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  • CLEO/Europe and EQEC 2011 Conference Digest
  • OSA Technical Digest (CD) (Optica Publishing Group, 2011),
  • paper CH_P12

Application of artificial neural networks in analysis of the LIBS spectrum

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Abstract

Laser-Induced Breakdown Spectroscopy analysis by direct measurement of the optical emission from a laser-induced plasma is attractive as a remote and real time technique of monitoring chemical composition of any material. The assignment of different atomic and ionic lines, which are signatures of a particular element, is the basis of a qualitative identification of the species present in plasma. The intensity ratio of an analyte line and reference lines can be used for the quantitative determination of the corresponding sample elements [1].

© 2011 Optical Society of America

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