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Quality Prediction Of Resistance Spot Welding Joints Of 304 Austenitic Stainless Steel

机译:304奥氏体不锈钢电阻点焊接头的质量预测

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The quality level of a resistance spot welding (RSW) joint of 304 austenitic stainless steel (ASS) is estimated from its tensile shear load bearing capacity (TSLBC). The quality levels are set by ultrasonic nondestructive testing.rnThe objective of the present work is to develop a tool capable of reliably predicting the TSLBC (and consequently the quality level) of RSW joints from three welding parameters: (1) welding time (WT); (2) welding current (WC); (3) electrode force (EF).rnFirstly, a linear regression model is attempted but the residuals analysis reveals nonlinear behaviour. An artificial neural network (ANN) is proposed because the ANNs are capable of mapping nonlinear systems. The inputs are 3-component vectors, a component for each of the aforementioned welding parameters. The training of the ANN uses supervised learning mechanism. Therefore each input must come with its respective desired output (target). This target is the TSLBC of the RSW joint obtained with the respective input. The number of neurons in the hidden layers is selected considering the overfitting phenomenon: the number of neurons in the hidden layers that minimizes the validation mean square error (MSE) is 4.rnWith the selected ANN, 3-4-4-1, the aim of the present study is achieved because this ANN produces good results in prediction from inputs nonused in the training.
机译:304奥氏体不锈钢(ASS)的电阻点焊(RSW)接头的质量水平是根据其拉伸剪切承载力(TSLBC)估算得出的。质量等级是通过超声波无损检测确定的。本工作的目的是开发一种能够从三个焊接参数可靠地预测RSW接头的TSLBC(以及质量等级)的工具:(1)焊接时间(WT) ; (2)焊接电流(WC); (3)电极力(EF)。首先,尝试建立线性回归模型,但残差分析显示出非线性行为。提出了一种人工神经网络(ANN),因为该神经网络能够映射非线性系统。输入是三分量向量,这是上述每个焊接参数的分量。人工神经网络的训练使用监督学习机制。因此,每个输入必须带有其各自所需的输出(目标)。该目标是通过相应输入获得的RSW接头的TSLBC。考虑过拟合现象,选择隐藏层中的神经元数量:使验证均方误差(MSE)最小的隐藏层中的神经元数量为4.rn对于选定的ANN,3-4-4-1,之所以能够达到本研究的目的,是因为该ANN在训练中未使用的输入方面会产生良好的预测结果。

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