A new adaptive multi-fidelity metamodel method using meta-learning and Bayesian deep learning

Fenfen Xiong*, Chengkun Ren, Bo Mo, Chao Li, Xiao Hu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

2 Citations (Scopus)

Abstract

To reduce the computational cost, multi-fidelity (MF) metamodel methods have been widely used in engineering optimization. Most of these methods are based on the standard Gaussian random process theory; thus, the time cost required for hyperparameter estimation increases significantly with an increase in the dimension and nonlinearity of the problems especially for high-dimensional problems. To address these issues, by exploiting the great potential of deep neural networks in high-dimensional information extraction and approximation, a meta-learning-based multi-fidelity Bayesian neural network (ML-MFBNN) method is developed in this study. Based on this, to further reduce the computational cost, an adaptive multi-fidelity sampling strategy is proposed in combination with Bayesian deep learning to sequentially select the highly cost-effective samples. The effectiveness and advantages of the proposed MF-MFBNN and adaptive multi-fidelity sampling strategy are verified through eight mathematical examples, and the application to model validation of computational fluid dynamics and robust shape optimization of the ONERA M6 wing.

Original languageEnglish
Article number58
JournalStructural and Multidisciplinary Optimization
Volume66
Issue number3
DOIs
Publication statusPublished - Mar 2023

Keywords

  • Bayesian deep learning
  • Cost-effectiveness
  • Meta-learning
  • Multi-fidelity modeling
  • Sequential sampling

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