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首页> 外文期刊>International Journal of Knowledge-Based in Intelligent Engineering Systems >Sensor based weld bead geometry prediction in pulsed metal inert gas welding process through artificial neural networks
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Sensor based weld bead geometry prediction in pulsed metal inert gas welding process through artificial neural networks

机译:脉冲神经惰性气体焊接过程中基于传感器的焊缝几何预测的人工神经网络

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摘要

Weld quality is primarily determined from the weld bead geometry. This work concerns the weld bead geometry prediction in pulsed metal inert gas welding (PMIGW) process. A back propagation neural network (BPNN) model, a radial basis function network (RBFN) model and regression model have been developed to predict the weld bead geometry of welded plates. Six process parameters, namely pulse voltage, back-ground voltage, pulse duty factor, pulse frequency, wire feed rate and the welding speed along with root mean square (RMS) values of two sensor signals, namely the welding current and the voltage signals, are used as input variables of the two models. The weld bead width, height and reinforcement of the welded plate are considered as the output variables. Having same process parameters does not always result in the same output quality. This is why, inclusion of sensor signals in the models, as developed in this work, results in better output prediction.
机译:焊接质量主要由焊缝几何形状决定。这项工作涉及脉冲金属惰性气体保护焊接(PMIGW)过程中焊缝几何形状的预测。已经开发了反向传播神经网络(BPNN)模型,径向基函数网络(RBFN)模型和回归模型来预测焊接板的焊缝几何形状。六个过程参数,即脉冲电压,背景电压,脉冲占空比,脉冲频率,送丝速率和焊接速度,以及两个传感器信号的均方根(RMS)值,即焊接电流和电压信号,用作两个模型的输入变量。焊缝的焊缝宽度,高度和补强被视为输出变量。具有相同的过程参数并不总是导致相同的输出质量。这就是为什么在本研究中将传感器信号包含在模型中会导致更好的输出预测的原因。

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