Novel Transformer Fault Identification Optimization Method Based on Mathematical Statistics
Abstract
:1. Introduction
2. Transformer Vibration Signal Characteristics
2.1. Characterization of Transformer Vibration Signals
2.2. Measurement of the Transformer Vibration Signal
2.3. Transformer Vibration Signal Energy Spectrum Analysis
3. Optimization Method for Transformer Fault Identification
3.1. Distribution Characteristics of Transformer Vibration Signals
3.2. Basic Theory of Mathematical Statistics Methods
3.3. Feasibility Analysis of Simplifying Noise Reduction
3.4. Feasibility Analysis of the Mathematical Statistics Methods
4. Mathematical Statistics Method Application Examples
Mathematical Statistics Method Application Examples
5. Summary
- When the mathematical statistics method is used to analyze the vibration signal of the transformer, the noise exerts little influence on the accuracy of transformer fault identification. Simplification of the noise reduction of the signal reduces noise reduction costs and the fault identification time.
- The vibration signal of the transformer is analyzed by a mathematical statistics method and the cumulative probability distribution curve of the vibration signal is illustrated. Then, the least-squares fitting line of the cumulative probability distribution function of the vibration signal is solved by the least-squares method. According to the wavelet transform of different scales, the proportion of the high-frequency component to the low-frequency energy is obtained by combining wavelet theory to quantify the frequency band energy of the vibration signal. Thus, the energy threshold of each frequency band of the transformer vibration signal with different fault degrees can be calculated, and the cumulative probability distribution corresponding to the vibration signal of the transformer with different fault degrees can be fitted to the straight line. The slope threshold can then be determined.
- Transformer winding produces a short-circuit fault can be determined by comparing the slope of the cumulative probability distribution of the vibration signal with the fault threshold of the FSL. Therefore, the purpose of power transformer fault identification can be achieved and the feasibility of the mathematical statistics method can be verified. The mathematical statistics method can quickly determine the fault state of power transformers, reduce the safety hazards of transformers, and improve the safety and reliability of grid operation. This method also optimizes transformer fault identification to a certain extent and provides a new idea for the development of transformer fault identification techniques.
- Since the short-time Fourier transform is more applicable to transformer vibration signal processing than the Fourier transform and the empirical modal decomposition algorithm, we used short-time Fourier transform to analyze the transformer vibration signal and, compared with the mathematical statistics methods proposed in this paper, it can be seen that the short-time Fourier transform can identify moderate and severe short-circuit faults of transformer winding, but the early mild faults of the transformer winding cannot be accurately identified, which is due to the time and frequency resolution of the window function cannot be determined by the optimal limitation at the same time in short-time Fourier transform. In comparison, the mathematical statistics method proposed in this paper is more accurate in identifying the short-circuit fault degree of the transformer winding.
Author Contributions
Funding
Conflicts of Interest
References
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Transformer Status | 1st FBE Ratio (%) | 2nd FBE Ratio (%) | 3rd FBE Ratio (%) | 4th FBE Ratio (%) | 5th FBE Ratio (%) | 6th FBE Ratio (%) | 7th FBE Ratio (%) | 8th FBE Ratio (%) |
---|---|---|---|---|---|---|---|---|
Normal status | 82.36 | 4.60 | 1.97 | 3.99 | 1.49 | 1.33 | 2.08 | 2.18 |
Mild fault | 84.96 | 4.36 | 1.59 | 3.63 | 1.08 | 0.92 | 1.64 | 1.82 |
Moderate fault | 85.84 | 4.29 | 1.44 | 3.51 | 0.94 | 0.80 | 1.51 | 1.67 |
Severe fault | 88.89 | 3.87 | 0.97 | 3.18 | 0.43 | 0.38 | 1.07 | 1.21 |
Denoising Condition | Base Frequency Energy Ratio (%) | Fitting Straight line (FSL) Slope |
---|---|---|
Incomplete denoising signal | 87.14 | 24.7081 |
Complete denoising signal | 82.36 | 24.5230 |
Transformer Status | Base Frequency Energy Ratio (%) | FSL Slope |
---|---|---|
Normal status | 82.36~84.96 | 13.7605~24.5230 |
Mild fault | 84.96~85.84 | 10.5501~13.7605 |
Moderate fault | 85.84~88.89 | 7.3297~10.5501 |
Severe fault | ≥88.89 | ≤7.3297 |
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Zhang, Z.; Wu, Y.; Zhang, R.; Jiang, P.; Liu, G.; Ahmed, S.; Dong, Z. Novel Transformer Fault Identification Optimization Method Based on Mathematical Statistics. Mathematics 2019, 7, 288. https://doi.org/10.3390/math7030288
Zhang Z, Wu Y, Zhang R, Jiang P, Liu G, Ahmed S, Dong Z. Novel Transformer Fault Identification Optimization Method Based on Mathematical Statistics. Mathematics. 2019; 7(3):288. https://doi.org/10.3390/math7030288
Chicago/Turabian StyleZhang, Zhanlong, Yongye Wu, Ruixuan Zhang, Peiyu Jiang, Guohua Liu, Salman Ahmed, and Zijian Dong. 2019. "Novel Transformer Fault Identification Optimization Method Based on Mathematical Statistics" Mathematics 7, no. 3: 288. https://doi.org/10.3390/math7030288
APA StyleZhang, Z., Wu, Y., Zhang, R., Jiang, P., Liu, G., Ahmed, S., & Dong, Z. (2019). Novel Transformer Fault Identification Optimization Method Based on Mathematical Statistics. Mathematics, 7(3), 288. https://doi.org/10.3390/math7030288