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首页> 外文期刊>Journal of Materials Processing Technology >Artificial neural network modeling of weld joint strength prediction of a pulsed metal inert gas welding process using arc signals
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Artificial neural network modeling of weld joint strength prediction of a pulsed metal inert gas welding process using arc signals

机译:基于电弧信号的脉冲金属惰性气体保护焊过程焊接接头强度预测的人工神经网络建模

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摘要

This paper addresses the weld joint strength monitoring in pulsed metal inert gas welding (PMIGW) process. Response surface methodology is applied to perform welding experiments. A multilayer neural network model has been developed to predict the ultimate tensile stress (UTS) of welded plates. Six process parameters, namely pulse voltage, back-ground voltage, pulse duration, pulse frequency, wire feed rate and the welding speed, and the two measurements, namely root mean square (RMS) values of welding current and voltage, are used as input variables of the model and the UTS of the welded plate is considered as the output variable. Furthermore, output obtained through multiple regression analysis is used to compare with the developed artificial neural network (ANN) model output. It was found that the welding strength predicted by the developed ANN model is better than that based on multiple regression analysis.
机译:本文介绍了脉冲金属惰性气体保护焊(PMIGW)过程中的焊接接头强度监控。响应面方法被用于执行焊接实验。已经开发了多层神经网络模型来预测焊接板的极限拉伸应力(UTS)。六个过程参数,即脉冲电压,背景电压,脉冲持续时间,脉冲频率,送丝速率和焊接速度,以及两个测量值(即焊接电流和电压的均方根(RMS)值)用作输入模型的变量和焊接板的UTS被视为输出变量。此外,将通过多元回归分析获得的输出与发达的人工神经网络(ANN)模型输出进行比较。结果表明,所开发的人工神经网络模型预测的焊接强度优于基于多元回归分析的焊接强度。

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