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The yield prediction of synthetic fuel production from pyrolysis of plasticwaste by Levenberg-Marquardt approach in feedforward neural networks model
Authors
F Abnisa
MF bin Zanil
+3 more
WMAW Daud
TMI Mahlia
SDA Sharuddin
Publication date
1 November 2019
Publisher
'MDPI AG'
Doi
Cite
Abstract
© 2019 by the authors. The conversion of plastic waste into fuel by pyrolysis has been recognized as a potential strategy for commercialization. The amount of plastic waste is basically different for each country which normally refers to non-recycled plastics data; consequently, the production target will also be different. This study attempted to build a model to predict fuel production from different non-recycled plastics data. The predictive model was developed via Levenberg-Marquardt approach in feed-forward neural networks model. The optimal number of hidden neurons was selected based on the lowest total of the mean square error. The proposed model was evaluated using the statistical analysis and graphical presentation for its accuracy and reliability. The results showed that the model was capable to predict product yields from pyrolysis of non-recycled plastics with high accuracy and the output values were strongly correlated with the values in literature
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OPUS - University of Technology Sydney
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Last time updated on 20/04/2021