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A novel combination of experimental design and artificial neural networks as an analytical tool for improving performance in thermospray flame furnace atomic absorption spectrometry

Morzan, Ezequiel et al · RI ITBA · 2018

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"In this work, we present the combined effect of artificial neural networks (ANN) and experimental design as a suitable analytical tool for improving the performance of thermospray flame furnace atomic absorption spectrometry (TS-FFAAS) using Mg as leading case. To this end, mixtures of different amounts of methanol, ethanol, and i-propanol in water were assayed as carriers at different flow rates and different flame stoichiometries (air/acetylene ratios). Different levels of these variables determined the experimental domain, consisting in a cube which was divided into eight identical cubical regions that allowed increase in the number of available experimental points. A Box–Behnken design (BBD) was employed in each one of the regions. The name Multiple Box–Behnken design (MBBD) was given to this new approach. Then, the features of ANN were exploited to find the optimum conditions for conducting Mg determination by TS-FFAAS. The prediction capability of ANN was examined and compared to the least-squares (LS) fitting when applied to the response surface method (RSM). The suitability of the new approach and the implications on TS-FFAAS analytical performance are discussed."

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APA 7

Morzan, E. E. A. (2018). A novel combination of experimental design and artificial neural networks as an analytical tool for improving performance in thermospray flame furnace atomic absorption spectrometry. RI ITBA. https://ri.itba.edu.ar/handle/20.500.14769/4129

MLA

Morzan, Ezequiel et al. A novel combination of experimental design and artificial neural networks as an analytical tool for improving performance in thermospray flame furnace atomic absorption spectrometry. RI ITBA, 2018. https://ri.itba.edu.ar/handle/20.500.14769/4129.

Chicago

Morzan, Ezequiel et al. 2018. A novel combination of experimental design and artificial neural networks as an analytical tool for improving performance in thermospray flame furnace atomic absorption spectrometry. RI ITBA. https://ri.itba.edu.ar/handle/20.500.14769/4129.

Harvard

Morzan, E. E. A. 2018, A novel combination of experimental design and artificial neural networks as an analytical tool for improving performance in thermospray flame furnace atomic absorption spectrometry, RI ITBA, available at: https://ri.itba.edu.ar/handle/20.500.14769/4129 [Accessed 29 Jun. 2026].

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Título
A novel combination of experimental design and artificial neural networks as an analytical tool for improving performance in thermospray flame furnace atomic absorption spectrometry
Autor / colaboradores
Morzan, Ezequiel et al
Editorial
RI ITBA
Año de publicación
2018
ISSN
0169-7439
ISSN
0169-7439
Idioma
en

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