首页> 外文会议>Proceedings of the 2010 IEEE International Conference on Information and Automation >Characteristic Analysis and Pattern Recognition of Arc Sound under Typical Penetration Status in MIG Welding
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Characteristic Analysis and Pattern Recognition of Arc Sound under Typical Penetration Status in MIG Welding

机译:MIG焊接中典型穿透状态下电弧声的特征分析与模式识别

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Aiming at proposing an online monitoring method of penetration status in MIG welding, audible arc sound signal under partial penetration, unstable penetration, full penetration and excessive penetration in the course of flat butt welding with spray transfer was collected, processed and analyzed. And then 11 characteristic parameters, which can characterize weld penetration status from the perspectives on time, frequency, cepstrum and geometry-domains, were extracted by using wavelet de-noising and short-time windowing. At last, 8- dimensional eigenvector with most information of penetration status were re-synthesized with the help of feature-level parameter fusion technology of principal component analysis (PCA). Thereby, taking 8-dimensional eigenvector as input and viewing four penetration status as export. network models for identifying penetration status about BP and RBF were established. The application of test models proved that both constructed networks could realize the online recognition of penetration status. Moreover, the accuracy rate in RBF network was 6.25% more than BP, and arrived at 91.25%.
机译:为了提出一种在线监测MIG焊缝熔深状态的方法,收集,处理和分析了平面对接焊接喷涂过程中部分熔深,不稳定熔深,完全熔深和过度熔深的电弧声信号。然后利用小波消噪和短时窗口化技术,从时间,频率,倒谱和几何域的角度提取了11个可以表征焊缝熔深状态的特征参数。最后,借助主成分分析(PCA)的特征级参数融合技术,重新合成了具有穿透状态信息最多的8维特征向量。因此,以8维特征向量为输入,而将四个穿透状态视为输出。建立了用于识别BP和RBF渗透状态的网络模型。测试模型的应用证明,两种构造的网络都可以实现对渗透状态的在线识别。此外,RBF网络的准确率比BP高6.25%,达到91.25%。

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