Degradation stage prediction, which is crucial to monitoring the health condition of rolling bearings, can improve safety and reduce maintenance costs. In this paper, a novel degradation stage prediction method based on hierarchical grey entropy (HGE) and a grey bootstrap Markov chain (GBMC) is presented. Firstly, HGE is proposed as a new entropy that measures complexity, considers the degradation information embedded in both lower- and higher-frequency components and extracts the degradation features of rolling bearings. Then, the HGE values containing degradation information are fed to the prediction model, based on the GBMC, to obtain degradation stage prediction results more accurately. Meanwhile, three parameter indicators, namely the ...
Bearings are one of the most used components in rotating machinery. They are also the components whi...
It is significant for the evaluation and prediction of the performance degradation of rolling bearin...
As a nonlinear dynamic method for complexity measurement of time series, multiscale entropy (MSE) ha...
Prognostics health management (PHM) of rotating machinery has become an important process for increa...
Rolling element bearings are an important unit in the rotating machines, and their performance degra...
A dynamic prediction method for accuracy maintaining reliability (AMR) of superprecision rolling bea...
Information such as probability distribution, performance degradation trajectory, and performance re...
The accurate prediction of the remaining useful life (RUL) of rolling bearings is of great significa...
The performance of bearings plays a pivotal role in determining the dependability and security of ro...
International audiencePrognostics and health management play a key role in increasing the reliabilit...
Rolling bearings play a crucial role in rotary machinery systems, and their operating state affects ...
Bearings are one of the most crucial elements in rotating machine. The condition of bearings decides...
Aiming to resolve the problem of redundant information concerning rolling bearing degradation charac...
As rolling bearings are the key components in rotating machinery, bearing performance degradation di...
In view of the problem that the actual degradation status of rolling bearing has a poor distinguishi...
Bearings are one of the most used components in rotating machinery. They are also the components whi...
It is significant for the evaluation and prediction of the performance degradation of rolling bearin...
As a nonlinear dynamic method for complexity measurement of time series, multiscale entropy (MSE) ha...
Prognostics health management (PHM) of rotating machinery has become an important process for increa...
Rolling element bearings are an important unit in the rotating machines, and their performance degra...
A dynamic prediction method for accuracy maintaining reliability (AMR) of superprecision rolling bea...
Information such as probability distribution, performance degradation trajectory, and performance re...
The accurate prediction of the remaining useful life (RUL) of rolling bearings is of great significa...
The performance of bearings plays a pivotal role in determining the dependability and security of ro...
International audiencePrognostics and health management play a key role in increasing the reliabilit...
Rolling bearings play a crucial role in rotary machinery systems, and their operating state affects ...
Bearings are one of the most crucial elements in rotating machine. The condition of bearings decides...
Aiming to resolve the problem of redundant information concerning rolling bearing degradation charac...
As rolling bearings are the key components in rotating machinery, bearing performance degradation di...
In view of the problem that the actual degradation status of rolling bearing has a poor distinguishi...
Bearings are one of the most used components in rotating machinery. They are also the components whi...
It is significant for the evaluation and prediction of the performance degradation of rolling bearin...
As a nonlinear dynamic method for complexity measurement of time series, multiscale entropy (MSE) ha...