Mechanical Property Prediction of Poly(Lactic Acid) Blends Using Deep Neural Network

Physical blending is one of the method to control and improve the mechanical properties of polymer such as Poly(lactic acid) or known as PLA. However, the phenomenological theory or model to connect the structure and properties of PLA blend is not available. Thus, in order to predict the mechanical...

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Bibliographic Details
Published in:Evergreen
Main Author: Fatriansyah J.F.; Surip S.N.; Hartoyo F.
Format: Article
Language:English
Published: Joint Journal of Novel Carbon Resource Sciences and Green Asia Strategy 2022
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85129101734&doi=10.5109%2f4774229&partnerID=40&md5=03f81f0a4641ac04ae03107a65106ba7
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Summary:Physical blending is one of the method to control and improve the mechanical properties of polymer such as Poly(lactic acid) or known as PLA. However, the phenomenological theory or model to connect the structure and properties of PLA blend is not available. Thus, in order to predict the mechanical property from structure is based on many trial experiments. In this study, Deep Learning Network (DNN) was employed to predict the yield strength of PLA blend based on its structure information: blending composition, molecular weight, melting point and density of polymer. It was demonstrated that DNN can successfully predict the mechanical property from structure information of PLA blends although the accuracy could be further improved. © 2022 Novel Carbon Resource Sciences. All rights reserved.
ISSN:21890420
DOI:10.5109/4774229