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Spatial variability in the amount of forest litter at the local scale in northeastern China: Kriging and cokriging approaches to interpolation

机译:中国东北地区林垃圾量的空间变异:克里格和录制近代探讨

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Litter is essential to promote nutrient cycling and maintain the sustainability of forest resources. However, its variability has not been sufficiently studied at the local scale. The prediction of litter amount using ordinary cokriging with Pearson correlation analysis (COKP) and ordinary cokriging with principal component analysis (COKPCA) was compared with that using ordinary kriging (OK) based on cross‐validation at the local scale of a 1‐ha plot over natural spruce–fir mixed forest in Jilin Province, China. Litter samples in semidecomposed (F) and complete decomposed (H) horizons were collected using an equidistant grid point sampling of 10?m?×?10?m. Pearson correlation analysis and principal component analysis (PCA) were used to confirm auxiliary variables. The results showed that the amount of litter was 19.65?t/ha in the F horizon and 10.37?t/ha in the H horizon. The spatial structure variance ratio in the H horizon was smaller than that in the F horizon, indicative of its stronger spatial autocorrelation. Spatial distributions of litter amount in both horizons exhibited a patchy and heterogeneous pattern. Of the selected stand characteristics and litter properties, litter moisture content indicated the strongest relationship with litter amount. Cross‐validation revealed that COKPCA using the comprehensive score as an auxiliary variable produced the most accurate map. The average standard error and root‐mean‐square error between the predicted and measured values were always smaller, the mean error and mean standardized error were much closer to 0, and the root‐mean‐square standardized error was closer to 1 than COKP using litter moisture and OK. Therefore, a clear advantage of cokriging based on principal component analysis was observed and COKPCA was found to be a very useful approach for further interpolation prediction.
机译:垃圾对促进营养循环并维持森林资源的可持续性至关重要。然而,它的可变性尚未以当地规模充分研究。将使用Pearson相关性分析(COKP)的普通录音机(COKP)和具有主要成分分析(Cokpca)的普通录音机预测与主要成分分析(OK)基于1-HA绘图的局部等级的交叉验证进行比较在吉林省的天然云杉混杂的森林,中国。使用等距网格点采样为10μm≤10Ωm,收集半复合(f)和完全分解(h)视野中的垃圾样本。 Pearson相关性分析和主成分分析(PCA)用于确认辅助变量。结果表明,在F地平线和H个地平线中,垃圾量为19.65?T / HA。 H个地平线中的空间结构方差比小于F地平线的差异,指示其较强的空间自相关。两种视野中的垃圾量的空间分布表现出一种斑块状和异质的模式。在所选择的立场特征和垃圾属性中,垃圾湿度含量表明了与垃圾量最强的关系。交叉验证显示Cokpca使用综合评分作为辅助变量产生最准确的地图。预测和测量值之间的平均标准误差和根均方误差始终较小,平均误差和平均标准化误差更接近0,并且根均方标准化误差比COKP更接近1垃圾湿度和好的。因此,观察到基于主成分分析的Cokriging的明显优点,发现Cokpca是一种非常有用的进一步插值预测方法。

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