Accuracy assessment on eight public PM2.5 concentration datasets across China

IF 4.2 2区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Yangchen Di , Xizhang Gao , Haijiang Liu , Baolin Li , Cong Sun , Yecheng Yuan , Yong Ni
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引用次数: 0

Abstract

Economic development has historically led to environmental challenges, notably in China where fine particulate matter with an aerodynamic diameter no greater than 2.5 μm (PM2.5), has significantly influenced human health and social issues. However, the scarcity and uneven distribution of ground-based PM2.5 observation sites hinder studies about air pollution impacts at regional and national scales. Although PM2.5 datasets based on remote sensing retrieval algorithms have provided long-term and high-resolution gridded near surface PM2.5 concentration data recently, comparisons on accuracy between datasets were not conducted by previous studies. This study evaluated eight publicly accessible PM2.5 datasets (i.e., CHAP, GHAP, GWRPM25, HQQPM25, LGHAP v1, LGHAP v2, MuAP, and TAP) across China using independent records at 1020 monitoring sites from 2017 to 2022 at monthly and annual granularities. Mean Absolute Errors (MAEs) showed a seasonal trend, with higher errors in winter and lower in summer. Datasets exhibited a bias towards overestimation or underestimation based on concentration levels. CHAP, GWRPM25, and HQQPM25 had better estimation control. Additionally, the incorporation of spatiotemporal features into original machine learning based algorithms was likely credited to the outperformance compared to conventional PM2.5 simulation methods. Overall, this study contributed to comprehensive references for PM2.5 concentration dataset users and potential explanations to the variations within and among datasets.

全国八个公共 PM2.5 浓度数据集的精度评估
经济发展历来带来环境挑战,特别是在中国,空气动力学直径不大于 2.5 μm 的细颗粒物(PM2.5)对人类健康和社会问题产生了重大影响。然而,地面 PM2.5 观测点的稀缺和分布不均阻碍了对区域和国家范围内空气污染影响的研究。尽管基于遥感检索算法的 PM2.5 数据集最近提供了长期和高分辨率的网格化近地面 PM2.5 浓度数据,但以往的研究并未对数据集之间的准确性进行比较。本研究利用 2017 年至 2022 年期间中国 1020 个监测点月度和年度粒度的独立记录,对八个可公开获取的 PM2.5 数据集(即 CHAP、GHAP、GWRPM25、HQQPM25、LGHAP v1、LGHAP v2、MuAP 和 TAP)进行了评估。平均绝对误差(MAEs)呈现季节性趋势,冬季误差较大,夏季较小。根据浓度水平,数据集表现出高估或低估的偏差。CHAP、GWRPM25 和 HQQPM25 的估计控制较好。此外,与传统的 PM2.5 模拟方法相比,将时空特征纳入基于机器学习的原始算法可能是性能更优的原因。总之,这项研究为 PM2.5 浓度数据集用户提供了全面的参考,并为数据集内部和数据集之间的差异提供了可能的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Atmospheric Environment
Atmospheric Environment 环境科学-环境科学
CiteScore
9.40
自引率
8.00%
发文量
458
审稿时长
53 days
期刊介绍: Atmospheric Environment has an open access mirror journal Atmospheric Environment: X, sharing the same aims and scope, editorial team, submission system and rigorous peer review. Atmospheric Environment is the international journal for scientists in different disciplines related to atmospheric composition and its impacts. The journal publishes scientific articles with atmospheric relevance of emissions and depositions of gaseous and particulate compounds, chemical processes and physical effects in the atmosphere, as well as impacts of the changing atmospheric composition on human health, air quality, climate change, and ecosystems.
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