AI Article Synopsis

  • The study used a three-layer artificial neural network to model and optimize the extraction of polyphenols from green tea using ultrahigh pressure.
  • A feed-forward neural network evaluated key factors like pressure, liquid/solid ratio, and ethanol concentration, achieving a low mean squared error and high predictive accuracy.
  • The optimal extraction conditions were found to be 498.8 MPa of pressure, a liquid/solid ratio of 20.8 mL/g, and 53.6% ethanol concentration, leading to high total phenolic content that closely matched predictions.

Article Abstract

In this study, the ultrahigh pressure extraction of green tea polyphenols was modeled and optimized by a three-layer artificial neural network. A feed-forward neural network trained with an error back-propagation algorithm was used to evaluate the effects of pressure, liquid/solid ratio and ethanol concentration on the total phenolic content of green tea extracts. The neural network coupled with genetic algorithms was also used to optimize the conditions needed to obtain the highest yield of tea polyphenols. The obtained optimal architecture of artificial neural network model involved a feed-forward neural network with three input neurons, one hidden layer with eight neurons and one output layer including single neuron. The trained network gave the minimum value in the MSE of 0.03 and the maximum value in the R(2) of 0.9571, which implied a good agreement between the predicted value and the actual value, and confirmed a good generalization of the network. Based on the combination of neural network and genetic algorithms, the optimum extraction conditions for the highest yield of green tea polyphenols were determined as follows: 498.8 MPa for pressure, 20.8 mL/g for liquid/solid ratio and 53.6% for ethanol concentration. The total phenolic content of the actual measurement under the optimum predicated extraction conditions was 582.4 ± 0.63 mg/g DW, which was well matched with the predicted value (597.2mg/g DW). This suggests that the artificial neural network model described in this work is an efficient quantitative tool to predict the extraction efficiency of green tea polyphenols.

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http://dx.doi.org/10.1016/j.foodchem.2013.02.084DOI Listing

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