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Fast Adaptive RNN Encoder–Decoder for Anomaly Detection in SMD Assembly Machine

机译:快速自适应RNN编码器-解码器,用于SMD组装机中的异常检测

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Surface Mounted Device (SMD) assembly machine manufactures various products on a flexible manufacturing line. An anomaly detection model that can adapt to the various manufacturing environments very fast is required. In this paper, we proposed a fast adaptive anomaly detection model based on a Recurrent Neural Network (RNN) Encoder–Decoder with operating machine sounds. RNN Encoder–Decoder has a structure very similar to Auto-Encoder (AE), but the former has significantly reduced parameters compared to the latter because of its rolled structure. Thus, the RNN Encoder–Decoder only requires a short training process for fast adaptation. The anomaly detection model decides abnormality based on Euclidean distance between generated sequences and observed sequence from machine sounds. Experimental evaluation was conducted on a set of dataset from the SMD assembly machine. Results showed cutting-edge performance with fast adaptation.
机译:表面贴装设备(SMD)组装机在灵活的生产线上生产各种产品。需要一个能够非常快地适应各种制造环境的异常检测模型。在本文中,我们提出了一种基于递归神经网络(RNN)编码器-解码器并带有操作声音的快速自适应异常检测模型。 RNN编码器-解码器的结构与自动编码器(AE)非常相似,但由于后者采用滚动结构,因此与后者相比,前者的参数大大减少。因此,RNN编码器-解码器只需要很短的训练过程就可以快速适应。异常检测模型根据生成的序列与机器声音中观察到的序列之间的欧式距离来确定异常。对来自SMD组装机的一组数据集进行了实验评估。结果显示了最先进的性能和快速的适应性。

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