首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >Studying the relationship between water-induced soil erosion and soil organic matter using Vis-NIR spectroscopy and geomorphological analysis: A case study in southern Italy
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Studying the relationship between water-induced soil erosion and soil organic matter using Vis-NIR spectroscopy and geomorphological analysis: A case study in southern Italy

机译:利用Vis-NIR光谱和地貌分析研究水源性土壤侵蚀与土壤有机质之间的关系:以意大利南部为例

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Soil erosion by water is the main cause of soil degradation in large areas of the Mediterranean belt. Soil erosion determines loss of surface horizon, which is rich in organic matter. The content of soil organic matter (SOM) is a key property for evaluating soil erosion and/or soil preservation and quality. Conventional methods to estimate quantitatively SOM content, based on conventional laboratory analyses, are costly and time consuming. An alternative approach to ascertain SOM content is based on the use of soil spectral reflectance, which has the advantage to be rapid, non-destructive and cost effective. In this study we focused on: (i) using of the laboratory-based, proximally sensed in the visible-near-infrared. (Vis-NIR, 400-2500 nm) spectral range to predict SOM content in the study area; (ii) combining soil spectroscopy and geostatistics for mapping SOM content; (iii) mapping zones affected by water erosion processes in the study area; and (iv) analyzing the relationship among soil erosion, SOM and soil spectral data. Areas affected by water erosion processes (sheet wash and/or rill and gully erosions) in the study area were detected through air-photo interpretation and field surveys. Topsoil samples from 215 locations in different soil types and erosion conditions were collected and each sample was air-dried and sieved at 2 mm and then split into two sub-samples: one was used for spectral measurements, while the other was analyzed to determine SOM content. Analysis of spectral curve showed that topsoil samples were spectrally separable on the basis of SOM content and of their erosion severity. Partial least squared regression (PLSR) analysis was applied to establish the relationships between spectral reflectance and SOM content. PLSR was performed on the calibration set including 161 of the 215 available samples, while 54 samples were used as validation set. The optimum number of factors to retain in the calibration model was determined by cross validation. The models were independently validated using the 54 validation soil samples. The results were satisfactory with high adjusted coefficient of determination (R-adj(2) = 0.84) and with a value of residual predictive deviation (RPD) more than 2.4. The results of this work suggest that laboratory reflectance spectroscopy in the Vis-NIR range coupled with a geostatistical analysis can be used as tools for predicting spectrally and mapping SOM. The relationship between water erosion processes and the spatial distribution of SOM, showed that: (i) zones with low content of SOM are affected by water erosion processes and (ii) water erosion affects more than 21% of the study area
机译:水对土壤的侵蚀是地中海沿岸大部分地区土壤退化的主要原因。水土流失决定了地表层的丧失,地表层层富含有机质。土壤有机质(SOM)的含量是评估土壤侵蚀和/或土壤保存及质量的关键属性。基于常规实验室分析的定量估算SOM含量的常规方法既昂贵又费时。确定SOM含量的另一种方法是基于土壤光谱反射率的使用,该方法具有快速,无损且具有成本效益的优点。在这项研究中,我们着重于:(i)使用基于实验室的,在可见-近红外中近端感测的传感器。 (Vis-NIR,400-2500 nm)光谱范围,以预测研究区域中的SOM含量; (ii)结合土壤光谱学和地统计学来绘制SOM含量图; (iii)在研究区域内绘制受水蚀过程影响的区域; (iv)分析土壤侵蚀,土壤有机质和土壤光谱数据之间的关系。通过航空照片解释和现场调查,对研究区域中受水蚀过程(片状水洗和/或沟壑和沟壑侵蚀)影响的区域进行了检测。收集了不同土壤类型和侵蚀条件下215个地点的表土样品,将每个样品风干并过筛2毫米,然后分成两个子样品:一个用于光谱测量,另一个用于分析以确定SOM内容。光谱曲线分析表明,基于SOM含量及其侵蚀严重程度,表土样品在光谱上是可分离的。应用偏最小二乘回归(PLSR)分析来建立光谱反射率和SOM含量之间的关系。在包括215个可用样品中的161个的校准集上执行PLSR,而将54个样品用作验证集。通过交叉验证确定保留在校准模型中的最佳因子数量。使用54个验证土壤样本对模型进行了独立验证。调整后的测定系数高(R-adj(2)= 0.84)且残留预测偏差(RPD)值大于2.4,结果令人满意。这项工作的结果表明,Vis-NIR范围内的实验室反射光谱与地统计分析一起可以用作预测光谱和绘制SOM的工具。水蚀过程与SOM空间分布之间的关系表明:(i)SOM含量低的区域受水蚀过程影响;(ii)水蚀影响研究区域的21%以上

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