E3S Web of Conferences (Jan 2023)

Selection of pre-training parameters for synthesizing surrogate models of gas turbine units for gas turbine electro power stations

  • Kilin Grigory,
  • Kavalerov Boris,
  • Suslov Artem,
  • Tyatenkov Ilya

DOI
https://doi.org/10.1051/e3sconf/202341101006
Journal volume & issue
Vol. 411
p. 01006

Abstract

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The article is devoted to the current task of selecting pre-training parameters for the synthesis of surrogate models, which is a key factor in creating high-performance models of complex technological objects. During the study, the authors conduct a systematic analysis of various parameters and their interactions, including determining the optimal number of training iterations, the number of trainable layers, and the number of neurons in these layers. Thanks to this approach, the results of the presented study can significantly improve the accuracy and efficiency of surrogate models, which in turn leads to simplification and acceleration of the process of their development and application in various fields of science and engineering.