Abstract
The sensitivity of air quality model responses to modifications in input data (e.g. emissions, meteorology and boundary conditions) or model configurations is recognized as an important issue for air quality modelling applications in support of air quality plans. In the framework of FAIRMODE (Forum of Air Quality Modelling in Europe, https://fairmode.jrc.ec.europa.eu/) a dedicated air quality modelling exercise has been designed to address this issue. The main goal was to evaluate the magnitude and variability of air quality model responses when studying emission scenarios/projections by assessing the changes of model output in response to emission changes. This work is based on several air quality models that are used to support model users and developers, and, consequently, policy makers. We present the FAIRMODE exercise and the participating models, and provide an analysis of the variability of O3 and PM concentrations due to emission reduction scenarios. The key novel feature, in comparison with other exercises, is that emission reduction strategies in the present work are applied and evaluated at urban scale over a large number of cities using new indicators such as the absolute potential, the relative potential and the absolute potency. The results show that there is a larger variability of concentration changes between models, when the emission reduction scenarios are applied, than for their respective baseline absolute concentrations. For ozone, the variability between models of absolute baseline concentrations is below 10%, while the variability of concentration changes (when emissions are similarly perturbed) exceeds, in some instances 100% or higher during episodes. Combined emission reductions are usually more efficient than the sum of single precursor emission reductions both for O3 and PM. In particular for ozone, model responses, in terms of linearity and additivity, show a clear impact of non-linear chemistry processes. This analysis gives an insight into the impact of model’ sensitivity to emission reductions that may be considered when designing air quality plans and paves the way of more in-depth analysis to disentangle the role of emissions from model formulation for present and future air quality assessments.
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Introduction
Improving air quality is not only beneficial for human health, but it also reduces our impact on climate change (EEA 2020; Feng and Fang 2022). Therefore, actions to reduce air pollutant emissions can have multiple benefits. Air quality models, such as chemistry transport models (CTM), are valuable tools for the assessment of the impact of emission reduction strategies and forecasting of pollutant concentrations. Since models are being progressively used for policy support, such as in the frame of the Air Convention or the Ambient Air Quality Directive (EU 2008), model performance and response sensitivity assessment have become an increasingly important issue.
Although many studies tackle the impact of chemical and physical processes, initial and boundary conditions, or emissions on absolute concentrations or trends (Curci 2012; de Meij et al. 2009; Dufour et al. 2021; Huang et al. 2020; Huertas et al. 2021; Khan and Kumar 2019; Li et al. 2021; Pernigotti et al. 2012; Thunis et al. 2021b; Vuolo et al. 2009; Yan et al. 2021), dedicated exercises to evaluate the variability of model responses (concentration changes) to local emission modifications are not common. It is however a key element to ensure robust policymaking, since absolute or relative concentration changes are commonly used to estimate or evaluate the efficiency of air quality plans, particularly in the frame of integrated assessment tools (Viaene et al. 2016).
Long-term modelling exercises such as EURODELTA (Bessagnet et al. 2016; Ciarelli et al. 2019; Colette et al. 2017; Mircea et al. 2019; Thunis et al. 2010; Vivanco et al. 2017), AQMEII (Im et al. 2018; Liu et al. 2018; Solazzo et al. 2012, 2013) and CityDelta (Cuvelier et al. 2007; Thunis et al. 2007; Vautard et al. 2007) were designed to evaluate and intercompare model responses to emission changes. With the exception of Citydelta, these exercises mostly focused on continental and regional model responses.
FAIRMODE is the Forum of Air Quality Modelling in Europe aiming at bringing together air quality modellers and users in order to promote and support the harmonized use of models (Miglietta et al. 2012; Monteiro et al. 2018; Kushta et al. 2019; Pisoni et al. 2019), with emphasis on model application under the European Air Quality Directive. In the context of FAIRMODE, a dedicated intercomparison exercise has been formulated to assess the sensitivity of model responses to emission changes, with the view of assessing and understanding the main causes of discrepancies between models.
The current work refers to an intercomparison platform, rather than an intercomparison exercise, to reflect the fact that the activity is continuous, in contrast to intercomparison exercises previously cited, that took place over a defined period of time. At the current stage of this long-term programme, the goal of this paper is not to provide an in-depth analysis, but rather accentuate the diversity of model responses and identify what processes could be potential drivers of this variability. The objective of this paper is twofold: (i) present the FAIRMODE platform and models involved as a community initiative, and (ii) evaluate the amplitude of the model responses for O3 and PM concentrations, two pollutants that are formed or partially formed in the atmosphere, respectively.
Design of the intercomparison platform
Overall framework and setup
The focus of this benchmarking platform is on the urban and regional (i.e. sub-national) scales. The setup considers a range of European cities (mostly EU capitals) plus a few larger regions with high levels of pollution. The proposed geographical distribution ensures adequate coverage of Europe to take into account the diversity of atmospheric conditions, meteorological particularities and emissions. Theoretical emission changes are applied on the entire urban (i.e. the large functional urban area as defined by the OECD (OECD 2012) or regional area (e.g. the administrative region). Note that, as initially designed, the platform is well suited to modelling systems from regional to urban scales (i.e. it does not address fine scale traffic site environments or industrial hot spots). By “modelling system”, we refer here to the system composed by the air quality model itself (configured with chemical/aerosol schemes, transport and dispersion algorithms, models for natural emissions of gas and aerosol, etc.) and its associated input data (anthropogenic emissions, meteorology, initial and boundary conditions, etc.) at all relevant spatial scales. By “responses to emission changes”, we mean the concentration change (or delta) resulting from a given reduction of emissions from anthropogenic activities.
Both short-term (ST) episodes and long-term (LT) simulations are considered. Given their limited CPU demand, ST episodes allow users to perform simulations for a larger number of scenarios focusing on mechanisms and processes that favour such conditions. Assessment of ST episodes also provides information on specific timeframes with threshold exceedances or unusually high concentrations, while LT simulations do not address as they focus on long-term consistency and benefits as well as on air quality indicators. In ST cases, a large number of cities can also be considered in a single simulation as city interactions are less likely to occur over a limited episode than over longer time periods. In addition, episodes are easier to analyze and interpret than yearly averages that sometimes include “compensation”’ processes. On the other hand, episodes generally lead to weaker signals, which might hinder the analysis whereas yearly average concentrations are the most relevant output in the context of the Ambient Air Quality Directives (EU 2008).
For ST episodes, both winter (mostly for particulate matter (PM)) and summer (mostly for ozone (O3)) episodes were selected. Each episode covers a few days and has been selected based on the CAMS (Copernicus Atmospheric Monitoring Service) reports and observational data from the EEA (European Environmental Agency) air quality e-reporting (AIRBASE 2022).For LT simulations, emission reductions are applied to cities that are far away from each other to avoid reductions applied over one city or region influencing the background levels in another city/region.
As shown in Fig. 1, most cities are EU capitals and two large regions over the North of Italy (Po Valley) and the south of Poland (Malopolska) are selected to extend the analysis to important regional hot spots in Europe. The focus is on the analysis of ground level PM10, PM2.5, O3 and NO2 concentrations. Other species, such as HNO3, NH3, HCHO, H2O2, SO2, PM speciation and deposited compounds are also stored for ST episodes to support the analysis but are not a focus of the present study.
To evaluate the diversity of responses in real policy support situations, each modelling group used its own setup and input data (emissions, boundary conditions, meteorology, etc.). Moreover, constraining the sources of meteorological data in such an exercise is not fully relevant because CTM models not online coupled to meteorology often recalculate key variables such as the planetary boundary layer, the vertical eddy diffusion or the vertical wind speed to keep mass conservation, with their own parameterisations. The only constraints are (i) to simulate the same meteorological year 2015 and (ii) to apply fixed emission reductions over the same spatial area (“target domain”) as defined in Fig. 1. Table 10 in Appendix 1 gives the exact locations. Throughout the paper, “pollutant” refers to species produced or emitted in the atmosphere while “precursor” refers to emitted species which can lead to a new pollutant. For instance, O3 and PM10 are considered pollutants while NOx and VOCs are precursors. The “delta” terminology refers to the differences between a scenario and the base case concentrations.
Selected scenarios
This intercomparison considered two idealized emission scenarios: emissions are reduced by 25% and 50% for two groups of pollutants depending on whether the pollutant targeted for reduction is PM or O3. These reduction rates are in line with usual expected emission reductions able to have a substantial impact on concentrations. The use of these two emission reduction ranges allows for the investigation of the linearity of the respective emission reduction. For PM ST and LT simulations, PPM, NOx, SOx, NH3 and VOC precursor emissions are reduced, while for O3 ST simulations, only reductions of NOx and VOC precursors are considered. For ST simulations, emission reductions start at 00:00 UTC the first day and end at 23:00 UTC the last day, while for long-term simulations emission reductions are applied over the entire year. An additional scenario both for LT and ST analyses is performed by reducing all precursors simultaneously, ALL consisting of PPM, NOx, SOx, NH3 and VOC for PM simulations, and ALL referring to NOx and VOC for ST ozone simulations. This simulation is used to analyze the “additivity” of the effect of emission reductions.
The selection criteria for episodes favour periods that cover several regions and cities at the same time. In terms of air quality, 2015 experienced the highest maximum daily 8-h mean concentrations of O3 of the last 5 years in Central Europe (EEA 2015). This year was also characterized by elevated PM10 annual mean concentrations, and a series of large-scale pollution events affected European air quality throughout the year. For instance, a significant PM10 pollution event took place from 12 to 20th February, affecting most areas in Europe. As shown in Bessagnet et al. (2016), emissions from residential heating, including wood and coal combustion, dominate the PM10 pollution levels during winter or early spring episodes. The locations or areas selected per each category of simulations (LT/ST) and pollutant (PM and O3) are summarized in Table 1 (LT), Table 2 (ST/PM) and Table 3 (ST/O3) along the exact time-window of simulations for the episodes studied.
Modelling systems
The models involved in this initiative, as well as the versions of each model, are listed in Table 4. As previously mentioned, the modelling teams used their own input data and usual model configuration for their local, national or regional applications.
For the simulation of selected episodes, a spin-up period of several days before each episode was performed by all models. For a given model, the initial conditions (meteorology and chemistry) of short-term episodes are the same for the base case and all scenarios. The models simulate an emission reduction over the target domain defined in Table 10 of Appendix 1. However, each model can simulate concentrations over a larger domain encompassing the target domain with an appropriate resolution of at least 0.1°. They can also use a cascade of nested grids to reach the highest resolution align with specific configuration needs of the respective modelling system. Table 5 summarizes the main characteristics of the modelling systems and shows the diversity of model configurations.
Most models are offline, i.e. chemical species, and, particularly, aerosols do not interact with meteorology through the radiative budget. Only WRF-Chem users have activated the default online option which enables the interaction between aerosols, radiation and clouds through the coupling of chemistry with meteorology in realistic synoptic conditions. The consequence of an activated online coupling is a change of meteorology when emissions and resulting concentrations are modified. This could induce an additional impact on the concentration change according to Cholakian et al. (2023) and highlighted over Europe and Asia in recent works (Bessagnet et al. 2020; Zhou et al. 2018). This effect would be amplified by the fact 4D nudging of large-scale meteorological fields are not activated in any WRF-Chem configuration allowing the local physics to be further modified due to the radiative forcings. Moreover, in some cases, modelling teams in FAIRMODE using CHIMERE or WRF-Chem have delivered results at different spatial resolutions over Paris, Madrid and Athens introducing also grid spacing effects to our results. In Appendix 2, a complete description of the model configurations is provided and in Supplementary material A, the list of models available for a given city/region is provided.
Definition of indicators
Several indicators, specifically developed for analyzing modelled concentrations changes in response to emission changes, are selected for the analysis of the results (Thunis et al. 2015; Thunis and Clappier 2014). They include the absolute and relative potential and absolute potency. These indicators are the most suitable for an analysis of potential emissions thanks to a scaling with the reduction intensity and the quantity of reduced emissions, respectively.
The absolute potential (APL) is defined as the difference of concentrations C between a scenario and a base case normalized by the percentage \(\alpha\) of the emission reduction \(APL=\Delta C/\alpha\). The relative potential (RPL) is a normalization of the APL by the concentration Cbc of the base case: \(RPL=\Delta C/\alpha {C}_{bc}\). The absolute potency APY is the difference of concentrations C between a scenario and a base case normalized by the precursor emission reduction E that has been applied \(APY=\Delta C/\alpha E\).
Mean values and average concentrations above the 95th percentile concentration computed over simulated areas (Fig. 1) were used in the analyses. These indicators can be either negative or positive showing a decrease or an increase of concentrations, respectively.
An additional innovative indicator of variability (VAR) has been defined to obtain a measurable quantity summarizing in an objective way the huge amount of data. It is based on the normal standard deviation of indicators, not only the APL and APY, but it includes also the base case emissions and concentrations for the various model applications. A detailed description of these indicators and explanation of how they are calculated for different domains and scenarios is provided in Appendix 3.
Results and discussion
The variability of individual model performances is provided in supplementary material A and C, for reference, while here are shown the main outcomes of the model responses’ intercomparison. Model application performances have been evaluated using available background urban, periurban and rural observations (AIRBASE 2022) for the main pollutants either for LT or ST simulations. The bias, root mean square error (RMSE) and Pearson’s spatiotemporal correlation are used for the evaluation. The evaluation was performed over a common set of stations over each simulation domain.
Regarding the model responses, the results presented hereafter are a summary of the analysis of model outputs in the exercise database, for O3 and PM10 concentrations with respect to emission changes. To support this first snapshot analysis, a complete report of more than 240 figures is provided in supplementary material B in a single document listing the captions of these figures referred as Figure SXXX here. Later in the sections, we refer to few of these figures when needed. The following sections summarize the key findings. A fixed colour code is attributed to each model application. The variability of model responses is examined in terms of amplitude and sign of the concentration changes. Model responses are evaluated over the target domain only (where emission reductions are applied) because it is the common area of all modelling applications.
Models’ responses to emission changes: ozone
For LT simulations, the modelled base case O3 mean concentrations are in the range of 60 to 80 µg m−3 (Figure S9). For the ST simulations, concentrations above the 95th percentile range from 80 up to 120 µg m−3 (Figure S18), since the episodes occurred in summer when O3 concentrations are generally higher.
Focusing on the ST simulations, reducing all precursor emissions at the same time (VOC and NOx) leads, for all models, to a slight increase in O3 mean concentrations except for large regions like the Po Valley. Looking at individual reductions (NOx and VOC separately), large regions like Po Valley encompassing rural areas depict an overall decrease of O3 concentrations, on average (Fig. 2 and Figure S35). In the city of Vienna, the model responses (Figure S13) can have opposite signs depending on model configurations with WRFZAMG simulating a slight decrease and EMEP a slight increase of O3 concentrations when emission of NOx and VOC are reduced at the same time. Reducing only VOC emissions (Figure S56 and S57) lead as expected to a general reduction of O3 concentrations. WRFNKUA configurations show a slight increase of ozone concentrations which is impossible to explain directly by chemical processes. However, the WRF-Chem model is an online coupled system, integrating chemical and meteorological processes and their interactions. Thus, there is direct and indirect feedback between the pollutant concentrations and meteorological processes and vice versa. These effects, that cannot be separately quantified, are potentially enough to change the sign of the responses. The largest variability occurs for NOx emission reductions (Figure S35) highlighting the importance of the simulated chemical regime that can differ between cities and models. Over urbanized areas, most models simulate an increase of mean ozone during episodes when applying a combined NOx-VOC emission reduction of 50%. This is explained by the stronger role of NOx in VOC-limited areas where VOC/NOx ratios are the lowest. The classical isopleth diagram depicted in Carter et al. (1982), Dodge (1977) and Oke et al. (2017) shows how NOx emission reductions can provide mixed outcomes depending on the chemical regimes, NOx or VOC limited. Here, we consider average concentrations; however, as shown in Vivanco et al. (2021), the reduction in NOx emissions could lead to opposing effects, depending on the metric considered (SOMO35, AOT40, daily maximum, annual values), that can be more or less influenced by night-time and/or diurnal conditions.
However, over the full year (LT simulation), the mean ozone concentrations increase while the average values exceeding the 95th percentiles decrease over the Po Valley (figures S5-S6) if we consider a reduction of both NOx and VOC emissions. These NOx/VOC responses applied in large regions are in line with recent studies in Europe (Clappier et al. 2021) and China (Mao et al. 2022) over the Yangtze River Delta Region as well as with (Du et al. 2021) in the central plain in China during the COVID-19 pandemic. As expected, a rather different picture of model responses between rural and urban areas is shown in Fig. 2 for the MINNI results, showing a reduction of mean ozone in both areas when applying VOC emission reductions, and an increase of concentrations over urbanized areas when only NOx emissions are reduced.
As shown in Fig. 3, for the ST episodes, the reduction of all precursors by 50% leads to different responses in the different locations with varying magnitudes of responses depending on the modelling system. For all models, the lowest absolute potential is displayed for the Warsaw case when reducing all precursors by 50%. The other indicators, relative potential and absolute potency, respond in the same way (Fig. 3). The CHIMERE model applied in Paris and Madrid with different resolutions (light blue, purple and dark blue bars) does not display a large variability in terms of model responses for the relative and absolute potentials for O3. Over Athens however, the grid spacing of the model configuration seems to affect the model response to the specific emission reduction case. The median value of the relative potential and absolute potency of NOx and VOC emission reductions is reported in Table 6 showing the opposing effects on O3 concentrations with higher impacts on long-term simulations (LT). The order of magnitude in absolute value of the potency is larger for a NOx emission reduction compared with a VOC emission reduction.
Models’ responses to emission changes: PM10
Applying precursor emission reductions generally leads to a decrease of PM10 concentrations with an absolute potential reduction of − 1 to − 11 µg m−3 if a reduction is applied to ALL precursors together (Fig. 4) during the episodes. Again, the model responses can be very different. For instance, EMEPE and EMEPG have values of − 5 and − 11 µg m−3, respectively, with the same modelling setup but with different emissions, the corresponding relative potentials being approximatively − 33% and − 50% respectively. Looking at individual precursor reductions, NOx is the emission reduction that displays very different effects between models and cities/regions. For a NOx emission reduction in AMS012, an increase of concentration is observed for all models while for MAD021, CHIMCIE01M and EMEPG there are contrasting responses. PAR014 and VIE019 have the highest NOx potencies (Figure S118). For the VOC emission reduction, only WRFZAMG in VIE019 estimates a slight increase of PM10 concentrations (Figure S186). These counter-intuitive effects can be explained by non-linear processes in the chemistry schemes as explained in Clappier et al. (2021) and Thunis et al. (2021a). The highest response to a VOC emission reduction is observed for PAR014 but it remains below − 1% in terms of relative potential. For all case studies, the main impact driver is the reduction of PPM with a relative potential in the range − 6 to − 60% depending on the model and city.
Using the CHIMERE model in the CHIMLMD configuration, between a resolution of 9km and 3 km for PM10, a difference in the absolute potential for all emission reduction together is observed for the PM10 episode over Paris from − 7 to − 6 µg m−3 (Fig. 4). If we focus on PPM emission reductions, the impact drops between − 3.5 and − 3 µg m−3 (Figure S142) showing that the resolution affects species involved in non-linear and linear processes. It is noteworthy that CHIMERE in the different setup of CHIMECIE does not display any differences in emission reductions for the various horizontal resolutions. The impact of the resolution requires a dedicated study to understand this finding. However, it should be borne in mind that the resolution has an impact not only on the resolution of chemical and physical schemes but also on the meteorological fields. Thus, averaging, interpolating or summing meteorological variables over a nested domain onto the corresponding mother domain will not be equal to the value directly calculated in the mother domain, affecting as such further downstream concentration-related results.
For the three EMEP configurations for ST simulations (Fig. 4) at first sight, the emission inventory seems to have a significant impact on the absolute potential particularly over Lisbon, Prague and Warsaw. This will be analyzed in detail in a follow-up study. Due to the normalization, the relative potential is less impacted by the use of different emissions for LT simulations (Figure S75).
The median relative potential and absolute potency of precursor emission reductions are reported in Table 7. Clearly the effect of VOC emission reductions is the weakest among all precursors, while PPM emission reductions are the most efficient to reduce PM in urban areas. A noteworthy factor of 20 is observed between the absolute potency of NH3 and NOx emission reductions partly explained by (i) the ratio of the molar masses of these species (ratio of 2.7) which react (on a molar basis) to produce ammonium nitrate, and (ii) the fact that nitrate and nitric acid is in excess over urban areas. Over large domains like Malopolska and Po Valley, the factor is considerably reduced to 10 and even 1 (or less over Po Valley), possibly due to the effect of rural zones included in the domain and higher ammonia emissions, including surroundings under NH3-rich regimes. Over a very urbanized area like Paris, this factor reaches 50 emphasizing a general NH3 limited regime (NOx-rich regime) over this domain (Petetin et al. 2016). In terms of emission reduction efficiency, it is shown that reducing ammonia over urbanized area is much more efficient to reduce PM than a reduction of NOx.
Indicator of variability
To analyze the variability of responses, an additional indicator—called IND—defined as the root square of the normalized standard deviation of the delta-based indicators previously is computed for each model configuration:
where IND is the indicator calculated by Eqs. (9) to (12) of Appendix 3 for each model, where \(\Lambda\) is the number of models providing results. The variability is computed only when at least 3 models are available. We have decided to normalize the variability by the average of the absolute values of indicators. As the normalization of the standard deviation is quite tricky, a possibility would consist of using the range but this method is mostly impacted by outliers (Dodge 2006). Moreover, since indicators can be negative numbers, the use of averaged absolute values avoid the possibility of having mean values close to 0, which would strongly affect the normalization.
The variability of all indicators is synthetized in Fig. 5. The indicators are presented in Appendix 3; the variability of these indicators represent the median of all variabilities computed for a group of cities where at least three models delivered their results.
The indicator of variability is generally higher for responses to emission reductions than for the variability of base case concentrations. It is particularly noteworthy for the ozone episodes (only 6% of variability in base case concentrations) because of the large influence of long-range transport, leaving little impact for the local reductions, as reported in Boleti et al. (2019) and Bossioli et al. (2007) and verified during the COVID-19 pandemic (Cuesta et al. 2022; Menut et al. 2020). However, even if local emission reductions have little effect, they can be very different from model to model leading to a high variability of small values. This finding contradicts the findings of the Citydelta project (Thunis et al. 2007) which reported consistent deltas between models but on a limited number of cities. Even so, in Thunis et al. (2007) and Arunachalam et al. (2006) model, responses were sometimes large for some cities with deltas varying from 1 to 3 ppb for ozone which is a large range but on small absolute values. Also, in the EURODELTA exercise, differences between model responses using the potency indicator (Thunis et al. 2010) were large both for ozone and PM10 but at a coarse resolution of 50km over Europe.
As shown in Fig. 5, all indicators, the absolute potential, relative potential and absolute potency, show a higher variability for the response (between 20 and 100%) than for emissions and absolute concentrations (between 20 and 50%), particularly in the case of NOx and VOC emission reductions, for both ozone and PM10 concentrations.
For PM10 episodes, the variability of concentrations exceeds 20% and is often much higher than 100% for the other indicators. In general, the variabilities of the relative potential and absolute potency are lower than for the absolute potential because the respective normalization by concentrations and emissions, respectively, reduce the differences between models. The remaining variability is probably driven by the use of different setups.
The variability for the mean of the highest values (average values above the 95th percentile) is generally higher than for mean values for all PM10 concentrations. For ozone, the picture is different since highest values usually occurred in the suburbs or rural places, which are not co-located with ozone precursor emissions.
Regarding the base case, while the variability of PM10 concentrations and the precursor emissions has the same order of magnitude (around 20%), for ozone the variability of concentrations (6%) is much lower than the variability of precursor emissions (larger than 50%).
Clearly, NOx and VOC emission reductions induce the highest variability in the indicators for the PM10 episodes even if the variability in emissions is, often, the lowest. In general, the reduction of all precursor emissions together gives the lowest variability compared with individual precursor emissions, which is probably due to the compensation of effects. The city-by-city variability does not show a systematic pattern, although, for example, the city of Stockholm shows a very high variability for LT simulations both for ozone and PM10 mean concentrations (Figure S213 and S217).
Assessment of linearity and additivity
The 25% and 50% emission reductions are used to calculate a ratio (%) of deviation to linearity (or simply Linearity) defined as:
for each precursor emission precursor (denoted by m). Again, a perfect linearity is obtained for an indicator value of 0%. For the linearity, four cases exist with, in some cases, a change of chemical regime that can induce a change of sign of the absolute potential as shown in Table 8. The linearity is defined only for \({APL}_{25\%,m}\ne 0\).
The available scenarios also allow the analysis of the additivity property, by comparing the sum of emission reductions (50%) applied separately called “ADD” (\(\sum_{m}{APL}_{50\%,m}\)) with the combined reduction of precursor emissions called “ALL”. Here, we test this property on the absolute potential. To do so, the following criteria called “deviation to additivity” in % (or simply Additivity) is defined as:
If the model is perfectly additive, this indicator value is 0%. The additivity coefficient is defined only for \(\sum_{m}{APL}_{50\%,m}\ne 0\) and the different cases are identified in Table 9.
Note that the linearity and additivity indicators are very sensitive to the value of the denominator and can overshoot in some cases for very low values of absolute potential.
The results for the deviation to linearity when reducing all precursor emissions are shown in Fig. 6 for ozone and in Fig. 7 for PM10. While for PM10 there is a quasi-linearity (deviation to linearity between 0 and 5%) mainly driven by the perfect linearity when applying an emission reduction of PPM, the picture is totally different for the response regarding ozone concentrations (Fig. 6 and Fig. 7). Except in London, Madrid and Paris, and to a lesser extent over Prague and the Po Valley, in cities like Vienna and Warsaw, the models show a negative deviation to linearity often larger than − 50%. In Warsaw, a value of − 143% is computed for EMEPE meaning that the sign of the response of O3 changes with the strength of the emission reduction. This is due to the change of regime when applying a stronger emission reduction, switching from a VOC- to a NOx-limited regime. Interestingly, applying separate emission reductions to NH3 or NOx emissions show that from a 25 to a 50% reduction, we obtain an increase of the potential reduction of PM10 mean concentrations for long-term simulations (Figures S89 and S111). This clearly shows the change of chemical regime upon precursor availability and aerosol thermodynamics. Indeed, the species primarily impacted by the emission reduction reaches on average a tipping point becoming limiting and then enhancing the efficiency of the reductions. The importance of ammonia emission reductions to limit air pollution have already been highlighted in Europe (Bessagnet et al. 2014a, b) particularly when applied over large domains. NH3 is considered in excess in most of Europe. However, for the values exceeding the 95th percentile in Madrid (MAD004), the picture is rather different, where a 50% emission reduction of NOx looks less efficient to reduce peak PM10 concentrations (Figure S112).
The case of Paris for an emission reduction of SOx is noteworthy (Figure S166). while for CHIMERE in configuration CHIMCIE a quasi-linearity is observed independent of the horizontal resolution. CHIMERE in the CHIMLMD configuration has a reduction of efficiency for PM10 concentrations that decreases from emission reductions of 25 to 50% and a strong dependence on horizontal resolution. However, for the CHIMLMD configuration, the absolute impact on concentrations is very low. Regarding the impact of reducing NOx, a similar behaviour between CHIMCIE and CHIMLMD is observed with an amplified potential reduction of PM10 concentrations and higher absolute impacts on PM10 (up to − 0.7 µg m−3). At this stage of the analysis, it is not possible to explain the reason for these behaviours and identify which part of the configuration plays the most important role in explaining the differences: the model version/type, the emission dataset or the non-linear processes involved in the secondary PM chemistry. This behaviour might be a result of the calculation of statistical ratios on very low absolute values, leading to a change of sign, or it can derive from formation subprocesses, affected by the concentrations of gaseous precursors, such as the formation of ammonium nitrate and sulphate inorganic species. For example, the neutralization of ammonia by nitric acid (formed by NOx oxidation) competes with the formation of the more thermodynamically stable ammonium sulphate, in which ammonia gas neutralizes the sulfuric acid aerosols in the atmosphere (Kushta et al. 2021). Any perturbation might accelerate and/or reduce the efficiency of the formation depending on the reduction combination (sole species or combination).
Regarding the additivity of separate reduction of 50%, the results also differ between O3 and PM10 for ST simulations. For PM10, the contributions are rather additive with a deviation below 15% (Fig. 8), and often positive, showing a benefit when various pollutant emissions are reduced at the same time. It is noticeable that the WRFZAMG configuration increases the concentration reductions by 50% when applying all emission reductions together in Vienna. This behaviour requires further analysis since WRF-Chem is used with feedbacks on the meteorology that in turn affects the concentrations. For ozone, additivity is clearly not the rule as shown in Fig. 9 for short-term episode and also in the Po Valley for the long-term simulation and especially for the highest concentrations in the LT simulations (Figure S2). However, for some cities like London, Madrid and Paris, most of the configurations show a rather additive behaviour. When analyzing the difference in terms of impact between the combined NOx and VOC reductions and the sum of individual reduction impacts (Figures S2, S4), the lowest deviations were found for the Brussels and Madrid cases, with a full additivity in the EMEPC2, EMEPCE and RIOCHIRC setups. For the Warsaw case (WAR040) as the absolute potential is very low (Fig. 3) in absolute values, the deviation to linearity is very important and clearly shows the limitation of studying such indicators with low absolute values.
Conclusions and perspectives
This study presents a comprehensive application of the FAIRMODE platform (https://fairmode.jrc.ec.europa.eu) for evaluating the variability of the responses of different air quality models’ applications to prescribed emission reductions over various European cities and two highly polluted areas (Po Valley and Malopolska). Based on standard deviation calculation, using model outputs, we have analyzed the variability of several indicators such as APL and APY. The main results can be summarized as follows:
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Air quality models’ applications show significant differences (variability, as defined in this study, often exceeds 20%) in the concentration changes (deltas) for the 25 and 50% emission reductions d;
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The variability of model responses using delta-based indicators is higher for PM10 than for O3;
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The variability of model responses to emission reductions is higher than the variability of modelled base case concentrations and of emissions used as input;
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Relative indicators like the relative potential (normalized by the concentration) and the absolute potency (normalized by the emission reductions) have a lower variability compared with the absolute potential (which is proportional to the delta of concentrations);
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For O3, the analysis of linearity and additivity of model responses show a clear impact of non-linear chemistry processes that leads to a large deviation to linearity and additivity of concentrations in relation to emission reductions;
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For PM, the response is, in general, more linear and additive, particularly, as expected, when reducing the primary emissions of particles which weakly perturb the chemical and physical processes involved in the PM formation;
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One should be cautious in the interpretation of these indicators because they are built on averages and ratios of values that can be very low and with different signs. More work should be devoted to develop new ones.
This type of exercise may give indications regarding the limits of the efficiency of mitigation measures. Modelling results show that applying emission reductions on several sectors (often related to a main precursor) at the same time seems more beneficial for reducing PM concentrations than reductions of individual precursors.
The lower variability between models due to a normalization by concentrations or emissions reduces the influences of different input data and permits the evaluation of the role of other processes that can explain the variability of concentration deltas. As future work, several additional analyses are planned to disentangle the role of individual processes, differences in setup and input data that give rise to the variability between model responses. The role of emissions, chemistry schemes, meteorology, online/offline coupling strategies and horizontal resolution will be of particular interest to modellers to improve the application of their models for assessing mitigation strategies aimed at improving air quality in cities and regions.
This platform and its application is an ongoing programme of work to assess the behaviour of models when applying emission reduction scenarios and test the robustness of their application to evaluate mitigation strategies to curb air pollution.
Data availability
All data and the exploration tool are freely available on request.
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Acknowledgements
CIEMAT acknowledges the Ministry for the Ecological Transition and Demographic Challenge for financial support. The WRF-Chem NKUA simulations were supported by computational time granted from the National Infrastructures for Research and Technology S.A. (GRNET S.A.) in the National HPC facility – ARIS –. For LMD, the work was granted access to the HPC resources of TGCC under the allocation 2021- GEN10274 made by GENCI. The computing resources and the related technical support used for the MINNI simulations have been provided by CRESCO/ENEAGRID High Performance Computing infrastructure and its staff. The infrastructure is funded by ENEA, the Italian National Agency for New Technologies, Energy and Sustainable Economic Development and by Italian and European research programmes (http://www.cresco.enea.it/english) and (Iannone et al., 2019). MINNI participation in this project was supported by the “Cooperation Agreement for support to international Conventions, Protocols and related negotiations on air pollution issues”, funded by the Italian Ministry for Environment. The Cyprus Institute acknowledges support from the EMME-CARE project that received funding from the European Union's Horizon 2020 Research and Innovation Programme (under grant agreement no. 856612) and the Cyprus Government, and the LIFE Programme of the European Union in the framework of the project LIFE21-GIE-EL-LIFE-SIRIUS/101074365. Thanks to FCT/MCTES for the financial support to CESAM (UIDP/50017/2020 + UIDB/50017/2020 + LA/P/0094/2020), through national funds.
Funding
-European Union’s Horizon 2020 research and innovation program under grant agreement No 874990 (EMERGE project). FCT/MCTES is acknowledged for the financial support to CESAM (UIDP/50017/2020 + UIDB/50017/2020), through national funds.
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Appendices
Appendix 1. Definition of target domains
Please see Table 10.
Appendix 2. Full description and key features of models
EMEP operated by JRC/METCLIM
The EMEP model (Simpson et al. 2012) domain stretches from 15.05° W to 36.95° E longitude and 30.05° N to 71.45° N latitude with a horizontal resolution of 0.1° × 0.1° and 20 vertical levels, with the first level around 50m. The model uses meteorological initial conditions and lateral boundary conditions from the European Centre for Medium-range Weather Forecasting (ECMWF IFS) for the meteorological year 2015 (Owens and Hewson 2018). The temporal resolution of the meteorological input data is daily, with 3-h time steps. The meteorological fields for EMEP are retrieved on a 0.1° × 0.1° longitude-latitude coordinate projection. Vertically, the fields on 60 eta (η) levels from the IFS model are interpolated onto the 37 EMEP sigma (σ) levels. The MARS equilibrium module is used to calculate the partitioning between gas and fine-mode aerosol phase for inorganic species sulphate/nitrate/ammonium (Binkowski and Shankar 1995). More information on the gas and aerosol partitioning, meteorological drivers, land cover, model physics and chemistry are given in Simpson et al. (2012). The model was operated over Europe, for which we have four different emission inventories available. The following emission datasets are used for EMEPE, EMEPG, EMEPC2 and EMEPC42C configurations, respectively: Edgar 5.0 (Crippa et al. 2018; Janssens-Maenhout et al. 2019; Oreggioni et al. 2021), EMEP (Mareckova et al. 2019), CAMS version 2.2.1 and CAMS version 4.2 including condensables (Granier et al. 2019; Kuenen et al. 2022).
WRF-Chem operated by CYI
The WRFCYI model is configured using the Weather Research and Forecasting model with Chemistry (WRF-Chem) version 3.9.1.1 (Skamarock et al. 2008) to perform simulations of meteorological and air quality conditions for O3 episodes in Athens and Po Valley. For each episode, two nested domains are used with the parent domain covering south-eastern Europe at 20 km (Athens) and 30 km (Po Valley) grid spacing while the nested domain is focused on the respective area of interest with a horizontal resolution of 10 km. The configuration of the physical and chemical processes follows that of Georgiou et al. (2018) with the following differences highlighted in Table 5. Emissions are taken from EDGAR v5 database (Crippa et al. 2018) that includes annual emission fluxes (with monthly temporal variation) of the main gaseous and aerosol pollutants (SO2, CO, NOx, CO, BC, OC, VOC and PM2.5 primary emissions) while natural emissions of sea salt aerosols and biogenic volatile species are generated online using weather and land use data as described in Georgiou et al. (2018). The meteorological data are derived from the Global Forecast system (GFS) datasets at 0.5° × 0.5° and updated every 6 h (NCEP 2015). Boundary conditions are taken from Emmons et al. (2010), the gas phase chemistry is RADM2 (Stockwell et al. 1990) and the aerosol module is MADE/SORGAM (Ackermann et al. 1998; Schell et al. 2001). The cloud physics scheme is the Morrison double moment (Morrison et al. 2005), the cumulus parameterization is Grell 3D (Grell and Dévényi 2002) and the land surface physics is the Noah land surface model (Chen and Dudhia 2001) with the RRTMG scheme for the Longwave & Shortwave radiation (Mlawer et al. 1997) and the Yonsei University Planetary Boundary layer (Hong et al. 2006).
WRF-Chem operated by NKUA
The WRFNKUA model is based on the Weather Research and Forecasting (WRF) model, Version 4.2, fully coupled with chemistry. WRF-Chem simulations account for both the direct and indirect effect of aerosols (Grell et al. 2005). Four domains with a horizontal resolutions of 55.5 km, 18.5 km, 6 km and 2 km, respectively, are used, where the three inner domains are all two-way nested to their parent domain. Athens is the innermost domain. The last two domains (named WRFNKUA6A and WRFNKUA2A) are used in this study. The Lat/Long projection is used. In the vertical, 40 terrain-following sigma levels, with the lowest model level at about 14 m. The RRTMG scheme for the Longwave & Shortwave radiation (Iacono et al. 2008) and the Yonsei University Planetary Boundary layer parameterization (Hong et al. 2006) is used. The Morrison double moment scheme for cloud physics (Morrison et al. 2005) and the cumulus parameterization Grell 3D (Grell and Dévényi 2002) are also implemented. The gas phase chemistry is RADM2 (Stockwell et al. 1990, 1997), and the aerosol module is MADE/SORGAM (Ackermann et al. 1998; Schell et al. 2001). The EDGAR-HTAP (Emissions Database for Global Atmospheric Research-Hemispheric Transport of Air Pollution) global emission inventory is used including shipping with a horizontal grid resolution of 0.1° × 0.1° (Janssens-Maenhout et al. 2015) and a reference year of 2010. Biogenic emissions are calculated online with the MEGAN module (Guenther et al. 2006) while the initial and boundary conditions for gases and aerosols come from simulation of CAM-chem in CESM2.0 (Emmons et al. 2020). For the other physical parameterizations and information on natural and fire emissions, the reader is referred to the setup of Bossioli et al. (2021).
WRF-Chem operated by GeoSphere Austria
The WRF-Chem version 3.9.1.1 (Grell et al. 2005) simulations were conducted on a European domain (12 × 12 km) and a nested domain covering Central Europe (4 × 4 km). The results of the nested domain were used for the study. RADM2 (Stockwell et al. 1990) chemical mechanism and MADE/SORGAM (Schell et al. 2001) aerosols (chem_opt = 2) together with the following physics options were applied for the simulations: Rapid Radiative Transfer Method for Global (RRTMG) long-wave and short-wave radiation scheme (Iacono et al. 2008), MYNN2 Planet Boundary Layer (PBL) scheme (Nakanishi and Niino 2006), NOAH land surface model (Campbell et al. 2019) and the Grell three-dimensional (3D) ensemble cumulus parameterization (Grell and Freitas 2014). Beside the anthropogenic emissions (Kuenen et al. 2014), the model includes biogenic emissions calculated by MEGAN (Guenther et al. 2006) and dust (LeGrand et al. 2019) and sea salt emissions from the Goddard Chemistry Aerosol Radiation and Transport model as GOCART (Chin et al. 2002).
EMEP operated by Met Norway
For the EMEPNO configuration, the EMEP MSC-W chemistry-transport model (Simpson et al. 2012) is used (version rv4.42) at a 0.1° resolution, for a domain covering the area 30–82°N, 30°W–90°E. Meteorological fields are taken from the IFS model (ECMWF IFS cy40r1) at a 0.1° resolution. The official EMEP emission inventory for 2015 as reported in 2019 was used Mareckova et al. (2019). The EMEP model also outputs local fractions for running the uEMEP model.
uEMEP is a downscaling model built on the EMEP setup to obtain concentration maps at a higher resolution of 250 m by recalculating contributions from local emission sources as Gaussian plumes (Denby et al. 2020; Mu et al. 2022). First, emissions for three GNFR (Gridding Nomenclature for Reporting) sectors are downscaled to 250 m resolution using proxy data with details given in Mu et al. (2022): population and building density data for GNRF C (residential combustion), OpenStreetMap (https://planet.osm.org/) for GNFR F (road transport) and AIS data of ship positions for GNFR G (shipping). Then, for each hour at each 250 m × 250 m grid cell within the defined city boundary, the contributions to concentrations at that cell from all emission sources of the three sectors within a surrounding domain of size 0.3° × 0.3° (longitude-latitude) are recalculated through Gaussian plumes. The local fraction information from the EMEP model is used to remove the contributions from these downscaled sources from the original EMEP concentrations, thus avoiding double counting as detailed in Denby et al. (2020). Only the NOx emissions and primary PM emissions are downscaled, and the only chemical reaction accounted for in the Gaussian plumes is the NOx–O3 interaction, using the Düring approach (Düring et al. 2011; Maiheu et al. 2017). For annual mean runs, the downscaling is performed directly on the annual mean concentrations, using a rotationally symmetric dispersion kernel (Denby et al. 2020). A similar setup using EMEP + uEMEP was applied in Mu et al. (2022) for calculating high-resolution concentration maps for all of Europe.
The distinction between the setups of uEMEPIMP and uEMEPTAG is in how emission reduction scenarios are calculated. They both use the same base case simulation, but while uEMEPIMP uses the standard brute-force method of rerunning EMEP + uEMEP for each reduction scenario using reduced emissions, uEMEPTAG calculates the scenarios without rerunning the model. Instead, reductions in concentrations are deduced from the tagging of primary PM and NOx emitted within the city boundaries in the base case simulation. New NO2 and O3 concentrations are calculated by reapplying the Düring scheme with the reduced NOx concentrations. This setup is therefore limited to the reduction scenarios of NOx and PPM and its results do not include any effects on secondary particle formation.
LOTOS-EUROS and ADMS operated by DHMZ
LOTOS-EUROS (Manders et al. 2017) is an open-source chemical transport model that was used to assess the impact of emission reduction over Zagreb (Croatia). The model used two domains. The outer domain encompassed an area from − 10°W to 45°E longitude and 30°N to 60°N latitude with a horizontal resolution of 0.5° × 0.25°. The nested domain encompassed an area from 15.63 to 16.33°E longitude and 45.46 to 46.16°N with a horizontal resolution of 0.1° × 0.05°. For vertical resolution, 5 layer mixing scheme was used with a surface layer fixed at 25 m in height, a dynamic layer that extends from the top of the surface layer to the top of the mixing layer and three more dynamic reservoir layers on top that reach up to 5 km in height. An identical meteorological driver, taken from ECMWF IFS (Owens and Hewson 2018) (F1280 grid), was used for both domains. For consistency, both domains used the same emission dataset prepared using the CAMS-REG-AP v2.2.1 as a base, with an appropriate reduction of emissions only within the nested domain.
ADMS-Urban (Carruthers et al. 1994; Hood et al. 2018), Version 4.1.1., is a quasi-Gaussian plume air dispersion model, the most comprehensive version of the Atmospheric Dispersion Modelling System (ADMS). The model was set up for the Zagreb agglomeration and the year 2015. Chemistry schemes involving NOx, NO2 and ozone were implemented. The dispersion calculations are driven by hourly meteorological data obtained from Zagreb-Maksimir meteorological site and are taken to be representative of the whole domain. The model uses background data from the Desinić rural-background site (hourly sequential air quality data that represents the contribution of regional transboundary pollution), and emissions at a 500 m × 500 m resolution were obtained from the Croatian National Emission Inventory (source: Ministry of Economy and Sustainable Development). Two large point sources were explicitly modelled.
WRF-CHIMEREv2020r1 operated by LMD
The CHIMERE model is a regional chemistry-transport model that can be used in both online and offline configurations in its latest version (Mailler et al. 2017; Menut et al. 2021) for research, future scenarios and operational forecast purposes (Bessagnet et al. 2020; Lapere et al. 2021; Menut et al. 2020). For online modelling, it is coupled with the WRF (Weather Research Forecast) meteorological model (Skamarock et al. 2008). The model needs a set of gridded data as mandatory input: emission data for both biogenic and anthropogenic sources, land use parameters, boundary and limit conditions, and other optional inputs such as dust and fire emissions. Given these inputs, the model calculates the concentrations and wet/dry deposition fluxes for a list of gaseous and aerosol species (depending on the chosen chemical mechanism).
In this study, the model was coupled with WRF using the NCEP input data (NCEP 2015) for the global meteorological conditions. It was run on a triple nested configuration, with a coarse domain covering the whole of Europe at a 30 km × 30 km resolution (164 × 165 cells), the intermediate domain with a 10 km × 10 km resolution (45 × 45 cells), while the finest domain focused on the Paris region with a 3 km × 3 km resolution (51 × 52 cells). The vertical resolution contains 15 layers starting from the surface going up to 300 hPa. No fire emissions were used. Boundary conditions were taken from CAMS 3-hourly reanalysis global runs. All major aerosol groups are activated including elemental carbon, sulphate, nitrate, ammonium, SOA, dust, salt and PPM, taking into account coagulation, nucleation and condensation processes over 10 size bins ranging between 10 nm − 40 µm. Anthropogenic emissions were prepared using the CAMS regional inventory (Granier et al. 2019) for both reference simulations and reduction scenarios.
WRF-CMAQ operated by UH-CACP
The Community Multi Scale Air Quality Modelling System (CMAQ) is a prognostic air quality suit of models developed by the U.S Environmental Protection Agency (USEPA). The model is based on the concept “one atmosphere” and accounts for complex interactions among several pollutants but also complex process interaction between regional and urban scales. CMAQ includes a Meteorology Chemistry Interface Processor (MCIP) (Otte et al. 2005), an Initial Condition (ICON) processor, a Boundary Condition (BCON) processor and the chemistry transport model (CTM) (US EPA Office of Research and Development 2020; Xu and Chen 2021). The chemistry transport model is used to simulate aerosol and gas chemistry in addition to the transport and deposition of chemical species while modelling atmospheric processes. CMAQ is incapable of independently calculating the complex meteorological processes essential for air quality modelling and requires Weather Research and Forecast (WRF) model output to produce the meteorological fields. Furthermore, CMAQ requires its emission data to be pre-processed in specific format. This can be computed using the Sparse Matrix Operator Kernel Emissions (SMOKE) and Model of Emissions of Gases and Aerosols from Nature (MEGAN) (Guenther et al. 2006).
In this study, the numerical and emissions processing models WRF (version 4.2), CMAQ (version 5.3.2) (Campbell et al. 2019; US EPA Office of Research and Development 2020), SMOKE version 4.6 (Baek and Seppanen 2018) and MEGAN version 2.0.4 (Guenther et al. 2006) were used to simulate the spatial and temporal distribution of air pollutant concentrations for ozone, PM2.5, PM10, NH3, NOx and VOC. The meteorological fields were generated using initial and boundary conditions from the NCEP GFS dataset with temporal and spatial resolutions of 0.25° and a 3-h time step to drive WRF (NCEP 2015). Three domains were used: the outer domain (spatial resolution 25 km × 25 km), middle domain (5 km × 5 km) and inner domain (1 km × 1 km). The same domains were also used for CMAQ. The anthropogenic emissions used for the simulation were UK National Emissions Inventory (2015; 1 km × 1 km) merged with Edgar v5 2015 inventory for missing values. The NAEI inventory consists of eleven SNAP sectors (Kuenen and Trozi 2019; Ntziachristos and Boulter 2019): Nature, Extraction distribution of fossil fuels, Agriculture, Industrial combustion, Industrial processes, Other mobile sources, Power generation, Residential commercial and other combustions, Road transport, Solvent use, Waste treatment and disposal. The main pollutants are carbon dioxide (CO), sulphur dioxide (SO2), non-methane volatile organic compounds (NMVOC), particulate matter (PM2.5 and PM10), nitric oxides (NOx) and methane (CH4). Due to the emissions inventory being annual totals and CMAQ requiring emission input as mass flow rates per area, temporal profiles were applied to the annual values. The profiles used are those of TNO (Builtjes et al. 2003). In addition, the biogenic emissions were estimated in MEGAN using meteorological and land use/land cover parameters as input data. The dust and sea salt emissions were calculated inline of the CMAQ CTM model. Initial and Boundary condition driver data for the CTM model were provided by The Community Atmosphere Model with Chemistry (CAM-chem)(Tilmes et al. 2019).
IFS-CHIMEREv2017r4 operated by CIEMAT
The CHIMERE chemistry transport model v2017 (Mailler et al. 2017) was used to evaluate the impacts of the emission reductions. This model has been extensively used in Europe and in particular in Spain (Brands et al. 2020; Vivanco et al. 2008, 2009). Four domains were considered for the simulations centred on Madrid, Athens and Paris with horizontal resolutions of 0.27°, 0.09°, 0.03° and 0.01° (respectively named as CHIMCIE27M, CHIMCIE09M, CHIMCIE03M, CHIMCIE01M). The model was run with MELCHIOR2 chemical mechanism. Emissions were obtained from the EMEP database a 0.1° × 0.1°grid resolution (Mareckova et al. 2019). For the Spanish domains, the national emission inventory for Spain was used on the same grid as the EMEP emissions for the Spanish grid squares. The meteorological fields were adapted from simulations by the European Centre for Medium-Range Weather Forecasts, ECMWF (www.ecmwf.int); the Integrated Forecasting System (IFS) for 2015, obtained from the MARS archive at ECMWF through the access provided by AEMET for research projects. Boundary conditions for the coarsest resolution domains were taken from LMZ-INCA and GOCART climatological simulations.
MINNI operated by ENEA
The air quality modelling system MINNI (Mircea et al. 2014, 2016) is composed of the meteorological model WRF v3.9.1.1 (Skamarock et al. 2008), the anthropogenic emission processor EMMA, the meteorological processor SURFPRO (ARIANET 2011) and the chemical transport model FARM the Flexible Air Quality Regional Model (Silibello et al. 2008). FARM was configured with SAPRC-99 gas phase mechanism (Carter 2000), AERO3 dynamic aerosol model (Binkowski and Roselle 2003) based on three interacting lognormal distributions representing the main processes (nucleation, coagulation and growth), secondary inorganic model ISORROPIA (Nenes et al. 1998) and secondary organic model SORGAM (Schell et al. 2001). Dry deposition was simulated using a resistance model (Wesely 1989) and the biogenic emissions were calculated with the MEGAN v2.04 model (Guenther et al. 2006).
The simulations were carried out over the Po Valley domain with a horizontal spatial resolution of 4 km. The national emission inventory distributed by ISPRA (Italian Institute for Environmental Protection and Research) was used with provincial level (NUTS3) detail and boundary conditions from the simulation at national level described in (Vitali et al. 2019). The FARM simulation has been done with 16 fixed vertical layers terrain-following and the depth of first layer is 40 m.
CHIMERE + RIO operated by IRCELINE
Air quality projections were calculated in two steps, thanks to a methodology developed by the research organization VITO. The first step is achieved by calculating the reference scenario and the scenarios with emission reductions in Brussels thanks using the CHIMERE CTM model v2017 (Mailler et al. 2017). A run configuration of two nested domains with meteorological ECMWF data for 2015 was used. The parent domain at a 0.5° × 0.5° resolution covers the whole European zone, and the nested domain at 0.1° × 0.1° covers North-Western Europe, centred on Belgium. The emission dataset includes point and surface emissions, and bottom-up emissions were used within Belgium and top-down emissions were used outside Belgium. Emission reductions over Brussels were applied only in the nested domain.
As a second step, a tendency was carried out for each 0.1° × 0.1° grid cell by calculating a regression of the CTM daily concentrations between the base case and the scenario cases. These trends were applied to a best estimate of the concentrations of the base case to determine the scenario concentrations. This best estimate was achieved by an intelligent interpolation of the observed concentrations via the RIO interpolation method (Janssen et al. 2008), resulting in higher resolution (4 × 4 km) concentrations, and so the results were also downscaled using this procedure. The application of trends of RIO reference concentrations rather than the absolute or relative differences for calculating air quality projections is an alternative approach of calibration that accounts for changes in CTM bias.
Appendix 3. Detailed description of indicators
The following notation will be used for the definition of indicators. Capital letters are used for the aggregated values (sum of emissions or averaged values) over the area Ak where precursors are reduced, and lower case for individual grid cell with coordinates (i, j) or (i, j, t), if we consider time.
- k:
-
Zone of emission reductions as defined in Table 1
- m:
-
Emission precursor name (NOx, VOC, PPM, SOx or NH3) or all together
- n:
-
Pollutant name, such as O3, PM10 and NO2
- α:
-
Percentage emission reduction for the scenarios (50% or 25% here)
- s:
-
Simulation scenario denoted as 50%NOx, etc. … or base case (BC) referring to the level of reduction and the precursor involved
- i, j:
-
Grid cell coordinate respectively in longitude and latitude
- I, J:
-
Total number of longitude and latitude coordinates
- t:
-
Current time in hours
- T:
-
Total number of recorded hours of the simulation
- \({e}_{i,j}^{m,k,s}\):
-
Emission of precursor m over zone k for grid cell \(\left(i,j\right)\in {A}_{k}\) for simulation s
- \({c}_{i,j,t}^{n,k,s}\):
-
Concentration of pollutant n over zone k for grid cell \(\left(i,j\right)\in {A}_{k}\) for simulation s at time t
- \({E}_{Total}^{m,k,s}\):
-
Total emission of precursor m over zone k for simulation s
- \({C}_{Mean}^{n,k,s}\):
-
Averaged concentration of pollutant n over zone k for simulation s
The analysis was performed for two types of averaging over the emission reduction domain (which is common for all modelling teams). We average either (i) over the whole set of values (called Mean) and (ii) for values above the 95th percentile (called P95) as defined here below:
For each averaging type (ave = Mean or P95), the following indicators are defined. They are calculated for a given model and for a tuple (n, k, s) representing the pollutant concentrations, the target area and the scenario, respectively. A scenario s is defined as an emission reduction simulation compared with the base case (BC), depending on the percentage of reduction (− 25 or − 50%) over a certain period and type of simulation (LT simulations or ST PM or ST O3 episodes).
The absolute potential is the delta of concentrations normalized by the reduction factor; it represents a potential absolute reduction if a 100% emission reduction assuming linearity. The absolute potency represents the delta normalized by the amount of reduced emissions.
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Bessagnet, B., Cuvelier, K., de Meij, A. et al. Assessment of the sensitivity of model responses to urban emission changes in support of emission reduction strategies. Air Qual Atmos Health 17, 681–706 (2024). https://doi.org/10.1007/s11869-023-01469-z
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DOI: https://doi.org/10.1007/s11869-023-01469-z