Fermentation (Oct 2021)

Artificial Neural Networks and Gompertz Functions for Modelling and Prediction of Solvents Produced by the <i>S. cerevisiae</i> Safale S04 Yeast

  • Vinicio Moya Almeida,
  • Belén Diezma Iglesias,
  • Eva Cristina Correa Hernando

DOI
https://doi.org/10.3390/fermentation7040217
Journal volume & issue
Vol. 7, no. 4
p. 217

Abstract

Read online

The present work aims to develop a mathematical model, based on Gompertz equations and ANNs to predict the concentration of four solvent compounds (isobutanol, ethyl acetate, amyl alcohol and n-propanol) produced by the yeasts S. cerevisiae, Safale S04, using only the fermentation temperature as input data. A beer wort was made, daily samples were taken and analysed by GC-FID. The database was grouped into five datasets of fermentation at different setpoint temperatures (15.0, 16.5, 18.0, 19.0 and 21.0 °C). With these data, the Gompertz models were parameterized, and new virtual datasets were used to train the ANNs. The coefficient of determination (R2) and p-value were used to compare the results. The ANNs, trained with the virtual data generated with the Gompertz functions, were the models with the highest R2 values (0.939 to 0.996), showing that the proposed methodology constitutes a useful tool to improve the quality (flavour and aroma) of beers through temperature control.

Keywords