Osazee Ero, Katayoon Taherkhani, Yasmine Hemmati, E. Toyserkani
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This paper introduces a novel machine learning-based approach that integrates a self-organizing map (SOM), a fuzzy logic scheme, and a tailored U-Net architecture to enhance defect prediction capabilities during the LPBF process. This model not only predicts common flaws such as lack of fusion and keyhole defects through analysis of in-situ OT data but also allows quality assurance professionals to apply their expert knowledge through customizable fuzzy rules. This capability facilitates a more nuanced and interpretable model, enhancing the likelihood of accurate defect detection. The efficacy of this system has been validated through experimental analyses across various process parameters, with results validated by subsequent CT scans, exhibiting strong performance with average model scores ranging from 0.375 to 0.819 for lack of fusion defects and from 0.391 to 0.616 for intentional keyhole defects. 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引用次数: 0
摘要
传统方法,如机械测试和 X 射线计算机断层扫描(CT),用于评估激光粉末床熔融(LPBF)(增材制造(AM)的一种)的质量,是资源密集型的,并在生产后进行。最近在原位监测方面取得的进展,特别是使用光学断层扫描(OT)检测加工过程中的近红外光发射,为原位缺陷检测提供了机会。然而,由于固有的工艺特征和干扰可能会掩盖缺陷识别,因此解释 OT 数据集仍然具有挑战性。本文介绍了一种基于机器学习的新方法,该方法集成了自组织图(SOM)、模糊逻辑方案和定制的 U-Net 架构,以增强 LPBF 过程中的缺陷预测能力。该模型不仅能通过分析现场 OT 数据预测常见缺陷,如缺乏融合和锁孔缺陷,还能让质量保证专业人员通过可定制的模糊规则应用其专业知识。这一功能有助于建立一个更细致入微、更易于解释的模型,从而提高准确检测缺陷的可能性。该系统的功效已通过各种工艺参数的实验分析进行了验证,其结果也通过后续的 CT 扫描进行了验证,显示出强大的性能,模型平均得分从 0.375 到 0.819 不等,用于检测缺乏融合缺陷,从 0.391 到 0.616 不等,用于检测有意锁孔缺陷。这些发现强调了该模型在预测缺陷方面的可靠性和适应性,凸显了其作为 AM 制程中质量保证的变革性工具的潜力。该方法的一个显著优点是适应性强,允许最终用户根据所需的质量要求和自定义模糊规则调整缺陷检测的概率阈值。
An Integrated Fuzzy Logic and Machine Learning Platform for Porosity Detection using Optical Tomography Imaging during Laser Powder Bed Fusion
Traditional methods such as mechanical testing and X-ray computed tomography (CT), for quality assessment in laser powder-bed fusion (LPBF), a class of additive manufacturing (AM), are resource-intensive and conducted post-production. Recent advancements in in-situ monitoring, particularly using optical tomography (OT) to detect near-infrared light emissions during the process, offer an opportunity for in-situ defect detection. However, interpreting OT datasets remains challenging due to inherent process characteristics and disturbances that may obscure defect identification. This paper introduces a novel machine learning-based approach that integrates a self-organizing map (SOM), a fuzzy logic scheme, and a tailored U-Net architecture to enhance defect prediction capabilities during the LPBF process. This model not only predicts common flaws such as lack of fusion and keyhole defects through analysis of in-situ OT data but also allows quality assurance professionals to apply their expert knowledge through customizable fuzzy rules. This capability facilitates a more nuanced and interpretable model, enhancing the likelihood of accurate defect detection. The efficacy of this system has been validated through experimental analyses across various process parameters, with results validated by subsequent CT scans, exhibiting strong performance with average model scores ranging from 0.375 to 0.819 for lack of fusion defects and from 0.391 to 0.616 for intentional keyhole defects. These findings underscore the model's reliability and adaptability in predicting defects, highlighting its potential as a transformative tool for in-process quality assurance in AM. A notable benefit of this method is its adaptability, allowing the end-user to adjust the probability threshold for defect detection based on desired quality requirements and custom fuzzy rules.