4.7 Article

Modelling and prediction of bioethanol production from intermediates and byproduct of sugar beet processing using neural networks

Journal

RENEWABLE ENERGY
Volume 85, Issue -, Pages 953-958

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.renene.2015.07.054

Keywords

Ethanol; Sugar beet; Yeast; Neural networks; Garson equation; Modelling

Funding

  1. Ministry of Education, Science and Technological Development of the Republic of Serbia [TR-31002]

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The aim of this work was to model and predict the process of bioethanol production from intermediates and byproduct of sugar beet processing by applying artificial neural networks. Prediction of one substrate fermentation by neural networks had the same input variables (fermentation time and starting sugar content) and one output value (ethanol content, yeast cell number or sugar content). Results showed that a good prediction model could be obtained by networks with single hidden layer. The neural network configuration that gave the best prediction for raw or thin juice fermentation was one with 8 neurons in hidden layer for all observed outputs. On the other side, the optimal number of neurons in hidden layer was found to be 9 and 10 for thick juice and molasses, respectively. Further, all substrates data were merged, which led to introducing an additional input (substrate type) and defining all outputs optimal network architecture to 3-12-1. From the results the conclusion was that artificial neural networks are a good prediction tool for the selected network outputs. Also, these predictive capabilities allowed the application of the Garson's equation for estimating the contribution of selected process parameters on the defined outputs with satisfactory accuracy. (c) 2015 Elsevier Ltd. All rights reserved.

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