AErosol model RObustness and Sensitivity study for improved climate and air quality prediction (AEROS)

Lead Research Organisation: University of Leeds
Department Name: School of Earth and Environment

Abstract

AEROS is a collaboration of the University of Leeds, Oxford University, the UK Met Office and EMEP to comprehensively assess the performance, quantify the uncertainties and develop strategies for improvements of the latest generation of global aerosol models. Aerosols have an important but very uncertain impact on climate (IPCC, 2007). The uncertainty derives primarily from inter-model differences, the necessary simplification of aerosol processes for computational cost reasons, and uncertainties in the observations used for model evaluation. Complex 'next generation' aerosol microphysics schemes have recently been developed for several climate models that are intended to enhance model realism and improve the reliability of predictions. The models resolve particle sizes and various chemical components, and use a full microphysics scheme including nucleation, coagulation, size-resolved deposition, cloud processing, etc. The development of such advanced aerosol models creates new and substantial challenges that this proposal aims to address. Firstly, the computational demands of complex aerosol models mean that techniques of uncertainty analysis have not been routinely used, so we have very little information to guide model improvement (uncertainty importance of model factors, relative importance of structural versus parameter uncertainty, etc). We will use sensitivity and uncertainty analysis techniques to identify the most important model improvements required. Secondly, because aerosol models already consume a large fraction of climate model run-time, it is vital to assess the level of model complexity objectively so as to prioritise and optimise future development. Previous model assessments have not answered the question of whether models are more or less complex than required or where development effort should be invested. An important aspect of this proposal is the quantification of model explanatory power versus complexity, which may be scale-dependent. The benefits of finding an appropriate level of complexity in an already expensive part of the model will be enormous: more and longer model runs, more climate sensitivity tests, etc. Thirdly, more complex models require evaluation against equally information-rich datasets. But most microphysical quantitites (such as particle number, size-resolved composition, etc) can only be measured with fairly localised in situ techniques from aircraft and from ground stations. The sparse measurements restrict many aspects of model evaluation to case studies rather than long-term average measurements used in previous evaluations such as AeroCom. So the present generation of aerosol models have been evaluated against a tiny fraction of available microphysics observations. In this project we aim to overcome this problem by exploiting observations from the EUCAARI and EMEP intensive campaigns conducted in May 2008. By synthesising intensive observations we will aim for consistency among predicted quantities and avoid the problem of compensating model factors that arises when single datasets are used. The AeroCom international aerosol intercomparison project has been very successful in documenting the state-of-the-art of the simulated aerosol. It has assembled observations and results from the majority of global aerosol models to assess our understanding of global aerosol effects. However, the difficulty of establishing comparable diagnostics across a wide range of models has made it difficult to attribute differences in the results to specific processes. Our approach will assess the models at the processes level and evaluate their performance against microphysics observations for the first time. The overall outcome of this proposal will be improvement in predictions of aerosol properties, variability and spatial distribution that are fundamental requirements for accurate prediction of aerosol climate and air quality effects.

Publications

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Description I do not use animals
I still do not use animals.
Please change the reporting system so that this doesn't have to be entered for every project (mandatory or not) every year. We have repeatedly passed on recomenndations for improving the efficiency of inputting data, but they have been ignored. Maybe someone will read this.

We have quantified a major cause of uncertainty in global aerosol-cloud radiative forcing. We showed that natural aerosols contribute about 40% of the uncertainty in the forcing since pre-industrial times.
We have quantified the factors that cause uncertainty in regional aerosol-cloud radiative forcing, which is important for understanding regional climate change.
We have determined where on the planet it is possible to observe unperturbed (pre-industrial-like) aerosol environments, so that measurements can be used to constrain uncertainty in models.
Exploitation Route We have developed methodologies of statistical emulation that enable model uncertainty to be comprehensively sampled so that full uncertainty distributions can be quantified. These techniques have been taken up by others in the UK (Lancaster-led NERC project) and in the US.
Sectors Environment

 
Description Since our feedback seems to have no effect, I will write it here. Please change the reporting system so that projects without changes can be handled all together on one page using radio buttons, thanks.
First Year Of Impact 2000
 
Title Data used to create figures in the ACP Letters manuscipt "The value of remote marine aerosol measurements for constraining radiative forcing uncertainty" by Regayre et al. (2020) 
Description This dataset was created from perturbed parameter ensembles (PPEs) using the HadGEM-UKCA atmospheric composition climate model. All data needed to reproduce figures in the Regayre et al. (2020) ACP Letters article "The value of remote marine aerosol measurements for constraining radiative forcing uncertainty" are included. Other output from the PPEs can be obtained by contacting the lead author. The following data are included here: CCN measurement data degraded to match the model-measurement comparison resolution. Unconstrained and constrained CCN 0.2 output from the PPE used to make Figure 1. These compressed files contain 48 .dat files. Each .dat file contains the PPE mean, variance and 95% creidble interval data. Files are named consecutively, containing data from 90 oS to 90 oN at 0 oE, then continuing Eastward. When combined, these files provide data for each latitude/longitude pair at the N48 spatial resolution. A zip file of an netcdf file containing 26-dimensional data for parameter values, used to create the sample of 1 million model variants from our statistical emulators of model output. A zip file containing a folder of files made of one million ones and zeros that indicate the retention/rejection criteria from applying our constraint methodology for various constraint combination scenarios, for each model variant. A value of 1 indicates the model variant was retained. Data in these files is in the same order as the unconstrained sample file of parameter values. Compressed files containing global, annual mean RF aci and ERF aci values for the unconstrained set of one million model variants. The compressed netcdf files contain RF (ERF), RF aci (ERF aci) and RF ari (ERF ari) values. 
Type Of Material Database/Collection of data 
Year Produced 2020 
Provided To Others? Yes  
URL https://zenodo.org/record/3988476
 
Title Data used to create figures in the ACP Letters manuscipt "The value of remote marine aerosol measurements for constraining radiative forcing uncertainty" by Regayre et al. (2020) 
Description This dataset was created from perturbed parameter ensembles (PPEs) using the HadGEM-UKCA atmospheric composition climate model. All data needed to reproduce figures in the Regayre et al. (2020) ACP Letters article "The value of remote marine aerosol measurements for constraining radiative forcing uncertainty" are included. Other output from the PPEs can be obtained by contacting the lead author. The following data are included here: CCN measurement data degraded to match the model-measurement comparison resolution. Unconstrained and constrained CCN 0.2 output from the PPE used to make Figure 1. These compressed files contain 48 .dat files. Each .dat file contains the PPE mean, variance and 95% creidble interval data. Files are named consecutively, containing data from 90 oS to 90 oN at 0 oE, then continuing Eastward. When combined, these files provide data for each latitude/longitude pair at the N48 spatial resolution. A zip file of an netcdf file containing 26-dimensional data for parameter values, used to create the sample of 1 million model variants from our statistical emulators of model output. A zip file containing a folder of files made of one million ones and zeros that indicate the retention/rejection criteria from applying our constraint methodology for various constraint combination scenarios, for each model variant. A value of 1 indicates the model variant was retained. Data in these files is in the same order as the unconstrained sample file of parameter values. Compressed files containing global, annual mean RF aci and ERF aci values for the unconstrained set of one million model variants. The compressed netcdf files contain RF (ERF), RF aci (ERF aci) and RF ari (ERF ari) values. 
Type Of Material Database/Collection of data 
Year Produced 2020 
Provided To Others? Yes  
URL https://zenodo.org/record/3988475
 
Title Statistical model emulators 
Description We have developed code to produce emulators of model output. 
Type Of Material Computer model/algorithm 
Year Produced 2015 
Provided To Others? Yes  
Impact The emulators have been applied by other groups to tackle problems outside the original focus of our work. Examples of other research facilitated: 1) NOAA ESRL analysis of cloud physics models; 2) Colorado State University analysis of meteorology of land-sea breezes; 3) University of Leeds analysis of volcanic eruption effects on climate.