An Original Machine Learning-Based Approach for the Online Monitoring of Refill Friction Stir Spot Welding: Weld Diagnostic and Tool State Prognostic

被引:0
作者
Fethi Dahmene
Slah Yaacoubi
Mahjoub El Mountassir
Gaëlle Porot
Mohamed Masmoudi
Pascal Nennig
Uceu Fuad Hasan Suhuddin
Jorge Fernandez Dos Santos
机构
[1] Institut de Soudure,Equipe Monitoring Et Intelligence Artificielle
[2] Institut de Soudure,Equipe CND Avancés
[3] Helmholtz-Zentrum Hereon,Institute of Materials Research, Materials Mechanics, Solid State Joining Processes
来源
Journal of Materials Engineering and Performance | 2024年 / 33卷
关键词
acoustic emission; defect detection; machine learning; process monitoring; refill friction stir spot welding; tool state prediction;
D O I
暂无
中图分类号
学科分类号
摘要
The process monitoring (PM) of refill friction stir spot welding (Refill FSSW) can play a substantial role in detecting various issues, especially defects in the spot being formed and the tool state degradation, which allows in time intervention to improve the welding process. Since Refill FSSW is somewhat an emergent technology, PM has received scarce attention. In this paper, the performance of PM using acoustic emission (AE) technique is studied for two purposes: detecting defects in weld while being formed and predicting the tool state. To do so, the common defects that can occur during the process were first intentionally created and monitored using AE. The corresponding collected data have served then as an input for two defect detection models. The first one is based on novelty detection and has shown an average classification performance. The second, which shows higher performance, uses multi-class classification algorithms. Concerning the tool state, a novel state index was developed to predict when the process must be stopped in order to clean the tool and avoid hence related weld defects and tool fracture.
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页码:1931 / 1947
页数:16
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