Assessing the impact of clean air action on air quality trends in Beijing using a machine learning technique
<p>A 5-year Clean Air Action Plan was implemented in 2013 to reduce air pollutant emissions and improve ambient air quality in Beijing. Assessment of this action plan is an essential part of the decision-making process to review its efficacy and to develop new policies. Both statistical and ch...
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doaj-3e7bd5cd4d9c4e559a811b59a747a2ee2020-11-25T00:40:40ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242019-09-0119113031131410.5194/acp-19-11303-2019Assessing the impact of clean air action on air quality trends in Beijing using a machine learning techniqueT. V. Vu0Z. Shi1J. Cheng2Q. Zhang3K. He4K. He5S. Wang6R. M. Harrison7R. M. Harrison8Division of Environmental Health & Risk Management, School of Geography, Earth & Environmental Sciences, University of Birmingham, Birmingham B1 52TT, UKDivision of Environmental Health & Risk Management, School of Geography, Earth & Environmental Sciences, University of Birmingham, Birmingham B1 52TT, UKMinistry of Education Key Laboratory for Earth System Modeling, Department of Earth System Science, Tsinghua University, Beijing 100084, ChinaMinistry of Education Key Laboratory for Earth System Modeling, Department of Earth System Science, Tsinghua University, Beijing 100084, ChinaState Key Joint Laboratory of Environment, Simulation and Pollution Control, School of Environment, Tsinghua University, Beijing 100084, ChinaState Environmental Protection Key Laboratory of Sources and Control of Air Pollution Complex, Beijing 100084, ChinaState Key Joint Laboratory of Environment, Simulation and Pollution Control, School of Environment, Tsinghua University, Beijing 100084, ChinaDivision of Environmental Health & Risk Management, School of Geography, Earth & Environmental Sciences, University of Birmingham, Birmingham B1 52TT, UKDepartment of Environmental Sciences/Center of Excellence in Environmental Studies, King Abdulaziz University, P.O. Box 80203, Jeddah, Saudi Arabia<p>A 5-year Clean Air Action Plan was implemented in 2013 to reduce air pollutant emissions and improve ambient air quality in Beijing. Assessment of this action plan is an essential part of the decision-making process to review its efficacy and to develop new policies. Both statistical and chemical transport modelling have been previously applied to assess the efficacy of this action plan. However, inherent uncertainties in these methods mean that new and independent methods are required to support the assessment process. Here, we applied a machine-learning-based random forest technique to quantify the effectiveness of Beijing's action plan by decoupling the impact of meteorology on ambient air quality. Our results demonstrate that meteorological conditions have an important impact on the year-to-year variations in ambient air quality. Further analyses show that the PM<span class="inline-formula"><sub>2.5</sub></span> mass concentration would have broken the target of the plan (2017 annual PM<span class="inline-formula"><sub>2.5</sub><60</span> <span class="inline-formula">µ</span>g m<span class="inline-formula"><sup>−3</sup></span>) were it not for the meteorological conditions in winter 2017 favouring the dispersion of air pollutants. However, over the whole period (2013–2017), the primary emission controls required by the action plan have led to significant reductions in PM<span class="inline-formula"><sub>2.5</sub></span>, PM<span class="inline-formula"><sub>10</sub></span>, <span class="inline-formula">NO<sub>2</sub></span>, <span class="inline-formula">SO<sub>2</sub></span>, and CO from 2013 to 2017 of approximately 34 %, 24 %, 17 %, 68 %, and 33 %, respectively, after meteorological correction. The marked decrease in PM<span class="inline-formula"><sub>2.5</sub></span> and <span class="inline-formula">SO<sub>2</sub></span> is largely attributable to a reduction in coal combustion. Our results indicate that the action plan has been highly effective in reducing the primary pollution emissions and improving air quality in Beijing. The action plan offers a successful example for developing air quality policies in other regions of China and other developing countries.</p>https://www.atmos-chem-phys.net/19/11303/2019/acp-19-11303-2019.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
T. V. Vu Z. Shi J. Cheng Q. Zhang K. He K. He S. Wang R. M. Harrison R. M. Harrison |
spellingShingle |
T. V. Vu Z. Shi J. Cheng Q. Zhang K. He K. He S. Wang R. M. Harrison R. M. Harrison Assessing the impact of clean air action on air quality trends in Beijing using a machine learning technique Atmospheric Chemistry and Physics |
author_facet |
T. V. Vu Z. Shi J. Cheng Q. Zhang K. He K. He S. Wang R. M. Harrison R. M. Harrison |
author_sort |
T. V. Vu |
title |
Assessing the impact of clean air action on air quality trends in Beijing using a machine learning technique |
title_short |
Assessing the impact of clean air action on air quality trends in Beijing using a machine learning technique |
title_full |
Assessing the impact of clean air action on air quality trends in Beijing using a machine learning technique |
title_fullStr |
Assessing the impact of clean air action on air quality trends in Beijing using a machine learning technique |
title_full_unstemmed |
Assessing the impact of clean air action on air quality trends in Beijing using a machine learning technique |
title_sort |
assessing the impact of clean air action on air quality trends in beijing using a machine learning technique |
publisher |
Copernicus Publications |
series |
Atmospheric Chemistry and Physics |
issn |
1680-7316 1680-7324 |
publishDate |
2019-09-01 |
description |
<p>A 5-year Clean Air Action Plan was implemented in 2013 to reduce air
pollutant emissions and improve ambient air quality in Beijing. Assessment
of this action plan is an essential part of the decision-making process to
review its efficacy and to develop new policies. Both
statistical and chemical transport modelling have been previously applied to
assess the efficacy of this action plan. However, inherent uncertainties in
these methods mean that new and independent methods are required to support
the assessment process. Here, we applied a machine-learning-based random
forest technique to quantify the effectiveness of Beijing's action plan by
decoupling the impact of meteorology on ambient air quality. Our results
demonstrate that meteorological conditions have an important impact on the
year-to-year variations in ambient air quality. Further analyses show that
the PM<span class="inline-formula"><sub>2.5</sub></span> mass concentration would have broken the target of the plan
(2017 annual PM<span class="inline-formula"><sub>2.5</sub><60</span> <span class="inline-formula">µ</span>g m<span class="inline-formula"><sup>−3</sup></span>) were it not for the
meteorological conditions in winter 2017 favouring the dispersion of air
pollutants. However, over the whole period (2013–2017), the primary
emission controls required by the action plan have led to significant
reductions in PM<span class="inline-formula"><sub>2.5</sub></span>, PM<span class="inline-formula"><sub>10</sub></span>, <span class="inline-formula">NO<sub>2</sub></span>, <span class="inline-formula">SO<sub>2</sub></span>, and CO from 2013 to 2017 of approximately 34 %, 24 %, 17 %, 68 %, and 33 %, respectively, after meteorological correction. The marked decrease in PM<span class="inline-formula"><sub>2.5</sub></span> and <span class="inline-formula">SO<sub>2</sub></span> is largely attributable to a reduction in coal
combustion. Our results indicate that the action plan has been highly
effective in reducing the primary pollution emissions and improving air
quality in Beijing. The action plan offers a successful example for
developing air quality policies in other regions of China and other
developing countries.</p> |
url |
https://www.atmos-chem-phys.net/19/11303/2019/acp-19-11303-2019.pdf |
work_keys_str_mv |
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