Litcius/Paper detail

To evaluate the operational status of the transformer load using a feed-forward neural network for analysis

Fazliddin Khojayorov, Anvar Saidkhodjaev

2023E3S Web of Conferences12 citationsDOIOpen Access PDF

Abstract

The results of the first transformer load obtained using the FNN neural network in Fig. 5 determined on the basis of the algorithm described in Fig. 4 show that if the dynamics of transformer loads continue at this rate, after 8 years the minimum loads will increase from 0.8 and after 12 years begins to work in the danger zone completely. Taking into account that the coefficient of wear of transformers and the occurrence of minimum loads is equal to 20% according to Fig. 1, it can be said that this situation is in a very serious situation. And the maximum value of the load has already reached its maximum point. In this case, it is suggested that the issue of load redistribution in this Kibray 35/6 substation and its distribution networks should be seriously considered or a new transformer should be installed and appropriate switching devices should be selected.

Topics & Concepts

TransformerArtificial neural networkDistribution transformerComputer scienceControl theory (sociology)Feed forwardElectrical engineeringEngineeringVoltageControl engineeringArtificial intelligenceControl (management)Power Transformer Diagnostics and InsulationPower Quality and HarmonicsMagnetic Properties and Applications
To evaluate the operational status of the transformer load using a feed-forward neural network for analysis | Litcius