In situ quality inspection with layer-wise visual images based on deep transfer learning during selective laser melting

被引:0
作者
Jingchang Li
Qi Zhou
Xufeng Huang
Menglei Li
Longchao Cao
机构
[1] Huazhong University of Science & Technology,School of Aerospace Engineering
[2] Huazhong University of Science & Technology,School of Material Science and Engineering
来源
Journal of Intelligent Manufacturing | 2023年 / 34卷
关键词
Selective laser melting; Additive manufacturing; Quality inspection; In situ monitoring; Deep transfer learning;
D O I
暂无
中图分类号
学科分类号
摘要
Selective laser melting is the most commonly used additive manufacturing technique for fabricating metal components. However, the SLMed part quality still largely suffered from the porosity defects that can significantly affect the mechanical properties. Recently, in situ monitoring based on machine learning has been recognized as an effective method to overcome this challenge. In this work, a deep learning method is developed for in situ part quality inspection. The layer-wise visual images are used as the inputs without manual feature extraction and a deep transfer learning (DTL) model combining deep convolutional neural network and transfer learning is creatively applied. First, an off-axial in situ monitoring system by a high-resolution digital camera is developed to capture the images of each deposited layer. Then, samples with different part quality levels are produced by varying process parameters. Thereafter, based on the porosity measurement results obtained by optical microscopy, each captured visual image is labeled. An image dataset associated with a label of three categories of poor, medium, and high quality is created. Finally, the proposed DTL is employed to perform the classification tasks, aiming to identify the part quality based on the layer-wise visual images. Results show that a 99.89% classification accuracy of the developed DTL was obtained, revealing the feasibility and effectiveness of using layer-wise visual images without manual feature extraction to realize quality inspection. Overall, the proposed DTL method provides a promising solution to monitor part quality and reduce porosity defects during the printing process.
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页码:853 / 867
页数:14
相关论文
共 169 条
  • [1] Alfieri V(2017)Reduction of surface roughness by means of laser processing over additive manufacturing metal parts Materials 10 12-2523
  • [2] Argenio P(2019)Online quality inspection using Bayesian classification in powder-bed additive manufacturing from high-resolution visual camera images Journal of Intelligent Manufacturing 30 2505-349
  • [3] Caiazzo F(2019)Intelligent fault diagnosis for rotary machinery using transferable convolutional neural network IEEE Transactions on Industrial Informatics 16 339-813
  • [4] Sergi V(2019)Optimization and comparison of porosity rate measurement methods of Selective Laser Melted metallic parts Additive Manufacturing 28 802-1935
  • [5] Aminzadeh M(2017)Energy-fluctuated multiscale feature learning with deep ConvNet for intelligent spindle bearing fault diagnosis IEEE Transactions on Instrumentation and Measurement 66 1926-528
  • [6] Kurfess TR(2018)Application of supervised machine learning for defect detection during metallic powder bed fusion additive manufacturing using high resolution imaging Additive Manufacturing 21 517-98
  • [7] Chen Z(2014)Analysis of defect generation in Ti–6Al–4V parts made using powder bed fusion additive manufacturing processes Additive Manufacturing 1–4 87-377
  • [8] Gryllias K(2018)Recent advances in convolutional neural networks Pattern Recognition 77 354-243
  • [9] Li W(2020)Effect of processing parameters on surface roughness, porosity and cracking of as-built IN738LC parts fabricated by laser powder bed fusion Journal of Materials Processing Technology 285 215-97
  • [10] de Terris T(2013)Additive manufacturing: Technology, applications and research needs Frontiers in Mechanical Engineering 8 82-90