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Optimizing Quality Inspection and Control in Powder Bed Metal Additive Manufacturing: Challenges and Research Directions

机译:优化粉床金属添加剂制造中的质量检测与控制:挑战与研究方向

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摘要

One of the key targets of Industry 4.0 and digital production, in general, is the support of faster, cleaner, and increasingly customizable manufacturing processes. Additive manufacturing (AM) is a natural fit in this context, as it offers the possibility to produce complex parts without the design constraints of traditional manufacturing routes, typically reducing both material waste and time to market. Nonetheless, the lack of repeatability of the manufacturing process, which typically translates into a lack of reproducibility and reliability of the quality of the final products compared to traditional subtractive technologies, is currently one of the major barriers to the widespread adoption of AM in mass production. To overcome this limitation, there are growing efforts in recent years toward better integration of advanced information technologies into AM, exploiting the layer-by-layer nature of the build. The consequence of these efforts is twofold: 1) the integration of advanced sensing technologies into the AM systems, making possible the in situ monitoring of huge amounts of data at multiple time scales and resolutions and 2) the ever-increasing role of data-driven approaches [especially machine learning (ML)] in the analysis of such data to provide real-time quality monitoring and process optimization. This article introduces and reviews the key technological developments of this phenomenon, with a special focus on metal powder bed fusion (PBF) technologies that are attracting the highest attention by the industrial AM community. After introducing the main manufacturing quality issues and needs that have to be developed and optimized, we provide a wide overview of the latest progress of in situ monitoring and control in metal PBF, with special regards to sensing technologies and ML approaches. Finally, we identify the open challenges and future research directions in this field.
机译:一般的行业4.0和数字生产的主要目标之一是支持更快,更清洁,越来越可定制的制造过程。添加剂制造(AM)在这种情况下是一种自然的拟合,因为它提供了在没有传统制造路线的设计限制的情况下生产复杂部件的可能性,通常会降低材料浪费和上市时间。尽管如此,与传统的减数技术相比,缺乏制造过程的可重复性,通常转化为缺乏最终产品质量的可重复性和可靠性,目前是批量生产中广泛采用的主要障碍之一。为了克服这种限制,近年来越来越努力走进我的高级信息技术进入AM,利用构建的层层性质。这些努力的结果是双重的:1)将先进的传感技术集成到AM系统中,使得可能在多个时间尺度和分辨率下对大量数据的原位监测,并且2)数据驱动的不断增加的作用在分析这些数据的分析中接近[特别是机器学习(ML)],提供实时质量监测和过程优化。本文介绍和审查了这种现象的关键技术发展,特别关注金属粉床融合(PBF)技术,吸引工业AM社区最高关注。在介绍了必须开发和优化的主要制造质量问题和需求之后,我们提供了在金属PBF中原位监测和控制的最新进展概述,具有对传感技术和ML方法的特殊方面。最后,我们确定了该领域的开放挑战和未来的研究方向。

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