Feature Parameter Analysis for Rotor Fault Diagnosis

2012 ◽  
Vol 15 (6) ◽  
pp. 31-38 ◽  
Author(s):  
Rae-Hycuk Jeoung ◽  
Jang-Bom Chai ◽  
Byoung-Hak Lee ◽  
Do-Hwan Lee ◽  
Byung-Kon Lee
2020 ◽  
Author(s):  
Hu Jun

Abstract By keep asking “what happened to the part that was connected between normal and fault?” The basic problem of fault diagnosis is put forward. Based on the parameter analysis, the most basic problem of fault diagnosis is pointed to the generalized stiffness looseness through the congenital underlying logic presupposition of the fault. The relationship between generalized looseness, part fault and system fault is analyzed by analytic method, which further proves that looseness fault is the most basic problem in fault diagnosis.Finally, the essential priority of looseness fault in fault diagnosis is expounded.The essential priority of loosening fault in fault diagnosis explains the basic problem of fault diagnosis and provides a scientific basis for the systematic development of fault diagnosis.


2013 ◽  
Vol 347-350 ◽  
pp. 228-232
Author(s):  
Qin Zeng Xue ◽  
Gang Xue ◽  
Guo Ku Liu

This paper sets three fault modes of rotor misalignment, pedestal looseness and rub between rotor and stator by rotor experimental platform and collected corresponding vibratory signals. Part of vibratory signal energy feature was extracted in the time field. As feature parameter of energy, the signal collected was mined using rough set theory, fault diagnosis was established on this basis. Validity of rule was verified by remaining vibratory signal, the result indicates diagnosis are accurate, fault diagnosis rule is meaningful.


Author(s):  
U. Südmersen ◽  
O. Pietsch ◽  
C. Scheer ◽  
W. Reimche ◽  
Fr.-W. Bach

2010 ◽  
Vol 439-440 ◽  
pp. 658-663 ◽  
Author(s):  
Jiang Tao Huang ◽  
Xiao Wen Cao ◽  
Wu Jin Li

Rolling bearings are vital elements in rotating machinery and vibration signal is a kind of effective mean to characterize the status of rolling bearing fault. This paper presents a novel intelligent method for fault diagnosis based on empirical mode decomposition, fractal feature parameter extracting and orthogonal quadratic discriminant function classifier. The new method consists of three steps. Firstly, with investigating the feature of impact fault in vibration signals, the raw vibration signals are decomposed into intrinsic mode functions by empirical mode decomposition. Secondly, using the method of time sequences fractal dimension calculating, fractal feature parameters are extracted from intrinsic mode functions. Then, each raw signal sample has a feature set. Finally, training set and testing set are inputted into the orthogonal quadratic discriminant function model in the classification phase to identify different abnormal cases. The proposed method is applied to the fault diagnosis of rolling element bearing, and the test results indicate that the novel intelligent diagnosis method is sensitive to fault severity and capable of fault detection and fault diagnosis.


2020 ◽  
Vol 2020 ◽  
pp. 1-10
Author(s):  
Zhao Luo ◽  
Zhiyuan Zhang ◽  
Xu Yan ◽  
Jinghui Qin ◽  
Zhendong Zhu ◽  
...  

Dissolved gas analysis (DGA) is the most important tool for fault diagnosis in electric power transformers. To improve accuracy of diagnosis, this paper proposed a new model (SDAE-LSTM) to identify the dissolved gases in the insulating oil of power transformers and perform parameter analysis. The performance evaluation is attained by the case studies in terms of recognition accuracy, precision ratio, and recall ratio. Experiment results show that the SDAE-LSTM model performs better than other models under different input conditions. As evidenced from the analyses, the proposed model achieves considerable results of recognition accuracy (95.86%), precision ratio (95.79%), and recall ratio (97.51%). It can be confirmed that the SDAE-LSTM model using the dissolved gas in the power transformer for fault diagnosis and analysis has great research prospect.


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