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Accelerating the design of lattice structures using machine learning.
Gongora, Aldair E; Friedman, Caleb; Newton, Deirdre K; Yee, Timothy D; Doorenbos, Zachary; Giera, Brian; Duoss, Eric B; Han, Thomas Y-J; Sullivan, Kyle; Rodriguez, Jennifer N.
Afiliação
  • Gongora AE; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA. gongora1@llnl.gov.
  • Friedman C; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Newton DK; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Yee TD; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Doorenbos Z; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Giera B; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Duoss EB; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Han TY; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Sullivan K; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
  • Rodriguez JN; Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, CA, 94550, USA.
Sci Rep ; 14(1): 13703, 2024 Jun 14.
Article em En | MEDLINE | ID: mdl-38871775
ABSTRACT
Lattices remain an attractive class of structures due to their design versatility; however, rapidly designing lattice structures with tailored or optimal mechanical properties remains a significant challenge. With each added design variable, the design space quickly becomes intractable. To address this challenge, research efforts have sought to combine computational approaches with machine learning (ML)-based approaches to reduce the computational cost of the design process and accelerate mechanical design. While these efforts have made substantial progress, significant challenges remain in (1) building and interpreting the ML-based surrogate models and (2) iteratively and efficiently curating training datasets for optimization tasks. Here, we address the first challenge by combining ML-based surrogate modeling and Shapley additive explanation (SHAP) analysis to interpret the impact of each design variable. We find that our ML-based surrogate models achieve excellent prediction capabilities (R2 > 0.95) and SHAP values aid in uncovering design variables influencing performance. We address the second challenge by utilizing active learning-based methods, such as Bayesian optimization, to explore the design space and report a 5 × reduction in simulations relative to grid-based search. Collectively, these results underscore the value of building intelligent design systems that leverage ML-based methods for uncovering key design variables and accelerating design.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Revista: Sci Rep Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Estados Unidos

Texto completo: 1 Base de dados: MEDLINE Idioma: En Revista: Sci Rep Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Estados Unidos