Development of Homogenization Data-based Transfer Learning Framework to Predict Effective Mechanical Properties and Thermal Conductivity of Foam Structures

  • Lee, Wonjoo
  • Kim, Suhan
  • Sim, Hyun Jong
  • Lee, Ju Ho
  • An, Byeong Hyeok
  • ... Shin, Hyunseong
  • 외 2명
Citations

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초록

In this study, we developed a transfer learning framework based on homogenization data for efficient prediction of the effective mechanical properties and thermal conductivity of cellular foam structures. Mean-field homogenization (MFH) based on the Eshelby's tensor allows for efficient prediction of properties in porous structures including ellipsoidal inclusions, but accurately predicting the properties of cellular foam structures is challenging. On the other hand, finite element homogenization (FEH) is more accurate but comes with relatively high computational cost. In this paper, we propose a data-driven transfer learning framework that combines the advantages of mean-field homogenization and finite element homogenization. Specifically, we generate a large amount of mean-field homogenization data to build a pre-trained model, and then fine-tune it using a relatively small amount of finite element homogenization data. Numerical examples were conducted to validate the proposed framework and verify the accuracy of the analysis. The results of this study are expected to be applicable to the analysis of materials with various foam structures.

키워드

(Foam structure)(Machine learning)(Multiscale analysis)(Homogenization)(Finite element analysis)MEAN-FIELD HOMOGENIZATIONCOMPOSITES
제목
Development of Homogenization Data-based Transfer Learning Framework to Predict Effective Mechanical Properties and Thermal Conductivity of Foam Structures
저자
Lee, WonjooKim, SuhanSim, Hyun JongLee, Ju HoAn, Byeong HyeokKim, Yu JungJeong, Sang YungShin, Hyunseong
DOI
10.7234/composres.2023.36.3.205
발행일
2023-06
유형
Article
저널명
Composites Research
36
3
페이지
205 ~ 210