Research on welding penetration state recognition based on BP-Adaboost model for pulse GTAW welding dynamic process

N. Lv, Y. L. Xu, G. Fang, X. W. Yu, S. B. Chen
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引用次数: 4

Abstract

This paper proposed a new recognition model of analyzing the relationship between arc sound and penetration state. The experiment system is based on Robotic GTAW welding system with acoustic sensor and signal conditioner on it. The arc sound signal was firstly preprocessed to remove the influence of DC component and environmental noise. Then the features of arc sound signal were extracted and analysed in time and frequency domain. Finally, a new type of prediction model BP-Adaboost was built up to recognize different penetration state and welding quality through arc sound signal. The results showed that the new model had better prediction effect for the welding penetration state monitoring.
基于BP-Adaboost模型的脉冲GTAW焊接动态过程焊透状态识别研究
提出了一种分析电弧声与穿透状态关系的新识别模型。实验系统以机器人GTAW焊接系统为基础,在其上安装声传感器和信号调节器。首先对电弧声信号进行预处理,去除直流分量和环境噪声的影响。然后提取弧声信号的时域和频域特征并进行分析。最后,建立了一种新的预测模型BP-Adaboost,通过电弧声信号识别不同的焊透状态和焊接质量。结果表明,该模型对焊透状态监测具有较好的预测效果。
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