Computational Materials Science2022,Vol.2019.DOI:10.1016/j.commatsci.2021.110883

Uncertainty bounds for multivariate machine learning predictions on high-strain brittle fracture

Garcia-Cardona, Cristina Fernandez-Godino, M. Giselle O'Malley, Daniel Bhattacharya, Tanmoy
Computational Materials Science2022,Vol.2019.DOI:10.1016/j.commatsci.2021.110883

Uncertainty bounds for multivariate machine learning predictions on high-strain brittle fracture

Garcia-Cardona, Cristina 1Fernandez-Godino, M. Giselle 2O'Malley, Daniel 1Bhattacharya, Tanmoy1
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作者信息

  • 1. Los Alamos Natl Lab
  • 2. Lawrence Livermore Natl Lab
  • 折叠

Abstract

Simulation of the crack network evolution on high strain rate impact experiments performed in brittle materials is very compute-intensive. The cost increases even more if multiple simulations are needed to account for the randomness in crack length, location, and orientation, which is inherently found in real-world materials. Constructing a machine learning emulator can make the process faster by orders of magnitude. There has been little work, however, on assessing the error associated with their predictions. Estimating these errors is imperative for meaningful overall uncertainty quantification. In this work, we extend the heteroscedastic uncertainty estimates to bound a multiple output machine learning emulator. We find that the response prediction is accurate within its predicted errors, but with a somewhat conservative estimate of uncertainty.

Key words

Machine learning/Crack statistics/Uncertainty quantification/Heteroscedastic approach/DISCRETE ELEMENT METHOD/QUANTIFICATION/EVOLUTION

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出版年

2022
Computational Materials Science

Computational Materials Science

EISCI
ISSN:0927-0256
被引量1
参考文献量49
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