Hindcast experiments of tropospheric composition during the summer 2010 fires over western Russia
The severe wildfires in western Russia during July–August 2010 coincided with a strong heat wave and led to large emissions of aerosols and trace gases such as carbon monoxide (CO), hydrocarbons and nitrogen oxides into the troposphere. This extreme event is used to evaluate the ability of the global MACC (Monitoring Atmospheric Composition and Climate) atmospheric composition forecasting system to provide analyses of large-scale pollution episodes and to test the respective influence of a priori emission information and data assimilation on the results. Daily 4-day hindcasts were conducted using assimilated aerosol optical depth (AOD), CO, nitrogen dioxide (NO 2) and ozone (O 3) data from a range of satellite instruments. Daily fire emissions were used from the Global Fire Assimilation System (GFAS) version 1.0, derived from satellite fire radiative power retrievals. The impact of accurate wildfire emissions is dominant on the composition in the boundary layer, whereas the assimi-lation system influences concentrations throughout the tro-posphere, reflecting the vertical sensitivity of the satellite instruments. The application of the daily fire emissions re-duces the area-average mean bias by 63 % (for CO), 60 % (O 3) and 75 % (NO 2) during the first 24 h with respect to independent satellite observations, compared to a reference simulation with a multi-annual mean climatology of biomass burning emissions. When initial tracer concentrations are fur-ther constrained by data assimilation, biases are reduced by 87, 67 and 90 %. The forecast accuracy, quantified by the mean bias up to 96 h lead time, was best for all compounds when using both the GFAS emissions and assimilation. The model simulations suggest an indirect positive impact of O 3 and CO assimilation on hindcasts of NO 2 via changes in the oxidizing capacity. However, the quality of local hindcasts was strongly de-pendent on the assumptions made for forecasted fire emis-sions. This was well visible from a relatively poor forecast accuracy quantified by the root mean square error, as well as the temporal correlation with respect to ground-based CO total column data and AOD. This calls for a more advanced method to forecast fire emissions than the currently adopted persistency approach. The combined analysis of fire radiative power observa-tions, multiple trace gas and aerosol satellite observations, as provided by the MACC system, results in a detailed quanti-tative description of the impact of major fires on atmospheric composition, and demonstrate the capabilities for the real-time analysis and forecasts of large-scale fire events.