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首页> 外文期刊>Remote Sensing >Assessment of Soil Degradation by Erosion Based on Analysis of Soil Properties Using Aerial Hyperspectral Images and Ancillary Data, Czech Republic
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Assessment of Soil Degradation by Erosion Based on Analysis of Soil Properties Using Aerial Hyperspectral Images and Ancillary Data, Czech Republic

机译:捷克共和国基于航空高光谱图像和辅助数据的土壤性质分析对侵蚀造成的土壤退化进行评估

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The assessment of the soil redistribution and real long-term soil degradation due to erosion on agriculture land is still insufficient in spite of being essential for soil conservation policy. Imaging spectroscopy has been recognized as a suitable tool for soil erosion assessment in recent years. In our study, we bring an approach for assessment of soil degradation by erosion by means of determining soil erosion classes representing soils differently influenced by erosion impact. The adopted methods include extensive field sampling, laboratory analysis, predictive modelling of selected soil surface properties using aerial hyperspectral data and the digital elevation model and fuzzy classification. Different multivariate regression techniques (Partial Least Square, Support Vector Machine, Random forest and Artificial neural network) were applied in the predictive modelling of soil properties. The properties with satisfying performance (R 2 > 0.5) were used as input data in erosion classes determination by fuzzy C-means classification method. The study was performed at four study sites about 1 km 2 large representing the most extensive soil units of the agricultural land in the Czech Republic (Chernozems and Luvisols on loess and Cambisols and Stagnosols on crystalline rocks). The influence of site-specific conditions on prediction of soil properties and classification of erosion classes was assessed. The prediction accuracy (R 2 ) of the best performing models predicting the soil properties varies in range 0.8–0.91 for soil organic carbon content, 0.21–0.67 for sand content, 0.4–0.92 for silt content, 0.38–0.89 for clay content, 0.73–089 for Fe ox , 0.59–0.78 for F ed and 0.82 for CaCO 3 . The performance and suitability of different properties for erosion classes’ classification are highly variable at the study sites. Soil organic carbon was the most frequently used as the erosion classes’ predictor, while the textural classes showed lower applicability. The presented approach was successfully applied in Chernozem and Luvisol loess regions where the erosion classes were assessed with a good overall accuracy (82% and 67%, respectively). The model performance in two Cambisol/Stagnosol regions was rather poor (51%–52%). The results showed that the presented method can be directly and with a good performance applied in pedologically and geologically homogeneous areas. The sites with heterogeneous structure of the soil cover and parent material will require more precise local-fitted models and use of further auxiliary information such as terrain or geological data. The future application of presented approach at a regional scale promises to produce valuable data on actual soil degradation by erosion usable for soil conservation policy purposes.
机译:尽管对水土保持政策至关重要,但对由于农业土地侵蚀造成的土壤再分配和实际长期土壤退化的评估仍然不足。近年来,成像光谱已被认为是土壤侵蚀评估的合适工具。在我们的研究中,我们通过确定代表不同程度受侵蚀影响的土壤的土壤侵蚀类别,提出了一种通过侵蚀来评估土壤退化的方法。所采用的方法包括广泛的野外采样,实验室分析,使用航空高光谱数据,数字高程模型和模糊分类对选定的土壤表面特性进行预测建模。将不同的多元回归技术(偏最小二乘,支持向量机,随机森林和人工神经网络)应用于土壤特性的预测建模。通过模糊C-均值分类法确定侵蚀等级时,将具有满意性能(R 2> 0.5)的特性作为输入数据。该研究在约1 km 2的四个研究地点进行,代表捷克共和国农业土地上最广泛的土壤单元(黄土上的切尔诺泽姆和卢维索尔,结晶岩上的坎比索尔和石笋溶胶)。评估了特定地点条件对土壤性质预测和侵蚀分类的影响。预测土壤性质的最佳模型的预测精度(R 2)在范围内,土壤有机碳含量在0.8-0.91之间,沙质含量在0.21-0.67之间,淤泥含量在0.4-0.92之间,粘土含量在0.38-0.89之间,0.73 Fe ox为–089,F ed为0.59–0.78,CaCO 3为0.82。在研究地点,侵蚀分类的不同性能和适用性差异很大。土壤有机碳最常用作侵蚀类别的预测指标,而纹理类别的适用性较低。所提出的方法已成功地应用于切尔诺泽姆和卢维索尔的黄土地区,这些地区的侵蚀等级得到了很好的总体准确度评估(分别为82%和67%)。在两个Cambisol / Stagnosol地区的模型性能相当差(51%–52%)。结果表明,所提出的方法可直接用于具有良好地质学和地质学意义的地区。土壤覆盖物和母体材料具有异质结构的地点将需要更精确的局部拟合模型,并需要使用其他辅助信息,例如地形或地质数据。所提出的方法在区域范围内的未来应用有望产生可用于土壤保护政策目的的关于实际土壤退化的有价值的数据。

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