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Self-organized classification of boundary layer meteorology and associated characteristics of air quality in Beijing

机译:北京空气质量边界层气象的自组织分类及相关特征

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Self-organizing maps (SOMs; a feature-extracting technique based on an unsupervised machine learning algorithm) are used to classify atmospheric boundary layer (ABL) meteorology over Beijing through detecting topological relationships among the 5-year (2013–2017) radiosonde-based virtual potential temperature profiles. The classified ABL types are then examined in relation to near-surface pollutant concentrations to understand the modulation effects of the changing ABL meteorology on Beijing's air quality. Nine ABL types (i.e., SOM nodes) are obtained through the SOM classification technique, and each is characterized by distinct dynamic and thermodynamic conditions. In general, the self-organized ABL types are able to distinguish between high and low loadings of near-surface pollutants. The average concentrations of PM2.5, NO2 and CO dramatically increased from the near neutral (i.e., Node 1) to strong stable conditions (i.e., Node 9) during all seasons except for summer. Since extremely strong stability can isolate the near-surface observations from the influence of elevated SO2 pollution layers, the highest average SO2 concentrations are typically observed in Node 3 (a layer with strong stability in the upper ABL) rather than Node 9. In contrast, near-surface O3 shows an opposite dependence on atmospheric stability, with the lowest average concentration in Node 9. Analysis of three typical pollution months (i.e., January 2013, December 2015 and December 2016) suggests that the ABL types are the primary drivers of day-to-day variations in Beijing's air quality. Assuming a fixed relationship between ABL type and PM2.5 loading for different years, the relative (absolute) contributions of the ABL anomaly to elevated PM2.5 levels are estimated to be 58.3% (44.4μgm?3) in January 2013, 46.4% (22.2μgm?3) in December 2015 and 73.3% (34.6μgm?3) in December 2016.
机译:自组织地图(SOMS;基于无监督机器学习算法的特征提取技术)用于通过检测5年(2013-2017)无线电探测器的拓扑关系来分类大气边界层(ABL)气象虚拟潜在的温度分布。然后根据近表面污染物浓度检查分类的ABL类型,以了解改变ABL气象对北京空气质量的调制效果。通过SOM分类技术获得九个ABL类型(即,SOM节点),并且各自的特征在于不同的动态和热力学条件。通常,自组织ABL类型能够区分近表面污染物的高负荷。除夏季外,PM2.5,NO2和Co的平均浓度从近中立(即节点1)到强的稳定条件(即节点9)。由于极强强的稳定性可以从升高的SO2污染层的影响中隔离近表面观察,因此在节点3中通常观察到最高的平均SO2浓度(在上部ABL中具有强稳定性的层)而不是节点9。相反,近表面O3显示了对大气稳定性的相反依赖性,节点9中的最低平均浓度9.分析了三个典型污染月份(即2013年1月,2016年12月,2016年12月)认为,ABL类型是一天的主要驱动因素北京空气质量的日子变异。假设ABL型和PM2.5载荷之间的固定关系不同年份,ABL异常升高PM2.5级别的相对(绝对)贡献估计为2013年1月的58.3%(44.4μgm?3),46.4% (22.2μgm?3)2015年12月和2016年12月的73.3%(34.6μg?3)。

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