Machine learning for fatigue lifetime predictions in 3D-printed polylactic acid biomaterials based on interpretable extreme gradient boosting model

Nasiri, Hamid and Dadashi, Ali and Azadi, Mohammad (2024) Machine learning for fatigue lifetime predictions in 3D-printed polylactic acid biomaterials based on interpretable extreme gradient boosting model. MATERIALS TODAY COMMUNICATIONS, 39: 109054. ISSN 2352-4928

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Abstract

Modeling of the fatigue lifetimes in 3D-printed biomaterials of Polylactic acid (PLA) is presented in this article based on machine learning (ML) techniques of interpretable extreme gradient boosting (XGBoost) and Shapley additive explanations. For this objective, standard testing samples were additive-manufactured from PLA under different 3D printing parameters. Then, the fatigue experiments were performed on specimens under various stress levels. Based on these data, three ML methods were utilized for modeling the PLA fatigue lifetimes, including XGBoost, random forest, and support vector regression, besides a common nonlinear regression analysis. The obtained results indicated that XGBoost had superior modeling results, compared to other ML techniques and the regression analysis. The coefficient of determination was 97.66 % with a scatter-band of ±1.3, which was a narrow scatter in fatigue modeling.

Item Type:
Journal Article
Journal or Publication Title:
MATERIALS TODAY COMMUNICATIONS
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/2500/2500
Subjects:
?? 3d printingbiomaterialsextreme gradient boostingfatigue lifetimemachine learninggeneral materials sciencemechanics of materialsmaterials chemistrymaterials science(all) ??
ID Code:
223569
Deposited By:
Deposited On:
30 Aug 2024 15:55
Refereed?:
Yes
Published?:
Published
Last Modified:
31 Aug 2024 02:40