Transformer Fault Early Warning Analysis Based on Hierarchical Clustering Combined with Decision Trees
Abstract
:1. Introduction
2. Analysis of Transformer Vibration Characteristics Supported Power Quality
2.1. Effect of Different Types of Electrical Quantities on Vibration
- Content of the higher current harmonics
- Three-phase current imbalanced
2.2. Vibration Signal Analysis Based on Fourier Transform
- Vibration signal analysis of transformers at light and heavy loads
- Analysis of vibration signals in transformers when harmonic currents are flowing
- Vibration signal analysis in transformers with three-phase unbalanced
3. Clustering Based on Power Quality
3.1. Inter Class Distance Metric
- Single Linkage [29]: The shortest distance of all data points in 2 clusters is used to represent the distance between the 2 classes.
- 2.
- Complete Linkage [30]: The longest distance of all data points in 2 clusters is used to represent the distance between the 2 classes.
- 3.
- Average Linkage: The average distance between all data points in 2 clusters is used to represent the distance between the 2 classes.
- 4.
- Ward Linkage [31]: The distance between 2 classes is represented by the sum of the squares of the deviations between all data points in the 2 clusters.
3.2. Agglomerative Hierarchical Clustering
3.3. Comparison of Different Dimensions
4. Decision Tree Modeling Based on Clustering
4.1. Data Pre-Processing
4.2. Model Calculations
- Information entropy
- Information gain
4.3. Early Warning Model Analysis
- The quick Fourier rework (FFT) is used to extract the particular operating conditions of the transformer, i.e., harmonics, light load, heavy load and three-phase unbalanced, with four electrical quantities equivalent to the vibration characteristics 50–2400 Hz continuous 440 information, as a sample set for data processing of transformer fault early warning model.
- The agglomerative hierarchical clustering algorithm is used to achieve automatic clustering of vibration features based on different electrical quantities of the transformer, with the optimal number of clusters determined by the Elbow method and the optimal dimension of clustering determined by the silhouette coefficient,
- Obtain the clustering categories based on agglomerative hierarchical clustering, output as a transformer sample data set, and a supervised learning decision tree is used to build an early warning model.
- The initial clustering center is calculated according to the maximum-minimum distance algorithm [37]. Each vibration cluster’s distance is then calculated using the cluster center when the transformer fault happens, and select the working condition with the least distance, i.e., the abnormality—is chosen.
5. Case Verification
5.1. Example Analysis
5.2. Transformer Fault Analysis
6. Conclusions
- An agglomerative hierarchical clustering has been introduced to demonstrate that vibration characteristics associated with various electrical quantities of the transformer can be automatically clustered to reflect the transformer’s actual operating conditions.
- The method in this paper is adaptive to the sample data and verifies that there is indeed a causal relationship between transformer electrical quantities and vibration characteristics, allowing inference about transformer vibration characteristics, reasonably predict of fault types, and explain the vibration mechanism of faults, which are not available within the traditional method of transformer fault early warning.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Number | 50 Hz | 100 Hz | 150 Hz | 200 Hz | 250 Hz | 300 Hz | 350 Hz | 400 Hz | Cluster |
---|---|---|---|---|---|---|---|---|---|
0 | large | small | large | Small | medium | medium | small | large | 1 |
1 | large | small | large | Small | medium | medium | small | large | 1 |
2 | medium | medium | large | Small | small | medium | medium | small | 1 |
… | … | … | … | … | … | … | … | … | … |
437 | large | small | large | Medium | large | medium | medium | medium | 3 |
438 | large | small | large | Medium | large | medium | medium | medium | 3 |
439 | large | small | medium | Medium | large | medium | medium | medium | 3 |
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Liu, X.; Li, J.; Shao, L.; Liu, H.; Ren, L.; Zhu, L. Transformer Fault Early Warning Analysis Based on Hierarchical Clustering Combined with Decision Trees. Energies 2023, 16, 1168. https://doi.org/10.3390/en16031168
Liu X, Li J, Shao L, Liu H, Ren L, Zhu L. Transformer Fault Early Warning Analysis Based on Hierarchical Clustering Combined with Decision Trees. Energies. 2023; 16(3):1168. https://doi.org/10.3390/en16031168
Chicago/Turabian StyleLiu, Xiaoqiang, Ji Li, Lei Shao, Hongli Liu, Lei Ren, and Lihua Zhu. 2023. "Transformer Fault Early Warning Analysis Based on Hierarchical Clustering Combined with Decision Trees" Energies 16, no. 3: 1168. https://doi.org/10.3390/en16031168
APA StyleLiu, X., Li, J., Shao, L., Liu, H., Ren, L., & Zhu, L. (2023). Transformer Fault Early Warning Analysis Based on Hierarchical Clustering Combined with Decision Trees. Energies, 16(3), 1168. https://doi.org/10.3390/en16031168