Supervised classification methods have been widely utilized for the quality assurance of the advanced manufacturing process, such as additive manufacturing (AM) for anomaly (defects) detection. However, since abnormal states (with defects) occur much less frequently than normal ones (without defects) in the manufacturing process, the number of sensor data samples collected from a normal state outweighs that from an abnormal state. This issue causes imbalanced training data for classification models, thus deteriorating the performance of detecting abnormal states in the process. It is beneficial to generate effective artificial sample data for the abnormal states to make a more balanced training set. To achieve this goal, this paper proposes a novel data augmentation method based on a generative adversarial network (GAN) using additive manufacturing process image sensor data. The novelty of our approach is that a standard GAN and classifier are jointly optimized with techniques to stabilize the learning process of standard GAN. The diverse and high-quality generated samples provide balanced training data to the classifier. The iterative optimization between GAN and classifier provides the high-performance classifier. The effectiveness of the proposed method is validated by both open-source data and real-world case studies in polymer and metal AM processes.
翻译:监督的分类方法被广泛用于先进制造工艺的质量保证,例如用于异常(缺陷)检测的添加剂制造(AM)的异常(缺陷)检测;然而,由于在制造过程中异常状态(缺陷)的发生频率远低于正常状态(缺陷)的发生频率(缺陷),从正常状态收集的传感器数据样本数量超过正常状态的异常状态。这一问题导致分类模型的培训数据不平衡,从而恶化了在此过程中检测异常状态的性能。为异常状态制作有效的人工样本数据以建立一套更加平衡的培训数据集是有益的。为实现这一目标,本文件建议采用基于基因化对抗网络(GAN)的新的数据增强方法,使用添加制造过程图像传感器数据。我们的方法的新颖之处是,标准GAN和分类器与稳定标准GAN学习过程的技术共同优化。生成的多样化和高质量的样本为分类器提供了平衡的培训数据。GAN和分类器之间的迭代优化为高性能分类器提供了高性分级器。拟议方法的有效性得到公开源数据和聚合物和金属氨工艺中真实世界案例研究的验证。