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首页> 外文期刊>Journal of Materials Processing Technology >Artificial neural networks for quality control by ultrasonic testing in resistance spot welding
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Artificial neural networks for quality control by ultrasonic testing in resistance spot welding

机译:人工神经网络通过电阻点焊中的超声波测试进行质量控制

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An artificial neural network is proposed to solve problems in the interpretation of ultrasonic oscillograms obtained by the pulse echo method. The artificial neural network classifies resistance spot welds in several quality levels through their respective ultrasonic oscillograms. The inputs of the artificial neural network are vectors obtained from each ultrasonic oscillogram with the help of a MATLAB program. The training of the artificial neural network uses supervised learning mechanism and therefore each input has the respective desired output (target). There are four targets, one for each considered quality level. The available data set is randomly split into a training subset (to update weight values) and a validation subset (to guard against overfitting by means of cross validation). The number of neurons in the hidden layers is selected considering the overfitting phenomenon. This research work has the aim of contributing to the automation of quality control processes in resistance spot welding.
机译:提出了一种人工神经网络来解决脉冲回波法获得的超声波示波图的解释问题。人工神经网络通过其各自的超声波波形图将电阻点焊的质量分为几个等级。人工神经网络的输入是在MATLAB程序的帮助下从每个超声波示波图获得的向量。人工神经网络的训练使用监督学习机制,因此每个输入都具有各自所需的输出(目标)。有四个目标,每个目标对应一个质量水平。可用数据集随机分为训练子集(以更新权重值)和验证子集(以防止通过交叉验证而过度拟合)。考虑到过拟合现象,选择隐藏层中神经元的数量。这项研究工作旨在为电阻点焊中的质量控制过程自动化做出贡献。

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