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Classifying development stages of primeval European beech forests: is clustering a useful tool?

机译:对原始欧洲山毛榉森林的发展阶段进行分类:聚类是有用的工具吗?

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摘要

Old-growth and primeval forests are passing through a natural development cycle with recurring stages of forest development. Several methods for assigning patches of different structure and size to forest development stages or phases do exist. All currently existing classification methods have in common that a priori assumptions about the characteristics of certain stand structural attributes such as deadwood amount are made. We tested the hypothesis that multivariate datasets of primeval beech forest stand structure possess an inherent, aggregated configuration of data points with individual clusters representing forest development stages. From two completely mapped primeval beech forests in Albania, seven ecologically important stand structural attributes characterizing stand density, regeneration, stem diameter variation and amount of deadwood are derived at 8216 and 9666 virtual sampling points (moving window, focal filtering). K-means clustering is used to detect clusters in the datasets (number of clusters (k) between 2 and 5). The quality of the single clustering solutions is analyzed with average silhouette width as a measure for clustering quality. In a sensitivity analysis, clustering is done with datasets of four different spatial scales of observation (200, 500, 1000 and 1500?m2, circular virtual plot area around sampling points) and with two different kernels (equal weighting of all objects within a plot vs. weighting by distance to the virtual plot center). The clustering solutions succeeded in detecting and mapping areas with homogeneous stand structure. The areas had extensions of more than 200?m2, but differences between clusters were very small with average silhouette widths of less than 0.28. The obtained datasets had a homogeneous configuration with only very weak trends for clustering. Our results imply that forest development takes place on a continuous scale and that discrimination between development stages in primeval beech forests is splitting continuous datasets at selected thresholds. For the analysis of the forest development cycle, direct quantification of relevant structural features or processes might be more appropriate than classification. If, however, the study design demands classification, our results can justify the application of conventional forest development stage classification schemes rather than clustering.
机译:原始森林和原始森林正在经历自然发展周期,而森林又处于重复发展阶段。确实存在几种将不同结构和大小的斑块分配给森林发展阶段或阶段的方法。当前所有现有的分类方法的共同点是,对某些林分结构属性(例如枯木量)的特征进行了先验假设。我们检验了以下假设:原始山毛榉林分结构的多元数据集具有固有的,聚合的数据点配置,且各个点代表森林发展阶段。从阿尔巴尼亚的两个完全绘制的原始山毛榉森林中,在8216和9666个虚拟采样点(移动窗口,焦点过滤)处获得了七个具有生态重要性的林分结构特征,这些特征表征了林分密度,再生,茎直径​​变化和沉木量。 K均值聚类用于检测数据集中的聚类(2到5之间的聚类数(k))。分析单个聚类解决方案的质量,并使用平均轮廓宽度作为聚类质量的度量。在敏感性分析中,聚类是使用四个不同空间观察尺度的数据集(200、500、1000和1500?m2,采样点周围的圆形虚拟图面积)和两个不同的核(对图中所有对象的平均权重相等)完成的相对于到虚拟绘图中心的距离的权重)。聚类解决方案成功地检测和绘制了具有均匀林分结构的区域。这些区域的延伸面积超过200平方米,但群集之间的差异非常小,平均轮廓宽度小于0.28。所获得的数据集具有均一的配置,仅具有非常弱的聚类趋势。我们的结果表明,森林的发展是连续不断的,原始山毛榉森林的发展阶段之间的差异正在将连续的数据集分割为选定的阈值。对于森林发展周期的分析,直接量化相关结构特征或过程可能比分类更合适。但是,如果研究设计要求分类,则我们的结果可以证明采用常规森林发育阶段分类方案而不是聚类是合理的。

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