Analysis and optimization of gas-centrifugal separation of uranium isotopes by neural networks

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Abstract

Neural networks are an attractive alternative for modeling complex problems with too many difficulties to be solved by a phenomenological model. A feed-forward neural network was used to model a gas-centrifugal separation of uranium isotopes. The prediction showed good agreement with the experimental data. An optimization study was carried out. The optimal operational condition was tested by a new experiment and a difference of less than 1% was found.

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Migliavacca, S. C. P., Rodrigues, C., & Nascimento, C. A. O. (2002). Analysis and optimization of gas-centrifugal separation of uranium isotopes by neural networks. Brazilian Journal of Chemical Engineering, 19(3), 299–306. https://doi.org/10.1590/S0104-66322002000300005

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