Comparison of machine learning methods for automatic classification of porosities in powder-based additive manufactured metal parts

被引:6
|
作者
Satterlee, Nicholas [1 ]
Torresani, Elisa [1 ]
Olevsky, Eugene [1 ]
Kang, John S. [1 ]
机构
[1] San Diego State Univ, Dept Mech Engn, San Diego, CA 92182 USA
来源
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY | 2022年 / 120卷 / 9-10期
基金
美国国家科学基金会;
关键词
Porosity; Powder-based additive manufacturing; Machine learning; Convolutional neural network; RECOGNITION; DEFECTS; CNN;
D O I
10.1007/s00170-022-09141-z
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
An outstanding problem of additive manufacturing is the variability in part quality caused by process-induced defects such as porosity. Image-based porosity detection represents a solution that can be easily implemented into existing systems at a low cost. However, current industry porosity detection software utilizes threshold-based methods which require user calibration and ideal lighting conditions, and thus cannot be fully automated. This paper investigates the application of machine learning methods and compares their ability to classify porosities from cross-section images of 3D printed metal parts. Fifty-one features are manually defined and automatically extracted from the images and the most relevant features among them are selected using feature reduction methods. Six machine learning algorithms that are commonly used for classification problems are trained with those features and used for the porosity classification. The decision tree, one of the six machine learning algorithms, yields 85% accuracy with a processing time of 0.5 s to classify porosities from 691 images. However, manual features may not adequately characterize porosity because they are dependent on user's experience and judgment. Alternatively, deep convolutional neural network (DCNN) that does not require user-defined features is used for the classification problem. The comparison results showed that a DCNN yields the highest accuracy of 95% with a processing time of 1.8 s to classify porosities from the same 691 images.
引用
收藏
页码:6761 / 6776
页数:16
相关论文
共 50 条
  • [21] A comprehensive comparison of modeling strategies and simulation techniques applied in powder-based metallic additive manufacturing
    Jia, Y.
    Naceur, H.
    Saadlaoui, Y.
    Dubar, L.
    Bergheau, J. M.
    JOURNAL OF MANUFACTURING PROCESSES, 2024, 110 : 1 - 29
  • [22] Optimization of the production processes of powder-based additive manufacturing technologies by means of a machine learning model for the temporal prognosis of the build and cooling phase
    Osswald, Paul Victor
    Mustafa, Saad Kamal
    Kaa, Christoph
    Obst, Philip
    Friedrich, Martin
    Pfeil, Markus
    Rietzel, Dominik
    Witt, Gerd
    PRODUCTION ENGINEERING-RESEARCH AND DEVELOPMENT, 2020, 14 (5-6): : 677 - 691
  • [23] Optimization of the production processes of powder-based additive manufacturing technologies by means of a machine learning model for the temporal prognosis of the build and cooling phase
    Paul Victor Osswald
    Saad Kamal Mustafa
    Christoph Kaa
    Philip Obst
    Martin Friedrich
    Markus Pfeil
    Dominik Rietzel
    Gerd Witt
    Production Engineering, 2020, 14 : 677 - 691
  • [24] 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
  • [25] Comparison of Machine Learning Methods in Classification of Affective Disorders
    Kinder, I
    Friganovic, K.
    Vukojevic, J.
    Mulc, D.
    Slukan, T.
    Vidovic, D.
    Brecic, P.
    Cifrek, M.
    2020 43RD INTERNATIONAL CONVENTION ON INFORMATION, COMMUNICATION AND ELECTRONIC TECHNOLOGY (MIPRO 2020), 2020, : 177 - 181
  • [26] Arc-based additive manufacturing of steel components-comparison of wire- and powder-based variants
    Hoefer, K.
    Haelsig, A.
    Mayr, P.
    WELDING IN THE WORLD, 2018, 62 (02) : 243 - 247
  • [27] Review of Automatic Citation Classification Based on Machine Learning
    Zhou Z.
    Data Analysis and Knowledge Discovery, 2021, 5 (12) : 14 - 24
  • [28] Machine Learning Based Automatic Classification of Customer Sentiment
    Hasan, Tonmoy
    Matin, Abdul
    Joy, M. Shakif Rahman
    2020 23RD INTERNATIONAL CONFERENCE ON COMPUTER AND INFORMATION TECHNOLOGY (ICCIT 2020), 2020,
  • [29] A Machine Learning Based Automatic Tomato Classification System
    Chen, Xin
    Sun, Zhan-Li
    Chen, Xia
    PROCEEDINGS OF THE 33RD CHINESE CONTROL AND DECISION CONFERENCE (CCDC 2021), 2021, : 5105 - 5108
  • [30] Defect identification of metal additive manufacturing parts based on laser-induced breakdown spectroscopy and machine learning
    Lin, Jingjun
    Yang, Jiangfei
    Huang, Yutao
    Lin, Xiaomei
    APPLIED PHYSICS B-LASERS AND OPTICS, 2021, 127 (12):