基于TROPOMI的长三角地区臭氧柱浓度总量的时空分布特征
Spatial and Temporal Distribution Characteristics of Total Ozone Column Concentration in the Yangtze River Delta Region Based on TROPOMI
DOI: 10.12677/AEP.2023.134123, PDF,    国家自然科学基金支持
作者: 宋金轲, 陈勇航, 刘 琼, 潘青青, 郑 一, 臧彦博:东华大学环境科学与工程学院,上海;赵兵科:中国气象局上海台风研究所,上海
关键词: TROPOMI臭氧总柱时空分布TROPOMI Formaldehyde Spatial and Temporal Distribution
摘要: 基于Sentenial-5P卫星上搭载的对流层监测仪(TROPOMI)提供的大气臭氧柱浓度数据,分析了2019~2021年长三角及其10个典型城市臭氧柱浓度的时空分布特征。结果表明:长三角地区臭氧总柱浓度总体呈现北高南低的空间分布特征,臭氧柱浓度较高的地区主要分布在32˚N及以北的地区;春季和夏季是臭氧柱浓度最高的季节,最高值出现在4月份,高达313.93 DU,所有季节均呈现出北高南低的空间分布特征。10个城市中,连云港市多年平均臭氧柱浓度最高(302.37 DU),温州市多年平均臭氧柱浓度最低(273.14 DU);所有城市臭氧柱浓度的月均值均在3月份达到峰值。
Abstract: Based on the atmospheric ozone column concentration data from Tropospheric Monitoring In-strument (TROPOMI) on board, the Sentenial-5P satellite, the spatial and temporal distribution characteristics of ozone column concentration in the Yangtze River Delta (YRD) and its 10 typical cities were analyzed from 2019 to 2021. The results show that the total column ozone concentration in the YRD region generally exhibits a spatial distribution characteristic of high in the north and low in the south, and the areas with higher column ozone concentration are mainly distributed in the area of 32˚N and north; spring and summer are the seasons with the highest column ozone concentration, and the highest value occurs in April, which is as high as 313.93 DU, and all the seasons show a spatial distribution characteristic of high in the north and low in the south. Among the 10 cities, Lianyungang city has the highest multi-year. The highest average ozone column concentration was found in Lianyungang (302.37 DU), and the lowest average ozone column concentration was found in Wenzhou (273.14 DU); the monthly average ozone column concentra-tion in all cities peaked in March.
文章引用:宋金轲, 陈勇航, 刘琼, 潘青青, 郑一, 赵兵科, 臧彦博. 基于TROPOMI的长三角地区臭氧柱浓度总量的时空分布特征[J]. 环境保护前沿, 2023, 13(4): 1014-1025. https://doi.org/10.12677/AEP.2023.134123

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