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Data augmentation for bearing fault detection with a light weight CNN

机译:用于轴承故障检测的数据增强CNN

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Bearings are vital part of rotary machines. A failure of bearing has a negative impact on schedules, production operation and even human casualties. Therefore, in prior achieving fault detection and diagnosis (FDD) of bearing is ensuring the safety and reliable operation of rotating machinery systems. However, there are some challenges of the industrial FDD problems. First, there are unbalanced samples because industrial faults rarely occur. Conse-quently, the labeled data which can refer to failure information are limited in the industry and data augmentation methods are critical pre-processing be-fore training data driven models. Second, due to many learnable parameters in model and data of long sequence, both lead to time delay for FDD. There-fore, this paper proposes various data preprocessing methods and Light-Convolutional Neural Network (LCNN).
机译:轴承是旋转机器的重要组成部分。轴承失败对时间表,生产操作甚至人类伤亡产生负面影响。因此,在轴承的现有故障检测和诊断(FDD)中,确保了旋转机械系统的安全性和可靠运行。但是,工业FDD问题存在一些挑战。首先,存在不平衡的样本,因为工业故障很少发生。 Conse-Qually,可以参考故障信息的标记数据在行业和数据增强方法中受到限制,这是关键预处理的预处理训练数据驱动模型。其次,由于许多学习参数的模型和长序列数据,两者都导致FDD的时间延迟。因此,本文提出了各种数据预处理方法和光卷积神经网络(LCNN)。

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