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赵大伟, 王新阳, 王元勋, 杨浩, 张磊. 钛合金微电阻点焊电极间电压质量检测技术[J]. 焊接学报, 2014, 35(1): 33-36.
引用本文: 赵大伟, 王新阳, 王元勋, 杨浩, 张磊. 钛合金微电阻点焊电极间电压质量检测技术[J]. 焊接学报, 2014, 35(1): 33-36.
ZHAO Dawei, WANG Xinyang, WANG Yuanxun, YANG Hao, ZHANG Lei. Quality assessment using dynamic voltage characteristics in small scale resistance spot welding of titanium alloy[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION, 2014, 35(1): 33-36.
Citation: ZHAO Dawei, WANG Xinyang, WANG Yuanxun, YANG Hao, ZHANG Lei. Quality assessment using dynamic voltage characteristics in small scale resistance spot welding of titanium alloy[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION, 2014, 35(1): 33-36.

钛合金微电阻点焊电极间电压质量检测技术

Quality assessment using dynamic voltage characteristics in small scale resistance spot welding of titanium alloy

  • 摘要: 文中针对微点焊的特点采用电压信号监控点焊质量.焊接过程中电压通过自动数据采集系统获取.首先分析并解释了电压曲线的变化趋势,指出电压曲线的峰值就是β峰值;进而从电压曲线中提取了4个特征值用于预测熔核直径并将其作为人工神经网络的输入.预测输出的熔核直径与实测直径的误差为0.13 mm,结果表明,利用电压信号监测钛合金微电阻点焊质量是一种非常有效、经济的手段.

     

    Abstract: The voltage between the electrodes in smallscale resistance spot welding (SSRSW) of titanium alloy was collected by data acquisition system. The experiments revealed that the dynamic voltage signal included a lot of welding quality information. In order to demonstrate this finding and monitor the welding quality,the back-propagation artificial neural network (ANN) was employed to forecast the nugget diameter. The maximum predicted error of ANN was about 6.5%. Adjusting and monitoring the voltage waveform could be used to forecast the formation of weld nugget and monitor the quality of welded joints.

     

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