In the rolling bearing fault diagnosis, the vibration signal of single sensor is usually nonstationary and noisy, which contains very little useful information, and impacts the accuracy of fault diagnosis. In order to solve the problem, this paper presents a novel fault diagnosis method using multivibration signals and deep belief network (DBN). By utilizing the DBN’s learning ability, the proposed method can adaptively fuse multifeature data and identify various bearing faults. Firstly, multiple vibration signals are acquainted from various fault bearings. Secondly, some time-domain characteristics are extracted from original signals of each individual sensor. Finally, the features data of all sensors are put into the DBN and generate an a...
Bearing is one of the most vital components of industrial machinery. The failure of bearing causes s...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
This study presents the application of deep domain adaptation techniques in bearing fault diagnosis....
Feature extraction from a signal is the most important step in signal-based fault diagnosis. Deep le...
Owing to the symmetry of the rolling bearing structure and the rotating operation mode, the rolling ...
Because deep belief networks (DBNs) in deep learning have a powerful ability to extract useful infor...
Given the complexity of the operating conditions of rolling bearings in the actual rolling process o...
Rotating machinery often works under complex and variable working conditions; the vibration signals ...
Each pattern recognition method has its advantages and disadvantages to diagnose the state of rotati...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
The insufficient learning ability of traditional convolutional neural network for key fault features...
The rolling bearing is a critical part of rotating machinery and its condition determines the perfor...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
Bearing is one of the most vital components of industrial machinery. The failure of bearing causes s...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
This study presents the application of deep domain adaptation techniques in bearing fault diagnosis....
Feature extraction from a signal is the most important step in signal-based fault diagnosis. Deep le...
Owing to the symmetry of the rolling bearing structure and the rotating operation mode, the rolling ...
Because deep belief networks (DBNs) in deep learning have a powerful ability to extract useful infor...
Given the complexity of the operating conditions of rolling bearings in the actual rolling process o...
Rotating machinery often works under complex and variable working conditions; the vibration signals ...
Each pattern recognition method has its advantages and disadvantages to diagnose the state of rotati...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
The condition monitoring of rotating machinery is always a focus of intelligent fault diagnosis. In ...
The insufficient learning ability of traditional convolutional neural network for key fault features...
The rolling bearing is a critical part of rotating machinery and its condition determines the perfor...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
Aiming to address the problems of a low fault detection rate and poor diagnosis performance under di...
Bearing is one of the most vital components of industrial machinery. The failure of bearing causes s...
Data-driven rolling-bearing fault diagnosis methods are mostly based on deep-learning models, and th...
This study presents the application of deep domain adaptation techniques in bearing fault diagnosis....