TY - JOUR
T1 - Simulation-informed and data-driven design of bionic–TPMS composite structures via additive manufacturing
AU - Miao, Haohao
AU - Yin, Bo
AU - Tong, Kunhao
AU - Hua, Lin
AU - Zhou, Hanxiang
AU - Guo, Yueling
AU - Wang, Zhuyuxi
AU - Wang, Qibin
N1 - Publisher Copyright:
© 2025 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group.
PY - 2026
Y1 - 2026
N2 - High-temperature robots face dual challenges of thermal protection and load-bearing under extreme conditions. Traditional thermo-mechanical coupled structures, due to their single-function design, fail to meet the demands of lightweighting and multi-functional integration. Bionic structures and triply periodic minimal surface (TPMS) structures each exhibit excellent mechanical and thermal performance, rendering them promising solutions to this challenge. However, integrate simulation-informed and data-driven methods to enable collaborative design of these two types of structures and provide precise guidance for configuration optimization remains a critical scientific challenge for their reliable application. This study proposes a simulation-informed and data-driven collaborative optimization method that combines deep learning and physical simulation to construct a predictive model, and efficiently establishing a mapping relationship between structural parameters and performance responses. Simulation and experimental results show that the optimised structure achieves a 14.25% improvement in thermal shielding capacity, and a 44.85% increase in load-bearing capacity, significantly verifying the effectiveness of the proposed method. The proposed bionic–TPMS composite structure exhibits excellent thermo-mechanical coupled performance and holds promise for application in thermo-mechanical system design, offering new insights and theoretical support for the engineering application of high-temperature robots in extreme environments.
AB - High-temperature robots face dual challenges of thermal protection and load-bearing under extreme conditions. Traditional thermo-mechanical coupled structures, due to their single-function design, fail to meet the demands of lightweighting and multi-functional integration. Bionic structures and triply periodic minimal surface (TPMS) structures each exhibit excellent mechanical and thermal performance, rendering them promising solutions to this challenge. However, integrate simulation-informed and data-driven methods to enable collaborative design of these two types of structures and provide precise guidance for configuration optimization remains a critical scientific challenge for their reliable application. This study proposes a simulation-informed and data-driven collaborative optimization method that combines deep learning and physical simulation to construct a predictive model, and efficiently establishing a mapping relationship between structural parameters and performance responses. Simulation and experimental results show that the optimised structure achieves a 14.25% improvement in thermal shielding capacity, and a 44.85% increase in load-bearing capacity, significantly verifying the effectiveness of the proposed method. The proposed bionic–TPMS composite structure exhibits excellent thermo-mechanical coupled performance and holds promise for application in thermo-mechanical system design, offering new insights and theoretical support for the engineering application of high-temperature robots in extreme environments.
KW - High-temperature robotics
KW - bionic–TPMS composite structure
KW - simulation-informed and data-driven collaboration
KW - thermo-mechanical coupled structure
UR - https://www.scopus.com/pages/publications/105026444195
U2 - 10.1080/17452759.2025.2607885
DO - 10.1080/17452759.2025.2607885
M3 - Article
AN - SCOPUS:105026444195
SN - 1745-2759
VL - 21
JO - Virtual and Physical Prototyping
JF - Virtual and Physical Prototyping
IS - 1
M1 - e2607885
ER -