LSTM-GAN-AE: A Promising Approach for Fault Diagnosis in Machine Health Monitoring

Author(s):  
Haoqiang Liu ◽  
Hongbo Zhao ◽  
Jiayue Wang ◽  
Shuai Yuan ◽  
Wenquan Feng
Author(s):  
Saud Altaf ◽  
Shafiq Ahmad

The machinery arrangements in industrial environment normally consist of motors of diverse sizes and specifications that are provided power and connected with common power-bus. The power-line could be act as a good source for travelling the signal through power-line network and this can be leave a faulty symptom while inspection of motors. This influence on other neighbouring motors with noisy signal that may present some type of fault condition in healthy motors. Further intricacy arises when this type of signal is propagated on power-line network by motors at different slip speeds, power rating and many faulty motors within the network. This sort of convolution and diversification of signals from multiple motors makes it challenging to measure and accurately relate to a certain motor or specific fault. This chapter presents a critical literature review analysis on machine-fault diagnosis and its related topics. The review covers a wide range of recent literature in this problem domain. A significant related research development and contribution of different areas regarding fault diagnosis and traceability within power-line networks will be discussed in detail throughout this chapter.


Entropy ◽  
2019 ◽  
Vol 21 (6) ◽  
pp. 540 ◽  
Author(s):  
Nibaldo Rodriguez ◽  
Lida Barba ◽  
Pablo Alvarez ◽  
Guillermo Cabrera-Guerrero

Bearing fault diagnosis methods play an important role in rotating machine health monitoring. In recent years, various intelligent fault diagnosis methods have been proposed, which are mainly based on the features extraction method combined with either shallow or deep learning methods. During the last few years, Shannon entropy features have been widely used in machine health monitoring, improving the accuracy of the bearing fault diagnosis process. Therefore, in this paper, we consider the combination of multi-scale stationary wavelet packet analysis with the Fourier amplitude spectrum to obtain a new discriminative Shannon entropy feature that we call stationary wavelet packet Fourier entropy (SWPFE). Features extracted by our SWPFE method are then passed onto a shallow kernel extreme learning machine (KELM) classifier to diagnose bearing failure types with different severities. The proposed method was applied on two experimental vibration signal databases of a rolling element bearing and compared to two recently proposed methods called stationary wavelet packet permutation entropy (SWPPE) and stationary wavelet packet dispersion entropy (SWPPE). Based on our results, we can say that the proposed method is able to achieve better accuracy levels than both the SWPPE and SWPDE methods using fewer failure features. Further, as our method does not require any hyperparameter calibration step, it is less dependent on user experience/expertise.


2021 ◽  
Vol 70 ◽  
pp. 1-11
Author(s):  
Bingchang Hou ◽  
Dong Wang ◽  
Yi Wang ◽  
Tongtong Yan ◽  
Zhike Peng ◽  
...  

Author(s):  
Panchaksharayya S. Hiremath ◽  
Kalyan Ram B. ◽  
Santoshgouda M. Patil ◽  
V. Sabarish ◽  
Preeti Biradar ◽  
...  

2018 ◽  
Vol 65 (2) ◽  
pp. 1539-1548 ◽  
Author(s):  
Rui Zhao ◽  
Dongzhe Wang ◽  
Ruqiang Yan ◽  
Kezhi Mao ◽  
Fei Shen ◽  
...  

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