Aiming at the problems of manual feature extraction and poor generalization ability of model in traditional circuit breaker fault diagnosis technology, a circuit breaker fault diagnosis method based on improved one-dimensional convolutional neural network is proposed. Firstly, the input feature sequence is adaptively weighted by self-attention mechanism to highlight the weight of important information; Secondly, 1 1 convolution layer and global average pooling layer are used to replace the full connection layer, which reduces the model training parameters, improves the training efficiency and prevents the phenomenon of over-fitting. Aiming at the problem of small number of data samples, the data is enhanced by Generative Adversarial Networ...
Aiming at the problem that the traditional intelligent fault diagnosis method is overly dependent on...
Intelligent power grid fault diagnosis is of great significance for speeding up fault processing and...
In recent years, intelligent fault diagnosis technology with deep learning algorithms has been widel...
With outstanding deep feature learning and nonlinear classification abilities, Convolutional Neural ...
During the operation process of the high-voltage circuit breaker, the changes of vibration signals r...
Aiming at the problem that some traditional high voltage circuit breaker fault diagnosis methods wer...
Intelligent algorithm has been widely implemented to effectively diagnose faults in industrial instr...
This paper presents a fast and accurate fault detection, classification and direction discrimination...
This paper develops a novel soft fault diagnosis approach for analog circuits. The proposed method e...
Aiming at the problem that the effect of the existing fault line selection methods is mainly determi...
Timely detection and maintenance of smart electricity meter faults are essential for smart grid syst...
Fault detection is an important and demanding problem in industry. Recently, many researchers have a...
Only using single feature information as input feature cannot fully reflect the transformer fault cl...
With the single-tube and double-tube fault of seven-level converter, this paper presents a new way t...
Traditional fault diagnosis methods require complex signal processing and expert experience, and the...
Aiming at the problem that the traditional intelligent fault diagnosis method is overly dependent on...
Intelligent power grid fault diagnosis is of great significance for speeding up fault processing and...
In recent years, intelligent fault diagnosis technology with deep learning algorithms has been widel...
With outstanding deep feature learning and nonlinear classification abilities, Convolutional Neural ...
During the operation process of the high-voltage circuit breaker, the changes of vibration signals r...
Aiming at the problem that some traditional high voltage circuit breaker fault diagnosis methods wer...
Intelligent algorithm has been widely implemented to effectively diagnose faults in industrial instr...
This paper presents a fast and accurate fault detection, classification and direction discrimination...
This paper develops a novel soft fault diagnosis approach for analog circuits. The proposed method e...
Aiming at the problem that the effect of the existing fault line selection methods is mainly determi...
Timely detection and maintenance of smart electricity meter faults are essential for smart grid syst...
Fault detection is an important and demanding problem in industry. Recently, many researchers have a...
Only using single feature information as input feature cannot fully reflect the transformer fault cl...
With the single-tube and double-tube fault of seven-level converter, this paper presents a new way t...
Traditional fault diagnosis methods require complex signal processing and expert experience, and the...
Aiming at the problem that the traditional intelligent fault diagnosis method is overly dependent on...
Intelligent power grid fault diagnosis is of great significance for speeding up fault processing and...
In recent years, intelligent fault diagnosis technology with deep learning algorithms has been widel...