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.

1.
V.P.
Kuznetsov
,
V.P.
Lesnikov
, and
N.A.
Popov
, “
Structure and properties of single-crystal high-temperature nickel alloy
”,
UrFU
,
2004
,
160
p. (In Russian).
2.
R.C.
Reed
“The Superalloys. Fundamentals and Applicatios
”,
Cambridge University Press
(
2006
),
372
p.
3.
S.O.
Haykin
“Neural Networks and Learning Machines
”, 3rd ed,
McMaster University
,
Ontario Canada
(
2009
).
906
p.
4.
Y.S.
Yoo
,
I.S.
Kim
,
D.H.
Kim
,
C.Y.
Jo
,
H.M.
Kim
,
C.N.
Jone
“The application of neural network to the development of single crystal superalloys, in
Superalloys
,. Ed. by
K.A.
Green
(
T.M.
Pollock
,
H.
Harada
,
T.E.
Howson
,
R.C.
Reed
,
J.J.
Schirra
, and
S
,
Walston
TMS
(
The Minerals, Metals & Materials Society
,
2004
).
5.
O.S.
Nurgayanova
and
A.A.
Ganeev
,
Polzunovsky almanac
3
,
22
26
(
2006
). (In Russian).
6.
F.
Burden
,
D.
Winkler
“Bayesian Regularization of Neural Networks” in
Artificial Neural Networks. Methods in Molecular Biology
,
458
.
Livingstone
D.J.
(eds),
Humana Press
(
2008
)
7.
A.
Tyagunov
,
O.
Milder
,
D.
Tarasov
Application of Artificial Neural Networks for Prediction of Nickel-based Superalloys Service Properties Based on the Chemical Composition
” in
WSEAS Transactions on Environment and Development
15
(
2019
), pp.
113
119
.
This content is only available via PDF.
You do not currently have access to this content.