In order to improve the accuracy and calculation efficiency of aeroengine rotor vibration reliability analysis, a time-varying rotor vibration reliability analysis method under the aeroengine operating state is proposed. Aiming at the highly nonlinear and strong coupling of factors affecting the reliability of aeroengine rotor vibration, an intelligent neural network modeling framework (short form-INNMF) is proposed. The proposed method is based on DEA, with QAR information as the analysis data, and four factors including engine working state, fuel/oil working state, aircraft flight state, and external conditions are considered to analyse the rotor vibration reliability. INNMF is based on the artificial neural network (ANN) algorithm throug...
In this paper, an intelligent robust design approach combined with different techniques such as poly...
[[abstract]]In this paper artificial neural network (ANN) technologies and analytical models have be...
Steam turbines (ST) need to be protected from damaging faults in the event it ends up in a danger zo...
Drones are increasingly used in several industries, including rescue, firefighting, and agriculture....
This research aims to evaluate the calculation accuracy and efficiency of the artificial neural netw...
Purpose With the condition monitoring system on airplanes, failures can be predicted before they occ...
AbstractRolling element bearings are critical components and widely used in many rotating machines s...
Rotor Track & Balance (RTB) process is performed to bring the Vibrations to acceptable limits in ide...
This paper describes the use of artificial neural networks (ANNs) with the vibration data from real ...
[[abstract]]Traditionally, decisions on the use of machinery are based on previous experience, histo...
The effect of vibration in plant leads to catastrophic failure of a system. This is why vibration mo...
The subject matter of the article are the methods and models for the identification of the technical...
The data from machinery health monitoring contains high noise components and low information content...
A neural network predictor is designed for analyzing vibration parameters of the rotating system. Th...
International audienceA critical step in aircraft design is to specify the vibration levels that onb...
In this paper, an intelligent robust design approach combined with different techniques such as poly...
[[abstract]]In this paper artificial neural network (ANN) technologies and analytical models have be...
Steam turbines (ST) need to be protected from damaging faults in the event it ends up in a danger zo...
Drones are increasingly used in several industries, including rescue, firefighting, and agriculture....
This research aims to evaluate the calculation accuracy and efficiency of the artificial neural netw...
Purpose With the condition monitoring system on airplanes, failures can be predicted before they occ...
AbstractRolling element bearings are critical components and widely used in many rotating machines s...
Rotor Track & Balance (RTB) process is performed to bring the Vibrations to acceptable limits in ide...
This paper describes the use of artificial neural networks (ANNs) with the vibration data from real ...
[[abstract]]Traditionally, decisions on the use of machinery are based on previous experience, histo...
The effect of vibration in plant leads to catastrophic failure of a system. This is why vibration mo...
The subject matter of the article are the methods and models for the identification of the technical...
The data from machinery health monitoring contains high noise components and low information content...
A neural network predictor is designed for analyzing vibration parameters of the rotating system. Th...
International audienceA critical step in aircraft design is to specify the vibration levels that onb...
In this paper, an intelligent robust design approach combined with different techniques such as poly...
[[abstract]]In this paper artificial neural network (ANN) technologies and analytical models have be...
Steam turbines (ST) need to be protected from damaging faults in the event it ends up in a danger zo...