Abstract

The early detection of the transformer faults with high accuracy rates guarantees the continuous operation of the power system networks. Dissolved gas analysis (DGA) is a technique that is used to detect or diagnose the transformer faults based on the dissolved gases due to the electrical and thermal stresses influencing the insulating oil. Many attempts are accomplished to discover an appropriate technique to correctly diagnose the transformer fault types, such as the Duval Triangle method, Rogers' ratios method, and IEC standard 60599. In addition, several artificial intelligence, classification, and optimization techniques are merged with the previous methods to enhance their diagnostic accuracy. In this article, a novel approach is proposed to enhance the diagnostic accuracy of the transformer faults based on introducing new gas concentration percentages limits and gases' ratios that help to separate the conflict between the diverse transformer faults. To do so, an optimization model is established which simultaneously optimizes both gas concentration percentages and ratios so as to maximize the agreement of the diagnostic faults with respect to the actual ones achieving the high diagnostic accuracy of the transformer faults. Accordingly, an efficient teaching-learning based optimization (TLBO) is developed to accurately solve the optimization model considering training datasets (Egyptian chemical laboratory and literature). The proposed TLBO algorithm enhances diagnostic accuracy at a significant level, which is higher than some of the other DGA techniques that were presented in the literature. The robustness of the proposed optimization-based approach is confirmed against uncertainty in measurement where its accuracy is not affected by the uncertainty rates. To prove the efficacy of the proposed approach, it is compared with five existing approaches using an out-of-sample dataset where a superior agreement rate is reached for the different fault types.

Highlights

  • Discovery of faults in power transformers is a challenging task that can increase the lifetime of such important power system components while ensuring continuous operation

  • The optimization method is used to identify the transformer faults by adjusting the dissolved gases concentration limits according to six transformer fault types

  • The teaching-learning based optimization (TLBO) scenario 2 has enhanced the diagnostic accuracy with a reasonable limit where it gave a diagnostic accuracy of 88.86 % for training samples and 82.02% for the testing samples

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Summary

INTRODUCTION

Discovery of faults in power transformers is a challenging task that can increase the lifetime of such important power system components while ensuring continuous operation. Several studies are accomplished to develop efficient techniques to properly diagnose the various fault types of power transformers, most importantly the Duval Triangle method, IEC standard, and Rogers’ ratios method, besides several artificial intelligence-based approaches. A novel approach to enhance the diagnostic accuracy of the transformer faults is proposed in this work by introducing new values for gas concentration percentages and ratios. Such introduced values can help to separate the conflict between the diverse transformer faults, thereby maximizing the accuracy rates. The diagnostic accuracy of the novel TLBO based approach as illustrated in the obtained results is higher the most DGA techniques in the literature

DGA OPTIMIZATION MODEL
TLBO ALGORITHM
RESULTS AND DISCUSSION
CONCLUSION
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