Machine learning for predicting fatigue properties of additively manufactured materials

被引:0
|
作者
Min YI [1 ,2 ,3 ]
Ming XUE [1 ,2 ,3 ]
Peihong CONG [4 ,5 ]
Yang SONG [4 ,5 ]
Haiyang ZHANG [4 ,5 ]
Lingfeng WANG [6 ]
Liucheng ZHOU [6 ]
Yinghong LI [6 ]
Wanlin GUO [1 ,2 ,3 ]
机构
[1] State Key Laboratory of Mechanics and Control for Aerospace Structures,Nanjing University of Aeronautics and Astronautics
[2] Institute for Frontier Science,Nanjing University of Aeronautics and Astronautics
[3] College of Aerospace Engineering,Nanjing University of Aeronautics and Astronautics
[4] Shenyang Engine Research Institute
[5] Liaoning Key Laboratory of Impact Dynamics on Aero Engine
[6] Science and Technology on Plasma Dynamics Laboratory,Air Force Engineering University
关键词
D O I
暂无
中图分类号
TP391.73 []; TP181 [自动推理、机器学习]; O346.2 [疲劳理论];
学科分类号
080201 ;
摘要
Fatigue properties of materials by Additive Manufacturing(AM) depend on many factors such as AM processing parameter, microstructure, residual stress, surface roughness, porosities, post-treatments, etc. Their evaluation inevitably requires these factors combined as many as possible, thus resulting in low efficiency and high cost. In recent years, their assessment by leveraging the power of Machine Learning(ML) has gained increasing attentions. A comprehensive overview on the state-of-the-art progress of applying ML strategies to predict fatigue properties of AM materials, as well as their dependence on AM processing and post-processing parameters such as laser power, scanning speed, layer height, hatch distance, built direction, post-heat temperature,etc., were presented. A few attempts in employing Feedforward Neural Network(FNN), Convolutional Neural Network(CNN), Adaptive Network-Based Fuzzy Inference System(ANFIS), Support Vector Machine(SVM) and Random Forest(RF) to predict fatigue life and RF to predict fatigue crack growth rate are summarized. The ML models for predicting AM materials’ fatigue properties are found intrinsically similar to the commonly used ones, but are modified to involve AM features. Finally, an outlook for challenges(i.e., small dataset, multifarious features,overfitting, low interpretability, and unable extension from AM material data to structure life) and potential solutions for the ML prediction of AM materials’ fatigue properties is provided.
引用
收藏
页码:1 / 22
页数:22
相关论文
共 50 条
  • [1] Machine learning for predicting fatigue properties of additively manufactured materials
    Yi, Min
    Xue, Ming
    Cong, Peihong
    Song, Yang
    Zhang, Haiyang
    Wang, Lingfeng
    Zhou, Liucheng
    Li, Yinghong
    Guo, Wanlin
    CHINESE JOURNAL OF AERONAUTICS, 2024, 37 (04) : 1 - 22
  • [2] Machine learning in predicting mechanical behavior of additively manufactured parts
    Nasiri, Sara
    Khosravani, Mohammad Reza
    JOURNAL OF MATERIALS RESEARCH AND TECHNOLOGY-JMR&T, 2021, 14 : 1137 - 1153
  • [3] A microstructure sensitive machine learning-based approach for predicting fatigue life of additively manufactured parts
    Kishore, Prateek
    Mondal, Aratrick
    Trivedi, Aayush
    Singh, Punit
    Alankar, Alankar
    INTERNATIONAL JOURNAL OF FATIGUE, 2025, 192
  • [4] Machine learning assisted investigation of defect influence on the mechanical properties of additively manufactured architected materials
    Hu, Erhai
    Seetoh, Ian P. P.
    Lai, Chang Quan
    INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES, 2022, 221
  • [5] A machine-learning fatigue life prediction approach of additively manufactured metals
    Bao, Hongyixi
    Wu, Shengchuan
    Wu, Zhengkai
    Kang, Guozheng
    Peng, Xin
    Withers, Philip J.
    ENGINEERING FRACTURE MECHANICS, 2021, 242
  • [6] Machine learning model for predicting the hardness of additively manufactured acrylonitrile butadiene styrene
    Veeman, Dhinakaran
    Sudharsan, S.
    Surendhar, G. J.
    Shanmugam, Ragavanantham
    Guo, Lei
    MATERIALS TODAY COMMUNICATIONS, 2023, 35
  • [7] FATIGUE PROPERTIES OF ADDITIVELY MANUFACTURED COPPER ALLOY
    Kratochvilova, Vendula
    Vlasic, Frantisek
    Mazal, Pavel
    Koutny, Daniel
    METAL 2017: 26TH INTERNATIONAL CONFERENCE ON METALLURGY AND MATERIALS, 2017, : 1593 - 1598
  • [8] Review on machine learning techniques for the assessment of the fatigue response of additively manufactured metal parts
    Centola, Alessio
    Tridello, Andrea
    Ciampaglia, Alberto
    Berto, Filippo
    Paolino, Davide Salvatore
    FATIGUE & FRACTURE OF ENGINEERING MATERIALS & STRUCTURES, 2024, 47 (08) : 2700 - 2729
  • [9] Numerical framework for predicting fatigue scatter in additively manufactured parts
    Hou, Yixuan
    Kench, Steve
    Wauters, Tony
    Talemi, Reza
    INTERNATIONAL JOURNAL OF MECHANICAL SCIENCES, 2024, 281
  • [10] Predicting microstructure-dependent mechanical properties in additively manufactured metals with machine- and deep-learning methods
    Herriott, Carl
    Spear, Ashley D.
    COMPUTATIONAL MATERIALS SCIENCE, 2020, 175