Title: MODIS Retrieval of Cloud Optical
1MODIS Retrieval of Cloud Optical Microphysical
Properties
Michael D. King NASA Goddard Space Flight Center
- Optical thickness, particle size (effective
radius), and water path - 1 km spatial resolution, daytime only, liquid
water ice clouds - Solar reflectance technique, VIS through MWIR
- Water nonabsorbing bands 0.65, 0.86, 1.24 µm
- Water absorbing bands 1.6, 2.1, 3.7 µm
- Land, ocean, and snow/sea ice surfaces
- Land surface 0.65 µm
- Ocean surface 0.86 µm
- Snow/ice surfaces 1.24 µm
- MODIS 1st satellite sensor with all useful SWIR,
MWIR bands
2Terra
Launched December 18, 1999
MODIS
MOPITT
ASTER
MISR
CERES
3MODIS Scan Swath
4MODerate-resolution Imaging Spectroradiometer
(MODIS)
- NASA, Terra Aqua
- launches 1999, 2002
- 705 km polar orbits, descending (1030 a.m.)
ascending (130 p.m.) - Sensor Characteristics
- 36 spectral bands ranging from 0.41 to 14.385 µm
- cross-track scan mirror with 2330 km swath width
- Spatial resolutions
- 250 m (bands 1 - 2)
- 500 m (bands 3 - 7)
- 1000 m (bands 8 - 36)
- 2 reflectance calibration accuracy
- onboard solar diffuser solar diffuser stability
monitor
5Shortwave Properties of Clouds
MODIS Atmosphere Bands
1.0
tc(0.75 µm) 16
re 4 µm
0.8
re 8 µm
re 12 µm
re 16 µm
0.6
re 20 µm
Spherical Albedo
re 20 µm vapor
0.4
0.2
0.0
0.5
1.5
1.0
2.0
2.5
3.0
3.5
4.0
Wavelength (µm)
6Infrared Properties of Clouds
Wavelength (µm)
12
16
10
5
4
3
6
8
340
320
300
Brightness Temperature (K)
280
260
240
1500
1000
2000
2500
3000
Wavenumber (cm-1)
7Reflection Function of Clouds as a Function of
Cloud Optical Thickness at 0.65 µm
8Definition of Effective Radius
The effective radius re is defined by re
where r particle radius n(r) particle
size distribution
9Infrared Properties of Clear Skies Cirrus Clouds
10MODIS Reveals Atmospheric Moisture Details As
Never Seen Before
MODIS Water Vapor (1 km)
GOES-8 Water Vapor (4 x 8 km)
11MODIS Channels
12Global Level-1B Composite Image
May 28, 2001
R 0.65 µm G 0.56 µm B 0.47 µm
13Global Level-1B Composite Image
May 28, 2001
R 0.65 µm G 0.56 µm B 0.47 µm
example data granule coverage (5 min)
14MODIS Cloud Products
- Pixel-level (level-2) products
- Cloud mask for distinguishing clear sky from
clouds (288 _at_ 47.4 MB) - Cloud radiative and microphysical properties (144
_at_ 69.6 MB 144 _at_ 14.1 MB) - Cloud top pressure, temperature, and effective
emissivity - Cloud optical thickness, thermodynamic phase, and
effective radius - Thin cirrus reflectance in the visible
- New algorithms from greater spectral coverage,
heritage algorithms at higher spatial resolution,
products include QA (processing, assessment info,
weighted statistics) - Gridded time-averaged (level-3) atmosphere
product - Daily, 8-day, and monthly products (474.8, 883.2,
883.2 MB) - 1 1 equal angle grid
- Mean, standard deviation, marginal probability
density function, joint probability density
functions - Quicklook imagery available at MODIS atmosphere
web site - modis-atmos.gsfc.nasa.gov
15Retrieval of tc and re
- The reflection function of a nonabsorbing band
(e.g., 0.86 µm) is primarily a function of
optical thickness - The reflection function of a near-infrared
absorbing band (e.g., 2.14 µm) is primarily a
function of effective radius - clouds with small drops (or ice crystals) reflect
more than those with large particles - For optically thick clouds, there is a near
orthogonality in the retrieval of tc and re using
a visible and near-infrared band
Liquid Water Clouds - ocean surface
16Retrieval of tc and re
- The reflection function of a nonabsorbing band
(e.g., 0.86 µm) is primarily a function of
optical thickness - The reflection function of a near-infrared
absorbing band (e.g., 2.14 µm) is primarily a
function of effective radius - clouds with small drops (or ice crystals) reflect
more than those with large particles - For optically thick clouds, there is a near
orthogonality in the retrieval of tc and re using
a visible and near-infrared band
Ice Clouds - ocean surface
17Cloud Optical Microphysical Properties
Retrieval Example
Liquid Water Clouds - ocean surface
Liquid Water Clouds - ice surface
18Cloud Optical Microphysical Properties
- Critical input
- Cloud mask
- to retrieve or not to retrieve?
- Cloud thermodynamic phase
- use liquid water or ice libraries?
- Surface albedo
- for land, ancillary information regarding
snow/ice extent (NISE data set) - Atmospheric correction
- requires cloud top pressure, ancillary
information regarding atmospheric moisture
temperature (e.g., NCEP, DAO, other MODIS
products) - 3.7 µm emission (band contains both solar and
emissive signal) - need cloud top temperature, ancillary for surface
temperature (e.g., from NCEP, DAO, ...)
19MODIS Cloud Mask(W. P. Menzel, S. A. Ackerman,
R. A. Frey)
- MODIS cloud mask uses multispectral imagery to
indicate whether the scene is clear, cloudy, or
affected by shadows - Cloud mask is input to rest of atmosphere, land,
and ocean algorithms - Mask is generated at 250 m and 1 km resolutions
- Mask uses 17 spectral bands ranging from
0.55-13.93 µm (including new 1.38 µm band) - 11 different spectral tests are performed, with
different tests being conducted over each of 5
different domains (land, ocean, coast, snow, and
desert) - temporal consistency test is run over the ocean
and at night over the desert - spatial variability is run over the oceans
- Algorithm based on radiance thresholds in the
infrared, and reflectance and reflectance ratio
thresholds in the visible and near-infrared - Cloud mask consists of 48 bits of information for
each pixel, including results of individual tests
and the processing path used - bits 1 2 give combined results (confident
clear, probably clear, probably cloudy, cloudy)
20Level-2 Cloud Mask Images
April 25, 2001
21MODIS Cloud Thermodynamic Phase(M. D. King, S.
Platnick, B. A. Baum, S. A. Ackerman, et al.
NASA GSFC, NASA LaRC, U. Wisconsin/CIMSS)
- Bispectral IR test (BT8.5-BT11, BT11 thresholds)
- Uses water/ice emissivity differences in 8.5 µm
band (BT8.5-BT11 positive and large for ice
clouds, small and negative for water clouds) - 5 km resolution (currently)
- Solar test (e.g., R1.6/R0.86 ratio test, in
development) - Decision tree approach ecosystem-dependent
assessment of individual cloud mask test results,
current technique in production - Validation with MODIS Airborne Simulator
instrument flown on high altitude NASA ER-2 (can
resolve water/ice spectral signatures in 1.6,
2.1, 3.7 µm spectral bands)
22Decision Tree for Cloud Retrievals
Results of individual cloud mask tests Cloud
mask ecosystem map
Decision Tree
When to retrieve Estimate of cloud phase
23Cloud Phase Decision Tree Processing Path
No
cloud mask determined?
Yes
No
daytime?
Yes
Yes
shadow?
No
Determine Ecosystem Type
24Cloud Phase Decision Tree - Ocean Processing
Example
Ocean
probably clear (11)
probably cloudy (01)
confident clear (10)
cloudy (00)
branch removed
cloud mask probability
No
Yes
heavy aerosol?
thin cirrus? R1.38 test
Stop
Stop
being evaluated
Yes
No
Yes
Ice Cloud
sunglint prob. cloudy?
No
T11-T3.9 R1.38 tests (lt-8K, lt0.035)
No
No
No
R1.38 test (gt 0.035)
T14 test (lt 240K)
Undetermined (water cloud)
Yes
Yes
Yes
Ice Cloud
Ice Cloud
Water Cloud
indicates MAS thresholds used in Arctic
25MODIS Decision Tree Results
26MODIS Top Properties(W. P. Menzel, R. Frey, K.
Strabala, L. Gumley, et al. NOAA NESDIS, U.
Wisc./CIMSS)
- Cloud top pressure, temperature, effective
emissivity - Retrieved for every 5 x 5 box of 1 km FOVs, when
at least 5 FOVs are cloudy, day night - CO2 Slicing technique (5 bands, 12.0-14.2 µm)
- ratio of cloud forcing in 2 nearby bands
- retrieve pc Tc from temperature profile
- most accurate for high and mid-level clouds
- Previously applied to HIRS (NOAA POES, 20 km)
- MODIS 1st satellite sensor capable of CO2 slicing
at high spatial resolution
27Weighting Functions for CO2 Slicing
10
- CO2 slicing method
- ratio of cloud forcing at two near-by wavelengths
- assumes the emissivity at each wavelength is
same, and cancels out in ratio of two bands - The more absorbing the band, the more sensitive
it is to high clouds - technique the most accurate for high and middle
clouds - MODIS is the first sensor to have CO2 slicing
bands at high spatial resolution (1 km) - technique has been applied to HIRS data for 20
years - retrieved for every 5 x 5 box of 1 km FOVs, when
at least 5 FOVs are cloudy, day night
Central Wavelength (µm) 12.020 13.335 13.635 13.93
5 14.235
Channel 32 33 34 35 36
100
Pressure (hPa)
35
36
34
32
33
1000
0.0
0.2
0.4
0.6
0.8
1.2
1.0
Weighting Function dt(n,p)/d ln p
28Cloud top pressure
1000
850
700
550
Cloud Top Pressure (hPa)
400
250
100
29Cloud top temperature
320
295
273
Cloud Top Temperature (K)
250
225
250
180
30Atmospheric Correction
- Cloud library calculations give cloud-top
quantities (no atmosphere) - atmosphere included during retrieval
- Rayleigh scattering
- iterative approach applied to 0.65 µm band only
(used over land) - important for thin clouds and for any clouds with
large solar/view angle combinations - Atmospheric absorption
- Well-mixed gases a function of pc, water vapor
absorption a function of profile both a weak
function of temperature - Assume above-cloud column water vapor amount the
primary parameter, vapor profile of minor
consequence - Library calculations made at a variety of pc,
above-cloud column water amounts (scaled from
various water vapor and temperature profiles),
geometries - using MODTRAN 4.0 with scripts for 2-way
transmittance calculations - requires cloud top pressure, and ancillary
information regarding atmospheric moisture
(currently using NCEP)
31Two-way Atmospheric Path Transmittance (1/µ
1/µ0)
- pc 900 hPa
- w 2.0 g-cm-2 above-cloud precipitable water
- µ0 0.8
0.86, 1.24 µm
1.6 µm
0.67 µm
2.1 µm
3.7 µm (1-way µ path)
Absorption transmittance
3.7 µm
cosine of viewing zenith angle (µ)
32Ecosystem Map(A. H. Strahler, C. B. Schaaf, et
al. Boston University)
- MOD12 (IGBP ecosystem classification) USGS
water tundra
33Surface Albedo Surface albedo ecosystem
MOD43 (Strahler, Schaaf et al.) aggregation
34- Albedo Movies
- Loops through bands 0.65, 0.86,
- 1.24, 1.64, 2.1, and 3.7 µm
- Loops through seasonal equinox
- and solstice, progressing from
- Julian days 91, 173, 293, 356
- Ecosystem Color Scheme
- Pink Crops
- Green Trees
- Yellows Barren/Deserts
- Blues Savannas
35Cloud Optical Thickness in the ArcticProvisional
Production Code (edition 3)
June 2, 2001
tc
20
15
10
5
0
36Cloud Optical Thickness in the ArcticProvisional
Production Code (new correction)
June 2, 2001
tc
20
15
10
5
0
37Cloud Effective Radius in the ArcticProvisional
Production Code (edition 3)
June 2, 2001
re(µm)
40
34
28
22
16
10
4
38Cloud Effective Radius in the ArcticProvisional
Production Code (new correction)
June 2, 2001
re(µm)
40
34
28
22
16
10
4
39Level-2 Global Cloud Images
October 1, 2001
40SAFARI 2000 Core Sites
Mongu
Okavango Delta
Etosha Pan
Maun
Sua Pan
Swakopmund
Tshane
Skukuza
Namib Desert
Inhaca Island
Drakensberg escarpment
41ER-2, C-130 ground tracks
MODIS true color 11 Sept. 2000, 0940 UTC
ER-2
Validation region
C-130 (red in-cloud portions)
42UK C-130 in situ droplet radius, liquid water
content 11 Sept. 2000, 0941-0953 UTC (S. Osborne,
Met Office)
43Previous SAFARI 2000 Namibian Sc studies
California central valley fog
AVHRR
California Sc
MAS
Arctic stratus
(Jan. April 1989, 2 AM scenes, )
Namibian Sc
AVHRR
(Sep. 1999, 3 PM scenes)
(Oct. 1995, SATE-2 validation)
ATSR-2
0
5
10
15
20
25
cloud droplet effective radius (µm)
44Comparison of Visible Optical Thickness(G. G.
Mace, S. Bensen, K. Sassen University of Utah)
Retrieved Optical Thickness
MOD06 Optical Thickness
45Gridded Level-3 Joint Atmosphere Products(M. D.
King, S. Platnick, P. A. Hubanks, et al. NASA
GSFC, UMBC)
- Daily, 8-day, and monthly products (474.8, 883.2,
883.2 MB) - 1 1 equal angle grid
- Mean, standard deviation, marginal probability
density function, joint probability density
functions
46Cloud Optical Thickness (M. D. King, S.
Platnick, M. Gray, E. Moody, et al. NASA GSFC,
UMBC)
Level-3 Monthly April 2001
tc
20
16
12
8
4
0
47Cloud Effective Particle Radius (M. D. King, S.
Platnick, M. Gray, E. Moody, et al. NASA GSFC,
UMBC)
Level-3 Monthly April 2001
re(µm)
40
34
28
22
16
10
4
48MODIS L3 aggregation from 6x 6 grid off
Namibian coastliquid water clouds
L3 product bin sizes (liquid water clouds)
49MODIS L3 aggregation from 6x 10 grid off
California coastliquid water clouds
May 28, 2001
L3 product bin sizes (liquid water)
50Cloud Top Pressure(W. P. Menzel, R. Frey, K.
Strabala, L. Gumley, et al. NOAA NESDIS, U.
Wisconsin/CIMSS)
Level-3 Monthly April 2001
pc (hPa)
1000
900
800
700
600
500
400
300
51Precipitable Water over Land Sunglint(B. C.
Gao, et al. Naval Research Laboratory)
Level-3 Monthly April 2001
q (cm)
7.0
6.0
5.0
4.0
3.0
2.0
1.0
0.0
52Ship Tracks in NE Pacific
- Ship Tracks occur in marine stratocumulus regions
of the globe - California, Azores, Namibia, and Peru
- Conditions for formation
- High humidity
- Small air-sea temperature difference
- Low wind speed
- Boundary layer between 300 and 750 m deep
- Enhanced reflectance of clouds at 3.7 µm
- Larger number of small droplets arising from
particulate emission from ships
53Cloud Physics
- When water vapor condenses in the atmosphere, it
always does so on some solid nucleus - The dust particles in the air form the nuclei on
which it condenses - If there was no dust in the air there would be no
fogs, no clouds, no mists, and probably no rain - John Aitken (1880) On dust, fogs, and
clouds
54Ship Tracks in NE Pacific
October 2, 2000
55Ship Track Formation
N 40 cm-3 W 0.30 g m-3 re 11.2 µm
N 100 cm-3 W 0.75 g m-3 re 10.5 µm
56Distribution of Ship Tracks in NE Pacific during
June 1994
- Ship Tracks identified from AVHRR imagery
- 1362 identified during June 1994 off the US west
coast - The head of each track is denoted by a dot
- The greatest concentration of tracks occurs along
the great-circle shipping lanes - Ship Track Characteristics
- 296 233 km long
- 7.3 6 hours old
- 9 5 km wide
- 16 8 km from the head of the ship track and 25
15 minutes after ship passed - Boundary layer between 300 and 750 m deep
- No tracks formed in boundary layers gt 800 m deep
57Ship Track off West Coast of Chile
- Photo taken by shuttle astronauts during mission
STS-65 - July 20, 1994
58Image of a Ship and Corresponding Ship Track in
NE Pacific
- June 13, 1994
- RC-10 Camera
250 m
1400 m
59Ship Tracks in NE Pacific June 30, 1994
- AVHRR imagery at 3.7 µm
- Wind from NNW at 13.5 ms-1
- Ship motion vectors
60Ship Track Characteristics
61Ship Track Occurrence
- Ship tracks form preferentially in boundary
layers shallower than about 800 m depth
Boundary Layer Depth (m)
Number of Cases and Mean Tracks/Case
62Global Occurrence Statistics
49 tracks
572 tracks
809 tracks
5537 tracks
Analysis Pending
470 tracks
805 tracks
63Summary
- Particles emitted by ships increase concentration
of cloud condensation nuclei (CCN) in the air - Increased CCN increase concentration of cloud
droplets and reduce average size of the droplets - Increased concentration and smaller particles
reduce production of drizzle (100 µm radius)
droplets in clouds - Liquid water content increases because loss of
drizzle particles is suppressed - Clouds are optically thicker and brighter along
ship track
64Indirect Aerosol Effects
- The increase in CCN of industrial origin might
explain why the Northern Hemisphere has warmed
less than the Southern Hemisphere over the last
50 years - Even if some compensation in surface warming
occurs because of changes in sulfate and
greenhouse gases, it is not clear whether that
compensation will continue in the future - The sulfate effect would tend to act only
regionally, whilst the greenhouse forcing is
global - IPCC Scientific Assessment of Climate Change
(1990)