Standard
Application of Bayesian Artificial Neural Networks for Modeling the Dependence of Nickel-Based Superalloys' Ultimate Tensile Strength on Their Chemical Composition. /
Tarasov, D.; Milder, O.; Tyagunov , A. Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019. Institute of Electrical and Electronics Engineers Inc., 2019. p. 54-60 9057165 (Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019).
Research output: Chapter in Book/Report/Conference proceeding › Conference contribution › peer-review
Harvard
Tarasov, D, Milder, O & Tyagunov , A 2019,
Application of Bayesian Artificial Neural Networks for Modeling the Dependence of Nickel-Based Superalloys' Ultimate Tensile Strength on Their Chemical Composition. in
Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019., 9057165, Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019, Institute of Electrical and Electronics Engineers Inc., pp. 54-60.
https://doi.org/10.1109/ICCAIRO47923.2019.00018
APA
Tarasov, D., Milder, O., & Tyagunov , A. (2019).
Application of Bayesian Artificial Neural Networks for Modeling the Dependence of Nickel-Based Superalloys' Ultimate Tensile Strength on Their Chemical Composition. In
Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019 (pp. 54-60). [9057165] (Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019). Institute of Electrical and Electronics Engineers Inc..
https://doi.org/10.1109/ICCAIRO47923.2019.00018
Vancouver
Author
Tarasov, D. ; Milder, O. ; Tyagunov , A. /
Application of Bayesian Artificial Neural Networks for Modeling the Dependence of Nickel-Based Superalloys' Ultimate Tensile Strength on Their Chemical Composition. Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019. Institute of Electrical and Electronics Engineers Inc., 2019. pp. 54-60 (Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019).
BibTeX
@inproceedings{15a6b5231dd54fce9dc9384206fe9075,
title = "Application of Bayesian Artificial Neural Networks for Modeling the Dependence of Nickel-Based Superalloys' Ultimate Tensile Strength on Their Chemical Composition",
abstract = "Nickel-based superalloys are unique high-temperature materials with complex doping, used, in particular, in gas-turbine engines. These materials exhibit excellent resistance to mechanical and chemical degradation. The main service property of the alloy is its heat resistance, which is expressed, in particular, by the ultimate tensile strength (UTS). When determining the service life of a superalloy product, the developers investigate only certain combinations of temperature parameters and exposure time. The availability of data on the properties of alloys over the entire range of temperatures and time exposures would greatly expand the possibilities of alloys application and would allow more accurate assessment and comparison of alloys. We applied the Bayesian regularized artificial neural network to simulate the missing UTS values for more than 300 well-known superalloys. Network input parameters are the chemical composition and tensile test conditions. Special data pre-processing and a developed learning algorithm significantly reduced the model prediction error. Comparison of the predicted and experimental data showed excellent convergence. A model check was performed on a test data set (10 alloys), which was combined from samples that were not involved in network training.",
keywords = "Artificial neural networks, BRANN, Larson-Miller parameter, Nickel-based superalloys, Simulation, Ultimate tensile strength",
author = "D. Tarasov and O. Milder and A. Tyagunov",
year = "2019",
month = may,
doi = "10.1109/ICCAIRO47923.2019.00018",
language = "English",
isbn = "978-172813572-4",
series = "Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "54--60",
booktitle = "Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019",
address = "United States",
}
RIS
TY - GEN
T1 - Application of Bayesian Artificial Neural Networks for Modeling the Dependence of Nickel-Based Superalloys' Ultimate Tensile Strength on Their Chemical Composition
AU - Tarasov, D.
AU - Milder, O.
AU - Tyagunov , A.
PY - 2019/5
Y1 - 2019/5
N2 - Nickel-based superalloys are unique high-temperature materials with complex doping, used, in particular, in gas-turbine engines. These materials exhibit excellent resistance to mechanical and chemical degradation. The main service property of the alloy is its heat resistance, which is expressed, in particular, by the ultimate tensile strength (UTS). When determining the service life of a superalloy product, the developers investigate only certain combinations of temperature parameters and exposure time. The availability of data on the properties of alloys over the entire range of temperatures and time exposures would greatly expand the possibilities of alloys application and would allow more accurate assessment and comparison of alloys. We applied the Bayesian regularized artificial neural network to simulate the missing UTS values for more than 300 well-known superalloys. Network input parameters are the chemical composition and tensile test conditions. Special data pre-processing and a developed learning algorithm significantly reduced the model prediction error. Comparison of the predicted and experimental data showed excellent convergence. A model check was performed on a test data set (10 alloys), which was combined from samples that were not involved in network training.
AB - Nickel-based superalloys are unique high-temperature materials with complex doping, used, in particular, in gas-turbine engines. These materials exhibit excellent resistance to mechanical and chemical degradation. The main service property of the alloy is its heat resistance, which is expressed, in particular, by the ultimate tensile strength (UTS). When determining the service life of a superalloy product, the developers investigate only certain combinations of temperature parameters and exposure time. The availability of data on the properties of alloys over the entire range of temperatures and time exposures would greatly expand the possibilities of alloys application and would allow more accurate assessment and comparison of alloys. We applied the Bayesian regularized artificial neural network to simulate the missing UTS values for more than 300 well-known superalloys. Network input parameters are the chemical composition and tensile test conditions. Special data pre-processing and a developed learning algorithm significantly reduced the model prediction error. Comparison of the predicted and experimental data showed excellent convergence. A model check was performed on a test data set (10 alloys), which was combined from samples that were not involved in network training.
KW - Artificial neural networks
KW - BRANN
KW - Larson-Miller parameter
KW - Nickel-based superalloys
KW - Simulation
KW - Ultimate tensile strength
UR - http://www.scopus.com/inward/record.url?scp=85083657607&partnerID=8YFLogxK
U2 - 10.1109/ICCAIRO47923.2019.00018
DO - 10.1109/ICCAIRO47923.2019.00018
M3 - Conference contribution
AN - SCOPUS:85083657607
SN - 978-172813572-4
T3 - Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019
SP - 54
EP - 60
BT - Proceedings - 2019 3rd International Conference on Control, Artificial Intelligence, Robotics and Optimization, ICCAIRO 2019
PB - Institute of Electrical and Electronics Engineers Inc.
ER -