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Prediction of Bead Geometry in Pulsed Current Gas Tungsten Arc Welding of Aluminum using Artificial Neural Networks

机译:使用人工神经网络预测铝脉冲电流钨罐电弧焊接的胎圈几何

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Pulsed current GTA welding, where the welding current is periodically varied between two values with a particular frequency, has acquired prominence due to the advantages it offers such as weld metal grain refinement, resistance to solidification cracking and controlled heat input. The relation between the welding process parameters used during welding and the resulting bead geometry is highly non linear and modeling the same by conventional mathematical and regression methods is very difficult. In this study an attempt has been made to predict the bead geometry parameters, given the welding process parameters, using artificial neural networks. In this case, the sets of welding variables to be studied, have been selected using Taguchi's Orthogonal array experiment technique. Using a commercially available software different lands of networks such as Multi Layer Perceptron (MLP) and Generalized Feed Forward networks with various configurations have been built, trained using the experimental data and tested for their capacity to predict with out significant error. The results have been found to be of good accuracy and are of use in predicting bead geometry. An attempt also has been made to see if there exists a relation between top bead width which is one of the easily measurable parameters even while the welding process is going on, and the depth of penetration which can not be easily measured on line. It is found that the relation between lop bead width and depth of penetration can be satisfactorily modeled using neural networks.
机译:脉冲电流GTA焊接,其中焊接电流在具有特定频率的两个值之间周期性变化,由于焊接金属晶粒细化,耐凝固裂解和控制热输入等优点而获得突出。焊接期间使用的焊接工艺参数与所得珠子几何形状之间的关系是高度非线性的,并且通过常规数学和回归方法进行建模非常困难。在本研究中,已经尝试使用人工神经网络,以预测焊接工艺参数的珠子几何参数。在这种情况下,已经使用Taguchi的正交阵列实验技术选择要研究的焊接变量集。使用商业上可获得的软件,使用实验数据培训,使用诸如多层Perceptron(MLP)和具有各种配置的广义前馈网络的网络不同的网络和广义馈送前驱网络,并测试其能力以预测显着误差。已发现结果具有良好的精度,并且用于预测珠子几何形状。还已经尝试了解顶部珠子宽度之间的关系,即使焊接过程正在进行,也是易于可测量的参数之一,也可以在线易于测量的渗透深度。结果发现,使用神经网络可以令人满意地建模圆珠宽度和渗透深度之间的关系。

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