Publications

International Papers Real-time anomaly detection using convolutional neural network in wire arc additive manufacturing: Molybdenum material

페이지 정보

profile_image
작성자 관리자
조회 715회 작성일 24-02-01 23:46

본문

Journal Journal of Materials Processing Technology, 302, 117495
Name Cho, H., Shin, S., Seo, G., Kim, D., Lee, D.
Year 2022

Wire arc additive manufacturing (WAAM) has received attention because of its high deposition rate, low cost, and high material utilization. However, quality issues are critical in WAAM because it builds upon arc welding technology, which can result in low precision and poor quality of the melted parts. Hence, anomaly detection is essential for identifying abnormal behaviors and process instability during WAAM to reduce the time and cost of post-process treatment. The relevant studies have been conducted on anomaly detection algorithms using machine learning in fused deposition modeling and laser powder bed fusion; however, they have less investigated the implementation for in situ quality monitoring in WAAM. This work presents a real-time anomaly detection method that uses a convolutional neural network (CNN) in WAAM. The proposed method enables creation of CNN-based models that detect abnormalities by learning from the melt pool image data, which are pre-processed to increase learning performance. A prototype system was implemented to classify melt pool images into “normal” and “abnormal” states, with the latter accounting for balling and bead-cut defects. Experiments were conducted using molybdenum, a cost-intensive and hard-to-machine material. Four CNN-based models were created using MobileNetV2, DenseNet169, Resnet50V2, and InceptionResNetV2. Then, their performances were validated in terms of classification accuracy and processing time. The MobileNetV2 model yielded the best performance with 98 % of classification accuracy and 0.033 s/frame of processing time. This model was also compared with an object detection algorithm named “YOLO”, which yielded 73.5 % of classification accuracy and 0.067 s/frame of processing time. 

Total 78건 3 페이지
Papers 목록
No. 제목
48 Link
47
International Papers

Journal of Food Measurement and Characterization,16, 2999–3009

2022

24.02.01 672
Link
46 Link
45 Link
44 Link
열람중 Link
42 Link
41 Link
40 Link
39 Link
38 Link
37
International Papers

Quality and Reliability Engineering International, 36(6), 1982-2002

2020

24.02.01 519
Link
36
International Papers

Quality and Reliability Engineering International, 36(6), 1931-1978

2020

24.02.01 446
Link
35 Link
34 Link

검색