Preprocessing of spectroscopic data to highlight spectral features of materials
Metadata
Show full item recordEditorial
Wiley Online Library
Materia
big data minerals preprocessing
Date
2024-10-10Referencia bibliográfica
Esquivel Sánchez, F.J. & Romero Béjar, J.L. & Esquivel Guerrero, J.A. Anal Sci Adv. 2024;2400018. [https://doi.org/10.1002/ansa.202400018]
Sponsorship
Universidad de Granada/CBUAAbstract
The study of the extensive data sets generated by spectrometers,which are of the type
commonly referred to as big data, plays a crucial role in extracting valuable information
on mineral composition in various fields, such as chemistry, geology, archaeology, pharmacy
and anthropology. The analysis of these spectroscopic data falls into the category
of big data, which requires the application of advanced statistical methods such as principal
component analysis and cluster analysis. However, the large amount of data (big
data) recorded by spectrometers makes it very difficult to obtain reliable results from
raw data. The usual method is to carry out different mathematical transformations of
the rawdata.Here,wepropose to use the affine transformation for highlight the underlying
features for each sample. Finally, an application to spectroscopic data collected
from minerals or rocks recorded byNASA’s Jet Propulsion Laboratory is performed.An
illustrative example has been included by analysing threemineral samples, which have
different diageneses and parageneses and belong to different mineralogical groups.