학술논문

Studying Intelligent Techniques Acting in Large Power Transformer Monitoring
Document Type
article
Source
Brazilian Archives of Biology and Technology, Vol 66 (2023)
Subject
Artificial Intelligence
Power Transformers
Data Analytics
Intelligent Techniques
Biotechnology
TP248.13-248.65
Language
English
ISSN
1678-4324
Abstract
Abstract The presented development is an intelligent diagnostic system for transformers that studied machine learning techniques to determine the operational status of these transformers. The study of these techniques is initiated by observing the quantities that define the operational behavior of large transformers, aiming to identify anomalies in their operation from data from sensors that equipment it in the functioning environment. This large power transformer has a theoretical service life of above 20 years and a low failure rate. Thus, obtaining failure values, which have their evolution monitored for large transformers, is almost nil. Therefore, a supervised machine training methodology to diagnose these cases is practically unfeasible. The study carried out with several traditional intelligent techniques can verify this. Several supervised methods (Closest Neighbor K-th Neighbor, Support Vector Machine, Radial Base Function, Decision Trees, Random Forest, Neural Network, AdaBoost, Gaussian Naive Bayes, and Quadratic Discriminant Analysis) were studied.