Surface morphology inspection for directed energy deposition using small dataset with transfer learning

被引:14
|
作者
Zhu, Xiaobo [1 ]
Jiang, Fengchun [1 ,2 ,3 ]
Guo, Chunhuan [1 ]
Xu, De [1 ]
Wang, Zhen [1 ]
Jiang, Guorui [1 ]
机构
[1] Harbin Engn Univ, Coll Mat Sci & Chem Engn, Key Lab Superlight Mat & Surface Technol, Minist Educ, Harbin 150001, Peoples R China
[2] Harbin Engn Univ, Yantai Res Inst, Yantai 264000, Peoples R China
[3] Harbin Engn Univ, Grad Sch, Yantai 264000, Peoples R China
关键词
Directed energy deposition; Surface morphology; Transfer learning; Small sample dataset; Object detection; RESIDUAL-STRESS; NEURAL-NETWORK; MELT FLOW; SPATTER;
D O I
10.1016/j.jmapro.2023.03.016
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Directed Energy Deposition (DED) is a branch of Additive Manufacturing (AM) that offers extraordinary controllability and the ability to rapidly shape materials directly into large parts with complex structures. Innovative applications of machine learning and neural network algorithms in additive manufacturing processes have recently been developed, but there are still several barriers to the development and practical application of this technology. The large amount of sample data required for visual inspection using a neural network framework leads to the problem of difficult and costly preparation of surface morphology data. In this study, a transfer learning approach based on a small dataset is proposed to detect surface morphology in the DED pro-cedure. The approach proposed effectively and innovatively addresses the sample scarcity issue that arises during neural network training and eliminates the issue of having to recreate a sizable quantity of the matching surface sample data. It also effectively accelerates the model convergence process through the transfer learning method, which indirectly improves detection accuracy. This work selected a parametric transfer learning approach to train YOLOv7, a self-supervised object detection model, for transfer learning. The experiments utilized an open -source defective dataset (NEU-DEF) for transfer learning pretraining. The training was carried out in combination with a home-made object dataset of 240 small samples after transfer of the model parameters. The input to the model is image data and the output of the training is the classification of surface morphology. The results show that the transfer training model 2 pretrained with the Stochastic Gradient Descent (SGD) algorithm has high accuracy and precision, achieving a Mean Average Precision (MAP) value of 0.62. Transfer learning speeds up the feature extraction process by transferring the parameters of a pretrained model for a similar task directly into the current task model, resulting in improved detection performance.
引用
收藏
页码:101 / 115
页数:15
相关论文
共 50 条
  • [21] Bead geometry prediction and optimization for corner structures in directed energy deposition using machine learning
    Gihr, Marwin
    Rashid, Asif
    Melkote, Shreyes N.
    ADDITIVE MANUFACTURING, 2024, 84
  • [22] Nondestructive Inspection of Cylindrical Components Repaired Via Directed Energy Deposition Using Scanning Acoustic Microscopy with Metal Lubricants
    Park, Seong-Hyun
    Choi, Sungho
    Jhang, Kyung-Young
    Ha, Tae-ho
    METALS AND MATERIALS INTERNATIONAL, 2023, 29 (09) : 2586 - 2596
  • [23] Nondestructive Inspection of Cylindrical Components Repaired Via Directed Energy Deposition Using Scanning Acoustic Microscopy with Metal Lubricants
    Seong-Hyun Park
    Sungho Choi
    Kyung-Young Jhang
    Tae-ho Ha
    Metals and Materials International, 2023, 29 : 2586 - 2596
  • [24] Numerical simulation of heat and mass transfer in laser directed energy deposition
    Nie, Yunfei
    Qin, Changliang
    Tang, Qian
    Wang, Binsheng
    Wu, Haibin
    Song, Jun
    Li, Kun
    OPTICS AND LASER TECHNOLOGY, 2024, 176
  • [25] Wire directed energy deposition of steel-aluminum structures using cold metal transfer process
    Kannan, Rangasayee
    Pierce, Dean
    Nayir, Selda
    Ahsan, Rumman Ul
    Kim, DuckBong
    Unocic, Kinga
    Lee, Yousub
    Jadhav, Sainand
    Karim, Md Abdul
    Nandwana, Peeyush
    Journal of Materials Research and Technology, 2024, 29 : 4537 - 4546
  • [26] Wire directed energy deposition of steel-aluminum structures using cold metal transfer process
    Kannan, Rangasayee
    Pierce, Dean
    Nayir, Selda
    Ul Ahsan, Rumman
    Kim, Duckbong
    Unocic, Kinga
    Lee, Yousub
    Jadhav, Sainand
    Karim, Md Abdul
    Nandwana, Peeyush
    JOURNAL OF MATERIALS RESEARCH AND TECHNOLOGY-JMR&T, 2024, 29 : 4537 - 4546
  • [27] Transfer learning using small-sized dataset for concentrate ash content prediction of coal flotation
    Wen, Zhiping
    Jia, Ruibo
    Liu, Hangtao
    Zhou, Changchun
    INTERNATIONAL JOURNAL OF COAL PREPARATION AND UTILIZATION, 2023, 43 (08) : 1358 - 1375
  • [28] Transfer Learning Method using Multi-Prediction Deep Boltzmann Machines for a small scale dataset
    Sawada, Yoshihide
    Kozuka, Kazuki
    2015 14TH IAPR INTERNATIONAL CONFERENCE ON MACHINE VISION APPLICATIONS (MVA), 2015, : 110 - 113
  • [29] Identifying Patient-Ventilator Asynchrony on a Small Dataset Using Image-Based Transfer Learning
    Pan, Qing
    Jia, Mengzhe
    Liu, Qijie
    Zhang, Lingwei
    Pan, Jie
    Lu, Fei
    Zhang, Zhongheng
    Fang, Luping
    Ge, Huiqing
    SENSORS, 2021, 21 (12)
  • [30] Micro-object pose estimation with sim-to-real transfer learning using small dataset
    Zhang, Dandan
    Barbot, Antoine
    Seichepine, Florent
    Lo, Frank P-W
    Bai, Wenjia
    Yang, Guang-Zhong
    Lo, Benny
    COMMUNICATIONS PHYSICS, 2022, 5 (01)