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Spatial variations in throughfall in a Moso bamboo forest: sampling design for the estimates of stand-scale throughfall

机译:毛竹林中穿透林的空间变化:林分穿透林的估计抽样设计

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摘要

We investigated the spatial and seasonal variations in throughfall (Tf) in relation to spatial and seasonal variations in canopy structure and gross rainfall (Rf) and assessed the impacts of the variations in Tf on stand-scale Tf estimates. We observed the canopy structure expressed as the leaf area index (LAI) once a month and Tf once a week in 25 grids placed in a Moso bamboo (Phyllostachys pubescens) forest for 1 year. The mean LAI and spatial variation in LAI did have some seasonal variations. The spatial variations in Tf reduced with increasing Rf, and the relationship between the spatial variation and the Rf held throughout the year. These results indicate that the seasonal change in LAI had little impact on spatial variations in Tf, and that Rf is a critical factor determining the spatial variations in Tf at the study site. We evaluated potential errors in stand-scale Tf estimates on the basis of measured Tf data using Monte Carlo sampling. The results showed that the error decreases greatly with increasing sample size when the sample size was less than ~8, whereas it was near stable when the sample size was 8 or more, regardless of Rf. A sample size of eight results in less than 10% error for Tf estimates based on Student's t-value analysis and would be satisfactory for interception loss estimates when considering errors included in Rf data.
机译:我们调查了与冠层结构和总降水量(Rf)的空间和季节变化有关的贯通(Tf)的空间和季节变化,并评估了Tf的变化对林分尺度Tf估计的影响。我们在茂盛的毛竹林(Phyllostachys pubescens)中放置了一年的25个网格中观察到的冠层结构表示为每月叶面积指数(LAI),每周一次为Tf。 LAI的平均值和LAI的空间变化确实存在一些季节性变化。 Tf的空间变化随Rf的增加而减小,并且全年保持空间变化与Rf之间的关系。这些结果表明,LAI的季节变化对Tf的空间变化影响很小,Rf是决定研究地点Tf的空间变化的关键因素。我们使用蒙特卡洛采样,在测得的Tf数据的基础上评估了标准Tf估算中的潜在误差。结果表明,当样本量小于〜8时,误差随样本量的增加而减小,而与Rf无关,当样本量为8以上时,误差接近稳定。根据学生的t值分析,样本数量为8时,Tf估计误差小于10%,考虑到Rf数据中包含的误差,对于截取损耗估计将是令人满意的。

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