Simon Oberholzer, Laura Summerauer, Markus Steffens, Chinwe Ifejika Speranza
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引用次数: 0
摘要
摘要如果要测量各种土壤特性,传统的实验室土壤特性分析往往成本高昂且需要大量时间。可见光和近红外(vis-NIR)光谱法提供了一种互补且具有成本效益的方法,可在高空间和时间分辨率下获取各种土壤信息。然而,应用可见近红外光谱仪需要对红外模型的预测准确性有信心。在这项研究中,我们使用了来自瑞士东部六块农田的土壤数据,并使用偏最小二乘回归法校准了(i)针对特定农田的(局部)模型和(ii)针对土壤有机碳(SOC)、高锰酸盐氧化碳(POXC)、全氮(N)、全碳(C)和 pH 值的一般模型(结合所有农田)。30 个本地模型的性能偏差比(RPD)介于 1.14 和 5.27 之间,均方根误差(RMSE)介于 1.07 和 2.43 g kg-1 之间(SOC)、0.03 和 0.07 g kg-1 之间(POXC)、0.09 和 0.14 g kg-1 之间(总氮)、1.29 和 2.63 g kg-1 之间(总碳)以及 0.04 和 0.19 之间(pH 值)。两块碳酸盐含量较高且目标属性之间相关性较差的田块导致 6 个本地模型性能较低(RPD < 2)。对投影中变量重要性以及光谱变量与目标土壤特性之间相关性的分析证实,碳酸盐含量高会掩盖 SOC 的吸收特征。碳酸盐含量低的田地可与一般模型相结合,但与特定田地模型相比,预测精度损失有限。另一方面,对于碳酸盐含量较高的田地,一般模型的预测准确性大幅下降。在一个预测模型中结合碳酸盐含量高的土壤是否会带来令人满意的预测精度,还需要进一步研究。
Best performances of visible–near-infrared models in soils with little carbonate – a field study in Switzerland
Abstract. Conventional laboratory analysis of soil properties is often expensive and requires much time if various soil properties are to be measured. Visual and near-infrared (vis–NIR) spectroscopy offers a complementary and cost-efficient way to gain a wide variety of soil information at high spatial and temporal resolutions. Yet, applying vis–NIR spectroscopy requires confidence in the prediction accuracy of the infrared models. In this study, we used soil data from six agricultural fields in eastern Switzerland and calibrated (i) field-specific (local) models and (ii) general models (combining all fields) for soil organic carbon (SOC), permanganate oxidizable carbon (POXC), total nitrogen (N), total carbon (C) and pH using partial least-squares regression. The 30 local models showed a ratio of performance to deviation (RPD) between 1.14 and 5.27, and the root mean square errors (RMSE) were between 1.07 and 2.43 g kg−1 for SOC, between 0.03 and 0.07 g kg−1 for POXC, between 0.09 and 0.14 g kg−1 for total N, between 1.29 and 2.63 g kg−1 for total C, and between 0.04 and 0.19 for pH. Two fields with high carbonate content and poor correlation between the target properties were responsible for six local models with a low performance (RPD < 2). Analysis of variable importance in projection, as well as of correlations between spectral variables and target soil properties, confirmed that high carbonate content masked absorption features for SOC. Field sites with low carbonate content can be combined with general models with only a limited loss in prediction accuracy compared to the field-specific models. On the other hand, for fields with high carbonate contents, the prediction accuracy substantially decreased in general models. Whether the combination of soils with high carbonate contents in one prediction model leads to satisfying prediction accuracies needs further investigation.
SoilAgricultural and Biological Sciences-Soil Science
CiteScore
10.80
自引率
2.90%
发文量
44
审稿时长
30 weeks
期刊介绍:
SOIL is an international scientific journal dedicated to the publication and discussion of high-quality research in the field of soil system sciences.
SOIL is at the interface between the atmosphere, lithosphere, hydrosphere, and biosphere. SOIL publishes scientific research that contributes to understanding the soil system and its interaction with humans and the entire Earth system. The scope of the journal includes all topics that fall within the study of soil science as a discipline, with an emphasis on studies that integrate soil science with other sciences (hydrology, agronomy, socio-economics, health sciences, atmospheric sciences, etc.).