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Multisensorial Self-learning Systems for Quality Monitoring of Carbon Fiber Composites in Aircraft Production

机译:用于飞机生产中碳纤维复合材料质量监控的多传感器自学习系统

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Currently in the aerospace industry is a change from the traditional nest production towards an automated mass production, which requires the fulfillment of very high demands on precision and availability of the new technologies. In a research cooperation between industrial companies and research institutions skills were developed for an automated production of carbon fib er composite parts for aircraft industries.A major challenge of the project was the enormous demands on the quality and the necessary evidence. While in automotive industries quality control will normally be carried out by samples, in the aircraft industry a 100%-monitoring is necessary to assure the safety of the aircraft and to reduce financial risks for the involved enterprises.The manufacturing process of assembling the wing-cover components made of carbon fiber composite – titanium/aluminum structures consists primarily of the operations of drilling, reaming, removal of temporary rivets and placing the final rivets. With about 5,000 rivets the correct and flawless insertion of the holes is extremely important.Therefore a core area of the project was the line quality monitoring of a damage-free drilling of carbon-fiber composites. This included the automated measurement of all holes with respect to diameter, roundness and chamfer angle, but also the identification of possible delamination between layers of carbon fiber composites.Since the potential defects are not detectable using a single physical system, a platform for an open-system combination of various physical processes such as thermal imaging sensors, image processing and laser scanning systems was developed. In this way it is possible to compensate the disadvantages of the individual systems through the added properties of the corresponding systems.Via the developed system, the relevant features can be extracted from the raw data and fed into a generic rating classification system and a learning process. The addition of other sensor systems, such as eddy current or ultrasonic sensors, is possible at any time.The solution is based on a tripartite division of the data processing: data recording from almost any data acquisition system, data preprocessing for extracting the relevant features from the raw data and the classification system that performs the mapping of the data for the predefined and learned classes. As mathematical basis matrix operations, methods of exploratory data analysis (i.e. component analysis) and different classification methods (MLDA, MLP) are used.The paper shows the mathematical and technical procedures, explains the experimental conditions and shows the obtained results in detail.
机译:当前,在航空航天工业中,是从传统的巢式生产向自动化的批量生产转变,这需要满足对精度和新技术可用性的很高要求。在工业公司和研究机构之间的研究合作中,开发了用于飞机工业的碳纤维复合材料零件自动生产的技能。该项目的主要挑战是对质量的要求和必要的证据。虽然在汽车行业中,质量控制通常是通过样品进行的,但在飞机行业中,必须进行100%的监控,以确保飞机的安全并减少所涉企业的财务风险。由碳纤维复合材料制成的覆盖部件-钛/铝结构主要包括钻孔,铰孔,去除临时铆钉以及放置最终铆钉的操作。正确地,无瑕疵地插入约5,000个铆钉极为重要,因此,该项目的核心领域是对碳纤维复合材料进行无损钻孔的生产线质量监控。这不仅包括对所有孔的直径,圆度和倒角角度的自动测量,还包括对碳纤维复合材料层之间可能分层的识别。由于使用单个物理系统无法检测到潜在的缺陷,因此需要一个开放的平台-开发了各种物理过程的系统组合,例如热成像传感器,图像处理和激光扫描系统。这样就可以通过相应系统的附加属性来弥补单个系统的缺点。通过开发的系统,可以从原始数据中提取相关特征,并将其输入到通用评级分类系统和学习过程中。该解决方案基于数据处理的三方划分:几乎来自任何数据采集系统的数据记录,用于提取相关特征的数据预处理,都可以随时添加其他传感器系统,例如涡流传感器或超声传感器。来自原始数据和分类系统,分类系统为预定义和学习的类执行数据映射。探索性数据分析方法(即成分分析)和不同的分类方法(MLDA,MLP)被用作数学基础矩阵运算。本文展示了数学和技术步骤,解释了实验条件并详细显示了获得的结果。

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