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Deep learning based online metallic surface defect detection method for wire and arc additive manufacturing
Affiliation:1. Laboratory of Intelligent Manufacturing, Design and Automation (LIMDA), Department of Mechanical Engineering, University of Alberta, Edmonton, Canada;2. School of Intelligent Manufacturing Ecosystem, Xi''an Jiaotong-Liverpool University, Suzhou, China;3. Department of Mechanical and Construction Engineering, Northumbria University, Newcastle Upon Tyne, United Kingdom;1. Department of Civil Infrastructure and Environmental Engineering, Khalifa University of Science and Technology, 127788, Abu Dhabi, United Arab Emirates;2. C2PS, Department of Electrical Engineering and Computer Science, Khalifa University of Science and Technology, 127788, Abu Dhabi, United Arab Emirates;3. Advanced Research & Innovation Center (ARIC), Khalifa University of Science and Technology, 127788, Abu Dhabi, United Arab Emiratesn
Abstract:Wire and arc additive manufacturing (WAAM) is an emerging manufacturing technology that is widely used in different manufacturing industries. To achieve fully automated production, WAAM requires a dependable, efficient, and automatic defect detection system. Although machine learning is dominant in the object detection domain, classic algorithms have defect detection difficulty in WAAM due to complex defect types and noisy detection environments. This paper presents a deep learning-based novel automatic defect detection solution, you only look once (YOLO)-attention, based on YOLOv4, which achieves both fast and accurate defect detection for WAAM. YOLO-attention makes improvements on three existing object detection models: the channel-wise attention mechanism, multiple spatial pyramid pooling, and exponential moving average. The evaluation on the WAAM defect dataset shows that our model obtains a 94.5 mean average precision (mAP) with at least 42 frames per second. This method has been applied to additive manufacturing of single-pass, multi-pass deposition and parts. It demonstrates its feasibility in practical industrial applications and has potential as a vision-based methodology that can be implemented in real-time defect detection systems.
Keywords:Wire and arc additive manufacturing  Defect detection  Online  Deep learning
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