[基于遥感数据的PM2.5与O3协同防控区域区划与分析]。

Shen-Xin Li, Bin Zou, Feng-Ying Zhang, Ning Liu, Chen-Hao Xue, Jing Liu
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引用次数: 1

摘要

基于站点的大气污染监测数据不能支持大气污染防治区域的区划。针对这一问题,本研究提出了基于多源遥感数据和GIS空间统计分析方法的协同防治区域区划方法,并对2015 - 2020年中国PM2.5和O3大气污染进行了定量分析。结果表明:PM2.5浓度明显下降,o3浓度保持稳定;PM2.5污染主要发生在秋冬季,O3污染主要发生在春夏季。PM2.5与O3浓度变化率存在显著的空间不一致性,其中PM2.5下降而O3增加、PM2.5与O3同时减少、PM2.5与O3同时增加、PM2.5增加而O3减少的比例分别为38.34%、35.12%、15.24%和10.89%。2015 - 2020年PM2.5与O3协同防控区域边界呈动态变化趋势,2015 - 2018年呈扩大趋势,2019年后呈缩小趋势。总体来看,PM2.5与O3协同防控区域范围集中在“2+26”城市、汾渭平原、长三角北部和山东。相比之下,“PM2.5优先”和“O3优先”的区域范围相对稳定。“PM2.5优先”区域主要集中在辽吉、湖赣、成渝、塔克拉玛干—河西走廊一带,“O3优先”区域主要集中在珠三角、长三角及渤海湾周边特定区域。基于遥感的PM2.5和O3制图具有全覆盖、精细空间模拟的优势,可支持协同防控区域区划和政策实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Regionalization and Analysis of PM2.5 and O3 Synergetic Prevention and Control Areas Based on Remote Sensing Data].

Site-based air pollution monitoring data cannot support the regionalization of air pollution prevention and control areas. Faced with this problem, this study proposed a method of regionalizing synergetic prevention and control areas based on multi-source remote sensing data and GIS spatial statistical analysis methods and carried out quantitative analyses of PM2.5 and O3 air pollution in China from 2015 to 2020. The results showed that there was an obvious decrease in PM2.5 concentrations, and O3concentrations remained stable; PM2.5 pollution mostly occurred in autumn and winter, and O3 pollution occurred in spring and summer. A significant spatial inconsistency was shown between the change rate of PM2.5 and O3 concentrations, in which the proportions of PM2.5 decreasing and O3 increasing, PM2.5 and O3 both decreasing, PM2.5 and O3 both increasing, and PM2.5 increasing and O3 decreasing accounted for 38.34%, 35.12%, 15.24%, and 10.89%, respectively. The results also showed that the boundary of PM2.5 and O3 synergetic prevention and control areas was dynamic during 2015 and 2020, showing a trend of expanding from 2015 to 2018 and then becoming smaller after 2019. Generally, the scope of PM2.5 and O3 synergetic prevention and control areas was concentrated in "2+26" cities, Fenwei plain, north of the Yangtze River Delta, and Shandong. In contrast, the regional scopes of "PM2.5 first" and "O3 first" were relatively stable. Areas of "PM2.5 first" were mainly carried out in Liaoning-Jilin, Hubei-Hunan-Jiangxi, Chengdu-Chongqing, and Taklimakan-Hexi Corridor, whereas "O3 first" areas were mainly in specific regions of the Pearl River Delta, Yangtze River Delta, and surrounding areas of Bohai Bay. Remote sensing-based PM2.5 and O3 mapping has the advantages of full-coverage and fine spatial simulation, which can support the regionalization of synergetic prevention and control areas and implementation of policies.

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