In recent years, China has made great efforts to control air pollution. During the governance process, it is found that fine particulate matter (PM2.5) and ozone (O3) change in the same trend among some areas and the opposite in others, which brings some difficulties to take measures in a planned way. Therefore, this study adopted multi-year and large-scale air quality data to explore the distribution of correlation between PM2.5 and O3, and proposed a concept called dynamic similar hu lines to replace the single fixed division in the previous research. Furthermore, this study discussed the causes of distribution patterns quantitatively with geographical detector and random forest. The causes included natural factors and anthropogenic factors. And these factors could be divided into three parts according to the characteristics of spatial distribution: broadly changing with longitude, changing with latitude, and having local characteristics. Overall, regions with relatively more densely population, higher GDP, lower altitude, higher humidity, higher atmospheric pressure, higher surface temperature, less sunshine hours and more accumulated precipitation often corresponds to positive correlation coefficient between PM2.5 and O3, no matter in which season. The parts with opposite conditions that mentioned above are essentially negative correlation coefficient. And what's more, humidity, global surface temperature, air temperature and accumulated precipitation are four decisive factors to form the distribution of correlation between PM2.5 and O3. In general, collaborative governance of atmospheric pollutants should consider particular time and space background and also be based on the local actual socio-economic situations, geography and geomorphology, climate and meteorology and other comprehensive factors.
翻译:近些年来,中国为控制空气污染做出了巨大努力,在治理过程中发现微粒物质(PM2.5)和臭氧(O3)在某些地区之间变化趋势相同,而在另一些地区则相反,微粒物质(PM2.5)和臭氧(O3)变化趋势相同,因此难以有计划地采取措施,因此,本研究采用了多年和大规模空气质量数据,以探索PM2.5和O3之间相互关系的分布情况,并提出了一个概念,称为动态相似的呼线,以取代先前研究中单一固定的分界线。此外,本研究还从数量上与地理探测器和随机森林讨论了分布模式的成因,其原因包括自然因素和人为因素。这些因素可能根据空间分布的特征分为三个部分:随着纬度、纬度变化和具有当地特点的特征而大范围变化。总体而言,人口密度较高、国内总产值较高、海拔较高、湿度较高、湿度较高、大气压力较高、地表温度较低、降水量较多和降水量较多的区域往往与P2.5和O-3之间的正相关系数相对。在上文提到的那些条件不同的部分基本上为负相关因素的背景。