一种焊接电信号的预处理方法

J. Wang, A. Zhang, Le Ren, D. Chang, Jing Ma, Qianyu He
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引用次数: 0

摘要

提出了一种基于变分模态分解(VMD)和希尔伯特边际谱的焊接电信号预处理方法。该方法解决了多因素干扰,特别是逆变电源高频干扰造成的焊接电信号质量差的问题。本文构建了超窄间隙焊接电信号采集系统,以获取焊接电弧和电阻箱载荷的电信号。在分析信号特性的基础上,对信号进行VMD分解,然后利用Hilbert边际谱进行对比分析,滤除干扰噪声,实现对焊接电信号的预处理。结果表明,该方法能有效地消除噪声,同时保留信号中有价值的高频成分,提高了信号的真实性。
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A preprocessing method of welding electrical signal
a preprocessing method is proposed for welding electrical signals based on Variational Mode Decomposition (VMD) and Hilbert marginal spectrum. This method solves the problem of poor quality of welding electric signal caused by multifactor interference, especially high frequency interference of inverted power source. In this paper, an acquisition system of the electrical signals of ultra-narrow gap welding was constructed to obtain the electrical signals of welding arc and resistance box load. Based on analyzing the signal characteristics, the signals were decomposed by VMD, and then Hilbert marginal spectrum was used for comparative analysis to filter out the interference noise and realize the preprocessing of welding electrical signal. The results show the proposed method can effectively eliminate the noise while retaining the valuable high-frequency components in the signal, which improves the authenticity of the signal.
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