Abstract

Degraded electrodes in a resistance spot welding system should be replaced to ensure that weld quality is maintained. Welding electrodes are subjected to different environmental and operational loading conditions during use. When they are replaced with a fixed interval, replacement may occur too early (raising maintenance costs) or too late (leading to quality issues). This motivates condition monitoring strategies for resistance spot welding electrode tips. Thus, this paper proposes a modified recurrence plot (RP) for robust condition monitoring of welding electrode tips in resistance spot welding systems. The overall procedure for the proposed condition monitoring approach consists of three steps: (1) transformation of a one-dimensional signal to a two-dimensional image, (2) unsupervised feature extraction with LeNet architecture-based convolutional neural networks, and (3) health indicator calculation. RP methods convert dynamic resistance waveforms to RPs. The original RP method provides an image with binary-colored pixels (i.e., black or white) that makes this method insensitive to the change of the waveform signal. The proposed RP method is devised to be sensitive to the change of the waveform signal, while enhancing robustness to external noise. The performance of the proposed RP method is evaluated by examining simulated aperiodic waveform signals with and without external noise. A case study is presented to examine the proposed method’s ability to monitor the condition of resistance spot welding electrodes. The results show that the proposed method outperforms handcrafted, feature-based condition monitoring methods. This study can be used to accurately determine the lifetime of welding electrodes in real time during the spot welding process.

Highlights

  • Spot welding is widely used in various industrial fields, such as automobile assembly lines, ship building, and automated manufacturing facilities

  • These results show that the proposed recurrence plot (RP) was three times more sensitive to the amplitude change of the simulated waveform

  • Images with the size of 600 pixels by 600 pixels were obtained by converting the dynamic resistance waveforms using the proposed RP

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Summary

Introduction

Spot welding is widely used in various industrial fields, such as automobile assembly lines, ship building, and automated manufacturing facilities. Nondestructive testing by visual inspection has had limited success in industry Another nondestructive testing method is to analyze waveforms taken from mechanical and electric signals during spot welding, e.g., ultrasonic signals [7], dynamic resistance [8], electrode displacement [9], and electrode force [10]. Dynamic resistance waveforms during the spot welding process are divided into three regions. AsAs an an example, x (t) for the the dynamic resistance waveform reduces to scalar the scalar a single dimensional phase space. Waveform signals is proposed to assess the health condition of welding electrode tips in an unsupervised manner. Waveform signals collected from healthy welding electrode tips in a spot welding system are the only requirement of the proposed method.

Proposed
Waveform
As shown in
Performance comparison of the original andsignals proposed
Method
Unsupervised Feature Extraction by CNN
Health Indicator with Mahalanobis Distance
Results and Discussion
Results
Conclusions
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