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Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence

[Image: see text] Nitrogen dioxide (NO(2)) at the ground level poses a serious threat to environmental quality and public health. This study developed a novel, artificial intelligence approach by integrating spatiotemporally weighted information into the missing extra-trees and deep forest models to...

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Autores principales: Wei, Jing, Liu, Song, Li, Zhanqing, Liu, Cheng, Qin, Kai, Liu, Xiong, Pinker, Rachel T., Dickerson, Russell R., Lin, Jintai, Boersma, K. F., Sun, Lin, Li, Runze, Xue, Wenhao, Cui, Yuanzheng, Zhang, Chengxin, Wang, Jun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2022
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9301922/
https://www.ncbi.nlm.nih.gov/pubmed/35767687
http://dx.doi.org/10.1021/acs.est.2c03834
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author Wei, Jing
Liu, Song
Li, Zhanqing
Liu, Cheng
Qin, Kai
Liu, Xiong
Pinker, Rachel T.
Dickerson, Russell R.
Lin, Jintai
Boersma, K. F.
Sun, Lin
Li, Runze
Xue, Wenhao
Cui, Yuanzheng
Zhang, Chengxin
Wang, Jun
author_facet Wei, Jing
Liu, Song
Li, Zhanqing
Liu, Cheng
Qin, Kai
Liu, Xiong
Pinker, Rachel T.
Dickerson, Russell R.
Lin, Jintai
Boersma, K. F.
Sun, Lin
Li, Runze
Xue, Wenhao
Cui, Yuanzheng
Zhang, Chengxin
Wang, Jun
author_sort Wei, Jing
collection PubMed
description [Image: see text] Nitrogen dioxide (NO(2)) at the ground level poses a serious threat to environmental quality and public health. This study developed a novel, artificial intelligence approach by integrating spatiotemporally weighted information into the missing extra-trees and deep forest models to first fill the satellite data gaps and increase data availability by 49% and then derive daily 1 km surface NO(2) concentrations over mainland China with full spatial coverage (100%) for the period 2019–2020 by combining surface NO(2) measurements, satellite tropospheric NO(2) columns derived from TROPOMI and OMI, atmospheric reanalysis, and model simulations. Our daily surface NO(2) estimates have an average out-of-sample (out-of-city) cross-validation coefficient of determination of 0.93 (0.71) and root-mean-square error of 4.89 (9.95) μg/m(3). The daily seamless high-resolution and high-quality dataset “ChinaHighNO(2)” allows us to examine spatial patterns at fine scales such as the urban–rural contrast. We observed systematic large differences between urban and rural areas (28% on average) in surface NO(2), especially in provincial capitals. Strong holiday effects were found, with average declines of 22 and 14% during the Spring Festival and the National Day in China, respectively. Unlike North America and Europe, there is little difference between weekdays and weekends (within ±1 μg/m(3)). During the COVID-19 pandemic, surface NO(2) concentrations decreased considerably and then gradually returned to normal levels around the 72nd day after the Lunar New Year in China, which is about 3 weeks longer than the tropospheric NO(2) column, implying that the former can better represent the changes in NO(x) emissions.
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spelling pubmed-93019222022-07-22 Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence Wei, Jing Liu, Song Li, Zhanqing Liu, Cheng Qin, Kai Liu, Xiong Pinker, Rachel T. Dickerson, Russell R. Lin, Jintai Boersma, K. F. Sun, Lin Li, Runze Xue, Wenhao Cui, Yuanzheng Zhang, Chengxin Wang, Jun Environ Sci Technol [Image: see text] Nitrogen dioxide (NO(2)) at the ground level poses a serious threat to environmental quality and public health. This study developed a novel, artificial intelligence approach by integrating spatiotemporally weighted information into the missing extra-trees and deep forest models to first fill the satellite data gaps and increase data availability by 49% and then derive daily 1 km surface NO(2) concentrations over mainland China with full spatial coverage (100%) for the period 2019–2020 by combining surface NO(2) measurements, satellite tropospheric NO(2) columns derived from TROPOMI and OMI, atmospheric reanalysis, and model simulations. Our daily surface NO(2) estimates have an average out-of-sample (out-of-city) cross-validation coefficient of determination of 0.93 (0.71) and root-mean-square error of 4.89 (9.95) μg/m(3). The daily seamless high-resolution and high-quality dataset “ChinaHighNO(2)” allows us to examine spatial patterns at fine scales such as the urban–rural contrast. We observed systematic large differences between urban and rural areas (28% on average) in surface NO(2), especially in provincial capitals. Strong holiday effects were found, with average declines of 22 and 14% during the Spring Festival and the National Day in China, respectively. Unlike North America and Europe, there is little difference between weekdays and weekends (within ±1 μg/m(3)). During the COVID-19 pandemic, surface NO(2) concentrations decreased considerably and then gradually returned to normal levels around the 72nd day after the Lunar New Year in China, which is about 3 weeks longer than the tropospheric NO(2) column, implying that the former can better represent the changes in NO(x) emissions. American Chemical Society 2022-06-29 2022-07-19 /pmc/articles/PMC9301922/ /pubmed/35767687 http://dx.doi.org/10.1021/acs.est.2c03834 Text en © 2022 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by/4.0/Permits the broadest form of re-use including for commercial purposes, provided that author attribution and integrity are maintained (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Wei, Jing
Liu, Song
Li, Zhanqing
Liu, Cheng
Qin, Kai
Liu, Xiong
Pinker, Rachel T.
Dickerson, Russell R.
Lin, Jintai
Boersma, K. F.
Sun, Lin
Li, Runze
Xue, Wenhao
Cui, Yuanzheng
Zhang, Chengxin
Wang, Jun
Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence
title Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence
title_full Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence
title_fullStr Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence
title_full_unstemmed Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence
title_short Ground-Level NO(2) Surveillance from Space Across China for High Resolution Using Interpretable Spatiotemporally Weighted Artificial Intelligence
title_sort ground-level no(2) surveillance from space across china for high resolution using interpretable spatiotemporally weighted artificial intelligence
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9301922/
https://www.ncbi.nlm.nih.gov/pubmed/35767687
http://dx.doi.org/10.1021/acs.est.2c03834
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