Transfer Learning in Multi-Fidelity Surrogate Modeling: A Wind Farm Case

Abstract

Multi-fidelity surrogate modeling aims to describe complex systems governed by partial differential equations with few high-fidelity data points and abundant low-fidelity data points. Recent works leverage deep neural networks and few-shot transfer learning to achieve good results on several high-dimensional surrogate modeling problems. However, these works treat "multi-fidelity" as "multi-resolution" where low-fidelity simulations are computed using the same algorithm as high-fidelity simulations but with coarser grids. In real practice, low-fidelity simulations are often computed by approximating hard-to-compute terms and neglecting physics that are difficult to model. The features learned from low-fidelity data are not useful for predicting phenomena caused by those ignored physics. During fine-tuning, new features that the model learns for these regions will be inaccurate and can corrupt the pre-trained features. This can create unnecessary uncertainty for the predictions of regions that are less dependent on ignored physics. To overcome this problem, we propose a multi-step transfer learning method that, in each step, adaptively relaxes the constraint on model weights and collects regional pseudo-high-fidelity data to enlarge the training set. Our experiments on modeling wind farm flow fields show that our method significantly outperforms vanilla transfer learning methods.

Cite

Text

Zhang et al. "Transfer Learning in Multi-Fidelity Surrogate Modeling: A Wind Farm Case." ICML 2024 Workshops: AI4Science, 2024.

Markdown

[Zhang et al. "Transfer Learning in Multi-Fidelity Surrogate Modeling: A Wind Farm Case." ICML 2024 Workshops: AI4Science, 2024.](https://mlanthology.org/icmlw/2024/zhang2024icmlw-transfer/)

BibTeX

@inproceedings{zhang2024icmlw-transfer,
  title     = {{Transfer Learning in Multi-Fidelity Surrogate Modeling: A Wind Farm Case}},
  author    = {Zhang, Dichang and Zhang, Zexia and Santoni, Christian and Khosronejad, Ali and Samaras, Dimitris},
  booktitle = {ICML 2024 Workshops: AI4Science},
  year      = {2024},
  url       = {https://mlanthology.org/icmlw/2024/zhang2024icmlw-transfer/}
}