Assessment of computational intelligence and conventional dissolved gas analysis methods for transformer fault diagnosis

Autor: Milad Soleimani, Jawad Faiz
Rok vydání: 2018
Předmět:
Zdroj: IEEE Transactions on Dielectrics and Electrical Insulation. 25:1798-1806
ISSN: 1558-4135
1070-9878
Popis: Transformers are vital components of power systems as they are situated between energy generation and consumers and their failure disrupts the use of electrical energy. Therefore, diagnosing an incipient fault is essential in avoiding hazardous operating conditions and minimizes downtime cost. In transformers, faults take place due to electrical or thermal stresses that cause insulation decomposition in transformers. In oil-filled transformers, insulations are cellulose and oil, and the products of the insulation decomposition are gases which can be dissolved in the oil. Therefore, dissolved gas analysis (DGA) can be used for fault diagnosis in oil filled transformers. In this paper, DGA interpretation methods, conventional and intelligence, are investigated and compared. For evaluating consistency and accuracy of the methods, "No Result" cases are not considered. It can help the newcomers to this field to have access to a comprehensive comparison about the application of computational intelligence and conventional methods in transformer fault detection using DGA.
Databáze: OpenAIRE