Brewing process optimization by artificial neural network and evolutionary algorithm approach
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José Celso Rocha | Maria Beatriz Takahashi | Henrique Coelho de Oliveira | Eutimio Gustavo Fernández Núñez | Eutimio Gustavo Fernández Núñez | M. B. Takahashi | J. C. Rocha | Henrique Coelho de Oliveira | Eutimio Gustavo Fernández Núñez | Henrique Coelho de Oliveira | Eutímio Gustavo Fernández Núñez
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