Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics

Model-simulated transport of atmospheric trace components can be combined with observed concentrations to obtain estimates of ground-based sources using various inversion techniques. These approaches have been applied in the past primarily to obtain source estimates for long-lived trace gases su...

Full description

Bibliographic Details
Main Authors: S. M. Burrows, P. J. Rayner, T. Butler, M. G. Lawrence
Format: Article
Language:English
Published: Copernicus Publications 2013-06-01
Series:Atmospheric Chemistry and Physics
Online Access:http://www.atmos-chem-phys.net/13/5473/2013/acp-13-5473-2013.pdf
id doaj-8317e015d0bc4d15b07deae0a2c56883
record_format Article
spelling doaj-8317e015d0bc4d15b07deae0a2c568832020-11-24T22:33:28ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242013-06-0113115473548810.5194/acp-13-5473-2013Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristicsS. M. BurrowsP. J. RaynerT. ButlerM. G. LawrenceModel-simulated transport of atmospheric trace components can be combined with observed concentrations to obtain estimates of ground-based sources using various inversion techniques. These approaches have been applied in the past primarily to obtain source estimates for long-lived trace gases such as CO<sub>2</sub>. We consider the application of similar techniques to source estimation for atmospheric aerosols, using as a case study the estimation of bacteria emissions from different ecosystem regions in the global atmospheric chemistry and climate model ECHAM5/MESSy-Atmospheric Chemistry (EMAC). <br><br> Source estimation via Markov Chain Monte Carlo is applied to a suite of sensitivity simulations, and the global mean emissions are estimated for the example problem of bacteria-containing aerosol particles. We present an analysis of the uncertainties in the global mean emissions, and a partitioning of the uncertainties that are attributable to particle size, activity as cloud condensation nuclei (CCN), the ice nucleation scavenging ratios for mixed-phase and cold clouds, and measurement error. <br><br> For this example, uncertainty due to CCN activity or to a 1 &mu;m error in particle size is typically between 10% and 40% of the uncertainty due to observation uncertainty, as measured by the 5–95th percentile range of the Monte Carlo ensemble. Uncertainty attributable to the ice nucleation scavenging ratio in mixed-phase clouds is as high as 10–20% of that attributable to observation uncertainty. Taken together, the four model parameters examined contribute about half as much to the uncertainty in the estimated emissions as do the observations. This was a surprisingly large contribution from model uncertainty in light of the substantial observation uncertainty, which ranges from 81–870% of the mean for each of ten ecosystems for this case study. The effects of these and other model parameters in contributing to the uncertainties in the transport of atmospheric aerosol particles should be treated explicitly and systematically in both forward and inverse modelling studies.http://www.atmos-chem-phys.net/13/5473/2013/acp-13-5473-2013.pdf
collection DOAJ
language English
format Article
sources DOAJ
author S. M. Burrows
P. J. Rayner
T. Butler
M. G. Lawrence
spellingShingle S. M. Burrows
P. J. Rayner
T. Butler
M. G. Lawrence
Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics
Atmospheric Chemistry and Physics
author_facet S. M. Burrows
P. J. Rayner
T. Butler
M. G. Lawrence
author_sort S. M. Burrows
title Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics
title_short Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics
title_full Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics
title_fullStr Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics
title_full_unstemmed Estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics
title_sort estimating bacteria emissions from inversion of atmospheric transport: sensitivity to modelled particle characteristics
publisher Copernicus Publications
series Atmospheric Chemistry and Physics
issn 1680-7316
1680-7324
publishDate 2013-06-01
description Model-simulated transport of atmospheric trace components can be combined with observed concentrations to obtain estimates of ground-based sources using various inversion techniques. These approaches have been applied in the past primarily to obtain source estimates for long-lived trace gases such as CO<sub>2</sub>. We consider the application of similar techniques to source estimation for atmospheric aerosols, using as a case study the estimation of bacteria emissions from different ecosystem regions in the global atmospheric chemistry and climate model ECHAM5/MESSy-Atmospheric Chemistry (EMAC). <br><br> Source estimation via Markov Chain Monte Carlo is applied to a suite of sensitivity simulations, and the global mean emissions are estimated for the example problem of bacteria-containing aerosol particles. We present an analysis of the uncertainties in the global mean emissions, and a partitioning of the uncertainties that are attributable to particle size, activity as cloud condensation nuclei (CCN), the ice nucleation scavenging ratios for mixed-phase and cold clouds, and measurement error. <br><br> For this example, uncertainty due to CCN activity or to a 1 &mu;m error in particle size is typically between 10% and 40% of the uncertainty due to observation uncertainty, as measured by the 5–95th percentile range of the Monte Carlo ensemble. Uncertainty attributable to the ice nucleation scavenging ratio in mixed-phase clouds is as high as 10–20% of that attributable to observation uncertainty. Taken together, the four model parameters examined contribute about half as much to the uncertainty in the estimated emissions as do the observations. This was a surprisingly large contribution from model uncertainty in light of the substantial observation uncertainty, which ranges from 81–870% of the mean for each of ten ecosystems for this case study. The effects of these and other model parameters in contributing to the uncertainties in the transport of atmospheric aerosol particles should be treated explicitly and systematically in both forward and inverse modelling studies.
url http://www.atmos-chem-phys.net/13/5473/2013/acp-13-5473-2013.pdf
work_keys_str_mv AT smburrows estimatingbacteriaemissionsfrominversionofatmospherictransportsensitivitytomodelledparticlecharacteristics
AT pjrayner estimatingbacteriaemissionsfrominversionofatmospherictransportsensitivitytomodelledparticlecharacteristics
AT tbutler estimatingbacteriaemissionsfrominversionofatmospherictransportsensitivitytomodelledparticlecharacteristics
AT mglawrence estimatingbacteriaemissionsfrominversionofatmospherictransportsensitivitytomodelledparticlecharacteristics
_version_ 1725730834365808640