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Porosity defect detection based on FastICA-RBF during pulsed TIG welding process

机译:脉冲TIG焊接过程中Fastica-RBF的孔隙缺陷检测

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Porosity is a common defect of the aluminum alloy pulsed alternating current (AC) argon tungsten-arc welding (TIG) welding, which can cause huge damage to weld quality. The spectral information which is directly derived from the optical radiation of the arc is intrinsically related to the welding defects. Aiming at the redundancy of arc spectral, this paper proposed a method of porosity defect detection based on fast independent component analysis (fastICA) and radial basis function (RBF) network. The spectral data is collected by spectrometer, and continuous spectra are removed by calculating lower envelope twice. Then fastICA is applied to extract features from selected line spectra. Finally, the porosity defect is detected by RBF network according to the mean value in period of extracted features. Experimental results show that the proposed method can be used to detect the porosity defects during aluminum alloy pulsed TIG welding process.
机译:孔隙率是铝合金脉冲交流(AC)氩钨弧焊(TIG)焊接的常见缺陷,这可能导致焊接质量造成巨大损害。直接来自电弧的光辐射的光谱信息与焊接缺陷有关。目的,旨在基于快速独立分析(Fastica)和径向基函数(RBF)网络的孔隙缺陷检测方法。通过光谱仪收集光谱数据,通过两次计算下包络来除去连续光谱。然后应用FastIca以从所选线谱中提取特征。最后,RBF网络根据提取特征周期的平均值检测孔隙缺陷。实验结果表明,该方法可用于检测铝合金脉冲TIG焊接过程中的孔隙率缺陷。

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