Development of a CNN-based real-time monitoring algorithm for additively manufactured molybdenum

A convolutional neural network (CNN)-based real-time monitoring algorithm is present to detect an abnormal wire + arc additive manufacturing (WAAM) process for molybdenum. The proposed algorithm consists of three modules: image conversion, CNN prediction, and real-time monitoring. The image conversi...

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Bibliographic Details
Published in:Sensors and actuators. A. Physical. Vol. 352; p. 114205
Main Authors: Kim, Eun-Su, Lee, Dong-Hee, Seo, Gi-Jeong, Kim, Duck-Bong, Shin, Seung-Jun
Format: Journal Article
Language:English
Published: Elsevier B.V 01-04-2023
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Summary:A convolutional neural network (CNN)-based real-time monitoring algorithm is present to detect an abnormal wire + arc additive manufacturing (WAAM) process for molybdenum. The proposed algorithm consists of three modules: image conversion, CNN prediction, and real-time monitoring. The image conversion module changes the form of a time-series voltage waveform data into voltage image data. The CNN prediction module classifies each voltage image into a normal or abnormal image. The real-time monitoring module expresses the results of the CNN prediction model on a real-time dashboard. Experiments for single beads of molybdenum materials were performed to validate the performance of the proposed algorithm. It was observed that abnormal WAAM processes are detected in real-time with high accuracy. In addition, a sensitivity analysis with respect to different intervals and bandwidths of the voltage image data was conducted, which are the main input parameters of the proposed method. Based on this investigation, guidelines for setting the interval and bandwidth were established. Finally, the effectiveness of the CNN classifiers was validated by applying a class-activation mapping method. It was concluded that the CNN classifiers were adequately trained because they captured the critical regions in the voltage images for both normal and abnormal cases. [Display omitted] •A real-time monitoring algorithm is applied for additive manufacturing process.•The proposed method works based on one-dimensional data; thus, easy to implement.•The proposed method shows high accuracy by training a CNN prediction model.•The high accuracy is validated through a class activation mapping method.
ISSN:0924-4247
1873-3069
DOI:10.1016/j.sna.2023.114205