Diagnostics of mechanical problems in manufacturing systems are essential to maintaining safety and minimizing expenditures. In this study, an intelligent fault classification model that combines a signal-to-image encoding technique and a convolution neural network (CNN) with the motor-current signal is proposed to classify bearing faults. In the beginning, we split the dataset into four parts, considering the operating conditions. Then, the original signal is segmented into multiple samples, and we apply the Gramian angular field (GAF) algorithm on each sample to generate two-dimensional (2-D) images, which also converts the time-series signals into polar coordinates. The image conversion technique eliminates the requirement of manual feat...
Abstract The high applicability of the electrical motor has led to gain attention in condition monit...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...
Bearing fault diagnosis is very important for the security and efficiency of electric machines. In r...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
Bearings are one of the most important parts of a rotating machine. Bearing failure can lead to mech...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
In this paper, we explore the applicability of CNN for the classification of bearing defects. The ap...
This paper presents a convolutional neural network (CNN) based approach for fault diagnosis of rotat...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Bearings are the key and important components of rotating machinery. Effective bearing fault diagnos...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...
Abstract The high applicability of the electrical motor has led to gain attention in condition monit...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...
Bearing fault diagnosis is very important for the security and efficiency of electric machines. In r...
Compared to time-consuming and unreliable manual analysis, intelligent fault diagnosis techniques us...
Bearings are one of the most important parts of a rotating machine. Bearing failure can lead to mech...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
In this paper, we explore the applicability of CNN for the classification of bearing defects. The ap...
This paper presents a convolutional neural network (CNN) based approach for fault diagnosis of rotat...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Periodic vibration signals captured by the accelerometers carry rich information for bearing fault d...
Bearings are the key and important components of rotating machinery. Effective bearing fault diagnos...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...
Abstract The high applicability of the electrical motor has led to gain attention in condition monit...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...
As the degradation of bearing yield to an enormous adverse impact on machinery and the damage that c...