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A Multiple Attention Convolutional Neural Networks for Diesel Engine Fault Diagnosis
by
Shen, Pengfei
, Tang, Daijie
, Cheng, Jiangang
, Bi, Xiaoyang
, Bi, Fengrong
, Yang, Xiao
in
attention mechanism
/ Computational linguistics
/ Data processing
/ Deep learning
/ diesel engine
/ Diesel engines
/ Diesel motor
/ Efficiency
/ end-to-end fault diagnosis
/ Entropy
/ Fault diagnosis
/ Fourier transforms
/ Internal combustion engine industry
/ Language processing
/ machine learning
/ Methods
/ Natural language interfaces
/ Neural networks
/ Nuclear energy
/ self-attention mechanism
/ Signal processing
/ Valves
/ Wavelet transforms
2024
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A Multiple Attention Convolutional Neural Networks for Diesel Engine Fault Diagnosis
by
Shen, Pengfei
, Tang, Daijie
, Cheng, Jiangang
, Bi, Xiaoyang
, Bi, Fengrong
, Yang, Xiao
in
attention mechanism
/ Computational linguistics
/ Data processing
/ Deep learning
/ diesel engine
/ Diesel engines
/ Diesel motor
/ Efficiency
/ end-to-end fault diagnosis
/ Entropy
/ Fault diagnosis
/ Fourier transforms
/ Internal combustion engine industry
/ Language processing
/ machine learning
/ Methods
/ Natural language interfaces
/ Neural networks
/ Nuclear energy
/ self-attention mechanism
/ Signal processing
/ Valves
/ Wavelet transforms
2024
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Do you wish to request the book?
A Multiple Attention Convolutional Neural Networks for Diesel Engine Fault Diagnosis
by
Shen, Pengfei
, Tang, Daijie
, Cheng, Jiangang
, Bi, Xiaoyang
, Bi, Fengrong
, Yang, Xiao
in
attention mechanism
/ Computational linguistics
/ Data processing
/ Deep learning
/ diesel engine
/ Diesel engines
/ Diesel motor
/ Efficiency
/ end-to-end fault diagnosis
/ Entropy
/ Fault diagnosis
/ Fourier transforms
/ Internal combustion engine industry
/ Language processing
/ machine learning
/ Methods
/ Natural language interfaces
/ Neural networks
/ Nuclear energy
/ self-attention mechanism
/ Signal processing
/ Valves
/ Wavelet transforms
2024
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A Multiple Attention Convolutional Neural Networks for Diesel Engine Fault Diagnosis
Journal Article
A Multiple Attention Convolutional Neural Networks for Diesel Engine Fault Diagnosis
2024
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Overview
Fault diagnosis can improve the safety and reliability of diesel engines. An end-to-end method based on a multi-attention convolutional neural network (MACNN) is proposed for accurate and efficient diesel engine fault diagnosis. By optimizing the arrangement and kernel size of the channel and spatial attention modules, the feature extraction capability is improved, and an improved convolutional block attention module (ICBAM) is obtained. Vibration signal features are acquired using a feature extraction model alternating between the convolutional neural network (CNN) and ICBAM. The feature map is recombined to reconstruct the sequence order information. Next, the self-attention mechanism (SAM) is applied to learn the recombined sequence features directly. A Swish activation function is introduced to solve “Dead ReLU” and improve the accuracy. A dynamic learning rate curve is designed to improve the convergence ability of the model. The diesel engine fault simulation experiment is carried out to simulate three kinds of fault types (abnormal valve clearance, abnormal rail pressure, and insufficient fuel supply), and each kind of fault varies in different degrees. The comparison results show that the accuracy of MACNN on the eight-class fault dataset at different speeds is more than 97%. The testing time of the MACNN is much less than the machine running time (for one work cycle). Therefore, the proposed end-to-end fault diagnosis method has a good application prospect.
Publisher
MDPI AG
Subject
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