Quantifying and Predicting Tensile Properties of Curcuma longa-silicone Biocomposite

This study was carried out to introduce newly developed silicone-biocomposite materials, namely Curcuma longa-silicone biocomposite; and assess its tensile properties of using the Neo-Hookean hyperelastic constitutive equation. The specimens were prepared from the mix of Curcuma longa fiber and pure...

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Bibliographic Details
Published in:Medziagotyra
Main Author: Zainal Abidin N.A.; Othman N.; Zulkefli A.H.; Mahmud J.
Format: Article
Language:English
Published: Kauno Technologijos Universitetas 2022
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85136950457&doi=10.5755%2fj02.ms.29871&partnerID=40&md5=21cf2546b063e96abcfca78558f11676
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Summary:This study was carried out to introduce newly developed silicone-biocomposite materials, namely Curcuma longa-silicone biocomposite; and assess its tensile properties of using the Neo-Hookean hyperelastic constitutive equation. The specimens were prepared from the mix of Curcuma longa fiber and pure silicone at various fiber composition (0 wt.%, 4 wt.%, 8 wt.%, and 12 wt.%). A uniaxial tensile test was carried out by adopting the ASTM D412 testing standard. The Neo-Hookean model was employed to obtain the material constant, C1 value. Results obtained indicate that the incorporation of Curcuma longa fiber improves the stiffness of the silicone biocomposite as can be seen from the increase of the tensile modulus, while marginally decreasing its tensile strength. The material elastic constant, C1 of silicone reinforced with Curcuma longa was then predicted by using Artificial Neural Network (ANN). The regression coefficients obtained by training the neural network are satisfactory, therefore the neural network can be used for predicting the material constant, C1 of the silicone biocomposite. The prediction of ANN generates a better correlation if there are more data set and can be a good fit for predicting the unknown value. © Zainal Abidin et al. 2022.
ISSN:13921320
DOI:10.5755/j02.ms.29871