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揭示气象变量与空气污染物浓度之间关联中的因果关系。

Revealing causality in the associations between meteorological variables and air pollutant concentrations.

作者信息

Levi Yoav, Broday David M

机构信息

Department of Civil and Environmental Engineering, Technion, Israel Institute of Technology, Haifa 32000, Israel.

Israel Meteorological Service, P.O. Box 25, Bet Dagan 5025001, Israel.

出版信息

Environ Pollut. 2024 Mar 15;345:123526. doi: 10.1016/j.envpol.2024.123526. Epub 2024 Feb 13.

DOI:10.1016/j.envpol.2024.123526
PMID:38355085
Abstract

Understanding the role of meteorology in determining air pollutant concentrations is an important goal for better comprehension of air pollution dispersion and fate. It requires estimating the strength of the causal associations between all the relevant meteorological variables and the pollutant concentrations. Unfortunately, many of the meteorological variables are not routinely observed. Furthermore, the common analysis methods cannot establish causality. Here we use the output of a numerical weather prediction model as a proxy for real meteorological data, and study the causal relationships between a large suite of its meteorological variables, including some rarely observed ones, and the corresponding nitrogen dioxide (NO) concentrations at multiple observation locations. Time-lagged convergent cross mapping analysis is used to ascertain causality and its strength, and the Pearson and Spearman correlations are used to study the direction of the associations. The solar radiation, temperature lapse rate, boundary layer height, horizontal wind speed and wind shear were found to be causally associated with the NO concentrations, with mean time lags of their maximal impact at -3, -1, -2 and -3 hours, respectively. The nature of the association with the vertical wind speed was found to be uncertain and region-dependent. No causal association was found with relative humidity, temperature and precipitation.

摘要

了解气象学在确定空气污染物浓度方面的作用,是更好地理解空气污染扩散和归宿的一个重要目标。这需要估计所有相关气象变量与污染物浓度之间因果关联的强度。不幸的是,许多气象变量并非常规观测项目。此外,常用的分析方法无法确定因果关系。在此,我们使用数值天气预报模型的输出作为实际气象数据的替代物,并研究其大量气象变量(包括一些很少观测到的变量)与多个观测地点相应二氧化氮(NO)浓度之间的因果关系。采用时间滞后收敛交叉映射分析来确定因果关系及其强度,并用皮尔逊和斯皮尔曼相关性来研究关联方向。结果发现,太阳辐射、气温直减率、边界层高度、水平风速和风切变与NO浓度存在因果关联,其最大影响的平均时间滞后分别为-3、-1、-2和-3小时。与垂直风速的关联性质不确定且因地区而异。未发现与相对湿度、温度和降水存在因果关联。

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