Abstract

Abstract. A parameterization for secondary organic aerosol (SOA) production based on the volatility basis set (VBS) approach has been coupled with microphysics and radiative schemes in the Weather Research and Forecasting model with Chemistry (WRF-Chem) model. The new chemistry option called "RACM-MADE-VBS-AQCHEM" was evaluated on a cloud resolving scale against ground-based and aircraft measurements collected during the IMPACT-EUCAARI (Intensive Cloud Aerosol Measurement Campaign – European Integrated project on Aerosol Cloud Climate and Air quality interaction) campaign, and complemented with satellite data from MODIS. The day-to-day variability and the diurnal cycle of ozone (O3) and nitrogen oxides (NOx) at the surface are captured by the model. Surface aerosol mass concentrations of sulfate (SO4), nitrate (NO3), ammonium (NH4), and organic matter (OM) are simulated with correlations larger than 0.55. WRF-Chem captures the vertical profile of the aerosol mass concentration in both the planetary boundary layer (PBL) and free troposphere (FT) as a function of the synoptic condition, but the model does not capture the full range of the measured concentrations. Predicted OM concentration is at the lower end of the observed mass concentrations. The bias may be attributable to the missing aqueous chemistry processes of organic compounds and to uncertainties in meteorological fields. A key role could be played by assumptions on the VBS approach such as the SOA formation pathways, oxidation rate, and dry deposition velocity of organic condensable vapours. Another source of error in simulating SOA is the uncertainties in the anthropogenic emissions of primary organic carbon. Aerosol particle number concentration (condensation nuclei, CN) is overestimated by a factor of 1.4 and 1.7 within the PBL and FT, respectively. Model bias is most likely attributable to the uncertainties of primary particle emissions (mostly in the PBL) and to the nucleation rate. Simulated cloud condensation nuclei (CCN) are also overestimated, but the bias is more contained with respect to that of CN. The CCN efficiency, which is a characterization of the ability of aerosol particles to nucleate cloud droplets, is underestimated by a factor of 1.5 and 3.8 in the PBL and FT, respectively. The comparison with MODIS data shows that the model overestimates the aerosol optical thickness (AOT). The domain averages (for 1 day) are 0.38 ± 0.12 and 0.42 ± 0.10 for MODIS and WRF-Chem data, respectively. The droplet effective radius (Re) in liquid-phase clouds is underestimated by a factor of 1.5; the cloud liquid water path (LWP) is overestimated by a factor of 1.1–1.6. The consequence is the overestimation of average liquid cloud optical thickness (COT) from a few percent up to 42 %. The predicted cloud water path (CWP) in all phases displays a bias in the range +41–80 %, whereas the bias of COT is about 15 %. In sensitivity tests where we excluded SOA, the skills of the model in reproducing the observed patterns and average values of the microphysical and optical properties of liquid and all phase clouds decreases. Moreover, the run without SOA (NOSOA) shows convective clouds with an enhanced content of liquid and frozen hydrometers, and stronger updrafts and downdrafts. Considering that the previous version of WRF-Chem coupled with a modal aerosol module predicted very low SOA content (secondary organic aerosol model (SORGAM) mechanism) the new proposed option may lead to a better characterization of aerosol–cloud feedbacks.

Highlights

  • It is well recognized that aerosol particles have a fundamental role in the climate system

  • On the basis of these argumentations and the correlation between predicted and observed condensation nuclei (CN) being larger in the free troposphere (FT) than in planetary boundary layer (PBL), we may speculate that the errors in the cloud condensation nuclei (CCN) prediction arise mainly from the uncertainties in the primary emissions of the aerosol particles and in their distribution in the log-normal modes

  • Secondary organic aerosol particles play an important role in aerosol–cloud–radiation interaction because they contribute to the global budget of radiation and cloud condensation nuclei (CCN)

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Summary

Introduction

It is well recognized that aerosol particles have a fundamental role in the climate system. In this work we present and evaluate some developments of WRF-Chem for a better simulation of direct and indirect aerosol feedback. Recent studies conducted with global models, predict an important contribution of secondary organic aerosol (SOA) to direct and indirect aerosol feedback. Scott et al (2014) find that BSOA contributes 4–21 % to the global annual mean of CCN and 2–5 % to global mean of cloud droplet concentration They attribute BSOA to a global mean indirect radiative forcing that ranges from −0.77 to +0.01 W m−2. 2 of this work, we describe the developments of WRF-Chem code carried out in order to simulate the direct and indirect effects with the new SOA parameterization (based on the volatility basis set, VBS, approach) recently implemented in the model by Ahmadov et al (2012).

Description and upgrade
Model configuration
Emissions
Measurements
Ground-based measurements
Aircraft measurements
Satellite measurements
Model evaluation
Meteorology
Surface gas phase and aerosol mass
Aloft aerosol mass concentration
Aloft aerosol particles
Comparison with MODIS data
Impact of SOA particles on cloud prediction
Summary and conclusions
What is the impact of SOA particles on cloud development?
Findings
Code availability
Full Text
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