Transformer Fault Diagnosis Method Based on SCA-VMD and Improved GoogLeNet
Abstract
:1. Introduction
2. Vibration Signal Data Preprocessing and Feature Extraction Modelling
2.1. Variational Modal Decomposition (VMD)
- Initialise , and n.
- Update and according to Equations (2) and (3).
- Update λ using .
- Set the judgment accuracy e > 0. If the judgment condition is not met, then go back to step 2; terminate the iteration if the judgment condition is met. However, the VMD algorithm is somewhat subjective in determining the decomposition parameters K and α during signal processing, which requires a lot of practical experience and repeated attempts. Therefore, this paper introduces the positive cosine algorithm to adaptively determine the above parameters.
2.2. Sine–Cosine Optimisation Algorithm (SCA)
2.3. VMD Based on SCA Parameter Optimisation
- Initialisation parameters: the initial parameters of the algorithm, including K and alpha, are set using a priori knowledge, experience or random selection.
- Define the fitness function: define the fitness function as shown in Equation (8), i.e., the minimum average envelope entropy.
- SCA optimisation: The sine–cosine algorithm (SCA) is used to optimise the fitness function. In each iteration, the fitness function (MAEE) is minimised by adjusting the parameters K and alpha.
- Iterative process: The parameters K and alpha are progressively optimised over several iterations. In each iteration, the value of the fitness function is calculated, the parameters are updated and the stopping condition is checked to see whether it is met.
- Performance evaluation: During the iteration process, the value of MAEE is monitored. If the MAEE value is found to be small enough and the MAEE no longer changes significantly after the number of iterations is reached, the iteration can be stopped.
2.4. Vibration Signal Feature Extraction
- Variational modal decomposition: the signal is decomposed using the VMD algorithm to obtain the kth order mode uk, where uk can be expressed as
- 2.
- Calculate the periodogram: The short-time Fourier transform (STFT) is performed on uk(t) to obtain the short-time spectrum Sk(ω,t):
- Summing by modal components: the total periodic map spectrum S(ω,t) is obtained by summing each modal component.
- Plotting feature maps: After the periodic map spectrum of the vibration signal based on SCA-VMD decomposition is summed up using modal components, the modal components are used as the horizontal axis, the frequency is used as the vertical axis and the brightness of each point represents the energy magnitude of the modal component at the corresponding frequency to plot the feature maps so that we can obtain the energy distributions of the different modal components at different frequencies, which can better reflect the characteristics of the vibration signal faults and the information of the faults.
3. Predictive Models for Data Fusion
3.1. Attention Mechanism
3.2. GoogLeNet Based on Attention Mechanisms
4. Tests and Analysis of Results
4.1. Comparative Performance Analysis of SCA-VMD Algorithms
4.2. Data Preprocessing and Sample Set Construction
4.3. Network Structure and Hyperparameter Settings
4.4. Comparative Analysis of Models
4.5. Performance Comparison and Analysis of Different Models
5. Discussion
6. Conclusions
- A method based on SCA-VMD mode decomposition was proposed. SCA was used to adaptively optimise the parameters, that is, the number of modes and penalty factor, to optimise the decomposition effect of VMD and improve the input quality of the prediction model.
- The feature extraction method of the periodic map spectrum generated after the SCA-VMD was used. The periodic map spectrum feature map reflected the difference in the energy distribution of the different mode components at different frequencies to reflect the different fault types of transformers.
- This paper proposes GoogLeNet optimised by an attention mechanism to realise transformer fault diagnosis. The spatial and channel attention mechanisms are combined with different layers of the periodic map spectrum for the corresponding weighting, which improves the accuracy of the GoogLeNet classification model.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Parameter | Value |
---|---|
Input voltage | 380 V |
Output voltage | 220 V |
Output voltage accuracy | ±1.5% |
Rate of change of voltage | ≤1.5% |
Applicable frequency | 50/60 Hz |
Parameter | Value |
---|---|
Charge sensitivity (mV/g) | 49.7 |
Frequency range (Hz) | 0.5~5000 |
Operating voltage (VDC) | 15~28 |
Operating current (mA) | 2~10 |
Output amplitude (Vp) | ±5 |
Fault State Type | Fault Simulation Type | Marking |
---|---|---|
Normal state of operation | Normal operation | 0 |
Loose windings | Reduction in the longitudinal preload of the compression coils (loosening displacement 0.2 cm) | 1 |
Loose core | Loosening bolts and tie bolts for tightening the core (loosening displacement 0.2 cm) | 2 |
Loose base | Loose base reduced base bolt preload (0.2 cm displacement of loose screw) | 3 |
Methods | Average Iteration Time (s) | Number of Iterations | Minimum Average Envelope Entropy | Standard Deviation |
---|---|---|---|---|
PSO-VMD | 19.0 | 14 | 7.390 | 0.176 |
GA-VMD | 26.7 | 15 | 7.412 | 0.128 |
SCA-VMD | 13.5 | 7 | 7.323 | 0.127 |
Model | Average Recognition Accuracy | Standard Deviation |
---|---|---|
GoogLeNet | 97.97 | 0.65 |
Spatial Attention–GoogLeNet | 98.72 | 0.57 |
Channel Attention–GoogLeNet | 98.44 | 0.60 |
Attention–GoogLeNet | 99.04 | 0.51 |
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Zhang, K.; Sun, W.; Ba, Y.; Liu, Z. Transformer Fault Diagnosis Method Based on SCA-VMD and Improved GoogLeNet. Appl. Sci. 2024, 14, 861. https://doi.org/10.3390/app14020861
Zhang K, Sun W, Ba Y, Liu Z. Transformer Fault Diagnosis Method Based on SCA-VMD and Improved GoogLeNet. Applied Sciences. 2024; 14(2):861. https://doi.org/10.3390/app14020861
Chicago/Turabian StyleZhang, Kezhan, Wenlei Sun, Yinjun Ba, and Zhiyuan Liu. 2024. "Transformer Fault Diagnosis Method Based on SCA-VMD and Improved GoogLeNet" Applied Sciences 14, no. 2: 861. https://doi.org/10.3390/app14020861
APA StyleZhang, K., Sun, W., Ba, Y., & Liu, Z. (2024). Transformer Fault Diagnosis Method Based on SCA-VMD and Improved GoogLeNet. Applied Sciences, 14(2), 861. https://doi.org/10.3390/app14020861