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Evaluation of the community multiscale air quality (CMAQ.) model version 4.5: Sensitivities impacting model performance; Part II-particulate matter

机译:对社区多尺度空气质量(CMAQ。)模型版本4.5的评估:敏感性影响模型性能;第二部分颗粒物

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This paper is Part II in a pair of papers that examines the results of the Community Multiscale Air Quality (CMAQ) model version 4.5 (v4.5) and discusses the potential explanations for the model performance characteristics seen. The focus of this paper is on fine particulate matter (PM_(2.5)) and its chemical composition. Improvements made to the dry deposition velocity and cloud treatment in CMAQ v4.5 addressing compensating errors in 36-km simulations improved particulate sulfate (SO_4~(2-)) predictions. Large overpredictions of particulate nitrate (NO_3~-) and ammonium (NH_4~+) in the fall are likely due to a gross overestimation of seasonal ammonia (NH_3) emissions. Carbonaceous aerosol concentrations are substantially underpredicted during the late spring and summer months, most likely due, in part, to a lack of some secondary organic aerosol (SOA) formation pathways in the model. Comparisons of CMAQ PM_(2.5) predictions with observed PM_(2.5) mass show mixed seasonal performance. Spring and summer show the best overall performance, while performance in the winter and fall is relatively poor, with significant overpredictions of total PM_(2.5) mass in those seasons. The model biases in PM_(2.5) mass cannot be explained by summing the model biases for the major inorganic ions plus carbon. Errors in the prediction of other unspeciated PM_(2.5) (PM_(Other)) are largely to blame for the errors in total PM_(2.5) mass predictions, and efforts are underway to identify the cause of these errors.
机译:本文是一对论文的第二部分,该论文检查了社区多尺度空气质量(CMAQ)模型版本4.5(v4.5)的结果,并讨论了所看到的模型性能特征的潜在解释。本文的重点是细颗粒物(PM_(2.5))及其化学成分。 CMAQ v4.5中对干沉降速度和云处理的改进解决了36公里模拟中的补偿误差,从而改善了硫酸盐颗粒(SO_4〜(2-))的预测。在秋季,对颗粒硝酸盐(NO_3〜-)和铵盐(NH_4〜+)的高估可能是由于对季节性氨(NH_3)排放量的高估。在春季和夏季的后期,碳质气溶胶的浓度被大大低估了,这很可能部分是由于模型中缺少一些次生有机气溶胶(SOA)形成途径。 CMAQ PM_(2.5)预测值与观测到的PM_(2.5)质量的比较表明混合季节表现。春季和夏季显示出最佳的总体性能,而冬季和秋季的性能相对较差,在那些季节中,总PM_(2.5)的总质量明显过高。 PM_(2.5)质量的模型偏差不能通过对主要无机离子加碳的模型偏差求和来解释。其他未指定的PM_(2.5)(PM_(Other))的预测误差在很大程度上应归因于PM_(2.5)总质量预测中的误差,并且正在努力确定这些误差的原因。

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