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Predicting Oxidizable Carbon Content via Visible- and Near-Infrared Diffuse Reflectance Spectroscopy in Soils Heavily Affected by Water Erosion

机译:通过可见和近红外漫反射光谱法预测水蚀严重影响的土壤中可氧化的碳含量

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摘要

Soil spec troscopy represents a low-cost alternative to routine time-consuming and expensive laboratory analyses. Its ability to measure a wide range of different chemical and physical soil properties was shown previously in many studies. Particularly, for organic carbon content, a reliable prediction accuracy is usually achieved. This is due to strong spectral signature of soil organic carbon and other distinct spectral implications of soil characteristics strongly tied to it, e.g. soil colour. All the known studies, however, deal with situation where the study area is fully covered (either in the manner of design- or model-based sampling approach) with calibration points. But in many cases the sampling strategy was initially designed for other purposes, falling outside requirements of spectroscopy for proper model calibration. Hence, here we attempt to test the ability of soil spectroscopy in the situation when only a minor isolated part (the steepest one) of the study area was sampled for calibration points, and predictions were made for its several time larger surroundings. For model training we used Partial Least Squares Regression (PLSR) technique and four different spectra pre-treatment methods (Savitzky-Golay smoothing, first and second derivative, and baseline normalization via continuum removal). Results show high potential (R-2 approximate to 0.70-0.80) of the method for rough terrain landscapes strongly affected by water erosion, even if the distance from calibration to prediction points is large.
机译:土壤光谱仪是常规耗时且昂贵的实验室分析的低成本替代方案。先前在许多研究中都显示出它具有测量多种不同化学和物理土壤特性的能力。特别地,对于有机碳含量,通常获得可靠的预测精度。这是由于土壤有机碳具有很强的光谱特征以及与土壤有机碳密切相关的其他明显的光谱含义。土壤颜色。但是,所有已知的研究都涉及用标定点完全覆盖研究区域(无论是基于设计还是基于模型的抽样方法)的情况。但是,在许多情况下,采样策略最初是为其他目的而设计的,超出了光谱学进行正确模型校准的要求。因此,在这里,我们尝试在仅对研究区域的一小部分孤立部分(最陡峭的部分)进行采样的情况下,测试土壤光谱学的能力,并针对其周围大数倍的周围环境做出了预测。对于模型训练,我们使用偏最小二乘回归(PLSR)技术和四种不同的光谱预处理方法(Savitzky-Golay平滑,一阶和二阶导数,以及通过连续谱去除进行基线归一化)。结果表明,即使从标定点到预测点的距离很大,该方法对于受水蚀严重影响的崎terrain地形也具有很高的潜力(R-2约为0.70-0.80)。

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