TY - JOUR
T1 - A data-driven ductile fracture criterion for high-speed impact
AU - Li, Xin
AU - Qiao, Yejie
AU - Chen, Yang
AU - Li, Ziqi
AU - Zhang, Haiyang
AU - Zhang, Chao
N1 - Publisher Copyright:
© 2024 Elsevier Ltd
PY - 2024/11/25
Y1 - 2024/11/25
N2 - Data-driven methods based on machine learning (ML) models offer new approaches for characterizing the fracture behavior of advanced elastoplastic materials. In this paper, a ML-based data-driven ductile fracture criterion is proposed to characterize the fracture behavior of elastoplastic materials under high-speed impact loading conditions. To reduce the required training dataset and enhance the predictability capability, several assumptions are used. Firstly, utilizing the decoupled assumption, two separate artificial neural network (ANN) models are employed to establish the fundamental fracture model and characterize the strain rate effect of ductile fracture behavior, respectively. In addition, the enhanced method with a logarithmic function is introduced to improve predictability capability of the proposed data-driven criterion under unknown high strain rates. To establish a complete numerical implementation framework, an enhanced rate-dependent data-driven constitutive model and a compatible numerical implementation algorithm are additionally introduced. Eventually, to assess the applicability of the proposed data-driven fracture criterion, numerical simulations of notched specimens and ballistic impact conditions of Ti-6Al-4V material are conducted, respectively. These investigation results demonstrate the effectiveness of the proposed data-driven ductile fracture criterion.
AB - Data-driven methods based on machine learning (ML) models offer new approaches for characterizing the fracture behavior of advanced elastoplastic materials. In this paper, a ML-based data-driven ductile fracture criterion is proposed to characterize the fracture behavior of elastoplastic materials under high-speed impact loading conditions. To reduce the required training dataset and enhance the predictability capability, several assumptions are used. Firstly, utilizing the decoupled assumption, two separate artificial neural network (ANN) models are employed to establish the fundamental fracture model and characterize the strain rate effect of ductile fracture behavior, respectively. In addition, the enhanced method with a logarithmic function is introduced to improve predictability capability of the proposed data-driven criterion under unknown high strain rates. To establish a complete numerical implementation framework, an enhanced rate-dependent data-driven constitutive model and a compatible numerical implementation algorithm are additionally introduced. Eventually, to assess the applicability of the proposed data-driven fracture criterion, numerical simulations of notched specimens and ballistic impact conditions of Ti-6Al-4V material are conducted, respectively. These investigation results demonstrate the effectiveness of the proposed data-driven ductile fracture criterion.
KW - Data-driven
KW - Elastoplastic materials
KW - Fracture behavior
KW - High-speed impact
KW - Strain rate effect
UR - http://www.scopus.com/inward/record.url?scp=85205811784&partnerID=8YFLogxK
U2 - 10.1016/j.engfracmech.2024.110525
DO - 10.1016/j.engfracmech.2024.110525
M3 - 文章
AN - SCOPUS:85205811784
SN - 0013-7944
VL - 311
JO - Engineering Fracture Mechanics
JF - Engineering Fracture Mechanics
M1 - 110525
ER -