Inverse identification of hyperelastic parameters by metaheuristic optimization algorithm

G. Bastos, A. Tayeb, J. Cam, N. D. Cesare
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引用次数: 0

Abstract

: In the present study, a numerical method based on a metaheuristic parametric algorithm has been developed to identify the constitutive parameters of hyperelastic models, by using FE simulations and full kinematic fi eld measurements. The full kinematic fi eld was measured at the surface of a cruciform specimen submitted to equibiaxial tension. The test was simulated by using the fi nite element method (FEM). The constitutive parameters used in the numerical model were modi fi ed through the optimization process, for the predicted kinematic fi eld to fi t with the experimental one. The cost function was formulated as the minimization of the difference between these two kinematic fi elds. The optimization algorithm is an adaptation of the Particle Swarm Optimization algorithm, based on the PageRank algorithm used by the famous search engine Google.
基于元启发式优化算法的超弹性参数反辨识
在本研究中,通过有限元模拟和全运动场测量,开发了一种基于元启发式参数算法的数值方法来识别超弹性模型的本构参数。完整的运动场是在一个十字形试样的表面提交等双轴张力测量。采用有限元法对试验进行了模拟。通过优化过程对数值模型中使用的本构参数进行修改,使预测的运动场与实验场相吻合。代价函数被表示为这两个运动场之间的差值的最小化。该优化算法是在著名搜索引擎谷歌使用的PageRank算法的基础上,对粒子群优化算法进行了改进。
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