Optimal Sampling and Assay for Estimating Soil Organic Carbon

Jacob V. Spertus
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引用次数: 3

Abstract

The world needs around 150 Pg of negative carbon emissions to mitigate climate change. Global soils may provide a stable, sizeable reservoir to help achieve this goal by sequestering atmospheric carbon dioxide as soil organic carbon (SOC). In turn, SOC can support healthy soils and provide a multitude of ecosystem benefits. To support SOC sequestration, researchers and policy makers must be able to precisely measure the amount of SOC in a given plot of land. SOC measurement is typically accomplished by taking soil cores selected at random from the plot under study, mixing (compositing) some of them together, and analyzing (assaying) the composited samples in a laboratory. Compositing reduces assay costs, which can be substantial. Taking samples is also costly. Given uncertainties and costs in both sampling and assay along with a desired estimation precision, there is an optimal composite size that will minimize the budget required to achieve that precision. Conversely, given a fixed budget, there is a composite size that minimizes uncertainty. In this paper, we describe and formalize sampling and assay for SOC and derive the optima for three commonly used assay methods: dry combustion in an elemental analyzer, loss-on-ignition, and mid-infrared spectroscopy. We demonstrate the utility of this approach using data from a soil survey conducted in California. We give recommendations for practice and provide software to implement our framework.
土壤有机碳估算的最佳采样和分析方法
世界需要大约150 Pg的负碳排放来缓解气候变化。全球土壤可以通过将大气中的二氧化碳作为土壤有机碳(SOC)来提供一个稳定、可观的储层,以帮助实现这一目标。反过来,SOC可以支持健康的土壤,并提供大量的生态系统效益。为了支持SOC封存,研究人员和政策制定者必须能够精确测量给定地块中的SOC含量。SOC测量通常是通过从研究地块中随机选择土壤芯,将其中一些混合(合成)在一起,并在实验室中分析(分析)合成样品来完成的。合成降低了化验成本,这可能是实质性的。采集样本的成本也很高。考虑到采样和分析的不确定性和成本以及所需的估计精度,存在一个最佳的复合尺寸,该尺寸将最大限度地减少实现该精度所需的预算。相反,在给定固定预算的情况下,存在一个最大限度地减少不确定性的综合规模。在本文中,我们描述并形式化了SOC的采样和测定,并导出了三种常用测定方法的最佳值:元素分析仪中的干燃烧法、灼烧失重法和中红外光谱法。我们使用加利福尼亚州土壤调查的数据证明了这种方法的实用性。我们为实践提供建议,并提供软件来实现我们的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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