Quantifying the Contribution of Crystallographic Texture and Grain Morphology on the Elastic and Plastic Anisotropy of bcc Steel
Abstract
:1. Introduction
2. Material: Composition, Processing and Characterization
3. Simulation Setup
3.1. Microstructure Representation
- I a
- Direct takeover 2D: These 2D full-field models are based on a direct takeover of the measured crystallographic orientation on each of the = 2,561,600 points (see Figure 2).
- I b
- Random orientation assignment 2D: By randomly shuffling the measured crystallographic orientations among the points, a second set of resolved 2D microstructures has been created.
- I c
- Random orientation assignment 3D: The random distribution of almost all (Less than 2% of the discrete crystallographic orientations had to be discarded when distributing them on an equi-gridded cube ().) measured orientations on a 3D grid with = 2,515,456 points gives a third set of microstructure variants.
- I d
- 2DVoronoitessellation: A regular grid of = 4,096,576 pixel is divided into 1000 grains with a periodic Voronoi tessellation. Each grain gets a homogeneous initial orientation assigned.
- I e
- 3DVoronoitessellation: Similarly, a 160 = 4,096,000 voxel grid is divided into 1000 equiaxed grains with a periodic Voronoi tessellation. The resulting microstructure for the RD-section is shown in Figure 4b.
- II a
- 3D microstructure without grain information: This TCCP-FEM model is conceptually a combination of variant I c (Random orientation assignment 3D) and I e (3D Voronoi tessellation): 1000 orientations are assigned to the points of a grid.
- II b
- 3D microstructure with globular grains: The same geometric representation as for variant I e (3D Voronoi tessellation) is used but the 1000 orientations represent the texture of all three measurements. To investigate the influence of the grain shape separately from the influence of the strong crystallographic texture present in the probed material, a variant of this microstructure is created in which 1000 randomly sampled orientations are assigned to the grains.
- II c
- 3D microstructure with elongated grains: To generate elongated grains, a standard Voronoi tesselation of 1000 seed points is performed on a grid from which only every eights plane along the last direction is used. The resulting grain structure with a grain aspect ratio of 8:8:1 (RD:TD:ND) and initial homogeneous orientation per grain is shown in Figure 4c. To investigate the influence of the grain shape separately from the influence of the strong crystallographic texture present in the probed material, a variant of this microstructure is created in which 1000 randomly sampled orientations are assigned to the grains.
3.2. Constitutive Model for Crystal Plasticity
3.3. Numerical Solver and Boundary Conditions
4. Results
4.1. Average Behaviour
- The yield stress calculated for the individual sections with the analytic approach depends slightly on the data set, it differs by 30 (i.e., 3.4%) for the yield stress in TD direction , see Table 3a.
- The various microstructure models used for the individual data (I a to I e) predict differences of up to 38 ( calculated from ND-section data), see Table 3a.
- The yield stress in RD, , predicted by all simulations is lower than the value obtained from the analytic expression.
- Sampling 1000 orientations from the combined texture results in an increase of the predicted yield stress by 4 –12 when employing the analytic approach, see Table 3b.
- Employing the simpler models (II a: 3D microstructure without grain information and II b: 3D microstructure with globular grains) lowers and and increases in comparison to model II c (3D microstructure with elongated grains) which has the most realistic grain geometry, see Table 3b.
4.2. Micro-Mechanical Behaviour
5. Discussion
6. Conclusions
- The grain morphology only has a minor impact on anisotropic elastic and plastic properties, with differences of less than 3% between microstructure based and solely texture based numerical models.
- Statistically sufficient orientation measurements are more important than grain morphology. Even measuring 2000 grains does not ensure obtaining a representative orientation data.
- The HybridIa method enables a significant reduction of the orientation data that is required to accurately represent the texture.
- The simple analytic approach based on the geometric mean is suitable for estimating anisotropic elastic properties, since it yields very similar results as more complex numerical simulations.
- The underlying isostrain assumption of the Taylor model renders it an unsuitable choice for materials consisting of non-equiaxed grains with very strong anistropic behaviour.
7. Outlook
Author Contributions
Funding
Conflicts of Interest
References
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(a) | ||
---|---|---|
Property | Value | Unit |
230 | ||
134 | ||
116 |
(b) | ||
---|---|---|
Property | Value | Unit |
1.0 | / | |
354 | ||
837 | ||
361 | ||
1538 | ||
1.0 | ||
Coplanar | 1.0 | |
Non-coplanar | 1.4 | |
n | 20.0 | |
a | 2.0 |
(a) | |||
---|---|---|---|
ND-Section | RD-Section | TD-Section | |
- | |||
- | |||
- |
(b) | |||||
---|---|---|---|---|---|
Geometric Mean | Simulation | ||||
All Orientations | 1000 Orientations | II a | II b | II c | |
198 | 198 | 199 | 198 | 196 | |
215 | 215 | 216 | 216 | 215 | |
233 | 234 | 235 | 234 | 236 |
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Diehl, M.; Niehuesbernd, J.; Bruder, E. Quantifying the Contribution of Crystallographic Texture and Grain Morphology on the Elastic and Plastic Anisotropy of bcc Steel. Metals 2019, 9, 1252. https://doi.org/10.3390/met9121252
Diehl M, Niehuesbernd J, Bruder E. Quantifying the Contribution of Crystallographic Texture and Grain Morphology on the Elastic and Plastic Anisotropy of bcc Steel. Metals. 2019; 9(12):1252. https://doi.org/10.3390/met9121252
Chicago/Turabian StyleDiehl, Martin, Jörn Niehuesbernd, and Enrico Bruder. 2019. "Quantifying the Contribution of Crystallographic Texture and Grain Morphology on the Elastic and Plastic Anisotropy of bcc Steel" Metals 9, no. 12: 1252. https://doi.org/10.3390/met9121252