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首页> 外文期刊>Environmental Science and Pollution Research >A diagnostic evaluation of modeled mercury wet depositions in Europe using atmospheric speciated high-resolution observations
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A diagnostic evaluation of modeled mercury wet depositions in Europe using atmospheric speciated high-resolution observations

机译:使用大气指定的高分辨率观测值对欧洲模拟的汞湿沉降进行诊断评估

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摘要

This study is part of the Global Mercury Observation System (GMOS), a European FP7 project dedicated to the improvement and validation of mercury models to assist in establishing a global monitoring network and to support political decisions. One key question about the global mercury cycle is the efficiency of its removal out of the atmosphere into other environmental compartments. So far, the evaluation of modeled wet deposition of mercury was difficult because of a lack of long-term measurements of oxidized and elemental mercury. The oxidized mercury species gaseous oxidized mercury (GOM) and particle-bound mercury (PBM) which are found in the atmosphere in typical concentrations of a few to a few tens pg/m3 are the relevant components for the wet deposition of mercury, hi this study, the first European long-term dataset of speciated mercury taken at Waldhoi?Germany was used to evaluate deposition fields modeled with the chemistry transport model (CTM) Community Multiscale Air Quality (CMAQ) and to analyze the influence of the governing parameters. The influence of the parameters precipitation and atmospheric concentration was evaluated using different input datasets for a variety of CMAQ simulations for the year 2009. It was found that on the basis of daily and weekly measurement data, the bias of modeled depositions could be explained by the bias of precipitation fields and atmospheric concentrations of GOM and PBM. A correction of the modeled wet deposition using observed daily precipitation increased the correlation, on average, from 0.17 to 0.78. An additional correction based on the daily average GOM and PBM concentration lead to a 50 % decrease of the model error for all CMAQ scenarios. Monthly deposition measurements were found to have a too low temporal resolution to adequately analyze model deficiencies in wet deposition processes due to the nonlinear nature of the scavenging process. Moreover, the general overestimation of atmospheric GOM by the CTM in combination with an underestimation of low precipitation events in the meteorological models lead to a good agreement of total annual wet deposition besides the large error in weekly deposition estimates. Moreover, it was found that the current speciation profiles for GOM emissions are the main factor for the overestimation of atmospheric GOM concentrations and might need to be revised in the future. The assumption of zero emissions of GOM lead to an improvement of the mean normalized bias for three-hourly observations of atmospheric GOM from 9.7 to 0.5, Furthermore, the diurnal correlation between model and observation increased from 0.01 to 0.64. This is a strong indicator that GOM is not directly emitted from primary sources but is mainly created by oxidation of GEM.
机译:这项研究是全球汞观测系统(GMOS)的一部分,该计划是欧洲FP7项目,致力于改善和验证汞模型,以帮助建立全球监测网络并支持政治决策。关于全球汞循环的一个关键问题是将其从大气中清除到其他环境隔室中的效率。到目前为止,由于缺乏对氧化汞和元素汞的长期测量,因此很难对模型化的湿法汞沉积进行评估。大气中典型浓度为几十至数十pg / m3的氧化汞物种,气态氧化汞(GOM)和颗粒结合汞(PBM)是湿法沉积汞的相关成分,在此在这项研究中,在沃尔多瓦(Waldhoi?Germany)获得的第一个欧洲长期特定汞长期数据集被用于评估以化学迁移模型(CTM)社区多尺度空气质量(CMAQ)为模型的沉积场,并分析了控制参数的影响。使用不同的输入数据集,对2009年的各种CMAQ模拟,评估了降水参数和大气浓度参数的影响。发现,根据每日和每周的测量数据,可以通过模拟解释沉积物的偏差。降水场的偏差和GOM和PBM的大气浓度。使用观察到的每日降水量对模拟的湿沉降进行校正后,相关性平均从0.17增加到0.78。根据每日平均GOM和PBM浓度进行的其他修正会导致所有CMAQ方案的模型误差降低50%。由于清除过程的非线性性质,发现每月沉积测量的时间分辨率太低,无法充分分析湿法沉积过程中的模型缺陷。此外,CTM对大气GOM的总体高估与气象模型中低降水事件的低估相结合,导致了年度湿沉降总量的良好一致性,此外每周的沉积估算误差很大。此外,还发现,目前对GOM排放物的形态分析是高估大气中GOM浓度的主要因素,将来可能需要修订。 GOM零排放的假设导致对大气GOM的三个小时观测的平均归一化偏差从9.7改善到0.5,此外,模型与观测值的昼夜相关性从0.01增加到0.64。这是一个强有力的指标,表明GOM并非直接从主要来源发出,而主要是由GEM的氧化产生的。

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