This paper proposes a new approach combining autoregressive (AR) model and fuzzy cluster analysis for bearing fault diagnosis and degradation assessment. AR model is an effective approach to extract the fault feature, and is generally applied to stationary signals. However, the fault vibration signals of a roller bearing are non-stationary and non-Gaussian. Aiming at this problem, the set of parameters of the AR model is estimated based on higher-order cumulants. Consequently, the AR parameters are taken as the feature vectors, and fuzzy cluster analysis is applied to perform classification and pattern recognition. Experiments analysis results show that the proposed method can be used to identify various types and severities of fault bearin...
Bearings are one of the most crucial elements in rotating machine. The condition of bearings decides...
A fault diagnosis approach for roller bearing based on improved intrinsic timescale decomposition de...
A new scheme is proposed that combines autoregressive (AR) modelling techniques and pole-related spe...
In this study, time series analysis and pattern recognition analysis are used effectively for the pu...
A novel intelligent fault diagnosis method for motor roller bearings which operate under unsteady ro...
machines are extensively utilized in industrial life, since it represents a vital element in industr...
Abstract- In this paper, a new automatic analysis method for the detection of cyclic bearing faults ...
This paper suggests an automated approach for fault detection and classification in roller bearings,...
International audiencePrognostics and health management play a key role in increasing the reliabilit...
This study proposes a methodology for rolling element bearings fault diagnosis which gives a complet...
In this paper, classification of ball bearing faults using vibration signals is presented. A review ...
Rolling element bearings are an important unit in the rotating machines, and their performance degra...
Condition monitoring is becoming increasingly important in industry due to the need of increased rel...
In rotary machines bearings are a primary cause of failure. In order to estimate the time before fai...
It is very difficult to extract the feature frequency of the vibration signal of the rolling bearing...
Bearings are one of the most crucial elements in rotating machine. The condition of bearings decides...
A fault diagnosis approach for roller bearing based on improved intrinsic timescale decomposition de...
A new scheme is proposed that combines autoregressive (AR) modelling techniques and pole-related spe...
In this study, time series analysis and pattern recognition analysis are used effectively for the pu...
A novel intelligent fault diagnosis method for motor roller bearings which operate under unsteady ro...
machines are extensively utilized in industrial life, since it represents a vital element in industr...
Abstract- In this paper, a new automatic analysis method for the detection of cyclic bearing faults ...
This paper suggests an automated approach for fault detection and classification in roller bearings,...
International audiencePrognostics and health management play a key role in increasing the reliabilit...
This study proposes a methodology for rolling element bearings fault diagnosis which gives a complet...
In this paper, classification of ball bearing faults using vibration signals is presented. A review ...
Rolling element bearings are an important unit in the rotating machines, and their performance degra...
Condition monitoring is becoming increasingly important in industry due to the need of increased rel...
In rotary machines bearings are a primary cause of failure. In order to estimate the time before fai...
It is very difficult to extract the feature frequency of the vibration signal of the rolling bearing...
Bearings are one of the most crucial elements in rotating machine. The condition of bearings decides...
A fault diagnosis approach for roller bearing based on improved intrinsic timescale decomposition de...
A new scheme is proposed that combines autoregressive (AR) modelling techniques and pole-related spe...