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LAYERWISE AUTOMATED VISUAL INSPECTION IN LASER POWDER-BED ADDITIVE MANUFACTURING

机译:激光粉床增材制造中的分层自动视觉检查

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Laser powder-bed fusion (L-PBF) is an additive manufacturing (AM) process that enables fabrication of functional metal parts with near-net-shape geometries. The drawback to L-PBF is its lack of precision as well as the formation of defects due to process randomness and irregularities associated with laser powder fusion. Over the past two decades much research has been conducted to control laser powder fusion in order to provide parts of higher quality. This paper addresses online quality monitoring in AM by in-situ automated visual inspection of each layer which is aimed to geometric objects and defects from high-resolution visual images. A scheme for online defect detection system is presented that consists of three levels of processing: low-level, intermediate-level, and high-level processing. Each level is described and appropriately divided to several stages, when insightful. Techniques that are feasible in each level for successful defect detection and classification are identified and described. Requirements and specifications of the measurement data to achieve desired performance of the online defect detection system are stated. Image processing algorithms are developed for first level of processing and implemented for segmentation of geometric objects. Due to the large variation of intensities within the powder region and fused regions, and also the non-multi-modal nature of the image, the basic segmentation algorithms such as thresholding do not produce appropriate results. In this work, morphological operations are effectively designed and implemented following thresholding to achieve the desired object segmentation. Examples of implementations are given. The paper provides the results of object segmentation which is the initial stage of development of an in-situ automated visual inspection for L-PBF process.
机译:激光粉末床熔合(L-PBF)是一种增材制造(AM)工艺,能够制造出具有近似最终形状的几何形状的功能金属零件。 L-PBF的缺点是缺乏精度以及由于与激光粉末熔合相关的工艺随机性和不规则性而形成缺陷。在过去的二十年中,为了提供更高质量的零件,已经进行了许多研究来控制激光粉末的熔化。本文通过对每一层进行原位自动视觉检查来解决AM中的在线质量监控问题,目的是针对高分辨率视觉图像中的几何对象和缺陷。提出了一种在线缺陷检测系统的方案,该方案包括三个级别的处理:低级,中级和高级处理。深入了解时,将描述每个级别并将其适当地分为几个阶段。识别并描述了在每个级别上成功进行缺陷检测和分类的可行技术。说明了实现在线缺陷检测系统所需性能的测量数据的要求和规格。图像处理算法被开发用于第一级处理,并被实现用于几何对象的分割。由于粉末区域和融合区域内强度的巨大变化,以及图像的非多峰性质,基本的分割算法(例如阈值)无法产生适当的结果。在这项工作中,在阈值化之后可以有效地设计和实施形态学运算,以实现所需的对象分割。给出了实现示例。本文提供了对象分割的结果,这是针对L-PBF过程进行现场自动视觉检查的初始阶段。

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