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Intelligent fault diagnosis of rotating machinery using locally connected restricted boltzmann machine in big data era

机译:大数据时代使用本地连接的受限Botzmann机器对旋转机械进行智能故障诊断

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In intelligent fault diagnosis, unsupervised feature learning is a potential tool to replace the manual feature extraction in big data era. Therefore, we first develop a locally connected restricted Boltzmann machine (LCRBM) from the traditional RBM in order to handle the periodic appearance of fault characteristics in the raw signals of rotating machinery. Then, using LCRBM, we propose a method for intelligent fault diagnosis of rotating machinery. In the method, LCRBM is used to obtain features directly from raw signals. Based on the features learned by LCRBM, the method uses softmax regression to recognize faults. The proposed method is verified by the dataset of locomotive bearings and its superiority is demonstrated by the comparison with methods using the traditional RBM and eighteen widely used manual features. Results indicate that the proposed method is able to automatically learn fine features from raw signals of rotating machinery and achieves higher diagnosis accuracies.
机译:在智能故障诊断中,无监督特征学习是在大数据时代取代人工特征提取的潜在工具。因此,我们首先从传统的RBM开发出本地连接的受限Boltzmann机器(LCRBM),以便处理旋转机械原始信号中故障特征的周期性出现。然后,利用LCRBM,提出了一种用于旋转机械故障智能诊断的方法。在该方法中,LCRBM用于直接从原始信号中获取特征。基于LCRBM学习的特征,该方法使用softmax回归来识别故障。通过机车轴承数据集验证了该方法,并与传统RBM和18种广泛使用的手动功能进行了比较,证明了该方法的优越性。结果表明,该方法能够从旋转机械原始信号中自动学习精细特征,并具有较高的诊断精度。

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