首页> 外文期刊>Journal of the Mechanics and Physics of Solids >Determination of constitutive properties from spherical indentation data using neural networks. Part I: the case of pure kinematic hardening in plasticity laws
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Determination of constitutive properties from spherical indentation data using neural networks. Part I: the case of pure kinematic hardening in plasticity laws

机译:使用神经网络从球形压痕数据确定本构特性。第一部分:可塑性定律中纯运动硬化的情况

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In this paper the power of neural networks in identifying material parameters from data obtained by spherica1 indentation is demonstrated tar an academic problem (pure kinematics hardening, given Young's modulus). To obtain a data basis for the training and validation of the neural network, numerous finite element simulations were carried out for various sets of material parameters. The constitutive model describing finite deformation plasticity is for- umlauted with nonlinear kinematics hardening of Armstrong Frederick type. It was shown by Huber and Tsakmakis (l998a) that the depth load response of a cyclic indentation process, consisting of loading, unloading and reloading of the indenture displays a typical hysteresis loop for given material parameters. The inverse prob1em of leading the depth load response back to the re1ated parameters in the constitutive equations is solved using a neutral network.
机译:在本文中,神经网络从球面压痕获得的数据中识别材料参数的能力被证明是一个学术问题(纯运动学硬化,给定杨氏模量)。为了获得训练和验证神经网络的数据基础,对各种材料参数集进行了许多有限元模拟。阿姆斯特朗·弗雷德里克(Armstrong Frederick)型的非线性运动学硬化方法,可以描述描述有限变形塑性的本构模型。 Huber and Tsakmakis(l998a)表明,由压痕的加载,卸载和重新加载组成的循环压痕过程的深度载荷响应在给定的材料参数下显示出典型的磁滞回线。使用中性网络解决了将深度载荷响应引导回本构方程中相关参数的反问题。

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