Title: Quantitative Volcanic Ash Remote Sensing at NOAANESDISSTAR and CIMSS
1Quantitative Volcanic Ash Remote Sensing at
NOAA/NESDIS/STAR and CIMSS
- Mike Pavolonis (NOAA/NESDIS/STAR)
- and
- Justin Sieglaff (CIMSS)
2Outline
- Addressing operational challenges
- AVHRR product development
- GOES product development
- GOES-R and NPOESS product development
3Some Addressable Operational Challenges
- Heavy reliance on time consuming manual analysis
of satellite imagery - Volcanic clouds sometimes closely resemble
meteorological clouds in conventional imagery - Quantitative information on ash cloud height,
concentration, and microphysics is not available
4Some Addressable Operational Challenges
- Heavy reliance on time consuming manual analysis
of satellite imagery - automated scanning of
satellite imagery for volcanic ash clouds can now
be performed reliably, allowing for automated
warnings to be passed onto analysts/forecasters,
as manual analysis of every satellite image in
real-time is often not practical (Dynamic
Tasking and Adaptive Sensing) - Volcanic clouds sometimes closely resemble
meteorological clouds in conventional imagery -
cloud microphysical retrievals can be used to
identify clouds which are easily mistaken for
meteorological clouds - Quantitative information on ash cloud height,
concentration, and microphysics is not available
- these retrievals can be performed and are
important for forecasting the dispersion of ash
clouds and ash fallout
5Some Addressable Operational Challenges
- Heavy reliance on time consuming manual analysis
of satellite imagery - automated scanning of
satellite imagery for volcanic ash clouds can now
be performed reliably, allowing for automated
warnings to be passed onto analysts/forecasters - Volcanic clouds sometimes closely resemble
meteorological clouds in conventional imagery -
cloud microphysical retrievals can be used to
identify clouds which are easily mistaken for
meteorological clouds - Quantitative information on ash cloud height,
concentration, and microphysics is not available
- these retrievals can be performed and are
important for forecasting the dispersion of ash
clouds and ash fallout
NOAA/NESDIS/STAR and UW-CIMSS are developing
products for current and future GOES and POES
that address these operational challenges.
6AVHRR Project Description
- Using advanced spectral and spatial techniques, a
fully automated ash detection algorithm along
with an ash height, particle size, and
concentration retrieval were developed for the
AVHRR. - NOAA has funded us to transition these products
from research to NOAA/NESDIS operations. - The volcanic ash products are scheduled to be
produced operationally in the Spring of 2010, but
they will be available prior to then for
evaluation.
7Example Ash Detection Results
Kasatochi (2008)
Redoubt (2009)
8Example Ash Detection Results
Kasatochi (2008)
Redoubt (2009)
Very thin ash cloud is detected without false
alarms
Ice topped portion of volcanic cloud is detected
using a different methodology
9Volcanic Eruption or Thunderstorm?
GOES-12 IR Window
GOES-12 Ash/Ice
From the 1544 UTC VAAC message REMARKS WE HAVE
RECEIVED A REPORT FROM NAVY AVIATION IN THE AREA
INDICATING AN ERUPTION OF SANTA ANA TO
FL460. From the 1601 UTC VAAC message REMARKS
THE ERUPTION IS NOW BELIEVED TO HAVE STARTED AT
ABOUT 1400Z AND AN AREA PREVIOUSLY THOUGHT TO BE
THUNDERSTORMS IS NOW IDENTIFIED AS THICK ASH. A
FORECAST WILL BE ISSUED AS SOON AS POSSIBLE
10Ice Topped Volcanic Clouds
Mount Spurr (August 1992)
Ice topped ash clouds, which are common in the
earliest phase of ash cloud evolution, can only
be reliably identified using advanced cloud
microphysical retrieval techniques.
Pavolonis et al., 2006
11Redoubt 03-23-09 - 1146 UTC
Most BTDs were gt 0K due to larger reff and
multilayered clouds
12Redoubt 03-23-09 - 1430 UTC
Thin layer of ash is captured well.
13Spurr 09-17-92 - 1245 UTC
A large area of the cloud is dominated by smaller
particles.
14- Particle size likely plays a large role in
determining ash residence time. - The September 1992 Mount Spurr cloud remained
visible in satellite imagery for 80 hours as it
impacted the lower 48, while the 2009 Redoubt ash
clouds could not be detected with conventional
satellite imagery lt 12 - 18 hours after each
eruption.
15Kasatochi - 08 - 08 - 2008 - Loop
16Sarychev - 06 - 14 - 2009 - 0915 UTC
17AWIPS Visualization
Ash Mass Loading
Ash Probability
Ash Effective Radius
Ash Cloud Height
18IC4D Visualization
Ash Mass Loading
19Algorithm Development for the Current GOES Imager
- Project Goal Apply our volcanic cloud algorithms
to the current series of GOES imagers. Once
algorithms are deemed reliable, pursue a
transition to operations. - Products produced ash probability, ash height,
ash effective radius, and ash concentration.
20Redoubt 03/26/09 - 2030 UTC
- We are pursuing similar algorithms with GOES, but
we are also exploring ways to utilize the
temporal information. - We hope to add these algorithms to GOES
operations within the next few years.
21Future GOES and POES
- GOES-R ash requirements ash detection and height
(includes ash mass loading and particle size) - NPOESS ash requirements There are no specific
ash requirements for NPOESS, but a slightly
modified form of the GOES-R algorithm can be
applies to the VIIRS.
More accurate and frequent ash products will be
generated in the GOES-R era (with good coverage
of southern Alaska). NPOESS (especially VIIRS
and CrIS combined) will allow for better ash
remote sensing compared to POES.
22Ash Detection
The ash detection results are expressed as a
confidence value.
23Ash Detection
Eruption of Karthala (November 11/25/2005)
24Ash Detection
Full disk results indicate that while the
probability of detection is high for most ash
clouds, while the probability of false alarm is
low.
Ash Detection
Ash cloud
RGB
25Ash Retrieval
RGB Image
Ash Height
Ash Loading
Total Mass 117 ktons
The height and mass loading products are free of
visual artifacts and have reasonable spatial
patterns for this moderate sized eruption.
26Ash Retrieval
RGB Image
Ash Height
Ash Loading
Ash Cloud
Total Mass 8.8 ktons
The height and mass loading products are free of
visual artifacts and have reasonable spatial
patterns for this light sized eruption.
27Validation
The retrieved height agrees well with the CALIOP
cloud boundaries.
SEVIRI RGB
Dust Cloud
CALIOP Backscatter
28Summary
- Reliable automated quantitative ash detection is
now possible. - Retrievals of ash height, effective particle
radius, and concentration provide important
additional information that can potentially be
used in a prognostic manner. - The ABI on GOES-R will have an unprecedented
combination of spatial, temporal, and spectral
resolution. In order to take full advantage of
these new capabilities, quantitative volcanic
cloud products are needed to help alert
forecasters to the presence of volcanic clouds,
as manual analysis over all volcanoes at each
image time (in real-time) is not feasible. - Similar approaches should be taken with other
aviation hazards such as fog, turbulence, and
deep convection. - Close collaboration with the user community
through the PG is vital for improving operational
satellite capabilities.
29Backup Slides
30Why Automated Ash Detection?
- Manual analysis of every satellite scene may not
always be possible, especially with the next
generation of GEO satellites. Un-instrumented
volcanoes especially need to be monitored
carefully by satellite. - Ash locations are needed to constrain ash
property retrievals - Automated detection will aid data mining and
climate applications
31Improving Upon Established Ash Detection
Techniques
The 11 - 12 ?m split-window brightness
temperature difference has traditionally be used
to detect ash.
The split-window technique is not suitable for
automated ash detection, though, because it is
hampered by numerous false alarms (right) and
missed detection due to water vapor absorption
(top).
From Pavolonis et al. (2006)
32Improving Upon Established Ash Detection
Techniques
By adding additional spectral information, we
were able to increase the probability of
detection, especially when the split-window BTD gt
0 K.
From Pavolonis et al. (2006)
33Improving Upon Established Ash Detection
Techniques
The use of additional spectral information also
greatly improved the global false alarm rate.
From Pavolonis et al. (2006)
34Improving Upon Established Ash Detection
Techniques
- Despite these improvements, the skill in
differentiating volcanic ash from other
atmospheric and surface features is still not
good enough for an operational setting. - Thus, additional spectral and spatial based
algorithm improvements were needed.
From Pavolonis et al. (2006)
35Improving Upon Established Ash Detection
Techniques
- Improve the spectral sensitivity of split-window
measurements to volcanic ash by explicitly
accounting for background conditions (e.g.
surface temperature, surface emissivity, water
vapor, etc) on a pixel by pixel basis. - Make advanced use of spatial information.
36Ice Topped Volcanic Clouds
11 - 12 ?m BTD
3.75 ?m Reflectance
?obs(12, 11 ?m)
37Ice Topped Volcanic Clouds
11 - 12 ?m BTD
Large BTDs, ?s, and NIR reflectance values are
indicative of very small particles,which are
fairly rare for optically thick ice clouds.
3.75 ?m Reflectance
?obs(12, 11 ?m)
38Ash Retrieval
- Retrievals of ash concentration (optical depth
and particle size) have been limited to case
studies. Automated real-time capable retrieval
algorithms are lacking in operational settings. - An optimal estimation procedure (Heidinger and
Pavolonis, 2009) is used to retrieve the ash
cloud top temperature, emissivity, and
microphysical parameter for pixels determined to
contain ash by the detection algorithm. - The results are used to compute an ash
concentration. - Only infrared channels are used, so the results
and day/night independent and the procedure is
fully automated. - It is hoped that these retrievals can be used to
improve dispersion models.
39Ash Retrievals
- Cloud temperature is a free parameter
- Atmospheric water vapor, surface temperature, and
surface emissivity are accounted for in the
retrieval - A multilayered correction can be applied
- The 1D VAR retrieval produces error estimates for
each of the retrieved parameters
40Ash Detection
Ash detection under difficult multilayered
conditions is improved when the low cloud layer
is approximately accounted for.
Ash detection with multilayered correction
41Summary
- Automated quantitative ash detection requires an
approach that can isolate the cloud microphysical
signal from the background signal and make
maximum use of spatial information in order to be
of operational quality (high detection, low false
alarm rate). - Retrievals of ash height, effective particle
radius, and concentration provide important
additional information that can potentially be
used in a prognostic manner. - We are applying similar detection and retrieval
approaches to the GOES imager and we are
developing more advanced algorithms for GOES-R. - Our goal is an automated combined LEO/GEO global
volcanic ash monitoring system that will be a
reliable tool for volcanic ash forecasters. - We welcome collaborations on all of these issues.