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Synoptic evaluation of modelled and bioindicated atmospheric deposition of heavy metals in forests

机译:对森林中重金属的模拟和生物指示性大气沉降的天气学评估

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摘要

Heavy metals (HM) concentrations in moss, leaves and needles and organic surface soil layers, derived from the European Moss Survey, the German Environmental Specimen Bank (ESB) and the ICP Forests were compared with those from deposition modelling by use of LOTOS-EUROS (LE) and EMEP/MSCE-HM in terms of their spatial patterns and temporal trends. The total atmospheric deposition differs considerably between the two models. HM concentrations in biomonitors (moss, leaves, and needles) were found to be predominantly higher correlated to deposition modelled by LE compared to EMEP. For Cd, strongest correlations could be found between deposition data calculated by LE and concentrations in moss (Europe, geostatistically estimated) and in needles (Germany). Regarding Pb, the coefficients of correlation came out to be the highest for EMEP deposition and measured element concentrations in moss (Europe) as well as for LE deposition and needles from ICP Forests Level II (Germany) and, respectively, leaves from ESB (Germany).
机译:使用LOTOS-EUROS,将欧洲苔藓调查,德国环境标本银行(ESB)和ICP森林得出的苔藓,树叶和针叶以及有机表层土壤中的重金属(HM)浓度与沉积模型进行了比较。 (LE)和EMEP / MSCE-HM的空间格局和时间趋势。两种模型之间的总大气沉积差异很大。与EMEP相比,发现生物监测器(苔藓,叶子和针叶)中的HM浓度与LE模拟的沉积物相关性更高。对于镉,在LE计算的沉积数据与苔藓浓度(欧洲,地统计学估计)和针叶浓度(德国)之间可以找到最强的相关性。关于铅,在EMEP沉积和苔藓中测得的元素浓度(欧洲),LE沉积物和ICP Forests II级(德国)的针叶以及ESB叶片(德国)的相关系数最高。 )。

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  • 来源
    《Gefahrstoffe - Reinhaltung der Luft》 |2017年第3期|75-90|共16页
  • 作者

    Nickel S.; Schroder W.; Fries C.;

  • 作者单位

    Univ Vechta, Lehrstuhl Landschaftsokol, Vechta, Germany;

    Univ Vechta, Lehrstuhl Landschaftsokol, Vechta, Germany;

    PlanWerk Buro Okol Fachplanungen, Nidda, Germany;

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  • 入库时间 2022-08-17 13:35:43

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