Constitutive Models for the Prediction of the Hot Deformation Behavior of the 10%Cr Steel Alloy

被引:39
作者
Shokry, Abdallah [1 ]
Gowid, Samer [2 ]
Kharmanda, Ghias [3 ]
Mahdi, Elsadig [2 ]
机构
[1] Fayoum Univ, Dept Mech Engn, Al Fayyum 63514, Egypt
[2] Qatar Univ, Coll Engn, Dept Mech & Ind Engn, Doha 2713, Qatar
[3] INSA Rouen, Mech Lab Normandy, F-76131 Rouen, France
关键词
10%Cr steel alloy; hot deformation; Johnson-Cook model; strain-compensated Arrhenius model; artificial neural network; MODIFIED JOHNSON-COOK; TEMPERATURE FLOW BEHAVIOR; ARRHENIUS-TYPE; STRAIN RATES; LAVES PHASE; X12CRMOWVNBN10-1-1; SIMULATION; PARAMETERS; STRESS;
D O I
10.3390/ma12182873
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
The aim of this paper is to establish a reliable model that provides the best fit to the specific behavior of the flow stresses of the 10%Cr steel alloy at the time of hot deformation. Modified Johnson-Cook and strain-compensated Arrhenius-type (phenomenological models), in addition to two Artificial Neural Network (ANN) models were established with the view toward investigating their stress prediction performances. The ANN models were trained using Scaled Conjugate Gradient (SCG) and Levenberg-Marquardt (LM) algorithms. The prediction accuracy of the established models was evaluated using the following well-known statistical parameters: (a) correlation coefficient (R), (b) Average Absolute Relative Error (AARE), (c) Root Mean Squared Error (RMSE), and Relative Error (RE). The results showed that both of the modified Johnson-Cook and strain-compensated Arrhenius models could not competently predict the flow behavior. On the contrary, the results indicated that the two proposed ANN models precisely predicted the flow stress values and that the LM-trained ANN provided a superior performance over the SCG-trained model, as it yielded an RMSE of as low as 0.441 MPa.
引用
收藏
页数:18
相关论文
共 46 条
[1]   h Research and Development of Heat-Resistant Materials for Advanced USC Power Plants with Steam Temperatures of 700 °C and Above [J].
Abe, Fujio .
ENGINEERING, 2015, 1 (02) :211-224
[2]   A comparative study on the phenomenological and artificial neural network models to predict hot deformation behavior of AlCuMgPb alloy [J].
Ashtiani, H. R. Rezaei ;
Shahsavari, P. .
JOURNAL OF ALLOYS AND COMPOUNDS, 2016, 687 :263-273
[3]   Creep rupture strength of tungsten-alloyed 9-12% Cr steels for piping in power plants [J].
Bendick, W ;
Ring, M .
STEEL RESEARCH, 1996, 67 (09) :382-385
[4]   Determination and verification of Johnson-Cook model parameters at high-speed deformation of titanium alloys [J].
Buzyurkin, A. E. ;
Gladky, I. L. ;
Kraus, E. I. .
AEROSPACE SCIENCE AND TECHNOLOGY, 2015, 45 :121-127
[5]   Hot deformation behavior and constitutive modeling of homogenized 6026 aluminum alloy [J].
Chen, Liang ;
Zhao, Guoqun ;
Yu, Junquan .
MATERIALS & DESIGN, 2015, 74 :25-35
[6]  
Christodoulou C., 2000, APPL NEURAL NETWORKS
[7]   Precipitation behavior of Laves phase in 10%Cr steel X12CrMoWVNbN10-1-1 during short-term creep exposure [J].
Cui, Huiran ;
Sun, Feng ;
Chen, Ke ;
Zhang, Lanting ;
Wan, Rongchun ;
Shan, Aidang ;
Wu, Jiansheng .
MATERIALS SCIENCE AND ENGINEERING A-STRUCTURAL MATERIALS PROPERTIES MICROSTRUCTURE AND PROCESSING, 2010, 527 (29-30) :7505-7509
[8]   Performance Comparison Between Fast Fourier Transform-Based Segmentation, Feature Selection, and Fault Identification Algorithm and Neural Network for the Condition Monitoring of Centrifugal Equipment [J].
Gowid, Samer ;
Dixon, Roger ;
Ghani, Saud .
JOURNAL OF DYNAMIC SYSTEMS MEASUREMENT AND CONTROL-TRANSACTIONS OF THE ASME, 2017, 139 (06)
[9]   Artificial neural network modeling to predict the hot deformation behavior of an A356 aluminum alloy [J].
Haghdadi, N. ;
Zarei-Hanzaki, A. ;
Khalesian, A. R. ;
Abedi, H. R. .
MATERIALS & DESIGN, 2013, 49 :386-391
[10]   A comparative study on constitutive relationship of as-cast 904L austenitic stainless steel during hot deformation based on Arrhenius-type and artificial neural network models [J].
Han, Ying ;
Qiao, Guanjun ;
Sun, JiaPeng ;
Zou, Dening .
COMPUTATIONAL MATERIALS SCIENCE, 2013, 67 :93-103