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首页> 外文期刊>The Science of the Total Environment >Spatiotemporal patterns of recent PM_(2.5) concentrations over typical urban agglomerations in China
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Spatiotemporal patterns of recent PM_(2.5) concentrations over typical urban agglomerations in China

机译:中国典型城市群最近PM_(2.5)浓度的时空分布

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China experiences severe particulate matter pollution associated with rapid economic growth and accelerated urbanization. In this study, concentrations of PM2.5 (fine particulate matter with an aerodynamic diameter = 2.5 mu m) throughout China, and specifically in nine typical urban agglomerations and one economic region, were statistically analyzed using high-resolution ground-based PM2.5 observations from June 2014 to May 2018. The spatial variation of PM2.5 was also explored via spatial autocorrelation analysis. High annual mean PM2.5 concentrations were predominantly concentrated in the Beijing-Tianjin-Hebei, Central Plain, Northern Slope of Tianshan Mountain, and Cheng-Yu urban agglomerations, as well as the Huaihai Economic Region. The proportion of air quality nationwide monitoring sites where annual average PM2.5 concentrations exceeded the Chinese Ambient Air Quality Standards (CAAQS) Grade II annual standard were 82.8%, 77.1%, and 70.8% in 2015, 2016, and 2017, respectively. Moreover, the frequency of PM2.5 concentrations meeting the CAAQS Grade I 24-h standard increased in five national-level urban agglomerations, and the average annual PM2.5 decreased from2015 to 2017 with a reduction rate of over 20%. The southern Beijing-Tianjin-Hebei agglomeration and surrounding areas revealed the highest PM2.5 pollution in four seasons. Monthly mean PM2.5 typically exhibited a characteristic "U" shape. Diurnal mean PM2.5 concentrations were generally consistent with typical urban agglomerations, with maximum and minimum PM2.5 values occurring at approximately 08: 00-12: 00 and 15: 00-17: 00, respectively, except for the Northern Slope of Tianshan Mountain urban agglomeration (NSTMUA) (14: 00 and 08: 00, respectively). A positive spatial autocorrelation of PM2.5 concentrations was observed in all urban agglomerations (except NSTM-UA); high-high agglomeration centers of PM2.5 pollution were located far inland with a circular distribution, and low-low agglomeration centers formed at the periphery of the high-high agglomeration region. This study is key for understanding the difference in PM2.5 concentrations among urban agglomerations and region-oriented air pollution control strategies are highly suggested. (c) 2018 Elsevier B. V. All rights reserved.
机译:中国经历了与经济快速增长和城市化进程加快相关的严重颗粒物污染。在这项研究中,使用高分辨率的地面PM2对中国整个PM2.5的浓度(空气动力学直径<= 2.5μm的细颗粒物)进行了统计分析,特别是在9个典型城市群和一个经济区。从2014年6月至2018年5月有5个观测结果。还通过空间自相关分析探索了PM2.5的空间变化。较高的年平均PM2.5浓度主要集中在京津冀,中原,天山北坡,成渝城市群以及淮海经济区。 2015年,2016年和2017年,全国平均PM2.5浓度超过中国环境空气质量标准(CAAQS)二级年标准的空气质量监测点的比例分别为82.8%,77.1%和70.8%。此外,在5个国家级城市群中,达到CAAQS I 24-h标准的PM2.5浓度的频率增加了,从2015年到2017年,PM2.5的年均减少量下降了20%以上。北京-天津-河北南部的集聚区及周边地区是四个季节中最高的PM2.5污染。每月平均PM2.5通常表现出特征性的“ U”形。日平均PM2.5浓度通常与典型的城市群一致,除天山北坡外,最大和最小PM2.5值分别出现在大约08:00-12:00和15:00-17:00山区城市群(NSTMUA)(分别为14:00和08:00)。在所有城市群中都观察到PM2.5浓度呈正空间自相关(NSTM-UA除外); PM2.5污染的高-高集聚中心位于内陆远处,呈圆形分布,高-低集聚区的外围形成了低-低集聚中心。这项研究对于理解城市群中PM2.5浓度的差异至关重要,因此强烈建议采用面向区域的空气污染控制策略。 (c)2018 Elsevier B.V.保留所有权利。

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