Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6483984 | Biochemical Engineering Journal | 2016 | 35 Pages |
Abstract
Deproteinized cheese making whey (CMW) was investigated as an alternative medium for the production of Kluyveromyces lactis as single-cell protein. Batch runs were performed according to a Full Factorial Design (FFD) on CMW supplemented with yeast extract, magnesium sulfate and ammonium sulfate in different concentrations. These independent variables were tested in duplicate at three levels, while dry biomass productivity was used as the response. The results were used to construct two models, one based on Response surface methodology (RSM) and another on Artificial neural network (ANN). Two different training methods (10-fold cross validation and training/testing) were utilized to obtain two different network architectures, while a Genetic algorithm was utilized to obtain optimal concentrations of the above medium components. A quadratic regression by RSM (R2Â =Â 0.840) was the best modeling and optimization tool under the specific conditions selected here. The highest biomass productivity (approximately 2.14Â gDW/LÂ h) was ensured by the following optimal levels: 7.04-9.99% (w/v) yeast extract, 0.430-0.503% (w/v) magnesium sulfate and 4.0% (w/v) ammonium sulfate. These results demonstrate the feasibility of using CMW as an interesting alternative to produce single-cell protein.
Keywords
CMWMOEAANNMSEFFDRMSEWheyMultiobjective evolutionary algorithmsGenetic algorithmsMAEanalysis of varianceANOVAdegrees of freedomResponse surface methodologyRSMRoot mean square errorAmmonium sulfateArtificial Neural Networkcoefficient of determinationFull factorial designYeast extractLactoseSum of squaresYeastModellingmagnesium sulfateMean Absolute ErrorMean Square ErrorWEKA
Related Topics
Physical Sciences and Engineering
Chemical Engineering
Bioengineering
Authors
Fábio Coelho Sampaio, Tamara Lorena da Conceição Saraiva, Gabriel Dumont de Lima e Silva, JanaÃna Teles de Faria, Cristiano Grijó Pitangui, Bahar Aliakbarian, Patrizia Perego, Attilio Converti,