Siamese网络中WDCNN-LSTM轴承故障诊断

Daehwan Lee, J. Jeong, Chaegyu Lee, Hakjun Moon, Jaeuk Lee, Dongyoung Lee
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摘要

本文采用基于Siamese网络的WDCNN + LSTM模型,采用少量学习算法进行轴承故障诊断。近年来,基于深度学习的故障诊断方法在设备故障诊断中取得了较好的效果。然而,现有的研究仍然存在局限性。最大的问题是需要大量的训练样本来训练深度学习模型。然而,制造场所是复杂的,故意制造设备缺陷并不容易。此外,不可能在所有工况下获得足够的所有故障类型的训练样本。因此,在本研究中,我们提出了一种能够在有限数据下有效学习的few-shot学习算法。本文提出了基于Siamese网络的WDCNN + LSTM模型轴承故障诊断算法,该算法能在有限数据下进行有效的学习。
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Bearing Fault Diagnosis of WDCNN-LSTM in Siamese Network
In this paper, a Siamese network-based WDCNN + LSTM model was used to diagnose bearing faults using a few shot learning algorithm. Recently, deep learning-based fault diagnosis methods have achieved good results in equipment fault diagnosis. However, there are still limitations in the existing research. The biggest problem is that a large number of training samples are required to train a deep learning model. However, manufacturing sites are complex, and it is not easy to intentionally create equipment defects. Furthermore, it is impossible to obtain enough training samples for all failure types under all working conditions. Therefore, in this study, we propose a few-shot learning algorithm that can effectively learn with limited data. A Few shot learning algorithm and Siamese network based WDCNN + LSTM model bearing fault diagnosis, which can effectively learn with limited data, is proposed in this study.
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