Deep learning based reconstruction of transient 3D melt pool geometries in laser powder bed fusion from coaxial melt pool images

Manufacturing Letters(2024)

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摘要
Melt pool monitoring can provide guidance for quality control in additive manufacturing. Existing techniques focus on 2D melt pool characteristics. In this work, we explore in-situ prediction and control of 3D melt pool geometries within a simulation environment. To reconstruct the transient 3D melt pool geometry with only the 2D coaxial image as an input, we adopt a U-net model trained with a synthetic image dataset generated from simulations. The results show that the root-mean-square error of the pixel-wise predicted melt depth is 1.14μm, demonstrating the potential of the model in enabling precise laser path-wise 3D melt pool control.
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关键词
Additive manufacturing,Convolutional neural network,Deep learning,Melt pool volume control
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