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Calibration of material models for the human cervical spine ligament behaviour using a genetic algorithm (CROSBI ID 291482)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Franulović, Marina ; Marković, Kristina ; Trajkovski, Ana Calibration of material models for the human cervical spine ligament behaviour using a genetic algorithm // Facta Universitatis. Series: mechanical engineering, 19 (2022), 4; 751-765. doi: 10.22190/FUME201029023F

Podaci o odgovornosti

Franulović, Marina ; Marković, Kristina ; Trajkovski, Ana

engleski

Calibration of material models for the human cervical spine ligament behaviour using a genetic algorithm

Research of biomaterials in loading conditions has become a significant field in the material science nowadays. In order to provide better understanding of the loading effects on material structures, complex material models are usually chosen, depending on their applicability to the material under consideration. In order to provide as accurate as possible the material behaviormodelingof the human cervical spine ligaments, the procedure for calibration of two material models hasbeen evaluated. The calibration of material models was based on the genetic algorithm procedure in order to make possible optimization of material parameters identification for the chosen models. The influence of genetic algorithm operators upon the results in evaluated procedure hasbeen tested and discussed here and the simulated behaviorof the material hasbeen compared to the experimentally recorded stress stretch relationship of the material under consideration. Since various influential factors contribute to the genetic algorithm performance in calibration of complex material models and identification of material parameters, additional possible improvements have been suggested for further research.

Material Model ; BehaviorModeling ; Biomaterial ; Genetic Algorithm ; Inverse Analysis

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Podaci o izdanju

19 (4)

2022.

751-765

objavljeno

0354-2025

2335-0164

10.22190/FUME201029023F

Povezanost rada

Interdisciplinarne tehničke znanosti, Strojarstvo, Temeljne tehničke znanosti

Poveznice
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