CLASSIFICATION OF ENERGY DISPERSION X-RAY-SPECTRA OF MINERALOGICAL SAMPLES BY ARTIFICIAL NEURAL NETWORKS

Citation
I. Ruisanchez et al., CLASSIFICATION OF ENERGY DISPERSION X-RAY-SPECTRA OF MINERALOGICAL SAMPLES BY ARTIFICIAL NEURAL NETWORKS, Journal of chemical information and computer sciences, 36(2), 1996, pp. 214-220
Citations number
14
Categorie Soggetti
Information Science & Library Science","Computer Application, Chemistry & Engineering","Computer Science Interdisciplinary Applications",Chemistry,"Computer Science Information Systems
ISSN journal
00952338
Volume
36
Issue
2
Year of publication
1996
Pages
214 - 220
Database
ISI
SICI code
0095-2338(1996)36:2<214:COEDXO>2.0.ZU;2-P
Abstract
Automatic classification of different mineralogical samples into 12 pr especified classes using Kohonen artificial neural networks (ANNs) is studied in comparison with standard chemometric techniques: hierarchic al clustering and principal component analysis. The mineral types into one of which the unknown samples should be classified are pyrrhotite, pyrite, chalcopyrite, pentlandite, magnetite, biotite, albite, talc, chlorite, lizardite, dolomite, and amphibole. The basis for classifica tion are 15-dimensional EDX spectra of individual grains taken from la rge matrices of compositions each containing a variety of grains belon ging either to the same or to different minerals. The discussed classi fication procedure is based on the 15-15-15 Kohonen neural network cub e. The classification results are displayed on the 15 x 15 Kohonen top -map. From the 15 weight levels of the 15-15-15 Kohonen ANN 12 logical rules that allow one to classify unknown samples into one of 12 class es are extracted. The 100% correct classification of samples using the suggested 12 logical rules is enabled by only seven of out of 15 inte nsity lines from each (energy-dispersive X-ray) EDX spectrum. It is sh own that the Kohonen ANN allows one to draw conclusions and logical ru les based on the weight patterns formed during the training in the ANN .