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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Regional predictions of eight common soil properties and their spatial structures from hyperspectral Vis-NIR data.
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Regional predictions of eight common soil properties and their spatial structures from hyperspectral Vis-NIR data.

机译:利用高光谱Vis-NIR数据对八个常见土壤特性及其空间结构进行区域预测。

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The potential of the visible-near infrared (Vis-NIR; 400-2500 nm) laboratory spectroscopy for the estimation of soil properties has been previously demonstrated in the literature, and the Vis-NIR spatial spectroscopy is expected to provide direct estimates of these properties at the soil surface. The aim of this work was to examine whether Vis-NIR airborne spectroscopy could be used for mapping eight of the most common soil properties, including clay, sand, silt, calcium carbonate (CaCO3), free iron, cation-exchange capacity (CEC), organic carbon and pH, without mispredicting the local values of these properties and their spatial structures. Our study was based on 95 soil samples and a HyMap hyperspectral image available over 192 bare soil fields scattered within a 24.6 km2 area. Predictions of soil properties from HyMap spectra were computed for the eight soil properties using partial least squares regression (PLSR). The results showed that (1) four out of the eight soil properties (CaCO3, iron, clay and CEC) were suitable for mapping using hyperspectral data, and both accurate local predictions and good representations of spatial structures were observed and (2) the application of prediction models using hyperspectral data over the study area provided statistical characterizations within soilscape variations and variograms that describe in details the short range soil variations. All results were consistent with the previous pedological knowledge of the studied region. This study opens up the possibility of more extensive use of hyperspectral data for digital soil mapping of these successfully predicted soil properties.
机译:先前已经在文献中证明了可见红外(Vis-NIR; 400-2500 nm)实验室光谱法在土壤性质评估中的潜力,而Vis-NIR空间光谱法有望直接评估这些性质。在土壤表面。这项工作的目的是检查Vis-NIR航空光谱仪是否可用于绘制八种最常见的土壤特性,包括粘土,沙子,粉砂,碳酸钙(CaCO 3 ),游离铁,阳离子交换容量(CEC),有机碳和pH,而不会错误地预测这些特性的局部值及其空间结构。我们的研究基于95个土壤样本和一张HyMap高光谱图像,该图像可分布在24.6 km 2 区域内的192个裸土田间。使用偏最小二乘回归(PLSR)从HyMap光谱中计算了八个土壤特性的土壤特性预测。结果表明:(1)八种土壤性质中的四种(CaCO 3 ,铁,粘土和CEC)适合使用高光谱数据进行制图,并且准确的局部预测和良好的空间结构表示法(2)在研究区域内使用高光谱数据预测模型的应用提供了土壤景观变化和变异函数的统计特征,详细描述了短程土壤变化。所有结果均与该地区以前的儿童学知识相一致。这项研究开辟了将高光谱数据更广泛地用于这些成功预测的土壤特性的数字土壤制图的可能性。

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