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A novel model with the ability of few-shot learning and quick updating for intelligent fault diagnosis

机译:具有快速学习和快速更新功能的新型模型,可用于智能故障诊断

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摘要

Both of traditional intelligent fault diagnosis (TIFD) based on artificial features and modern intelligent fault diagnosis (M1FD) based on deep learning have made healthy progress in recent times. But, the bulk of methods neglects the actual application environments of intelligent diagnosis: (1) There are only few samples of faults, which greatly limit the popularity of TIFD and M1FD. Therefore, it is urgent to develop intelligent models with the ability of few-shot learning. (2) The performance degradation will occur when the equipment runs for a long time, which requires intelligent diagnosis models to possess the ability of quick updating. In order to remedy these shortcomings, a capsule auto-encoder model based on auto-encoder and capsule network, namely CaAE, is proposed for intelligent fault diagnosis. By constructing a capsule auto-encoder, various meaningful feature capsules are extracted from the input data, and then these capsules are fused adaptively into status capsules by the dynamic routing algorithm to represent health statuses. After that, status capsules are fed into the classifier to distinguish health statuses. The extraction of feature capsules enhances the model's ability of mining information, which reduces the dependence of CaAE on the number of samples and compresses training time by reducing layers of the network. The loss function in the model introduces the penalty for the samples classified correctly and the constraints on the capsule auto-encoder, which make the model fast in training and excellent in feature extracting. A bearing dataset is utilized to validate the performance of the proposed CaAE. The results indicate that CaAE is suitable for few-shot learning and quick updating of intelligent models. In addition, the model can also achieve satisfactory results under noisy environment.
机译:基于人工特征的传统智能故障诊断(TIFD)和基于深度学习的现代智能故障诊断(M1FD)近年来都取得了健康发展。但是,大多数方法忽略了智能诊断的实际应用环境:(1)故障样本很少,这极大地限制了TIFD和M1FD的普及。因此,迫切需要开发具有少量学习能力的智能模型。 (2)设备长时间运行会导致性能下降,这需要智能的诊断模型具有快速更新的能力。为了弥补这些不足,提出了一种基于自动编码器和胶囊网络的胶囊自动编码器模型,即CaAE,用于智能故障诊断。通过构造胶囊自动编码器,从输入数据中提取各种有意义的特征胶囊,然后通过动态路由算法将这些胶囊自适应地融合到状态胶囊中,以表示健康状况。之后,状态胶囊被送入分类器以区分健康状态。特征胶囊的提取增强了模型挖掘信息的能力,从而减少了CaAE对样本数量的依赖性,并通过减少网络层来缩短训练时间。模型中的损失函数引入了对正确分类的样本的惩罚以及对胶囊自动编码器的约束,这使得该模型训练速度快并且特征提取出色。利用方位数据集来验证所提出的CaAE的性能。结果表明,CaAE适合于一次性学习和快速更新智能模型。此外,该模型在嘈杂的环境下也可以获得满意的结果。

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