Acoustic Anomaly Detection in Additive Manufacturing with Long Short-Term Memory Neural Networks

Pascal Becker, C. Roth, A. Roennau, R. Dillmann
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引用次数: 18

Abstract

The use of additive manufacturing is growing, especially in the small and medium sized enterprise sector. Still, the print process and its quality is prone to errors. Though there exist a variety of visual detection methods for additive manufacturing, acoustic ones are rare to find. This approach will serve as a method to detect acoustic cues and errors of a Fused Deposition Modeling printer. We propose a machine learning system detecting flaws and errors of a printer with varying difficulty. Regarding the first challenge, which is recording audio data, a microphone is attached close to the extruder of a printer. Since there is no public available data samples are recorded and annotated. To guarantee variety of the samples and more data different methods of data augmentation are applied. Mel-frequency cepstral coefficients and Mel filterbank energies are extracted from the recorded and augmented data to be used as features. A Long Short- Term Memory model was trained and validated with multiple classes of relevant sounds during 3d printing.
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基于长短期记忆神经网络的增材制造声学异常检测
增材制造的使用正在增长,特别是在中小型企业部门。尽管如此,印刷过程及其质量仍容易出现错误。虽然增材制造中存在多种视觉检测方法,但声学检测方法却很少。该方法将作为一种检测熔融沉积建模打印机的声学线索和错误的方法。我们提出了一种机器学习系统,以不同的难度检测打印机的缺陷和错误。第一个挑战是记录音频数据,在打印机的挤出机附近安装一个麦克风。由于没有公开可用的数据,因此对样本进行了记录和注释。为了保证样本的多样性和数据的丰富性,采用了不同的数据增强方法。从记录和增强的数据中提取Mel频率倒谱系数和Mel滤波器组能量作为特征。在3d打印过程中,对长短期记忆模型进行了训练并验证了多个类的相关声音。
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