Geostatistical analysis of soil reflectance spectra for field-scale digital soil mapping. A case study.
Chapter
Publication Date:
2020
abstract:
Knowledge of field-scale soil variability is essential for sustainable soil
management. Traditional techniques, based on soil analysis, are costly and timeconsuming. An alternative method would be the use of visible-infrared reflectance
spectroscopy coupled with multivariate analysis, specifically principal component
analysis (PCA) and geostatistics.
In this study, after brief reviews regarding reflectance spectroscopy, PCA, and
geostatistics, we presented a methodological approach for digital soil mapping in a
study area of Southern Italy. Reflectance spectra of 240 surface soil samples
collected at geo-referenced sites, were decomposed by PCA. The first three
components (PC1, PC2, PC3) explained most (98%) of the total variance of the
initial data set, therefore, they were considered for the assessment of soil spatial
variability by variography and kriging (geostatistics). The resulting PC1, PC2 and
PC3 kriging maps were interpreted in the light of the information contents on
reflectance spectra and compared with the results of a previous, conventional soil
survey. The presented strategy seems to be efficient and reliable for mapping soil
spatial variability.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Soil reflectance; Principal component analysis (PCA); Geostatistics; Digital Soil Mapping.
List of contributors:
Leone, Natalia; Fragnito, Davide; Ancona, Valeria
Book title:
Metodi e analisi statistiche 2020