Cost-effective search for lower-error region in material parameter space
using multifidelity Gaussian process modeling
- URL: http://arxiv.org/abs/2003.13428v1
- Date: Sun, 15 Mar 2020 04:14:30 GMT
- Title: Cost-effective search for lower-error region in material parameter space
using multifidelity Gaussian process modeling
- Authors: Shion Takeno, Yuhki Tsukada, Hitoshi Fukuoka, Toshiyuki Koyama, Motoki
Shiga, and Masayuki Karasuyama
- Abstract summary: Information regarding precipitate shapes is critical for estimating material parameters.
This region, called the lower-error region (LER), reflects intrinsic information of the material contained in the precipitate shapes.
We used a Gaussian-process-based multifidelity modeling, in which training data can be sampled from multiple computations with different accuracy levels.
- Score: 6.460853830978507
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Information regarding precipitate shapes is critical for estimating material
parameters. Hence, we considered estimating a region of material parameter
space in which a computational model produces precipitates having shapes
similar to those observed in the experimental images. This region, called the
lower-error region (LER), reflects intrinsic information of the material
contained in the precipitate shapes. However, the computational cost of LER
estimation can be high because the accurate computation of the model is
required many times to better explore parameters. To overcome this difficulty,
we used a Gaussian-process-based multifidelity modeling, in which training data
can be sampled from multiple computations with different accuracy levels
(fidelity). Lower-fidelity samples may have lower accuracy, but the
computational cost is lower than that for higher-fidelity samples. Our proposed
sampling procedure iteratively determines the most cost-effective pair of a
point and a fidelity level for enhancing the accuracy of LER estimation. We
demonstrated the efficiency of our method through estimation of the interface
energy and lattice mismatch between MgZn2 and {\alpha}-Mg phases in an Mg-based
alloy. The results showed that the sampling cost required to obtain accurate
LER estimation could be drastically reduced.
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