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Electrospinning predictions using artificial neural networks

journal contribution
posted on 2024-03-01, 09:27 authored by Hadley Brooks, Nick TuckerNick Tucker
<p>Electrospinning is a relatively simple method of producing nanofibres. Currently there is no method to predict the characteristics of electrospun fibres produced from a wide range of polymer/solvent combinations and concentrations without first measuring a number of solution properties. This paper shows how artificial neural networks can be trained to make electrospinning predictions using only commonly available prior knowledge of the polymer and solvent. Firstly, a probabilistic neural network was trained to predict the classification of three possibilities: no fibres (electrospraying); beaded fibres; and smooth fibres with >80% correct predictions. Secondly, a generalised neural network was trained to predict fibre diameter with an average absolute percentage error of 22.3% for the validation data. These predictive tools can be used to reduce the parameter space before scoping exercises.</p>

History

School affiliated with

  • School of Engineering (Research Outputs)

Publication Title

Polymer

Volume

58

Pages/Article Number

22-29

Publisher

Elsevier

ISSN

0032-3861

Date Submitted

2015-11-22

Date Accepted

2014-12-20

Date of First Publication

2014-12-26

Date of Final Publication

2015-02-10

Date Document First Uploaded

2015-11-20

ePrints ID

19644

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