Direct Numerical Simulations in Solid Mechanics for Quantifying the Macroscale Effects of Microstructure and Material Model-Form Error

被引:0
|
作者
Joseph E. Bishop
John M. Emery
Corbett C. Battaile
David J. Littlewood
Andrew J. Baines
机构
[1] Sandia National Laboratories,Engineering Sciences Center
[2] Sandia National Laboratories,Materials Science and Engineering Center
[3] Sandia National Laboratories,Computing Research Center
[4] General Motors,General Motors Proving Ground
来源
JOM | 2016年 / 68卷
关键词
Direct Numerical Simulation; Representative Volume Element; Plasticity Model; Mesh Refinement; Direct Numerical Simulation Result;
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中图分类号
学科分类号
摘要
Two fundamental approximations in macroscale solid-mechanics modeling are (1) the assumption of scale separation in homogenization theory and (2) the use of a macroscopic plasticity material model that represents, in a mean sense, the multitude of inelastic processes occurring at the microscale. With the goal of quantifying the errors induced by these approximations on engineering quantities of interest, we perform a set of direct numerical simulations (DNS) in which polycrystalline microstructures are embedded throughout a macroscale structure. The largest simulations model over 50,000 grains. The microstructure is idealized using a randomly close-packed Voronoi tessellation in which each polyhedral Voronoi cell represents a grain. An face centered cubic crystal-plasticity model is used to model the mechanical response of each grain. The overall grain structure is equiaxed, and each grain is randomly oriented with no overall texture. The detailed results from the DNS simulations are compared to results obtained from conventional macroscale simulations that use homogeneous isotropic plasticity models. The macroscale plasticity models are calibrated using a representative volume element of the idealized microstructure. Ultimately, we envision that DNS modeling will be used to gain new insights into the mechanics of material deformation and failure.
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页码:1427 / 1445
页数:18
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