Other formats:
BibTeX
LaTeX
RIS
@proceedings{1374761, author = {Klus, Jakub and Pořízka, Pavel and Prochazka, David and Mikysek, Petr and Novotný, Jan and Novotný, Karel and Kaiser, Jozef}, booktitle = {9-th International Conference on Laser-Induced Breakdown Spectroscopy - LIBS2016}, keywords = {Geology; mineralization; neural networks}, language = {eng}, title = {Study of mineralization in geological samples by means of LIBS and neural networks}, year = {2016} }
TY - CONF ID - 1374761 AU - Klus, Jakub - Pořízka, Pavel - Prochazka, David - Mikysek, Petr - Novotný, Jan - Novotný, Karel - Kaiser, Jozef PY - 2016 TI - Study of mineralization in geological samples by means of LIBS and neural networks KW - Geology KW - mineralization KW - neural networks N2 - This work aims on the description of possible element association within a sample of sandstone-hosted uranium ore by means of Laser-Induced Breakdown Spectroscopy (LIBS). As an element association in the interaction region and in terms of LIBS we refer to the simultaneous presence of spectral lines within a respective single spectrum. Presented results show element associations within a sandstone ore sample carrying high abundance of zirconium, uranium, niobium and hafnium. To manage this task a multivariate method was utilized, namely the self-organized maps (SOM). SOM is a type of artificial neural network, which provides dimensionality reduction based on the similarity of input data. Responses of SOM weights associated with certain elemental lines were easily discriminated as either simultaneous or isolated. Deduced association of U-Zr and isolation of Ti, Fe and Si responses is in good correlation with geological studies made on ores from the same place of origin. Finally a mineralization visualization performed in unconventional manners is shown. Instead of the creation of chemical map by rearranging the line intensities to the rectangular grid of points, a correlation of spectra with neuron responses was calculated. It is shown that map of correlation coefficients provides better insight into the problem of element associations or possible co-mineralization in general. ER -
KLUS, Jakub, Pavel POŘÍZKA, David PROCHAZKA, Petr MIKYSEK, Jan NOVOTNÝ, Karel NOVOTNÝ and Jozef KAISER. Study of mineralization in geological samples by means of LIBS and neural networks. In \textit{9-th International Conference on Laser-Induced Breakdown Spectroscopy - LIBS2016}. 2016.
|