Repository of Research and Investigative Information

Repository of Research and Investigative Information

Shahid Sadoughi University of Medical Sciences

Prediction of diameter in blended nanofibers of polycaprolactone-gelatin using ANN and RSM

(2017) Prediction of diameter in blended nanofibers of polycaprolactone-gelatin using ANN and RSM. Fibers and Polymers. pp. 2368-2378. ISSN 1229-9197

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Abstract

Fabrication of nanofibers with a defined diameter is a primary purpose of the electrospinning process. The diameter of nanofiber is directly related to its individual features, such as mechanical property and porosity. The motivation to conduct the current study was to explore the diameter of hybrid nanofibers of polycaprolactone-gelatin (PCL-GT) as one of the most attractive scaffolds employed in various research fields, such as tissue engineering and industrial fields. We have developed two predictive models describing the electrospinning process of PCL-GT using response surface methodology (RSM) and artificial neural network (ANN). The effect of 4 variables on diameter was analyzed, including total polymer concentration, ratio of PCL to Gel, voltage, and tip-to-collector distance. The individual and interactive effects of the mentioned factors were analyzed using RSM. The total polymer concentration had the most significant individual effect on the diameter of PCL-Gel nanofiber, whereas the other three factors showed less strong individual effects, although, the interactive effects of these factors were more remarkable. It was demonstrated that both models, especially the ANN model, could accurately predict the diameter of PCL-GT nanofiber (regression coefficient > 0.92, mean absolute percentage error < 5.7). The represented predictive models could facilitate construction of electrospun nanofibers from PCL-Gel with wellcontrolled diameter required for any intended purpose.

Item Type: Article
Keywords: Electrospinning Nanofiber Artificial neural networks Response surface methodology Polycaprolactone Gelatin response-surface methodology artificial neural-networks tissue engineering applications electrospinning parameters stem-cells scaffolds optimization algorithm polymers fibers Materials Science Polymer Science
Page Range: pp. 2368-2378
Journal or Publication Title: Fibers and Polymers
Journal Index: WoS
Volume: 18
Number: 12
Identification Number: https://doi.org/10.1007/s12221-017-7631-8
ISSN: 1229-9197
Depositing User: Mr mahdi sharifi
URI: http://eprints.ssu.ac.ir/id/eprint/29411

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