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Experimental study of weld position detection based on keyhole infrared image during high power fiber laser welding 下载免费PDF全文
Keyhole is one of the important phenomena in high-power laser welding process. By studying the keyhole characteristic and detecting the seam offset during high-power fiber laser welding, an infrared sensitive high-speed camera arranged off-axis orientation of laser beam was applied to capture the dynamic thermal images of a molten pool. The 304 austenitic stainless steel plate butt joint welding experiment with laser power 10 kW was carried out. Through analyzing the keyhole infrared image, the weld position was calculated. Least squares method was used to determine the actual weld position. Image filtering technique was used to process the keyhole image, and the keyhole centroid coordinate were calculated. Also, least squares method was used to fit the keyhole centroid curve equation and establish a nonlinear continuous model which described the deviation between keyhole centroid and weld seam. The heat accumulation effect affected by the infrared radiation was analyzed to determine whether the laser beam focus spot deviated from the desired welding seam. Experimental results showed that the keyhole centroid has related to the seam offset, and can reflect the welding quality. 相似文献
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针对微间隙(小于0.1 mm)对接焊缝,通过对焊件施加感应磁场,并利用法拉第旋光原理构成的磁光传感器,获取焊缝磁光图像.为了获取焊缝的准确位置,研究一种焊缝磁光图像的小波多尺度信息融合边缘检测方法.对焊缝磁光图像进行3层小波分解,获得包含焊缝边缘信息的小波高频图像.根据各尺度高频信息包含的细节丰富度,融合各尺度高频图像,然后用小波模局部极大值对融合图像进行边缘检测,得到抗噪性和连续性好、定位精度高的焊缝边缘,最后进行焊缝跟踪试验.结果表明,磁光图像小波多尺度信息融合是一种有效的焊缝边缘提取方法,适用于磁光成像传感的微间隙焊缝跟踪图像处理过程. 相似文献
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以氩弧焊熔透状态识别为研究对象,研究一种基于ICA (Imperialist Competitive Algorithm) 的BP(Back Propagation)神经网络识别模型方法. 首先利用ICA全局搜索不易陷入局部极值及搜索速度快的特点对神经网络权值和阈值初始化,再用BP算法对神经网络进行训练. 通过摄取焊接过程中的熔池图像,提取熔池面积、熔宽以及熔池质心位置作为神经网络预测模型的输入量,分析熔池图像三个特征与焊缝熔透状态的映射关系,最终建立熔透状态预测模型. 结果表明,采用ICA-BP神经网络能够有效地预测焊缝的熔透状态. 相似文献
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针对激光焊接平板对接微间隙焊缝(间隙小于0.1 mm),研究彩色图像信息的磁光成像焊缝检测算法,为微间隙焊缝的精确跟踪提供一种新方法. 采用磁光传感器采集焊接过程的焊缝区域图像,对焊缝磁光图像在RGB(red, green, blue)和HSV(hue, saturation, value)彩色空间的灰度分布进行分析,提取RGB图各分量的灰度图,根据各分量灰度分布曲线确定阈值提取焊缝边缘,合成3个分量的焊缝边缘得到焊缝过渡带轮廓;对HSV图的每个分量图灰度直方图进行分析确定阈值,然后综合形成单一的焊缝过渡带分割图像. 结果表明,该方法能有效检测肉眼难以分辨的微间隙焊缝. 相似文献