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Eulerian Finite Element Implementations of a Dislocation Density-Based Continuum Model

INTERNATIONAL JOURNAL OF SOLIDS AND STRUCTURES(2024)

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Cited 2|Views13
Abstract
In Eulerian finite element simulations, the mesh moves relative to the material. After every change of position between the mesh and the material, the state variables are interpolated to the new mesh position, which is referred to as advection. Large strain crystal plasticity models are based on the multiplicative decomposition of the total deformation gradient. The stress is evaluated as a function of the thermoelastic strain, temperature, and other state variables. Advection of tensor quantities, such as the strain, is coupled with possibly significant advection errors. In an effort to reduce the advection errors, we develop two rate forms of an established dislocation density-based continuum model. To that end, we replace the multiplicative decomposition of the deformation gradient with the additive decomposition of the velocity gradient, and define the stress rate instead of the total stress. The Eulerian implementation is compared with Lagrangian calculations, and two numerical examples with severe deformation levels are presented.
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Eulerian analysis,Large strain,Crystal plasticity,Rate formulation,Additive decomposition,Pore collapse
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要点】:本文提出了一种基于位移梯度的加法分解和应力率的有限元素方法,以减少在欧拉有限元素模拟中因网格与材料相对位移造成的位错密度连续模型中的传输误差。

方法】:作者采用欧拉有限元素方法,通过将变形梯度的乘法分解替换为速度梯度的加法分解,并使用应力率而非总应力来评估,从而减少传输误差。

实验】:文章中通过两个数值例子,在严重变形水平下比较了提出的欧拉方法与传统的拉格朗日方法,并展示了结果。未提及具体的数据集名称。