The nickel-based superalloys are unique materials with complex alloying used in the manufacture of gas turbine engines. The alloys exhibit excellent resistance to mechanical and chemical degradation under the high loads and long-term isothermal exposures. The main service property of the alloy is its heat resistance, which is expressed by the tensile strength. Simulation of changes in the heat resistance is an important engineering problem, which would significantly simplify the design of new alloys. In this paper, we apply a deep learning neural network to predict the tensile strength values and to compare the predictive ability of the proposed approach. Also, the results are presented of the feed-forward neural network accounting changes in heat resistance vs isothermal exposures that are expressed in the complex Larson-Miller parameter.
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24 November 2020
INTERNATIONAL CONFERENCE OF NUMERICAL ANALYSIS AND APPLIED MATHEMATICS ICNAAM 2019
23–28 September 2019
Rhodes, Greece
Research Article|
November 24 2020
Modeling the heat resistance of nickel-based superalloys by a deep learning neural network
Dmitry A. Tarasov;
Dmitry A. Tarasov
a)
1
Ural Federal University
, Mira str., 19, Ekaterinburg, RUSSIA
620002a)Corresponding author: datarasov@yandex.ru
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Andrey G. Tyagunov;
Andrey G. Tyagunov
b)
1
Ural Federal University
, Mira str., 19, Ekaterinburg, RUSSIA
620002
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Oleg B. Milder
Oleg B. Milder
c)
1
Ural Federal University
, Mira str., 19, Ekaterinburg, RUSSIA
620002
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AIP Conf. Proc. 2293, 140020 (2020)
Citation
Dmitry A. Tarasov, Andrey G. Tyagunov, Oleg B. Milder; Modeling the heat resistance of nickel-based superalloys by a deep learning neural network. AIP Conf. Proc. 24 November 2020; 2293 (1): 140020. https://doi.org/10.1063/5.0026745
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