The difficulty of collecting fault data samples is one of the application problems of the deep learning method in fault diagnosis of mechanical production; the second is that when the depth of the learning network increases, the network accuracy is saturated or even decreased. Therefore, based on the deep learning algorithm and the DenseNet model, this paper establishes a fault diagnosis model for the beam pumping unit through the transfer learning method. The model uses the global pooling layer as the classifier. The model is used to classify and test various working conditions such as wax deposition, pump leakage, insufficient liquid supply, and pump leakage in oil wells. The results show that the model can obtain a classification model w...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...
The demand for transfer learning methods for mechanical fault diagnosis has considerably progressed ...
Rotating machinery fault diagnosis is very important for industrial production. Many intelligent fau...
This paper presents a method for fault detection of natural gas pumping unit. It is a very difficult...
The working environment of seawater axial piston hydraulic pump is harsh, and it is difficult to dia...
Intelligent fault diagnosis is of great significance to guarantee the safe operation of mechanical e...
In this paper, a deep learning-based fault diagnosis framework is proposed to improve the fault diag...
Deep learning has shown great promise in process fault diagnosis. However, due to the lack of suffic...
Current studies on intelligent bearing fault diagnosis based on transfer learning have been fruitful...
Deep learning technique is an effective mean of processing complex data that has emerged in recent y...
Aiming at the problem of fault diagnosis when there are only a few labeled samples in the large amou...
Rotating machines are widely used in today’s world. As these machines perform the biggest tasks in i...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
Digital twin (DT) is emerging as a key technology for smart manufacturing. The high fidelity DT mode...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...
The demand for transfer learning methods for mechanical fault diagnosis has considerably progressed ...
Rotating machinery fault diagnosis is very important for industrial production. Many intelligent fau...
This paper presents a method for fault detection of natural gas pumping unit. It is a very difficult...
The working environment of seawater axial piston hydraulic pump is harsh, and it is difficult to dia...
Intelligent fault diagnosis is of great significance to guarantee the safe operation of mechanical e...
In this paper, a deep learning-based fault diagnosis framework is proposed to improve the fault diag...
Deep learning has shown great promise in process fault diagnosis. However, due to the lack of suffic...
Current studies on intelligent bearing fault diagnosis based on transfer learning have been fruitful...
Deep learning technique is an effective mean of processing complex data that has emerged in recent y...
Aiming at the problem of fault diagnosis when there are only a few labeled samples in the large amou...
Rotating machines are widely used in today’s world. As these machines perform the biggest tasks in i...
Rolling bearings are important in rotating machinery and equipment. This research proposes variation...
Digital twin (DT) is emerging as a key technology for smart manufacturing. The high fidelity DT mode...
Deep learning has extensive application in fault diagnosis regarding the health monitoring of machin...
International audienceDeep learning methods have promoted the vibration-based machinery fault diagno...
The demand for transfer learning methods for mechanical fault diagnosis has considerably progressed ...
Rotating machinery fault diagnosis is very important for industrial production. Many intelligent fau...