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Exploring the spatiotemporal pattern of PM_(2.5) distribution and its determinants in Chinese cities based on a multilevel analysis approach

机译:基于多层次分析方法的中国城市PM_(2.5)分布时空格局及其决定因素

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China has been under threat of severe haze in recent years, particularly that caused by fine particulatematter (PM2.5). Exploring the determinants of PM2.5 concentration is critical for improving air quality. The influencing mechanism of smog pollution is a comprehensive and systematic process affected bymultiple driving factors. In this research, we collected PM2.5 monitoring data from 292 cities across China in 2015 and employed multilevel regression models constructed using three levels to detect the physical and socioeconomic driving forces behind the PM2.5 concentration at monthly, seasonal and spatial scales, which captured random effects both varied by season and region. The results indicated significant spatiotemporal heterogeneity in the PM2.5 distribution, with the pollution core located in central China and northern China. The most severely haze episodes occurred in winter. Multilevel models showed that 46.40% of the variance was derived from the seasonal and spatial levels, and the models could explain a maximum of 90.7% of the PM2.5 concentration variance. The multilevel model identified more determinant influences varying by time and region. The outcomes suggested that the impacts of temperature and relative humidity on PM2.5 were of significant spatiotemporal heterogeneity due to the influencing mechanism differing from season and station. The variation of anthropogenic activities led to the socioeconomic influences featured a significant spatiotemporal heterogeneity. This research revealed the spatiotemporal characteristic of PM2.5 pollution influencingmechanism fromphysical and perspective and provided effective strategies for restricting air pollution. (c) 2018 Elsevier B.V. All rights reserved.
机译:近年来,中国一直受到严重雾霾的威胁,特别是细颗粒物(PM2.5)引起的雾霾。探索PM2.5浓度的决定因素对于改善空气质量至关重要。烟雾污染的影响机制是一个受多种驱动因素影响的综合,系统的过程。在这项研究中,我们收集了2015年中国292个城市的PM2.5监测数据,并采用了多层次回归模型,该模型使用三个级别构建,以检测月度,季节和空间尺度下PM2.5浓度背后的物理和社会经济驱动力,捕获的随机效应随季节和地区而变化。结果表明,PM2.5分布存在明显的时空异质性,污染核心位于中国中部和中国北部。最严重的霾天气发生在冬季。多级模型显示46.40%的方差来自季节和空间水平,并且这些模型最多可以解释PM2.5浓度方差的90.7%。多层次模型确定了更多的决定因素影响,这些影响随时间和地区而变化。结果表明,温度和相对湿度对PM2.5的影响具有显着的时空异质性,这是由于其影响机理不同于季节和气象站。人为活动的变化导致了社会经济的影响,具有明显的时空异质性。这项研究从物理和角度揭示了PM2.5污染影响机制的时空特征,为限制空气污染提供了有效的策略。 (c)2018 Elsevier B.V.保留所有权利。

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