Assessment of the Critical Defect in Additive Manufacturing Components through Machine Learning Algorithms

被引:7
|
作者
Tridello, Andrea [1 ]
Ciampaglia, Alberto [1 ]
Berto, Filippo [2 ]
Paolino, Davide Salvatore [1 ]
机构
[1] Politecn Torino, Dept Mech & Aerosp Engn, I-10129 Turin, Italy
[2] Sapienza Univ Roma, Dept Chem Engn Mat Environm, I-00184 Rome, Italy
来源
APPLIED SCIENCES-BASEL | 2023年 / 13卷 / 07期
关键词
machine learning; supervised feed-forward neural networks (FFNNs); fatigue design; Additive Manufacturing; AlSi10Mg alloy; Ti6Al4V alloy; FATIGUE-LIFE PREDICTION; HIGH-CYCLE FATIGUE; POWDER BED FUSION; STRENGTH; TI-6AL-4V; FRAMEWORK; BEHAVIOR; AM;
D O I
10.3390/app13074294
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The design against fatigue failures of Additively Manufactured (AM) components is a fundamental research topic for industries and universities. The fatigue response of AM parts is driven by manufacturing defects, which contribute to the experimental scatter and are strongly dependent on the process parameters, making the design process rather complex. The most effective design procedure would involve the assessment of the defect population and the defect size distribution directly from the process parameters. However, the number of process parameters is wide and the assessment of a direct relationship between them and the defect population would require an unfeasible number of expensive experimental tests. These multivariate problems can be effectively managed by Machine Learning (ML) algorithms. In this paper, two ML algorithms for assessing the most critical defect in parts produced by means of the Selective Laser Melting (SLM) process are developed. The probability of a defect with a specific size and the location and scale parameters of the statistical distribution of the defect size, assumed to follow a Largest Extreme Value Distribution, are estimated directly from the SLM process parameters. Both approaches have been validated using literature data obtained by testing the AlSi10Mg and the Ti6Al4V alloy, proving their effectiveness and predicting capability.
引用
收藏
页数:21
相关论文
共 50 条
  • [1] Defect Classification for Additive Manufacturing with Machine Learning
    Altmann, Mika Leon
    Benthien, Thiemo
    Ellendt, Nils
    Toenjes, Anastasiya
    MATERIALS, 2023, 16 (18)
  • [2] Machine learning algorithms for defect detection in metal laser-based additive manufacturing: A review
    Fu, Yanzhou
    Downey, Austin R. J.
    Yuan, Lang
    Zhang, Tianyu
    Pratt, Avery
    Balogun, Yunusa
    JOURNAL OF MANUFACTURING PROCESSES, 2022, 75 : 693 - 710
  • [3] Process monitoring and machine learning for defect detection in laser-based metal additive manufacturing
    Herzog, T.
    Brandt, M.
    Trinchi, A.
    Sola, A.
    Molotnikov, A.
    JOURNAL OF INTELLIGENT MANUFACTURING, 2024, 35 (04) : 1407 - 1437
  • [4] Geometrical defect detection for additive manufacturing with machine learning models
    Li, Rui
    Jin, Mingzhou
    Paquit, Vincent C.
    MATERIALS & DESIGN, 2021, 206
  • [5] Chemical composition based machine learning model to predict defect formation in additive manufacturing
    Roy, Ankit
    Swope, Andrew
    Devanathan, Ram
    Van Rooyen, Isabella J.
    MATERIALIA, 2024, 33
  • [6] Fatigue design of Additive Manufacturing components through Topology Optimization: Comparison of methodologies based on the defect distribution and on the stress gradient
    Niutta, Carlo Boursier
    Tridello, Andrea
    Paolino, Davide S. S.
    FATIGUE & FRACTURE OF ENGINEERING MATERIALS & STRUCTURES, 2023, 46 (09) : 3429 - 3445
  • [7] Machine learning integrated design for additive manufacturing
    Jiang, Jingchao
    Xiong, Yi
    Zhang, Zhiyuan
    Rosen, David W.
    JOURNAL OF INTELLIGENT MANUFACTURING, 2022, 33 (04) : 1073 - 1086
  • [8] A defect-based physics-informed machine learning framework for fatigue finite life prediction in additive manufacturing
    Salvati, Enrico
    Tognan, Alessandro
    Laurenti, Luca
    Pelegatti, Marco
    De Bona, Francesco
    MATERIALS & DESIGN, 2022, 222
  • [9] A survey of machine learning in additive manufacturing technologies
    Jiang, Jingchao
    INTERNATIONAL JOURNAL OF COMPUTER INTEGRATED MANUFACTURING, 2023, 36 (09) : 1258 - 1280
  • [10] A REVIEW OF MACHINE LEARNING APPLICATIONS IN ADDITIVE MANUFACTURING
    Razvi, Sayyeda Saadia
    Feng, Shaw
    Narayanan, Anantha
    Lee, Yung-Tsun Tina
    Witherell, Paul
    PROCEEDINGS OF THE ASME INTERNATIONAL DESIGN ENGINEERING TECHNICAL CONFERENCES AND COMPUTERS AND INFORMATION IN ENGINEERING CONFERENCE, 2019, VOL 1, 2020,