2024
DOI: 10.1063/5.0188386
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Variable-fidelity surrogate model based on transfer learning and its application in multidisciplinary design optimization of aircraft

Jun-Xue Leng,
Yuan Feng,
Wei Huang
et al.

Abstract: Variable-fidelity surrogate models leverage low-fidelity data with low cost to assist in constructing high-precision models, thereby improving modeling efficiency. However, traditional machine learning methods require high correlation between low-precision and high-precision data. To address this issue, a variable-fidelity deep neural network surrogate model based on transfer learning (VDNN-TL) is proposed. VDNN-TL selects and retains information encapsulated in different fidelity data through transfer neural … Show more

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