TY - JOUR
T1 - Defect‐induced fatigue scattering and assessment of additively manufactured 300M-AerMet100 steel
T2 - An investigation based on experiments and machine learning
AU - Zhan, Zhixin
AU - Ao, Ni
AU - Hu, Yanan
AU - Liu, Chuanqi
N1 - Publisher Copyright:
© 2022
PY - 2022/4/1
Y1 - 2022/4/1
N2 - Additive manufacturing (AM) has attracted much attention recently for its immanent advantages. Assessment of the fatigue performance for AM treated materials becomes vital for both material science and engineering applications. In this study, we extensively investigate the fatigue performance of AM processed 300M-AerMet100 steel by combining experiments, numerical simulations and machine learning. We conduct experiments to obtain fatigue curves as calibration and to determine the parameters used in the theoretical models. Continuum damage mechanics-based fatigue models are presented and numerically implemented to generate sufficient training data for machine learning. We then employ a multi-layer perceptron neural network model to predict the fatigue life of the AM processed 300M-AerMet100 steel. Experimental results show that there are scatters in the fatigue data, which may be caused by the small cracks induced by the laser cladding process via fractographic analyses. Numerical results show that a good prediction of fatigue life can be achieved by combining the continuum damage mechanics-based fatigue models and the multi-layer perceptron neural network model. This work provides a systematic prediction platform for the fatigue performance of the AM fabricated 300M-AerMet100 steel.
AB - Additive manufacturing (AM) has attracted much attention recently for its immanent advantages. Assessment of the fatigue performance for AM treated materials becomes vital for both material science and engineering applications. In this study, we extensively investigate the fatigue performance of AM processed 300M-AerMet100 steel by combining experiments, numerical simulations and machine learning. We conduct experiments to obtain fatigue curves as calibration and to determine the parameters used in the theoretical models. Continuum damage mechanics-based fatigue models are presented and numerically implemented to generate sufficient training data for machine learning. We then employ a multi-layer perceptron neural network model to predict the fatigue life of the AM processed 300M-AerMet100 steel. Experimental results show that there are scatters in the fatigue data, which may be caused by the small cracks induced by the laser cladding process via fractographic analyses. Numerical results show that a good prediction of fatigue life can be achieved by combining the continuum damage mechanics-based fatigue models and the multi-layer perceptron neural network model. This work provides a systematic prediction platform for the fatigue performance of the AM fabricated 300M-AerMet100 steel.
KW - 300M-AerMet100 steel
KW - Additive manufacturing
KW - Data-driven modeling
KW - Experimental investigations
KW - Fatigue assessment
UR - https://www.scopus.com/pages/publications/85125433275
U2 - 10.1016/j.engfracmech.2022.108352
DO - 10.1016/j.engfracmech.2022.108352
M3 - 文章
AN - SCOPUS:85125433275
SN - 0013-7944
VL - 264
JO - Engineering Fracture Mechanics
JF - Engineering Fracture Mechanics
M1 - 108352
ER -