This chapter offers a brief overview of the current literature regarding the combination of chemometric algorithms and data fusion techniques involving LIBS and Raman spectroscopies. The two techniques allow complementary information on both the molecular structure and elemental composition of a sample under study. Furthermore, when measured simultaneously, they consent to improve characterization of complex matrixes. After a brief introduction where the concept of "data fusion" is explained, including the main data treatments used, some examples are reported illustrating how LIBS + Raman data fusion strategies allow to improve the classification of samples of different origin.

Data Fusion LIBS+RAMAN

2022

Abstract

This chapter offers a brief overview of the current literature regarding the combination of chemometric algorithms and data fusion techniques involving LIBS and Raman spectroscopies. The two techniques allow complementary information on both the molecular structure and elemental composition of a sample under study. Furthermore, when measured simultaneously, they consent to improve characterization of complex matrixes. After a brief introduction where the concept of "data fusion" is explained, including the main data treatments used, some examples are reported illustrating how LIBS + Raman data fusion strategies allow to improve the classification of samples of different origin.
2022
Istituto di Chimica dei Composti OrganoMetallici - ICCOM -
LIBS RAMAN
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/416277
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