The technique of machinery condition monitoring has been greatly enhanced over recent years with the application of many effective classifiers. However, these classification methods suffer from the 'curse of dimensionality' when applied to high-dimensional condition monitoring data. Actually, many classification algorithms are simply intractable when the number of features in the data is sufficiently large. In order to solve the problem, engineers have to resort to complicated feature extraction methods and other statistical theories to reduce the data dimensionality. However, features extracted using these methods lose their original engineering meaning and become obscure for engineers. In this study, a novel feature selection algorithm is...
Condition-based maintenance plays an important role to ensure the working condition and to increase ...
We propose a novel algorithm for extracting samples from a data set supporting the extremal points i...
This dissertation argues that classification is an effective tool in the prediction of machine condi...
The technique of machinery condition monitoring has been greatly enhanced over recent years with the...
Feature selection method has become the focus of research in the area of engineering data processing...
The technique of machinery fault diagnosis has been greatly enhanced over recent years with the appl...
A feature is a measured property of a monitored system. Feature extraction in condition monitoring r...
Condition based maintenance (CBM) has become increasingly important over the past decade as a means ...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
International audienceOne of the most advanced forms of industrial maintenance is predictive mainten...
The design work-flow of machine learning techniques for continuous monitoring or predictive maintena...
This work presents a fast algorithm to reduce the number of features of a classification system incr...
Intelligent machinery fault diagnosis commonly utilises statistical features of sensor signals as th...
In the engineering field, excessive data dimensions affect the efficiency of machine learning and an...
International audienceOne of the most advanced forms of industrial maintenance is predictive mainten...
Condition-based maintenance plays an important role to ensure the working condition and to increase ...
We propose a novel algorithm for extracting samples from a data set supporting the extremal points i...
This dissertation argues that classification is an effective tool in the prediction of machine condi...
The technique of machinery condition monitoring has been greatly enhanced over recent years with the...
Feature selection method has become the focus of research in the area of engineering data processing...
The technique of machinery fault diagnosis has been greatly enhanced over recent years with the appl...
A feature is a measured property of a monitored system. Feature extraction in condition monitoring r...
Condition based maintenance (CBM) has become increasingly important over the past decade as a means ...
Rotating machinery like pumps, compressors, and engines, are widespread in industries. A failure in ...
International audienceOne of the most advanced forms of industrial maintenance is predictive mainten...
The design work-flow of machine learning techniques for continuous monitoring or predictive maintena...
This work presents a fast algorithm to reduce the number of features of a classification system incr...
Intelligent machinery fault diagnosis commonly utilises statistical features of sensor signals as th...
In the engineering field, excessive data dimensions affect the efficiency of machine learning and an...
International audienceOne of the most advanced forms of industrial maintenance is predictive mainten...
Condition-based maintenance plays an important role to ensure the working condition and to increase ...
We propose a novel algorithm for extracting samples from a data set supporting the extremal points i...
This dissertation argues that classification is an effective tool in the prediction of machine condi...