基于电弧声信号的气体金属弧焊焊缝偏差预测

Wang Zhao, J. Yue, Wenji Liu, Haihua Liu
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引用次数: 1

摘要

焊缝偏差预测是焊缝跟踪控制的关键,对实现焊接自动化、保证焊接质量具有重要意义。针对气体金属电弧焊中焊缝偏差预测问题,提出了一种基于电弧声信号的焊缝偏差预测方法。通过分析电弧声信号波形的特征,提取电弧声信号的时域特征。采用小波包分析方法对电弧声信号的时频域特征进行分析,提取小波包能量特征。利用时域特征和小波包能量特征建立特征向量,利用BP(反向传播)神经网络实现焊缝偏差预测。结果表明,本文提出的方法具有较好的焊缝偏差预测效果,平均绝对误差为0.234 mm,为GMAW焊缝识别提供了一种新的方法。
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Weld Seam Deviation Prediction of Gas Metal Arc Welding Based on Arc Sound Signal
Weld seam deviation prediction is the key to weld seam tracking control, which is of great significance for realizing welding automation and ensuring welding quality. Aiming at the problem of weld seam deviation prediction in GMAW (gas metal arc welding), a method of weld seam deviation prediction based on arc sound signal is proposed. By analyzing the feature of the arc sound signal waveform, the time domain feature of the arc sound signal is extracted. The wavelet packet analysis method is used to analyze the time-fre- quency domain feature of the arc sound signal, and the wavelet packet energy feature is extracted. The time domain feature and wavelet packet energy feature are used to establish the feature vector, and the BP (back propagation) neural network is used to realize the weld seam deviation prediction. The results show that the method proposed in this paper has a good weld seam deviation prediction effect, with a mean absolute error of 0.234 mm, which provides a new method for GMAW weld seam recognition.
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