Current capabilities and limitations of satellite monitoring and modeling forecasting of volcanic clouds: and example of Eyjafjallaj

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Current capabilities and limitations of satellite monitoring and modeling forecasting of volcanic clouds: and example of Eyjafjallaj fjallajökull eruption (pronounced EYE-a-fyat fyat-la-jo-kotl) N. Krotkov 1, K. Yang 1, S. Carn 2, A. Krueger 1, G. Vicente 3, E. Hughes 3, P. Colarko 6, G. Morris 4, C. Seftor 5, J. Joiner 6, R. Kahn 6, M. Pavolonis 7 1 Univ. Maryland, Baltimore County GEST (UMBC), 2 Michigan Tech. Univ. 3 NOAA, 4 Valparaiso Univ., 5 SSAI, 6 NASA Goddard, 7 NOAA and Univ. Wisconsin

90s: Volcanic ash (UV and IR) and SO 2 (UV) UV: SO2 IR: T11-T12µm UV: AI Thermal IR split window technique (BTD= T11 - T12 < 0 ) technique was developed to retrieve ash mass loading and particle sizes and applied to NOAA AVHRR satellites Pattern recognition techniques were applied Geostationary GOES data UV SO 2 and aerosol index AI retrievals were pioneered at NASA Goddard using the Total Ozone Mapping Spectrometer (TOMS) Geostationary VolCam was selected as a backup ESSP mission behind CloudSat and CALIPSO (not flown)

2010: NASA EOS assets for volcanic clouds studies OMI - SO 2, aerosols, BrO TES - SO 2, HCl MLS - strat. SO 2, HCl MISR ( Terra ) - ash height and opt.prop MODIS (Terra, Aqua) - SO 2, ash, sulfate AIRS - UTLS SO 2, aerosols, SO 2 profile? CALIPSO - cloud height, aerosol type

2010: NOAA IR algorithm for volcanic ash Ash Height Retrieved ash heights (white circles) Mass Loading Effective Radius Infrared effective absorption optical depth ratios are used to identify volcanic ash pixels (Pavolonis, 2010). Infrared measurements (11, 12, and 13.3 µm) and microphysical models of ash (andesite) are used to retrieve ash height, mass loading, and effective particle radius in an optimal estimation framework. While the volcanic ash detection and retrieval algorithm works best on SEVIRI, MODIS and GOES-R, it can be applied to GOES, MTSAT, FY2C, and AVHRR using a bi-spectral technique. Mike Pavolonis

4/15/2010, 12:00 UTC MSG/SEVIRI IR ash height NEW: OMI SO 2 height OMI operational: AI and SO 2

4/16/2010, 11:00 UTC

4/17/2010, 13:00 UTC ASH

4/19/2010, 13:00 UTC Terra MODIS image at 12:50 UTC. MISR-Derived Ash Plume Aerosol Amount & Properties

NOAA OMI volcanic near-real real-time (NRT) web site This application of NASA data was vision of Arlin Krueger Iceland and North Europe sectors added at 1:00 PM April 15

http://satepsanone.nesdis.noaa.gov/pub/omi/omiso2/iceland.html SO 2 Eyjafjallajokull volcano, May 5 OMI SO 2

http://satepsanone.nesdis.noaa.gov/pub/omi/omiso2/iceland.html OMI Field-of View blockage OMI Reflectivity

http://satepsanone.nesdis.noaa.gov/pub/omi/omiso2/iceland.html Aerosol Index (ash) Eyjafjallajokull volcano, May6 OMI AI

5/7/2010, 12:00 UTC 6 4 2 0 km MISR Stereo-Derived Ash Plume Heights

Parcel Modeling: volcanic source Goddard Kinematic Trajectory Model [Mark Schoeberl ] Clusters of parcels emitted at volcano location Injections from 1.5-10 km on April 14 QuickTime and a decompressor are needed to see this picture. Injections from 1.5-2.5 km on April 15 Colors indicate parcel altitude KTM simulation courtesy of Gary Morris, Valparaiso Uni

Parcel Modeling: height PUFF model drives clusters of parcels with NOAA GFS winds estimation April 15 OMI AI PUFF MODEL Plume base height of 2 km better matches trailing Western edge 2 km Plume base height of 9 km better matches leading Eastern edge Conclusion: Early eruption Although at these 8-10 parcel km followed models are by useful low to altitude understand ash emissions plume structure, they cannot provide much quantitative information. 9 km Puff Simulation courtesy of Eric Hughes, ESSIC/ NOAA

Model Mass concentration Initialization Spatial extent Plume injection height Particle size distribution Composition (e.g. ash vs. sulfate) Meteorology MISR visible image (courtesy of NASA Earth Observatory Web Site)

Ash modeling with GEOS-5 Goddard Earth Observing System global climate model and data assimilation system. Ash uses a dust-like particle size distribution QuickTime and a H.264 decompressor are needed to see this picture. SO 2 and Ash emissions are: - 10 on April 14-1 on subsequent days simulation courtesy of Peter Colarko Injection height: - 1.5-10 km on April 14-1.5-5 km on subsequent days

April 15 MODIS Aqua AOT OMI Aerosol Index Simulated ash not in OMI observations. Wrong injection height?

April 16 MODIS Aqua True Color OMI Aerosol Index Coincidence of narrow ash band. Obscured by clouds in MODIS, but clearly evident in OMI AI.

Road Forward Models need ingesting satellite data operationally in real time Refine ash module in models Measure ash samples for refractive index (UV to IR), size and shape distributions Use backward trajectories to estimate heights of volcanic clouds and develop satellite techniques for direct ash/so2 height measurements Realtime: would need short turnaround of satellite obs of height, location, and amount of material

Going Forward: OMI direct broadcast of SO 2 and AI via Finnish Meteorol.. Inst. Very Fast Delivery system Sodankylä satellite downlink station receives OMI Direct Broadcast data Fast processing:15 min. for O 3 and UV products High latitude site: ~3-5 orbits/day Action Items: Add SO 2 and AI to distribution Push for release of software to process data at other sites http://omivfd.fmi.fi Sodankylä