial haze aerosols. Each aerosol type tends to occur over specific global regions and atmospheric strata. Algorithms will be developed to retrieve the spatio-temporal pattern of each aerosol type. The available optical properties (spectral extinction, backscattering and single scatter albedo) as well as the dependence on ambient weather parameters (e.g. humidity) will be updated and extended. A key challenge will be to decompose the total reflectance signal into aerosol and surface components and subsequently separating the contribution of different aerosol types. The apportionment of the total aerosol signal into dust, smoke, salt, volcanic, biogenic and industrial haze will be based on the combination of aerosol climatological data and instantaneous satellite and in-situ observations. Surface-based monitoring (e.g. AERONET, size distribution and chemical analysis) will provide the detailed aerosol characteristics. Satellite data from SeaWiFS, POLDER, MODIS, MISR, TOMS, GOES/GMS/METEOSAT etc will provide the spatial pattern as well as the spectral, angular backscattering and polarization parameters. The multi-sensory data fusion will use a physical model for aerosol size distribution dynamics, a chemical composition model for refractive index and Mie theory for optical properties. The benefits of the new aerosol models, aerosol data fusion and signal decomposition methodology will include (1) Improved aerosol correction by physically and geographically constraining the aerosol selection procedure, () Delivering separate aerosol products for dust, smoke, salt, volcanic, biogenic and haze that will be useful for climate change biogeochemical and other studies and (3) Extendibility through multi-sensory fusion and multi-institutional collaboration.

Background Aerosols are a nuisance to satellite remote sensing for surface retrieval –Broad-band interference throughout the spectrum –Variable optical properties dependent on aerosol types and environment therefore it is difficult to accurately account for aerosol interference –Space-time variation due to sources, transport, transformation processes The problem is separating the surface and atmospheric signals –Proper separation yields an undistorted surface color –It also provides an atmospheric aerosol signal useful for other studies Past atmospheric corrections were hampered by inadequate data –No aerosol spectral-angular scattering and absorption properties. No global distribution, No temporal covarage –Atmospheric correction was restricted to data obtained by that particular remote sensor, –Single sensor in inherently limited not enough on spectral angular and absorption characteristics of aerosol –Limited auxiliary data and virtually no data fusion

Opportunities Global satellite remote sensors covering ocean and land Aerosol properties from many regional fields studies Technological advances that facilitated multi- sensory data exchange, integration and fusion

Aerosol Detection over Land and The Oceans Ocean color is particularly interesting near the continental shores where much of the biological activity is takes place. Most of the atmospheric aerosols are generated over land. Even over the oceans most of the radiative perturbation is due to aerosols from the continents. The new ocean color sensors allow remote sensing of both oceans and land.

The Objectives of the Project: Integrate the communal knowledge on the properties and environmental behavior of the major aerosol types that perturb satellite remote sensing of surface color: windblown dust, biomass smoke, sea salt, volcanic, biogenic and urban-industrial haze aerosols Formulate and test algorithms on data fusion and decomposition procedures for the separate retrieval of each of the above aerosol types using data from multiple satellite and surface sensors Deliver the new aerosol retrieval algorithms to the SIMBIOS and broader community for incorporation into atmospheric correction algorithms on operational and research level.

Expected Significance of the Project: The project is expected to improve the quality of aerosol correction algorithms by better characterization of the aerosol as a multi-component, dynamic physical system The project will facilitate separate retrieval of dust, smoke, sea salt, volcanic, biogenic and industrial haze aerosol products which will be useful for global climate change, biogeochemical and other studies. The approach is based on physical principles and it can evolve into an integrated data-model assimilation procedure for atmospheric aerosols. The resulting aerosol models will evolve through open consensus-based approach using the Internet and will incorporate the experience of both the atmospheric aerosol and the atmospheric correction research communities. The disadvantages of the proposed approach include (1) more demand on aerosol and environmental input data, (2) more intense computation and (3) several years needed before it will be fully operational

Past Aerosol Models and Atmospheric Correction Past Aerosol Models Junge, 1963 – power law Whitby and Husar 1972 – bimodal Shettle and Fenn, 1978 – bimodal, RH, components D’Almeida and Koepke 1980 –components, spatial Past Aerosol Models for Atmospheric Correction CZCS, SeaWiFS - Gordon, Wang et al AVHRR – Stowe, Ignatov, Durkee POLDER – Leroy, Tanre, Vermote MODIS – King, Kaufman et al

Recent Work Related to this Project Global Oceanic Aerosol based on AVHRR Global Continental Aerosol Based on Surface Visibility Asian Dust Size Distribution by Different MethodsHaze Retrieval over Ocean and Land from SeaWiFS

Approach to the Aerosol Model Development and Implementation Procedures 1.Assume that the vertical aerosol at any give point is the sum of windblown dust, biomass smoke, sea salt, volcanic, biogenic and urban-industrial haze 2.Gather the best available knowledge on the general physico-optical properties of each aerosol type including dependence on humidity, atmospheric residence time,.. 3.Regionalize and seasonalize each aerosol type 4.Define properties for each regional/seasonal aerosol type by constraining its functional form. Some loose scaling factors are included to “fine tune” the aerosol type model. 5.Gather and integrate instantaneous aerosol data from space and surface sensors to determine the model scaling constants 6.Statistically fit the remaining unknown factors to determine the appropriate form for each aerosol type model 7.Apply the appropriate optical model to each aerosol type and calculate aerosol optical parameters relevant to atmospheric correction. 8.Deliver ‘best estimate’ aerosol-optical properties for atmospheric correction.

Vertical Pattern of Global Aerosol Windblown Dust (crustal elements) Biomass Smoke (organics, H 2 0 ) Sea H 2 0 salt (NaCl. H 2 0) Stratospheric (Volcanic) (H2SO4) Biogenic (Non-sea salt sulfate, org) Urban-Industrial Haze (SO4, org. H 2 0) Dust, smoke, volcanic aerosol and industrial haze originate from land The global aerosol concentration is highest over land and near the continents over the oceans (coastal regions) Sea salt is significant over some of the windy oceanic regions and biogenic sulfate and organic aerosols also occur …

Regional Aerosol Studies: ACE Australia, ACE Africa, SAFARI, SCAR-B ACE - Australia ACE - W. Africa SCAR – Brazil SAFARI – S. Africa

Windblown Dust Aerosol Properties –Size distribution –Chemical composition and refractive index –Spectral extinction, backscattering and single scatter albedo Variation of properties with environmental conditions –Humidity effect including clouds –Transformation/removal effects (chemical, settling) Spatio-temporal distribution –Climatological/seasonal pattern over the ocean and land –Daily distribution –Vertical distribution

Biomass Smoke Aerosol Properties –Size distribution –Chemical composition and refractive index –Spectral extinction, backscattering and single scatter albedo Variation of properties with environmental conditions –Humidity effect including clouds –Transformation/removal effects (chemical, settling) Spatio-temporal distribution –Climatological/seasonal pattern over the ocean and land –Daily distribution –Vertical distribution

Sea Salt Aerosol Properties –Size distribution –Chemical composition and refractive index –Spectral extinction, backscattering and single scatter albedo Variation of properties with environmental conditions –Humidity effect including clouds –Transformation/removal effects (chemical, settling) Spatio-temporal distribution –Climatological/seasonal pattern over the ocean and land –Daily distribution –Vertical distribution

Volcanic Aerosol Aerosol Properties –Size distribution –Chemical composition and refractive index –Spectral extinction, backscattering and single scatter albedo Variation of properties with environmental conditions –Humidity effect including clouds –Transformation/removal effects (chemical, settling) Spatio-temporal distribution –Climatological/seasonal pattern over the ocean and land –Daily distribution –Vertical distribution

Marine Biogenic Haze Aerosol Aerosol Properties –Size distribution –Chemical composition and refractive index –Spectral extinction, backscattering and single scatter albedo Variation of properties with environmental conditions –Humidity effect including clouds –Transformation/removal effects (chemical, settling) Spatio-temporal distribution –Climatological/seasonal pattern over the ocean and land –Daily distribution –Vertical distribution

Urban-Industrial Haze Aerosol Properties –Size distribution –Chemical composition and refractive index –Spectral extinction, backscattering and single scatter albedo Variation of properties with environmental conditions –Humidity effect including clouds –Transformation/removal effects (chemical, settling) Spatio-temporal distribution –Climatological/seasonal pattern over the ocean and land –Daily distribution –Vertical distribution

Aerosol and Surface Radiative Transfer Apparent reflectance detected by the sensor:

Apparent Surface Reflectance, R Aerosols will increase the apparent surface reflectance, R, if P/R 0 < 1. For this reason, the reflectance of ocean and dark vegetation increases with τ. When P/R 0 > 1, aerosols will decrease the surface reflectance. Accordingly, the brightness of clouds is reduced by overlying aerosols. The reflectance of soil and vegetation at 0.8 um is unchanged by haze aerosols since P~ R 0. At large τ (radiation equilibrium), both dark and bright surfaces asymptotically approach the aerosol reflectance, P R is the perturbed reflectance sensed at the top of the atmosphere The critical parameter whether aerosols will increase or decrease the apparent reflectance, R, is the ratio of aerosol to surface reflectance, P/ R 0

Aerosol Effect on Surface Color Aerosols add to the reflectance and sometimes reduce the reflectance of surface objects Aerosols always diminish the contrast between dark a bright surface objects They change the color of surface objects Haze adds a bluish while dust adds yellowish tint to the surface color of surface objects.

Role of Dust Aerosol on Reflectance tttt

Examples of Aerosol Reflectance Decomposition Sahara – Mediterranean Haze – EUS Smoke – Africa, Asia Dust & Haze – Mediterranean

Reflectance Decomposition Reflectance over the Mediterranean R = R dust + R smoke + R salt + R biogenic + R volcanic + R haze

Deliverables Updated Aerosol Models (size distr., chem. Comp, opt.) –Windblown dust –Biomass smoke –Sea Salt –Biogenic –Volcanic –Urban-industrial haze Methodologies and Data to Drive each of the Models –Satellite data from SeaWiFS, POLDER, MODIS, MISR –Visibility, AERONET, Mass and chemical conc. –Global model-derived parameters Open Facilities for the Evolution and Use of Aerosol Models –Incorporation into atmospheric correction algorithms –Incorporation into aerosol retrieval algorithms –Interactive web-based community stuff

Management Approach to the Project Strong interaction with atmospheric aerosol and atmospheric correction communities Integration and updating the best available knowledge through open, participatory consensus-building process using internet Facilitation of strong international participation with emphasis on local participation There will be a ‘best available’ aerosol model and methodology available to the community after year1