Machine learning-based weld porosity detection using frequency analysis of arc sound in the pulsed gas tungsten arc welding process

IF 3.8 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY Journal of Advanced Joining Processes Pub Date : 2024-06-07 DOI:10.1016/j.jajp.2024.100231
Seungbeom Jang , Wonjoo Lee , Yuhyeong Jeong , Yunfeng Wang , Chanhee Won , Jangwook Lee , Jonghun Yoon
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Abstract

Automatic welding equipment has replaced human welders in the nuclear industry for safety issues and uniform and high welding quality. However, automatic welding equipment cannot predict porosity defects. So, the weldment must be inspected by non-destructive testing. This inspection was a costly and time-consuming process, and it applies to each weldment even if it welded same material. To improve the welding efficiency, a weld porosity detection system of the same weld material with different material thicknesses was needed. This paper proposed a machine-learned porosity detection system for 3.0 mm plates with welding arc sound data from the pulsed gas tungsten arc welding (P-GTAW) process of 1.6 mm plates. Ensemble-Empirical Mode Decomposition (EEMD) was used to divide the arc sound signal according to the pulse period of P-GTAW. Fast Fourier transform (FFT) was used to convert the arc sound into frequencies for features extraction according to porosity. The validity of these weld frequency features was confirmed through k-fold cross-validation across various machine learning techniques, with evaluation of F-1 scores against experimental weld sounds.

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利用脉冲气体钨极氩弧焊过程中电弧声音的频率分析,进行基于机器学习的焊缝气孔检测
在核工业中,自动焊接设备已经取代了人工焊工,以确保安全问题和均匀、高质量的焊接。然而,自动焊接设备无法预测气孔缺陷。因此,必须对焊接件进行无损检测。这种检测既费钱又费时,而且即使焊接的是同一种材料,也要对每个焊接件进行检测。为了提高焊接效率,需要一种针对不同材料厚度的相同焊接材料的焊缝气孔检测系统。本文利用 1.6 毫米板材脉冲气体钨极氩弧焊(P-GTAW)过程中的焊接电弧声数据,为 3.0 毫米板材提出了一套机器学习的气孔检测系统。根据 P-GTAW 的脉冲周期,使用集合-经验模式分解(EEMD)对电弧声信号进行划分。使用快速傅立叶变换 (FFT) 将电弧声转换为频率,以便根据气孔率提取特征。这些焊接频率特性的有效性通过各种机器学习技术的 k 倍交叉验证得到了确认,并根据实验焊接声音对 F-1 分数进行了评估。
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来源期刊
CiteScore
7.10
自引率
9.80%
发文量
58
审稿时长
44 days
期刊最新文献
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