钛合金
疲劳试验
材料科学
结构工程
微观结构
能量(信号处理)
山脊
合金
人工智能
冶金
计算机科学
工程类
复合材料
数学
地质学
统计
古生物学
作者
Linwei Dang,Xiaofan He,Dingcheng Tang,Hao Xin,Zhixin Zhan,Xiangming Wang,Bin Wu
标识
DOI:10.1016/j.tafmec.2024.104276
摘要
Pores are major cause of fatigue failure in laser-directed energy deposition (L-DED) titanium alloy. For the safe application of L-DED titanium alloys, it is essential to establish a fatigue life prediction method based on pore-induced fatigue. This paper proposes a prior progressive fatigue life prediction framework based on ridge classification and kernel ridge regression algorithms. The fatigue life prediction was carried out on L-DED Ti-6Al-4V alloy in three steps: critical pore identification, fine granular area existence prediction and final fatigue life prediction. The fatigue life prediction method adopted in the current study outperform the others with a correlation coefficient as high as 0.951, followed by a comparison with the results derived from different machine learning algorithms. The results show that the proposed fatigue life prediction framework can predict the fatigue life of L-DED Ti-6Al-4V alloy based on computed tomography tests and microstructure features. Due to its strong generalization ability and effectiveness, the proposed prediction method is expected to be valuable for fatigue-resistant design of L-DED Ti-6Al-4V alloy.
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