Enhancing automated fiber placement process monitoring and quality inspection: A hybrid thermal vision based framework

IF 2.9 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Muhammed Zemzemoglu, Mustafa Unel, Lutfi Taner Tunc
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引用次数: 0

Abstract

Automated Fiber Placement (AFP) has revolutionized composite manufacturing, yet quality assurance remains challenging due to the significant impact of emerging defects on part quality and the current reliance on time-consuming manual inspection protocols. This paper presents a comprehensive hybrid framework that enhances AFP process monitoring and quality inspection by integrating thermal vision with innovative methodologies. Our framework combines model-based and data-driven algorithms across three modules to address key AFP inspection tasks, including in-situ monitoring, dynamic tow identification, defect detection, segmentation, localization, and quantitative lay-up quality evaluation. The setup-independent spatial–temporal analysis algorithm estimates tow boundaries with sub-pixel accuracy. An optimized SVM classifier, trained on an extensive AFP defect database, achieves a defect detection accuracy of 96.4% and an F1-score of 96.43%, meeting industry standards. The active contours-based segmentation and localization module provides critical qualitative traits such as defect shape, size, and location. Moreover, the novel Defect Area Percentage (DAP) metric enables precise quantitative defect impact evaluation at both the course and tow levels. By consolidating qualitative and quantitative outcomes, the system offers real-time high-level feedback for informed decision-making, significantly improving process performance and reducing machine downtimes. This proactive approach advances AFP process monitoring and quality inspection and positions our framework as a promising solution for next-generation composite manufacturing.

加强自动化纤维铺放过程监控和质量检测:基于热视觉的混合框架
自动纤维铺放(AFP)给复合材料制造带来了革命性的变化,但由于新出现的缺陷对零件质量的重大影响,以及目前对耗时的人工检测协议的依赖,质量保证仍面临挑战。本文介绍了一个综合混合框架,通过将热视觉与创新方法相结合,增强了 AFP 过程监控和质量检测能力。我们的框架在三个模块中结合了基于模型和数据驱动的算法,以解决关键的 AFP 检测任务,包括原位监控、动态丝束识别、缺陷检测、分割、定位和定量铺层质量评估。与设置无关的时空分析算法能以亚像素精度估算出拖缆边界。经过优化的 SVM 分类器在广泛的 AFP 缺陷数据库中经过训练,缺陷检测准确率达到 96.4%,F1 分数达到 96.43%,符合行业标准。基于主动轮廓的分割和定位模块可提供关键的质量特征,如缺陷形状、大小和位置。此外,新颖的缺陷面积百分比 (DAP) 指标可在线路和拖车层面对缺陷影响进行精确的定量评估。通过整合定性和定量结果,该系统可为明智决策提供实时的高级反馈,从而显著提高工艺性能并减少机器停机时间。这种积极主动的方法推进了 AFP 过程监控和质量检测,并将我们的框架定位为下一代复合材料制造的理想解决方案。
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来源期刊
ACS Chemical Health & Safety
ACS Chemical Health & Safety PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
3.10
自引率
20.00%
发文量
63
期刊介绍: The Journal of Chemical Health and Safety focuses on news, information, and ideas relating to issues and advances in chemical health and safety. The Journal of Chemical Health and Safety covers up-to-the minute, in-depth views of safety issues ranging from OSHA and EPA regulations to the safe handling of hazardous waste, from the latest innovations in effective chemical hygiene practices to the courts'' most recent rulings on safety-related lawsuits. The Journal of Chemical Health and Safety presents real-world information that health, safety and environmental professionals and others responsible for the safety of their workplaces can put to use right away, identifying potential and developing safety concerns before they do real harm.
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