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Using Visible and Near Infrared Diffuse Reflectance Spectroscopy to Characterize and Classify Soil Profiles

Visible and near infrared diffuse reflectance spectroscopy (VisNIR-DRS) is a
method being investigated for quantifying soil properties and mapping soil profiles.
Because a VisNIR-DRS system mounted in a soil penetrometer is now commercially
available for scanning soil profiles in situ, methodologies for using scans to map soils
and quantify soil properties are needed. The overall goal of this research is to investigate
methodologies for collecting and analyzing VisNIR-DRS scans of intact soil profiles to
identify soil series. Methodologies tested include scanning at variable versus uniform
moistures, using individual versus averaged spectra, boosting an intact spectral library
with local samples, and comparing quantitative and categorical classifications of soil
series. Thirty-two soil cores from two fields, representing three soil series, were
extracted and scanned every 2.5 cm from the soil surface to 1.5 m or to the depth of
parent material at variable field moist conditions and at uniform moist condition.
Laboratory analyses for clay, sand, and silt were performed on each horizon. Soil series
were classified using partial least squares regression (PLS) and linear discriminant
analysis (LDA). A Central Texas intact spectral library (n=70 intact cores) was used for PLS modeling, alone and boosted with the two fields. Because whole-field independent
validation was used, relative percent difference (RPD) values were used to compare
model performance. Wetting soils to uniform moisture prior to scanning improved
prediction accuracy of total clay and RPD improved by 53 percent. Averaging side-by-side
scans of the same soil profile improved prediction accuracy of RPD by 10 percent. When
creating calibration models, boosting a library with local samples improved prediction
accuracy of clay content by 80 and 34 percent for the two fields. Principal component plots
provided insight on the spectral similarities between these datasets. Overall, using PLS
alone performed the same as LDA at predicting soil series. Most importantly, results of
this project reiterate the importance of fully-independent calibration and validation for
assessing the true potential of VisNIR-DRS. Using VisNIR-DRS is an effective way for
in situ characterization and classification of soil properties.

Identiferoai:union.ndltd.org:tamu.edu/oai:repository.tamu.edu:1969.1/ETD-TAMU-2010-08-8213
Date2010 August 1900
CreatorsWilke, Katrina Margarette
ContributorsMorgan, Cristine L. S.
Source SetsTexas A and M University
Languageen_US
Detected LanguageEnglish
Typethesis, text
Formatapplication/pdf

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