利用图像处理确定材料挤压增材制造的质量等级

IF 2.9 3区 工程技术 Q2 AUTOMATION & CONTROL SYSTEMS International Journal of Advanced Manufacturing Technology Pub Date : 2024-03-21 DOI:10.1007/s00170-024-13269-5
Alexander Oleff, Benjamin Küster, Ludger Overmeyer
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引用次数: 0

摘要

要将材料挤压作为一种快速成型制造工艺用于具有高质量要求的产品,就必须有实施系统质量管理的工具。定义明确的质量等级对于确保透明地传达产品要求和评估现有特性至关重要。此外,在生产过程中还缺乏用于采集工艺数据的测量设备。为了应对这些挑战,本文介绍了一种图像处理系统,该系统可根据表面瑕疵百分比和瑕疵数量确定各层的质量指标。硬件的核心部件是自适应暗场照明,可生成高对比度图像。此外,在分割步骤中还识别了五种类型的层子区域。然后使用无监督机器学习方法检测每个层子区域的瑕疵。在分割过程中,当前图层可以与无关的图像背景区域区分开来,F-measure 为 0.981。在对质量指标进行分层测量时,发现相对测量误差的标准偏差为 25%至 76.1%。在对图像处理系统的能力进行评估后,通过监测几个材料挤压过程,得出了质量等级限制的建议。为此,从图像处理系统测量到的工艺散射推导出五个层子区域中每个区域的三个质量等级。这些结果为医疗技术或航空航天工业等安全关键领域的材料挤压工业化做出了重要贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Determination of quality classes for material extrusion additive manufacturing using image processing

Tools for implementing a systematic quality management are necessary for the use of material extrusion as an additive manufacturing process for products with high quality requirements. Well-defined quality classes are crucial for ensuring that the requirements for a product can be communicated transparently and that the existing properties can be evaluated. Furthermore, there is a lack of capable measurement equipment for the acquisition of process data during the production process. To address these challenges, the present paper introduces an image processing system that determines quality indicators for individual layers in terms of imperfect surface percentages and the number of imperfections. The central element of the hardware is an adaptive darkfield illumination, which leads to high-contrast images. In addition, five types of layer subareas are identified in a segmentation step. Unsupervised machine learning methods are then used to detect imperfections in each layer subarea. In the segmentation, the current layer can be distinguished from irrelevant image background regions with an F-measure of 0.981. For the layer-wise measurement of the quality indicators, relative measurement errors with standard deviations of 25 to 76.1% are found. After evaluating the capabilities of the image processing system, a proposal for limits of quality classes is derived by monitoring several material extrusion processes. For this purpose, three quality classes for each of the five layer subareas are deduced from the process scatter measured by the image processing system. The results are an important contribution to the industrialization of material extrusion in safety–critical areas such as medical technology or the aerospace industry.

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来源期刊
CiteScore
5.70
自引率
17.60%
发文量
2008
审稿时长
62 days
期刊介绍: The International Journal of Advanced Manufacturing Technology bridges the gap between pure research journals and the more practical publications on advanced manufacturing and systems. It therefore provides an outstanding forum for papers covering applications-based research topics relevant to manufacturing processes, machines and process integration.
期刊最新文献
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