Fault diagnosis is very important to maintain the operation of a gas turbine generator system (GTGS) in power plants, where any abnormal situations will interrupt the electricity supply. The fault diagnosis of the GTGS faces the main challenge that the acquired data, vibration or sound signals, contain a great deal of redundant information which extends the fault identification time and degrades the diagnostic accuracy. To improve the diagnostic performance in the GTGS, an effective fault feature extraction framework is proposed to solve the problem of the signal disorder and redundant information in the acquired signal. The proposed framework combines feature extraction with a general machine learning method, support vector machine (SVM), ...
In modern mechanical and aviation industries, gas turbine engines are essential components. However,...
Based on the concept of information entropy, this paper analyzes typical nonlinear vibration fault s...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
© 2016 Jian-Hua Zhong et al. Fault diagnosis is very important to maintain the operation of a gas tu...
Abstract: Gas turbine (GT) fault detection plays a vital role in the minimization of power plant ope...
In this paper, a new method was introduced for feature extraction and fault diagnosis in bearings ba...
In this study, condition monitoring strategies are examined for gas turbine engines using vibration ...
The goal of this dissertation research is to develop nonintrusive condition monitoring and fault dia...
Many machines generate nonstationary dynamic signals. The featured components of such signals, such ...
Aiming at solving lacking of failure data and inefficiency,high-cost of now available fault diagnosi...
AbstractBased on study of aeroengine vibration mechanism and analysis of characteristics of vibratio...
Machine condition monitoring is an increasingly important area of research and plays an integral rol...
Given the problems in intelligent gearbox diagnosis methods, it is difficult to obtain the desired i...
Vibration diagnosis is one of the most common techniques in condition evaluation of wind turbine equ...
Fault diagnosis of rotating machinery mainly includes fault feature extraction and fault classificat...
In modern mechanical and aviation industries, gas turbine engines are essential components. However,...
Based on the concept of information entropy, this paper analyzes typical nonlinear vibration fault s...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...
© 2016 Jian-Hua Zhong et al. Fault diagnosis is very important to maintain the operation of a gas tu...
Abstract: Gas turbine (GT) fault detection plays a vital role in the minimization of power plant ope...
In this paper, a new method was introduced for feature extraction and fault diagnosis in bearings ba...
In this study, condition monitoring strategies are examined for gas turbine engines using vibration ...
The goal of this dissertation research is to develop nonintrusive condition monitoring and fault dia...
Many machines generate nonstationary dynamic signals. The featured components of such signals, such ...
Aiming at solving lacking of failure data and inefficiency,high-cost of now available fault diagnosi...
AbstractBased on study of aeroengine vibration mechanism and analysis of characteristics of vibratio...
Machine condition monitoring is an increasingly important area of research and plays an integral rol...
Given the problems in intelligent gearbox diagnosis methods, it is difficult to obtain the desired i...
Vibration diagnosis is one of the most common techniques in condition evaluation of wind turbine equ...
Fault diagnosis of rotating machinery mainly includes fault feature extraction and fault classificat...
In modern mechanical and aviation industries, gas turbine engines are essential components. However,...
Based on the concept of information entropy, this paper analyzes typical nonlinear vibration fault s...
The wavelet packet transform decomposes a signal into a set of bases for time–frequency analysis. Th...