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Radial basis function neural network model based prediction of weld plate distortion due to pulsed metal inert gas welding

机译:基于径向基函数神经网络模型的脉冲金属惰性气体焊接导致的焊接板变形预测

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摘要

Welding shrinkage and distortion affect the shape, dimensional accuracy and strength of the finished product. This work concerns the prediction of welding distortion in a pulsed metal inert gas welding (PMIGW) process. Six different types of radial basis function network (RBFN) models have been developed to predict the distortion of welded plates. Six process parameters, namely, pulse voltage, background voltage, pulse duty factor, pulse frequency, wire feed rate and the welding speed, along with the root mean square (RMS) values of two sensor signals, namely, the welding current and the voltage signals, are used as input variables of these models. The angular distortion and the transverse shrinkage of the welded plate are considered as the output variables. Inclusion of sensor signals in the models, as developed in this work, results in better output prediction.
机译:焊接收缩和变形会影响成品的形状,尺寸精度和强度。这项工作涉及脉冲金属惰性气体保护焊接(PMIGW)工艺中焊接变形的预测。已经开发了六种不同类型的径向基函数网络(RBFN)模型来预测焊接板的变形。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这些模型的输入变量。将焊接板的角度变形和横向收缩视为输出变量。如本文所述,将传感器信号包含在模型中可带来更好的输出预测。

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