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Estimation of soil profile physical and chemical properties using a VIS-NIR-EC-force probe

机译:探测使用Vis-nir-EC力探针的土壤轮廓物理性质的估计

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Combining data collected in-field from multiple soil sensors has the potential to improve the efficiency and accuracy of soil property estimates. Optical diffuse reflectance spectroscopy (DRS) has been used to estimate many important soil properties,such as soil carbon, water content, and texture. Previous work has usually used bench spectrometers in the laboratory with some in-field data collection. Other common soil sensors include penetrometers that measure soil strength and apparent electrical conductivity (ECa) sensors. Previous field research has related those sensor measurements to soil properties such as bulk density, water content, and texture. One instrument that can simultaneously collect reflectance spectra, ECa and soil strength data is the Veris P4000 VIS-NIR-EC-force probe. The objective of this research was to relate laboratory-measured soil properties, including carbon, bulk density, and water content to sensor data from the Veris P4000. At field sites in mid-Missouri, profile measurements to 0.9 m were collected with the P4000 followed by removal of soil cores at each site for laboratory measurements. Using reflectance data alone, soil carbon was most accurately estimated (R2 > 0.76), and good carbon estimates were maintained for both soil profile and surface soil layers. Adding other sensor data provided only a slight improvement. Bulk density estimates using reflectance data were fair for surface soil layers (R2 = 0.57), but were poor across the soil profile. Water content was poorly estimated for both surface and profile soil layers. This study showed promise for in-field sensor measurement of some soil properties. Additional field data collection and model development are needed for those soil properties where combinationof data from multiple sensors is required.
机译:组合数据从多种土壤传感器收集的现场的数据有可能提高土壤性质估算的效率和准确性。光漫射反射光谱(DRS)已被用于估计许多重要的土壤性质,例如土壤碳,含水量和质地。以前的作品通常在实验室中使用了替补光谱仪,具有一些现场数据收集。其他常见的土壤传感器包括测量土壤强度和表观电导率(ECA)传感器的渗透仪。以前的现场研究将这些传感器测量与土壤性质如散装密度,含水量和质地等有关。一种可以同时收集反射光谱,ECA和土壤强度数据的仪器是Veris P4000 Vis-Nir-EC探针。本研究的目的是将实验室测量的土壤性质(包括碳,散装密度和含水量)与Veris P4000的传感器数据相关。在密苏里州中段的现场网站,用P4000收集型材测量到0.9米,然后在每个部位移除土壤核心以进行实验室测量。单独使用反射率数据,土壤碳最精确地估计(R2> 0.76),并为土壤轮廓和表面土层维持良好的碳估计。添加其他传感器数据仅提供略微改进。使用反射数据的批量密度估计对于表面土层(R2 = 0.57)是公平的,但在土壤剖面上差。表面和轮廓土壤层估计含水量差。该研究表明了一些土壤性质的现场传感器测量的承诺。需要其他现场数据收集和模型开发,适用于需要多个传感器的数据组合。

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