Application of a generative adversarial network for multi-featured fermentation data synthesis and artificial neural network (ANN) modeling of bitter gourd–grape beverage production

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作者
Sefater Gbashi
Tintswalo Lindi Maselesele
Patrick Berka Njobeh
Tumisi Beiri Jeremiah Molelekoa
Samson Adeoye Oyeyinka
Rhulani Makhuvele
Oluwafemi Ayodeji Adebo
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[1] University of Johannesburg,Department of Biotechnology and Food Technology, Faculty of Science, Doornfontein Campus
[2] University of Johannesburg,Food Innovation Research Group, Department of Biotechnology and Food Technology, Faculty of Science
[3] South Lincolnshire Food Enterprise Zone Campus,National Centre for Food Manufacturing, Centre of Excellence in Agri
[4] University of Lincoln,Food Technologies Building
[5] Toxicology and Ethnoveterinary Medicine,undefined
[6] Agricultural Research Council-Onderstepoort Veterinary Research (ARC-OVR),undefined
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Artificial neural networks (ANNs) have in recent times found increasing application in predictive modelling of various food processing operations including fermentation, as they have the ability to learn nonlinear complex relationships in high dimensional datasets, which might otherwise be outside the scope of conventional regression models. Nonetheless, a major limiting factor of ANNs is that they require quite a large amount of training data for better performance. Obtaining such an amount of data from biological processes is usually difficult for many reasons. To resolve this problem, methods are proposed to inflate existing data by artificially synthesizing additional valid data samples. In this paper, we present a generative adversarial network (GAN) able to synthesize an infinite amount of realistic multi-dimensional regression data from limited experimental data (n = 20). Rigorous testing showed that the synthesized data (n = 200) significantly conserved the variances and distribution patterns of the real data. Further, the synthetic data was used to generalize a deep neural network. The model trained on the artificial data showed a lower loss (2.029 ± 0.124) and converged to a solution faster than its counterpart trained on real data (2.1614 ± 0.117).
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