Reconstructing 6-hourly PM.sub.2.5 datasets from 1960 to 2020 in China

Fine particulate matter (PM.sub.2.5) has altered the radiation balance on Earth and raised environmental and health risks for decades but has only been monitored widely since 2013 in China. Historical long-term PM.sub.2.5 records with high temporal resolution are essential but lacking for both resea...

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Veröffentlicht in:Earth system science data 2022-07, Vol.14 (7), p.3197
Hauptverfasser: Zhong, Junting, Zhang, Xiaoye, Gui, Ke, Liao, Jie, Fei, Ye, Jiang, Lipeng, Guo, Lifeng, Liu, Liangke, Che, Huizheng, Wang, Yaqiang, Wang, Deying, Zhou, Zijiang
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container_issue 7
container_start_page 3197
container_title Earth system science data
container_volume 14
creator Zhong, Junting
Zhang, Xiaoye
Gui, Ke
Liao, Jie
Fei, Ye
Jiang, Lipeng
Guo, Lifeng
Liu, Liangke
Che, Huizheng
Wang, Yaqiang
Wang, Deying
Zhou, Zijiang
description Fine particulate matter (PM.sub.2.5) has altered the radiation balance on Earth and raised environmental and health risks for decades but has only been monitored widely since 2013 in China. Historical long-term PM.sub.2.5 records with high temporal resolution are essential but lacking for both research and environmental management. Here, we reconstruct a site-based PM.sub.2.5 dataset at 6 h intervals from 1960 to 2020 that combines long-term visibility, conventional meteorological observations, emissions, and elevation. The PM.sub.2.5 concentration at each site is estimated based on an advanced machine learning model, LightGBM, that takes advantage of spatial features from 20 surrounding meteorological stations. Our model's performance is comparable to or even better than those of previous studies in by-year cross validation (CV) (R.sup.2 =0.7) and spatial CV (R.sup.2 =0.76) and is more advantageous in long-term records and high temporal resolution. This model also reconstructs a 0.25.sup." x 0.25.sup.", 6-hourly, gridded PM.sub.2.5 dataset by incorporating spatial features. The results show PM.sub.2.5 pollution worsens gradually or maintains before 2010 from an interdecadal scale but mitigates in the following decade. Although the turning points vary in different regions, PM.sub.2.5 mass concentrations in key regions decreased significantly after 2013 due to clean air actions. In particular, the annual average value of PM.sub.2.5 in 2020 is nearly the lowest since 1960. These two PM.sub.2.5 datasets (publicly available at
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source DOAJ Directory of Open Access Journals; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals
subjects Air pollution
Analysis
Environmental protection
Health aspects
title Reconstructing 6-hourly PM.sub.2.5 datasets from 1960 to 2020 in China
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