• CN: 11-2187/TH
  • ISSN: 0577-6686

Journal of Mechanical Engineering ›› 2024, Vol. 60 ›› Issue (16): 190-199.doi: 10.3901/JME.2024.16.190

Previous Articles     Next Articles

Fatigue Performance Prediction Study of Al-Li Alloy-based on Experimental and “Shallow” + “Deep” Hybrid Neural Network Methods

ZHAO Dewang1, JIANG Chao1, ZHAO Yanguang2, YANG Wenping3, FAN Junling4   

  1. 1. School of Mechatronics Engineering, Anhui University of Science and Technology, Huainan 232000;
    2. Department of Engineering Mechanics, Dalian University of Technology, Dalian 116024;
    3. Department of Aerospace and Architectural Engineering, Harbin Engineering University, Harbin 150001;
    4. National Key Laboratory of Strength and Structural Integrity, Aircraft Strength Research Institute, Xi'an 710065
  • Received:2023-11-07 Revised:2024-04-15 Online:2024-08-20 Published:2024-10-21

Abstract: With its excellent mechanical properties, aluminum-lithium alloy has increasingly important in aerospace field and is one of the most rapidly developing lightweight materials. Fatigue and fracture are one of the main causes of failure of aerospace structural components, and fatigue damage is highly uncertain and sudden, so its fatigue performance evaluation and prediction has become a hot research topic. The fatigue experiments of 2A97 aluminum-lithium alloy considering the sampling direction, notch, etc. are carried out to obtain eight sets of complete S-N curves and the influence of relevant factors on the fatigue performance of aluminum-lithium alloy are analyzed. A hybrid neural network model based on shallow network and deep learning is innovatively proposed. The shallow algorithm is used to train the low cycle fatigue experimental data to realize data derivation at first, and then accurately predict the fatigue limit of aluminum-lithium alloy under different working conditions by deep learning. This method provides a new way for the research of fast and accurate evaluation of fatigue properties of materials.

Key words: aluminum-lithium alloy, fatigue performance, shallow networks, deep learning

CLC Number: