A study on the horizontal fillet welding using neural networks

Sung-In Kang, Gwan-Hyung Kim, Sang-Bae Lee
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引用次数: 5

Abstract

Generally, weld bead shape is a serious factor in falling-off in weld quality among various kinds of weld defect. In GMAW, weld bead shape affects a number of welding parameters including; welding current, voltage, speed and weaving length. To detect weld bead shape, we select proper welding parameters. We have difficulty analyzing the relationship between weld bead shape and welding parameters due to non-linearity of the welding process. In the case of an arc sensor, though it has a signal processing problem, it is still a widely-used method in industry because it is low cost and easily automated. Proper welding parameters were selected and a weld bead shape detecting system was proposed, using neural networks which were able to identify the relation between weld bead shape and the welding parameters. Also, in the neural controller, the time delay neural network (TDNN) was used in this proposed neural network, due to non-linearity of the welding process. Besides, in welding quality testing, it is important to analyze the weld bead shape. Proper welding parameters and fifteen points that represent weld bead shape were selected, and a real-time monitoring system of weld bead shape was proposed to find the effects of various welding parameters and estimate weld quality using neural networks.
基于神经网络的水平角焊研究
在各种焊接缺陷中,焊缝形状是影响焊接质量下降的重要因素。在GMAW中,焊头形状影响焊接参数包括;焊接电流、电压、速度、编织长度。为了检测焊缝形状,选择合适的焊接参数。由于焊接过程的非线性,很难分析焊缝形状与焊接参数之间的关系。以电弧传感器为例,虽然存在信号处理问题,但由于其成本低、易于自动化,仍然是工业上广泛使用的方法。选择合适的焊接参数,提出了一种焊缝形状检测系统,利用神经网络识别焊缝形状与焊接参数之间的关系。同时,针对焊接过程的非线性,在神经网络控制中采用了时滞神经网络(TDNN)。此外,在焊接质量检测中,对焊缝形状的分析也很重要。选择合适的焊接参数和代表焊缝形状的15个点,提出了焊缝形状实时监测系统,利用神经网络发现各种焊接参数对焊缝形状的影响,并对焊缝质量进行评估。
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