Research on Multi-Attribute Decision-Making in Condition-Based Maintenance for Power Transformers Based on Cloud and Kernel Vector Space Models
Abstract
:1. Introduction
2. Establishment of the Transformer Condition Maintenance Evaluation System
2.1. Comprehensive Evaluation Index System
2.2. Cloud Model
3. Determination of Evaluation Index Weight
3.1. Grey Correlation Analysis
3.2. Determination of the Comprehensive Index Weight
4. Kernel Vector Space Model
5. Case Analysis
- (1)
- Based on the influence of maintenance in power transformers, the expected results of qualitative index c2 were calculated using Equation (6), as follows:
- (2)
- The expected results of qualitative indicators c1 and c3 to c6 were calculated using Equation (7), as follows:
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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c1, c3 | c2 | c4–c6 | Cloud Model |
---|---|---|---|
Lower | Very Good | Smaller | C(1, 0.104, 0.015) |
Low | Good | Small | C(0.691, 0.064, 0.009) |
Average | Average | Average | C(0.5, 0.039, 0.006) |
High | Bad | Big | C(0.309, 0.064, 0.009) |
Higher | Very Bad | Bigger | C(0, 0.104, 0.015) |
Strategy | c1 | c2 | c3 | c4 | c5 | c6 |
---|---|---|---|---|---|---|
M1 | High | Very Good | Higher | Bigger | Bigger | Bigger |
Higher | Very Good | Higher | Bigger | Bigger | Bigger | |
High | Very Good | Higher | Big | Bigger | Big | |
Higher | Good | Higher | Bigger | Big | Big | |
M2 | High | Good | High | Medium | Big | Bigger |
Low | Very Good | Average | Big | Big | Bigger | |
High | Very Good | Average | Medium | Big | Big | |
Average | Good | Good | Small | Big | Bigger | |
M3 | Average | Very Bad | Low | Small | Smaller | Bigger Bigger |
Average | Bad | Low | Smaller | Smaller | Bigger | |
High | Very Bad | Low | Smaller | Small | Bigger | |
High | Bad | Average | Medium | Small |
Index | Subjective Weights | Objective Weights | Combined Weights |
---|---|---|---|
c1 | |||
c2 | |||
c3 | |||
c4 | |||
c5 | |||
c6 |
Maintenance Strategy | Proximity |
---|---|
M1 | 0.9836 |
M2 | 0.9906 |
M3 | 0.9963 |
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Gong, R.; Li, S.; Peng, W. Research on Multi-Attribute Decision-Making in Condition-Based Maintenance for Power Transformers Based on Cloud and Kernel Vector Space Models. Energies 2020, 13, 5948. https://doi.org/10.3390/en13225948
Gong R, Li S, Peng W. Research on Multi-Attribute Decision-Making in Condition-Based Maintenance for Power Transformers Based on Cloud and Kernel Vector Space Models. Energies. 2020; 13(22):5948. https://doi.org/10.3390/en13225948
Chicago/Turabian StyleGong, Renxi, Siqiang Li, and Weiyu Peng. 2020. "Research on Multi-Attribute Decision-Making in Condition-Based Maintenance for Power Transformers Based on Cloud and Kernel Vector Space Models" Energies 13, no. 22: 5948. https://doi.org/10.3390/en13225948
APA StyleGong, R., Li, S., & Peng, W. (2020). Research on Multi-Attribute Decision-Making in Condition-Based Maintenance for Power Transformers Based on Cloud and Kernel Vector Space Models. Energies, 13(22), 5948. https://doi.org/10.3390/en13225948