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International Journal of Fatigue - 巻 212 / 号 None

タイトル
著者 ページ PKV
Design of an assembly-based cruciform specimen for equibiaxial ultrasonic fatigue testing
Benjamin Guennec, Tarik Sadat 212 None 109757–None 2026 1.0
平均評価: 0.0 / 5 (0 件のレビュー)
A physics-informed non-destructive method for predicting fatigue life after ultrasonic strengthening
Shulong Feng, Feng Feng, Xiangyu Zhang, Zefeng Chen, Pingfa Feng 212 None 109766–None 2026 1.0
平均評価: 0.0 / 5 (0 件のレビュー)
Fatigue life prediction of overhead conductor wires using a physics-guided neural network
Giorgio A.B. Oliveira, Ian M. Matos, Lorenna S.B. Oliveira, Fábio C. Castro, José A. Araújo 212 None 109773–None 2026 1.0
平均評価: 0.0 / 5 (0 件のレビュー)
Probabilistic fatigue assessment of a demonstrator manufactured by PBF-LB in Scalmalloy®
Lorenzo Rusnati, Daniel Perghem, Stefano Miccoli, Vladimir Luzin, Stefano Beretta 212 None 109771–None 2026 1.0
平均評価: 0.0 / 5 (0 件のレビュー)
The build-direction dependence of fatigue crack propagation in Inconel 625 alloy fabricated by laser powder bed fusion: the role of grain-scale geometry
Jinyin Fu, Libo Zhou, Zeai Peng, Yanjie Ren, Kefu Gan 212 None 109774–None 2026 1.0
平均評価: 0.0 / 5 (0 件のレビュー)
A multi-fidelity physics-informed machine learning framework for probabilistic low-cycle fatigue life prediction of shot-peened materials
Zhichun Zhou, Dianyin Hu, Jianxing Mao, Huanhuan Chen, Rongqiao Wang 212 None 109775–None 2026 1.0
平均評価: 0.0 / 5 (0 件のレビュー)