An interpretation of neural networks as inference engines with application to transformer failure diagnosis

An artificial neural network concept has been developed for transformer fault diagnosis using dissolved gas-in-oil analysis (DGA). A new methodology for mapping the neural network into a rule-based inference system is described. This mapping makes explicit the knowledge implicitly captured by the neural network during the learning stage, by transforming it into a fuzzy inference system. Some studies are reported, illustrating the good results obtained.