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Extraction and evaluation of melt pool, plume and spatter information for powder-bed fusion AM process monitoring

机译:提取和评估熔池,羽流和飞溅信息,用于粉末床熔融AM过程监控

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With the continuous development of additive manufacturing technique, the issue on built quality has caught increasing attentions. To improve the quality of built parts, the process monitoring and control has been empha-sized as a promising solution. Despite a large number of studies on the development of sensors and instrumentations, the investigation on statistical analysis, modelling and automatic anomalies detection is still at an infant stage. To advance the related research, the intelligent classification methods, support vector machines (SVM) and convolutional neural network (CNN), were proposed for quality level identification in this work A vision system with high speed camera was used for process images acquisition. The features of different objects including melt pool, plume and spatter were extracted based on the AM process understanding. The corresponding feature vectors were used as the input for the SVM classification. The results indicated the information from different objects is sensitive to different types of quality anomalies. Moreover, the combination of features from these three objects can significantly improve the classification accuracy to 90.1%. Additionally, the comparison between SVM and CNN was also conducted, the high accuracy of 92.7% for the CNN model demonstrated that it is a promising method for quality level identification by using the vision system. (C) 2018 Published by Elsevier Ltd.
机译:随着增材制造技术的不断发展,关于建筑质量的问题已引起越来越多的关注。为了提高内置零件的质量,过程监视和控制已被强调为有前途的解决方案。尽管对传感器和仪器的开发进行了大量研究,但有关统计分析,建模和自动异常检测的研究仍处于起步阶段。为了推进相关研究,本文提出了智能分类方法,支持向量机(SVM)和卷积神经网络(CNN)来进行质量等级识别。使用带有高速摄像机的视觉系统来采集过程图像。基于对AM过程的理解,提取了包括熔池,羽状流和飞溅在内的不同对象的特征。相应的特征向量用作SVM分类的输入。结果表明,来自不同对象的信息对不同类型的质量异常敏感。此外,将这三个对象的特征组合在一起可以将分类准确度显着提高到90.1%。此外,还对SVM和CNN进行了比较,CNN模型的92.7%的高精度表明该方法是使用视觉系统进行质量水平识别的一种有前途的方法。 (C)2018由Elsevier Ltd.发布

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