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Assessment of aerosol types on improving the estimation of surface PM2.5 concentrations by using ground-based aerosol optical depth dataset

机译:通过使用地面气溶胶光学深度数据集来评估气溶胶类型改善表面PM2.5浓度的估计

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In this study, the influence of aerosol type classification on estimating surface PM2.5 concentrations was assessed by using ground-based aerosol optical depth (AOD) at 22 ground-based observation points in the United States. To clarify the influence, a two-stage model consisting of a multiple regression model (MRM) and an aerosol classification model (ACM) was proposed to estimate surface PM2.5 concentrations, and results from a traditional MRM and the new ACM-MRM were compared. Results show that the average determination coefficient (R2) of the ACM-MRM (0.52) was greater than that of the MRM (0.44), while the root mean square error (RMSE) and mean absolute percent error (MAPE) of the ACM-MRM (3.74?μg/m3 and 34.91%, respectively) were lower than the values obtained with the MRM (4.09?μg/m3 and 37.64%, respectively). The use of ACM improved the estimation of daily PM2.5 concentrations in different regions and different seasons by reducing the deviations caused by aerosol type changes. Further analysis demonstrated that aerosol type changes had adverse influences on the estimation of short-term PM2.5 concentrations and the introduction of ACM can effectively restrain the adverse influences when aerosols change frequently.
机译:在该研究中,通过在美国的22个基于地基观察点的地面的观察点处使用地基气溶胶光学深度(AOD)评估气溶胶型分类对估计表面PM2.5浓度的影响。为了阐明影响,提出了由多元回归模型(MRM)和气溶胶分类模型(ACM)组成的两级模型来估计表面PM2.5浓度,以及传统MRM和新ACM-MRM的结果比较的。结果表明,ACM-MRM(0.52)的平均确定系数(R2)大于MRM(0.44),而根均线误差(RMSE)和平均值百分比误差(MAPE)的ACM- MRM(分别为3.74Ωμg/ m3和34.91%)低于用MRM(4.09Ωμg/ m3和37.64%)获得的值。通过减少由气溶胶类型变化引起的偏差,使用ACM的使用改善了不同地区的每日PM2.5浓度和不同季节。进一步的分析表明,气溶胶类型的变化对短期PM2.5浓度的估计产生了不利影响,并且在气溶胶经常发生变化时,ACM的引入可以有效地限制不利影响。

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