结构工程
人工神经网络
耐久性
古德曼关系
结构健康监测
疲劳试验
计算机科学
疲劳极限
振动疲劳
材料科学
可靠性工程
预测建模
损伤容限
工程类
作者
Ehsan Akbari,T.N. Chakherlou,Hamed Tabrizchi,Amir Mosavi
标识
DOI:10.32604/cmes.2025.068581
摘要
The ability to predict multiaxial fatigue life of Al-Alloy 7075-T6 under complex loading conditions is critical to assessing its durability under complex loading conditions, particularly in aerospace, automotive, and structural applications. This paper presents a physical-informed neural network (PINN) model to predict the fatigue life of Al-Alloy 7075-T6 over a variety of multiaxial stresses. The model integrates the principles of the Geometric Multiaxial Fatigue Life (GMFL) approach, which is a novel fatigue life prediction approach to estimating fatigue life by combining multiple fatigue criteria. The proposed model aims to estimate fatigue damage accumulation by the GMFL method. The proposed GMFL-PINN combines this physics-based approach with data-driven neural networks. Experimental validation demonstrates that GMFL-PINN outperforms FS, Smith–Watson–Topper (SWT) and Li–Zhang (LZH) fatigue life prediction methods which provides a reliable and scalable solution for structural health assessment and fatigue analysis.
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