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Spatial Variation in Soil Properties among North American Ecosystems and Guidelines for Sampling Designs

机译:北美生态系统中土壤特性的空间变化和抽样设计准则

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摘要

Soils are highly variable at many spatial scales, which makes designing studies to accurately estimate the mean value of soil properties across space challenging. The spatial correlation structure is critical to develop robust sampling strategies (e.g., sample size and sample spacing). Current guidelines for designing studies recommend conducting preliminary investigation(s) to characterize this structure, but are rarely followed and sampling designs are often defined by logistics rather than quantitative considerations. The spatial variability of soils was assessed across ∼1 ha at 60 sites. Sites were chosen to represent key US ecosystems as part of a scaling strategy deployed by the National Ecological Observatory Network. We measured soil temperature (Ts) and water content (SWC) because these properties mediate biological/biogeochemical processes below- and above-ground, and quantified spatial variability using semivariograms to estimate spatial correlation. We developed quantitative guidelines to inform sample size and sample spacing for future soil studies, e.g., 20 samples were sufficient to measure Ts to within 10% of the mean with 90% confidence at every temperate and sub-tropical site during the growing season, whereas an order of magnitude more samples were needed to meet this accuracy at some high-latitude sites. SWC was significantly more variable than Ts at most sites, resulting in at least 10× more SWC samples needed to meet the same accuracy requirement. Previous studies investigated the relationship between the mean and variability (i.e., sill) of SWC across space at individual sites across time and have often (but not always) observed the variance or standard deviation peaking at intermediate values of SWC and decreasing at low and high SWC. Finally, we quantified how far apart samples must be spaced to be statistically independent. Semivariance structures from 10 of the 12-dominant soil orders across the US were estimated, advancing our continental-scale understanding of soil behavior.
机译:土壤在许多空间尺度上变化很大,这使得进行设计研究以准确估算整个空间中土壤特性的平均值具有挑战性。空间相关性结构对于开发可靠的采样策略(例如,样本大小和样本间隔)至关重要。当前设计研究的指南建议进行初步研究以表征这种结构,但很少遵循,并且抽样设计通常由后勤而非定量考虑来定义。在60个地点的约1公顷土地上评估了土壤的空间变异性。国家生态观测网络部署的扩展策略选择了代表美国关键生态系统的站点。我们测量了土壤温度(Ts)和水分含量(SWC),因为这些特性介导了地下和地下的生物/生物地球化学过程,并使用半变异函数估计空间相关性来量化空间变异性。我们制定了定量准则,以告知样本量和样本间距,以用于未来的土壤研究,例如,在生长季节中,每个温带和亚热带地区,有20个样本足以将Ts测量在平均值的10%以内,且90%的置信度。在某些高纬度地点,需要更多数量级的样本才能满足此精度要求。在大多数站点,SWC的可变性要比Ts大得多,因此,满足相同精度要求所需的SWC样本至少要多10倍。以前的研究调查了不同时间点各个位置的SWC均值与空间变异性(即基石)之间的关系,并且经常(但并非总是)观察到SWC中间值的方差或标准偏差达到峰值,而在低值和高值时减小SWC。最后,我们量化了必须间隔多远的样本才能在统计上独立。估算了全美12个主要土壤阶中的10个的半方差结构,这进一步提高了我们在全球范围内对土壤行为的理解。

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