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Physics-Guided Multi-Fidelity DeepONet for Data-Efficient Flow Field Prediction

Physics-Guided Multi-Fidelity DeepONet for Data-Efficient Flow Field Prediction

来源:Arxiv_logoArxiv
英文摘要

This study presents an enhanced multi-fidelity deep operator network (DeepONet) framework for efficient spatio-temporal flow field prediction, with particular emphasis on practical scenarios where high-fidelity data is scarce. We introduce several key innovations to improve the framework's efficiency and accuracy. First, we enhance the DeepONet architecture by incorporating a merge network that enables more complex feature interactions between operator and coordinate spaces, achieving a 50.4% reduction in prediction error compared to traditional dot-product operations. We further optimize the architecture through temporal positional encoding and point-based sampling strategies, achieving a 7.57% improvement in prediction accuracy while reducing training time by 96% through efficient sampling and automatic mixed precision training. Building upon this foundation, we develop a transfer learning-based multi-fidelity framework that leverages knowledge from pre-trained low-fidelity models to guide high-fidelity predictions. Our approach freezes the pre-trained branch and trunk networks while making only the merge network trainable during high-fidelity training, preserving valuable low-fidelity representations while efficiently adapting to high-fidelity features. Through systematic investigation, we demonstrate that this fine-tuning strategy not only significantly outperforms linear probing and full-tuning alternatives but also surpasses conventional multi-fidelity frameworks by up to 76%, while achieving up to 43.7% improvement in prediction accuracy compared to single-fidelity training. The core contribution lies in our novel time-derivative guided sampling approach: it maintains prediction accuracy equivalent to models trained with the full dataset while requiring only 60% of the original high-fidelity samples.

Sunwoong Yang、Youngkyu Lee、Namwoo Kang

物理学工程基础科学

Sunwoong Yang,Youngkyu Lee,Namwoo Kang.Physics-Guided Multi-Fidelity DeepONet for Data-Efficient Flow Field Prediction[EB/OL].(2025-03-23)[2025-05-21].https://arxiv.org/abs/2503.17941.点此复制

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