Comparison of Recurrent Neural Networks on Dry-type Transformer Thermal Models under Various Conditions
Conference proceedings article
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Author list: Junlaphat Jarasureechai, Chanantorn Sophon, Chankit Promrat, Ekkachai Mujjalinvimut, Piyasawat Navaratana Na Ayudhya, Tirasak Sapaklom, Jakkrit Kunthong
Publication year: 2024
Start page: 3146
End page: 3151
Number of pages: 6
Abstract
The rising of Electric Vehicles (EV) can enormously affect transformers, which are major
components of power systems. Non-linear loads cause significant number of harmonic components and additional losses in transformers. The rising hot-spot transformer temperature also increases along with the losses. Thermal condition monitoring applied to the transformers can prevent the transformer overheating and failure in the power systems. In this work, thermal models for hot-spot temperature prediction are implemented based on the Recurrent Neural Network (RNN) with an experimental time-series dataset. The RNN has ability to learn thermal characteristics of dry-type transformers.
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