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Defect Recognition of Resistance Spot Welding Based on Artificial Neural Network

机译:基于人工神经网络的电阻点焊缺陷识别

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The nugget size forecast model was built based on BP algorithm of Artificial Neural Network. The input parameters of the model are two characteristic number extract from electrode displacement curve. The output parameter of the model is nugget size. The model has three layers and the hidden layer have five nodes. The transfer function of hidden layer is Sigmoid function and the transfer function of output layer is linear function. Measured value and forecast value was analyzed by comparative method and the difference value between them was calculated. The results showed that 83% of the difference value is less than 1 millimeter. Based on the nugget size forecasted by the model, a method to identify incomplete fusion defect of resistance spot welding was suggested. In this method, 7 millimeter nugget size was regarded as criterion of recognition incomplete fusion defect of resistance spot welding. The result showed that recognition accuracy rate up to 94.3%.
机译:基于人工神经网络的BP算法建立了金块尺寸预测模型。模型的输入参数是从电极位移曲线中提取的两个特征数。模型的输出参数是块金大小。该模型具有三层,而隐藏层具有五个节点。隐藏层的传递函数为Sigmoid函数,输出层的传递函数为线性函数。通过比较法对测量值和预测值进行分析,计算出两者之间的差值。结果表明,差值的83%小于1毫米。基于模型预测的熔核大小,提出了一种识别电阻点焊不完全熔合缺陷的方法。在该方法中,将7毫米的熔核大小作为识别电阻点焊不完全融合缺陷的标准。结果表明,识别准确率高达94.3%。

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