The technique of machinery fault diagnosis has been greatly enhanced over recent years with the application of many pattern classification methods. However, these classification methods suffer from the “curse of dimensionality” when applied to high-dimensional fault diagnosis data. In order to solve the problem, this paper proposes a hybrid model which combines multiple feature selection models to select the most significant input features from all potentially relevant features. Among the models, eight filter models are used to pre-rank the candidate features. They include data variance, Pearson correlation coefficient, the Relief algorithm, Fisher score, class separability, chi-squared, information gain and gain ratio. These variable ranki...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
The fault diagnosis field is in a continuous movement towards the generation of more reliable and po...
International audienceOne of the most advanced forms of industrial maintenance is predictive mainten...
The technique of machinery fault diagnosis has been greatly enhanced over recent years with the appl...
Feature selection method has become the focus of research in the area of engineering data processing...
The technique of machinery condition monitoring has been greatly enhanced over recent years with the...
In the fault classification process, filter methods that sequentially remove unnecessary features ha...
<div><p>A major issue of machinery fault diagnosis using vibration signals is that it is over-relian...
Fault diagnosis (FD) using data-driven methods is essential for monitoring complex process systems, ...
Intelligent machinery fault diagnosis commonly utilises statistical features of sensor signals as th...
The performance of bearing fault detection systems based on machine learning techniques largely depe...
A feature is a measured property of a monitored system. Feature extraction in condition monitoring r...
Abstract: Recent research in fault classification has shown that one of the benefits of using ensemb...
The Prognostics and Health Management (PHM) approach aims to reduce potential failures or machine do...
The selection of fewer or more representative features from multidimensional features is important w...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
The fault diagnosis field is in a continuous movement towards the generation of more reliable and po...
International audienceOne of the most advanced forms of industrial maintenance is predictive mainten...
The technique of machinery fault diagnosis has been greatly enhanced over recent years with the appl...
Feature selection method has become the focus of research in the area of engineering data processing...
The technique of machinery condition monitoring has been greatly enhanced over recent years with the...
In the fault classification process, filter methods that sequentially remove unnecessary features ha...
<div><p>A major issue of machinery fault diagnosis using vibration signals is that it is over-relian...
Fault diagnosis (FD) using data-driven methods is essential for monitoring complex process systems, ...
Intelligent machinery fault diagnosis commonly utilises statistical features of sensor signals as th...
The performance of bearing fault detection systems based on machine learning techniques largely depe...
A feature is a measured property of a monitored system. Feature extraction in condition monitoring r...
Abstract: Recent research in fault classification has shown that one of the benefits of using ensemb...
The Prognostics and Health Management (PHM) approach aims to reduce potential failures or machine do...
The selection of fewer or more representative features from multidimensional features is important w...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
The fault diagnosis field is in a continuous movement towards the generation of more reliable and po...
International audienceOne of the most advanced forms of industrial maintenance is predictive mainten...