Title :
Improved DGA method based on rules extracted from high-dimension input space
Author :
Amora, M.A.B. ; Almeida, Otacilio M. ; Braga, A.P.S. ; Barbosa, F.R. ; Lisboa, L.A.C. ; Pontes, Ricardo Silva The
Author_Institution :
Dept. of Electr. Eng., Univ. Fed. do Ceara, Fortaleza, Brazil
Abstract :
The diagnosis of incipient faults in power system elements such as transformers is usually based on the concentrations of dissolved gases existent in the insulation oil. There are consolidated DGA-based (dissolved gas analysis) methods in the literature, such as the Duval triangle. However, they present some limitations such as the existence of non-decision areas and erroneous results. Proposed is a simple methodology to improve the analysis of incipient faults based on rules extracted from a high-dimension space (21 attributes), formed by the gases concentrations and some of their interrelations. From such input space, the C4.5 method (decision tree) is used to extract a set of interpretable rules. Databases known in the DGA technical literature such as IEC TC 10 are adopted to analyse the proposed approach. When compared with a standard method, considering all data test folders in the performed 10-folder cross-validation statistical analysis, the extracted rules show greater accuracy with an error in the diagnosis of incipient faults of 6.25%, against 18.75% for the Triangle method in the worst case.
Keywords :
chemical analysis; decision trees; fault diagnosis; feature extraction; power system faults; power transformer insulation; statistical analysis; transformer oil; C4.5 method; Duval triangle; IEC TC 10; data test folders; decision tree; dissolved gas analysis methods; gases concentrations; high-dimension input space; improved DGA method; incipient fault diagnosis; insulation oil; power system elements; ten-folder cross-validation statistical analysis; transformers; triangle method;
Journal_Title :
Electronics Letters
DOI :
10.1049/el.2012.1363