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首页> 外文期刊>Journal of Intelligent Manufacturing >A deep neural network for classification of melt-pool images in metal additive manufacturing
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A deep neural network for classification of melt-pool images in metal additive manufacturing

机译:金属添加剂制造中熔融池图像分类的深度神经网络

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摘要

By applying a deep neural network to selective laser melting, we studied a classification model of melt-pool images with respect to 6 laser power labels. Laser power influenced to form pores or cracks determining the part quality and was positively-linearly dependent to the density of the part. Using the neural network of which the number of nodes is dropped with increasing the layer number achieved satisfactory inference when melt-pool images had blurred edges. The proposed neural network showed the classification failure rate under 1.1% for 13,200 test images and was more effective to monitor melt-pool images because it simultaneously handled various shapes, comparing with a simple calculation such as the sum of pixel intensity in melt-pool images. The classification model could be utilized to infer the location to cause the unexpected alteration of microstructures or separate the defective products non-destructively.
机译:通过将深神经网络应用于选择性激光熔化,我们研究了关于6激光功率标签的熔融池图像的分类模型。 激光功率影响形成孔隙或裂缝,确定零件质量,并且呈正线性地取决于部分的密度。 使用其中节点数量的神经网络随着熔体池图像被模糊的边缘而令人满意的推论,可以增加节点的数量。 所提出的神经网络显示了13,200个测试图像下的1.1%以下的分类失败率,并且更有效地监控熔融池图像,因为它同时处理各种形状,与诸如熔融池图像中的像素强度之和等简单计算相比进行比较 。 分类模型可用于推断出造成显微结构意外改变的位置或不破坏性地将缺陷产品分开。

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  • 作者单位

    Korea Inst Ind Technol Gangwon Reg Div Addit Mfg R&

    D Grp 137-41 Gwahakdanji Ro Gangneung Si 25440 Gangwon Do South Korea;

    Korea Inst Ind Technol Gangwon Reg Div Addit Mfg R&

    D Grp 137-41 Gwahakdanji Ro Gangneung Si 25440 Gangwon Do South Korea;

    Korea Inst Ind Technol Gangwon Reg Div Addit Mfg R&

    D Grp 137-41 Gwahakdanji Ro Gangneung Si 25440 Gangwon Do South Korea;

    Korea Inst Ind Technol Gangwon Reg Div Addit Mfg R&

    D Grp 137-41 Gwahakdanji Ro Gangneung Si 25440 Gangwon Do South Korea;

    Korea Inst Ind Technol Gangwon Reg Div Addit Mfg R&

    D Grp 137-41 Gwahakdanji Ro Gangneung Si 25440 Gangwon Do South Korea;

    WINFORSYS 24F U Tower 767 Sinsu Ro Yongin 16827 Gyeonggi Do South Korea;

    WINFORSYS 24F U Tower 767 Sinsu Ro Yongin 16827 Gyeonggi Do South Korea;

    Konkuk Univ Dept Comp Sci &

    Engn Computat Intelligence Lab 120 Neungdong Ro Seoul 05029 South Korea;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化系统;
  • 关键词

    Additive manufacturing; Powder bed fusion; Selective laser melting; Melt-pool classification; Deep neural network;

    机译:添加剂制造;粉床融合;选择性激光熔化;熔融池分类;深神经网络;

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