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Burn-through prediction and weld depth estimation by deep learning model monitoring the molten pool in gas metal arc welding with gap fluctuation

机译:深层学习模型监测气金属弧焊熔池的深度学习模型的烧坏预测和焊接深度估计

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摘要

In a single bevel GMAW (gas metal arc welding) with gap fluctuation, a deep learning model was constructed using the monitoring image during the welding to predict the welding quality. We utilized Python and the library Keras and created a CNN (Convolutional neural network) model using the top surface image including the molten pool as an input. The classification model was used to predict the burn-through, and the regression model was used to estimate the penetration depth. As a result, the excessive penetration and burn-through could be predicted in advance and more than 95 % of estimated results of penetration depth were less 1 mm error for stepped and tapered sample shapes.
机译:在具有间隙波动的单个锥GMAW(气体电弧焊接)中,在焊接期间使用监测图像构建深度学习模型,以预测焊接质量。我们利用Python和图书馆keras,并使用包括熔池作为输入的顶表面图像创建了CNN(卷积神经网络)模型。分类模型用于预测烧坏,并且使用回归模型来估计穿透深度。结果,可以预先预测过度穿透和燃烧,并且阶梯式和锥形样品形状的误差误差误差超过95%的估计结果。

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