首页> 外文会议>2010 International Conference on Digital Manufacturing and Automation >Blind Source Separation Based on Principal Component Analysis-Independent Component Analysis for Acoustic Signal During Laser Welding Process
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Blind Source Separation Based on Principal Component Analysis-Independent Component Analysis for Acoustic Signal During Laser Welding Process

机译:基于主成分分析-独立成分分析的激光焊接过程声信号盲源分离

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Because of importance to safety and product quality, the online monitoring of the welding process performance has become a key issue for safety improvement. In order to guarantee the laser welding quality, acoustic monitoring based on microphone array was employed to the laser welding for sampling the acoustic signals during the whole welding process. However, in the hostile industry environments, the microphone array was limited by the multiple noise sources, including cooling-system and air-knife. In this paper in order to acquire more clearer acoustic Signal of the key-hole in the laser welding process blind source separation (BSS) based on principal Component analysisȁ3;Independent Component Analysis (PCA-ICA) is utilized. The non-Gaussian information of the key-hole acoustic signal can be extracted for defect detection and diagnosis. Meanwhile, spectrum analysis was applied to analyze the extracted signals including laser key-hole and cooling-system. By comparing the original cooling-system acoustic signal with the extracted cooling-system acoustic signal and analyzing the key-hole acoustic spectrum feature, the results showed that the extracted features were quite effective for laser welding detection monitoring. Meanwhile, the behavior of laser key-hole was explained by analyzing the acoustic signal extracted by the PCA-ICA algorithm. And the difference between welding blow-through defect and the normal welds of acoustic features can be distinguished through the BSS.
机译:由于对安全性和产品质量的重要性,焊接过程性能的在线监控已成为提高安全性的关键问题。为了保证激光焊接质量,在整个焊接过程中采用基于麦克风阵列的声波监测技术对激光焊接进行声信号采样。但是,在恶劣的工业环境中,麦克风阵列受到多种噪声源的限制,包括冷却系统和气刀。为了基于主成分分析ȁ3,在激光焊接过程中盲孔分离(BSS)中获取键孔的声信号更加清晰;采用了独立成分分析(PCA-ICA)。可以提取钥匙孔声信号的非高斯信息,以进行缺陷检测和诊断。同时,通过频谱分析对提取的信号进行分析,包括激光钥匙孔和冷却系统。通过将原始冷却系统声学信号与提取的冷却系统声学信号进行比较,并分析关键孔声谱特征,结果表明,所提取的特征对于激光焊接检测监控非常有效。同时,通过分析PCA-ICA算法提取的声信号来解释激光钥匙孔的行为。通过BSS可以区分出焊透缺陷和正常焊缝之间的区别。

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