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首页> 外文期刊>Journal of Paleolimnology >Spatial variability of diatom assemblages in surface lake sediments and its implications for transfer functions
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Spatial variability of diatom assemblages in surface lake sediments and its implications for transfer functions

机译:表层湖泊沉积物中硅藻组合的空间变异性及其对传递函数的影响

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The variability of diatom species composition in lake surface sediments was studied along transects in four lakes in northeastern Germany. Three dimictic lakes (Dudinghausener See, Tiefer See, and Cambser See) and one shallow lake (Gro? Peetscher See) were sampled. Large differences in diatom composition were found between adjoined samples from different depths within one lake. These differences were mainly displayed by planktonic species. For example, the relative frequency of Stephanodiscus alpinus varied between 4% and 43% within the surface sediment samples of the open-water region of Dudinghausener See. Using transfer functions for total phosphorus (TP) based on the European Diatom data-base (EDDI) combined TP data-set and a local data-set, the inferred TP values differed strongly within one lake when using Weighted Averaging-Partial Least Squares (WA-PLS) regression. In Tiefer See (average of measured TP: 30 μg l?1), the inferred TP values range from 45 to 110 μg l?1 using the transfer function based on WA-PLS regression and the EDDI data-set; and from 16 to 100 μg l?1 using WA-PLS and a local data-set. Performing Maximum Likelihood (ML) regression reduced the difference between measured and inferred values. For Tiefer See, the inferred TP values range between 16 and 45 μg l?1 using ML regression and the local data-set. Therefore, it seems that ML regression can deal better with the natural variability in species composition than WA-PLS regression. In general, it was shown that by using ML regression and the local data-set, the error of the inferred values was significant lower for all lakes than using WA-PLS regression and the EDDI data-set. The Root Mean Square Error of Prediction (RMSEP) was not useful in selecting the most stable transfer function.
机译:研究了德国东北部四个湖泊中沿样带的硅藻物种组成在湖泊表层沉积物中的变异性。采样了三个湖泊(Dudinghausener See,Tiefer See和Cambser See)和一个浅湖(Gro?Peetscher See)。在一个湖泊中,来自不同深度的相邻样本之间的硅藻组成差异很大。这些差异主要表现为浮游生物。例如,在杜丁豪森湖(Dudinghausener See)的开阔水域的表层沉积物样品中,Stephanodiscus alpinus的相对频率在4%至43%之间变化。使用基于欧洲硅藻数据库(EDDI)结合的TP数据集和本地数据集的总磷(TP)传递函数,在使用加权平均偏最小二乘法时,一个湖泊内的推断TP值存在很大差异( WA-PLS)回归。在Tiefer See(测得的TP的平均值:30μgl?1 )中,使用基于WA-PLS回归和EDDI的传递函数推断的TP值范围为45至110μgl?1 。数据集然后使用WA-PLS和本地数据集从16到100μgl?1 。执行最大似然(ML)回归可减少测量值与推断值之间的差异。对于Tiefer See,使用ML回归和本地数据集推断的TP值范围为16至45μgl?1 。因此,与WA-PLS回归相比,ML回归似乎可以更好地应对物种组成的自然变异。总的来说,通过使用ML回归和本地数据集,可以看出,所有湖泊的推算值误差均明显低于使用WA-PLS回归和EDDI数据集。预测均方根误差(RMSEP)在选择最稳定的传递函数时没有用。

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