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Recurrent neural networks to model input-output relationships of metal inert gas (MIG) welding process

机译:循环神经网络对金属惰性气体(MIG)焊接过程的输入输出关系进行建模

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摘要

The mechanical strength of weld-bead is dependent on its geometric parameters like bead height, width and penetration, which depend on input process parameters, namely welding speed, arc voltage, wire feed rate, gas flow rate, nozzle-To-plate distance, torch angle etc. Recurrent neural networks were used for conducting both forward and reverse mappings using three approaches. The first approach dealt with the training of Elman network through updating its connecting weights using a back-propagation algorithm. In second approach, a real-coded genetic algorithm was used along with the back-propagation algorithm to tune the network. The third approach utilised a real-coded genetic algorithm only to optimise the network. In forward mapping, third approach was found to outperform the others, but in reverse mapping, first and second approaches were seen to perform better than the third one. The performances of these approaches were found to be data dependent.
机译:焊缝的机械强度取决于其几何参数,如焊缝高度,宽度和熔深,其取决于输入的工艺参数,即焊接速度,电弧电压,送丝速率,气体流速,喷嘴到板的距离,递归神经网络用于通过三种方法进行正向和反向映射。第一种方法通过使用反向传播算法更新其连接权重来处理Elman网络的训练。在第二种方法中,使用实编码遗传算法和反向传播算法来调整网络。第三种方法仅使用实编码遗传算法来优化网络。在正向映射中,发现第三种方法的性能优于其他方法,但是在反向映射中,第一和第二种方法的性能要优于第三种。发现这些方法的性能取决于数据。

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