材料科学
融合
超参数
疲劳试验
深信不疑网络
压力(语言学)
钛合金
疲劳极限
人工神经网络
钛
人工智能
循环应力
冶金
复合材料
结构工程
计算机科学
工程类
合金
哲学
语言学
作者
Yinfeng Jia,Rui Fu,Chao Ling,Zheng Shen,Liang Zheng,Zheng Zhong,Youshi Hong
标识
DOI:10.1016/j.ijfatigue.2023.107645
摘要
Microstructural defects and inhomogeneity of titanium alloys fabricated by laser powder bed fusion (LPBF) make their fatigue behaviors much more complicated than the conventionally made ones, especially in very-high-cycle fatigue (VHCF) regime. Most of traditional models/formulae and currently-used machine learning algorithms mainly concern fatigue behavior of LPBF-fabricated titanium alloys in high-cycle fatigue (HCF) regime, but rarely in VHCF regime. In this paper, a deep belief neural network-back propagation (DBN-BP) model was proposed to predict the fatigue life of LPBF-fabricated Ti-6Al-4V up to VHCF regime. Results obtained in this study indicate that the DBN-BP model exhibits high precision and strong stability in predicting the fatigue life of LPBF-fabricated Ti-6Al-4V in both HCF and VHCF regimes. The primary hyperparameters of the DBN-BP model were optimized to further improve the prediction precision of this innovative model. Finally, the optimal DBN-BP model was applied to predict the relation between mean stress and stress amplitude, and the effect of energy density on the fatigue behavior of LPBF-fabricated Ti-6Al-4V up to VHCF regime.
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