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Automation of the Analysis of Mössbauer Spectra

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Abstract

In the present report we propose the automation of least square fitting of Mössbauer spectra, the identification of the substance, its crystal structure and the access to the references with the help of a genetic algorith, Fuzzy logic, and the artificial neural network associated with a databank of Mössbauer parameters and references. This system could be useful for specialists and non-specialists, in industry as well as in research laboratories.

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de Souza, P.A.J., Garg, R. & Garg, V.K. Automation of the Analysis of Mössbauer Spectra. Hyperfine Interactions 112, 275–278 (1998). https://doi.org/10.1023/A:1010819012561

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