Login

Proceedings

Find matching any: Reset
Add filter to result:
Estimation of Soil Profile Properties Using a VIS-NIR-EC-force Probe
1Y. Cho, 2K. A. Sudduth
1. University of Missouri, Bioengineering Dept.
2. USDA-ARS, Cropping Systems and Water Quality Research Unit

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. 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. A commercial instrument that can simultaneously collect reflectance spectra, ECa and soil strength data is now available. The objective of this research was to relate laboratory-measured soil properties, including bulk density, carbon, water content, and texture fractions to sensor data from this instrument. At four field sites in mid-Missouri, profile sensor measurements were obtained to 0.9 m followed by collection of soil cores at each site for laboratory measurements. Using only reflectance data, soil bulk density, total organic carbon, and water content were not well-estimated (R2 = 0.32, R2 = 0.67, and R2 = 0.40, respectively). Adding ECa and soil strength data provided only a slight improvement in water content estimation (R2 = 0.47) and little to no improvement in BD and TOC estimation. When data were analyzed separately by Major Land Resource Area (MLRA), fusion of data from all sensors did improve soil texture fraction estimates. The largest improvement compared to VIS-NIR reflectance alone was for MLRA 115B, where estimation errors were reduced by approximately 14 to 26%. 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 combination of data from multiple sensors is required.

Keyword: Precision agriculture, NIR spectroscopy, soil properties, reflectance spectra, soil sensing