Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in Europe
Because of its sensitivity to unfavorable weather patterns, air pollution is sensitive to climate change so that, in the future, a climate penalty could jeopardize the expected efficiency of air pollution mitigation measures. A common method to assess the impact of climate on air quality consist...
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doaj-5d6510ece3ae4f19a94efa474f74fb042020-11-24T22:20:54ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242016-03-01162559257410.5194/acp-16-2559-2016Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in EuropeV. E. P. Lemaire0A. Colette1L. Menut2Institut National de l'Environnement Industriel et des Risques (INERIS), Verneuil en Halatte, FranceInstitut National de l'Environnement Industriel et des Risques (INERIS), Verneuil en Halatte, FranceLaboratoire de Météorologie Dynamique, UMR CNRS8539, Ecole Polytechnique, Ecole Normale Supérieure, Université P.M. Curie, Ecole Nationale des Ponts et Chaussées, Palaiseau, FranceBecause of its sensitivity to unfavorable weather patterns, air pollution is sensitive to climate change so that, in the future, a climate penalty could jeopardize the expected efficiency of air pollution mitigation measures. A common method to assess the impact of climate on air quality consists in implementing chemistry-transport models forced by climate projections. However, the computing cost of such methods requires optimizing ensemble exploration techniques.<br><br> By using a training data set from a deterministic projection of climate and air quality over Europe, we identified the main meteorological drivers of air quality for eight regions in Europe and developed statistical models that could be used to predict air pollutant concentrations. The evolution of the key climate variables driving either particulate or gaseous pollution allows selecting the members of the EuroCordex ensemble of regional climate projections that should be used in priority for future air quality projections (CanESM2/RCA4; CNRM-CM5-LR/RCA4 and CSIRO-Mk3-6-0/RCA4 and MPI-ESM-LR/CCLM following the EuroCordex terminology).<br><br> After having tested the validity of the statistical model in predictive mode, we can provide ranges of uncertainty attributed to the spread of the regional climate projection ensemble by the end of the century (2071–2100) for the RCP8.5.<br><br> In the three regions where the statistical model of the impact of climate change on PM<sub>2.5</sub> offers satisfactory performances, we find a climate benefit (a decrease of PM<sub>2.5</sub> concentrations under future climate) of −1.08 (±0.21), −1.03 (±0.32), −0.83 (±0.14) µg m<sup>−3</sup>, for respectively Eastern Europe, Mid-Europe and Northern Italy. In the British-Irish Isles, Scandinavia, France, the Iberian Peninsula and the Mediterranean, the statistical model is not considered skillful enough to draw any conclusion for PM<sub>2.5</sub>.<br><br> In Eastern Europe, France, the Iberian Peninsula, Mid-Europe and Northern Italy, the statistical model of the impact of climate change on ozone was considered satisfactory and it confirms the climate penalty bearing upon ozone of 10.51 (±3.06), 11.70 (±3.63), 11.53 (±1.55), 9.86 (±4.41), 4.82 (±1.79) µg m<sup>−3</sup>, respectively. In the British-Irish Isles, Scandinavia and the Mediterranean, the skill of the statistical model was not considered robust enough to draw any conclusion for ozone pollution.https://www.atmos-chem-phys.net/16/2559/2016/acp-16-2559-2016.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
V. E. P. Lemaire A. Colette L. Menut |
spellingShingle |
V. E. P. Lemaire A. Colette L. Menut Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in Europe Atmospheric Chemistry and Physics |
author_facet |
V. E. P. Lemaire A. Colette L. Menut |
author_sort |
V. E. P. Lemaire |
title |
Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in Europe |
title_short |
Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in Europe |
title_full |
Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in Europe |
title_fullStr |
Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in Europe |
title_full_unstemmed |
Using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in Europe |
title_sort |
using statistical models to explore ensemble uncertainty in climate impact studies: the example of air pollution in europe |
publisher |
Copernicus Publications |
series |
Atmospheric Chemistry and Physics |
issn |
1680-7316 1680-7324 |
publishDate |
2016-03-01 |
description |
Because of its sensitivity to unfavorable weather patterns, air
pollution is sensitive to climate change so that, in the future, a climate
penalty could jeopardize the expected efficiency of air pollution mitigation
measures. A common method to assess the impact of climate on air quality
consists in implementing chemistry-transport models forced by climate
projections. However, the computing cost of such methods requires optimizing
ensemble exploration techniques.<br><br>
By using a training data set from a deterministic projection of climate and
air quality over Europe, we identified the main meteorological drivers of
air quality for eight regions in Europe and developed statistical models that
could be used to predict air pollutant concentrations. The evolution of the
key climate variables driving either particulate or gaseous pollution allows
selecting the members of the EuroCordex ensemble of regional climate
projections that should be used in priority for future air quality
projections (CanESM2/RCA4; CNRM-CM5-LR/RCA4 and CSIRO-Mk3-6-0/RCA4 and
MPI-ESM-LR/CCLM following the EuroCordex terminology).<br><br>
After having tested the validity of the statistical model in predictive mode,
we can provide ranges of uncertainty attributed to the spread of the regional
climate projection ensemble by the end of the century (2071–2100) for the
RCP8.5.<br><br>
In the three regions where the statistical model of the impact of climate
change on PM<sub>2.5</sub> offers satisfactory performances, we find a climate
benefit (a decrease of PM<sub>2.5</sub> concentrations under future climate) of
−1.08 (±0.21), −1.03
(±0.32), −0.83
(±0.14) µg m<sup>−3</sup>, for respectively Eastern Europe, Mid-Europe and Northern Italy. In the British-Irish Isles, Scandinavia, France, the
Iberian Peninsula and the Mediterranean, the statistical model is not
considered skillful enough to draw any conclusion for PM<sub>2.5</sub>.<br><br>
In Eastern Europe, France, the Iberian Peninsula, Mid-Europe and Northern
Italy, the statistical model of the impact of climate change on ozone was
considered satisfactory and it confirms the climate penalty bearing upon
ozone of 10.51 (±3.06), 11.70
(±3.63), 11.53 (±1.55),
9.86 (±4.41), 4.82
(±1.79) µg m<sup>−3</sup>, respectively. In the British-Irish Isles,
Scandinavia and the Mediterranean, the skill of the statistical model was not
considered robust enough to draw any conclusion for ozone pollution. |
url |
https://www.atmos-chem-phys.net/16/2559/2016/acp-16-2559-2016.pdf |
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