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Detection of powder bed defects in selective laser sintering using convolutional neural network

机译:使用卷积神经网络检测选择性激光烧结中的粉床缺陷

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The presence of defects in a powder bed fusion (PBF) process can lead to the formation of flaws in consolidated parts. Powder bed defects (PBDs) have different sizes and shapes and occur in different locations in the built area. Those variations pose great challenges to their detection. In this study, a deep convolution neural network was applied to detect three typical types of PBDs in a selective laser sintering (SLS) process, namely warpage, part shifting, and short feed, which were intentionally generated by varying the process conditions. Images of the powder bed were captured using a digital camera, which were split into three single-channel images corresponding to the color channels in the color image. A deep residual neural network was then used to extract multiscale features, and a region proposal network was adopted to detect the object-level defect bounding box. In the final stage, a fully convolutional neural network was proposed to generate instance-level defect regions in the bounding box. Our results demonstrated that this method had higher accuracy and efficiency and was able to cope with geometrical distortion and image blurring, in comparison to the defect detection methods reported previously. Also, the detection system was cost-effective and could be easily installed outside the chamber of a PBF system. This study lays the groundwork for the development of a variety of automated technologies for additive manufacturing, such as real-time powder layer quality inspection and 3D quality certificate generation for finish parts.
机译:粉末床融合(PBF)工艺中存在缺陷可导致粘结部分中的缺陷。粉末床缺陷(PBD)具有不同的尺寸和形状,并发生在内置区域的不同位置。这些变化对他们的检测构成了巨大挑战。在这项研究中,应用了深度卷积神经网络,以检测选择性激光烧结(SLS)工艺中的三种典型类型的PBD,即翘曲,部分换档和短饲料,这是通过改变工艺条件而有意产生的。使用数码相机捕获粉末床的图像,该数码相机被分成三个对应于彩色图像中的颜色通道的单通道图像。然后使用深度剩余的神经网络来提取多尺度特征,采用区域提案网络来检测物体级缺陷边界框。在最后阶段,提出了一个完全卷积的神经网络,以在边界框中生成实例级别缺陷区域。我们的结果表明,与先前报道的缺陷检测方法相比,该方法具有更高的准确性和效率,并且能够应对几何变形和图像模糊。此外,检测系统具有成本效益,并且可以容易地安装在PBF系统的腔室外部。本研究为增材制造的各种自动化技术开发的基础,例如实时粉末层质量检测和完成零件的3D质量证书。

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