Refining an ensemble of volcanic ash forecasts using satellite retrievals: Raikoke 2019
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Published:2022-05-10
Issue:9
Volume:22
Page:6115-6134
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ISSN:1680-7324
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Container-title:Atmospheric Chemistry and Physics
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language:en
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Short-container-title:Atmos. Chem. Phys.
Author:
Capponi AntonioORCID, Harvey Natalie J.ORCID, Dacre Helen F., Beven KeithORCID, Saint Cameron, Wells Cathie, James Mike R.ORCID
Abstract
Abstract. Volcanic ash advisories are produced by specialised forecasters
who combine several sources of observational data and volcanic ash
dispersion model outputs based on their subjective expertise. These
advisories are used by the aviation industry to make decisions about where
it is safe to fly. However, both observations and dispersion model
simulations are subject to various sources of uncertainties that are not
represented in operational forecasts. Quantification and communication of
these uncertainties are fundamental for making more informed decisions.
Here, we develop a data assimilation method that combines satellite
retrievals and volcanic ash transport and dispersion model (VATDM) output,
considering uncertainties in both data sources. The methodology is applied
to a case study of the 2019 Raikoke eruption. To represent uncertainty in
the VATDM output, 1000 simulations are performed by simultaneously
perturbing the eruption source parameters, meteorology, and internal model
parameters (known as the prior ensemble). The ensemble members are filtered,
based on their level of agreement with the ash column loading, and their
uncertainty, of the Himawari–8 satellite retrievals, to produce a
constrained posterior ensemble. For the Raikoke eruption, filtering the
ensemble skews the values of mass eruption rate towards the lower values
within the wider parameters ranges initially used in the prior ensemble
(mean reduces from 1 to 0.1 Tg h−1). Furthermore, including
satellite observations from subsequent times increasingly constrains the
posterior ensemble. These results suggest that the prior ensemble leads to
an overestimate of both the magnitude and uncertainty in ash column
loadings. Based on the prior ensemble, flight operations would have been
severely disrupted over the Pacific Ocean. Using the constrained posterior
ensemble, the regions where the risk is overestimated are reduced,
potentially resulting in fewer flight disruptions. The data assimilation
methodology developed in this paper is easily generalisable to other short
duration eruptions and to other VATDMs and retrievals of ash from other
satellites.
Funder
Natural Environment Research Council
Publisher
Copernicus GmbH
Subject
Atmospheric Science
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