Modeling and simulation of dynamic recrystallization in super austenitic stainless steel employing combined cellular automaton, artificial neural network and finite element method

被引:35
|
作者
Babu, K. Arun [1 ]
Prithiv, T. S. [1 ,2 ]
Gupta, Abhinav [1 ]
Mandal, Sumantra [1 ]
机构
[1] Indian Inst Technol Kharagpur, Dept Met & Mat Engn, Kharagpur 721302, W Bengal, India
[2] Max Planck Inst Eisenforsch GmbH, Max Planck Str 1, D-40237 Dusseldorf, Germany
关键词
Super austenitic stainless steel; Dynamic recrystallization; Cellular automaton; Artificial neural network; FEM; HOT DEFORMATION-BEHAVIOR; STRAIN-RATE; MICROSTRUCTURAL EVOLUTION; PROCESSING MAP; FLOW BEHAVIOR; PLASTIC-FLOW; ALLOY; TEMPERATURE; PREDICT; NICKEL;
D O I
10.1016/j.commatsci.2021.110482
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
A cellular automaton (CA) model for dynamic recrystallization (DRX) is established by employing Moore's neighboring rule to predict flow stress, DRX grain size (DDRX) and DRX fraction (XDRX). The CA model has been optimized for super austenitic stainless steel at different strain rates (0.001-10 s-1) and temperatures (1173-1423 K) under isothermal deformation conditions. The output of the CA simulation has been used for establishing ANN-based constitutive models. The trained ANN-based constitutive models have been further implemented in FEM software (ABAQUS 6.14) to evaluate flow behavior and microstructure response of the alloy under various non-isothermal deformation conditions. The conventional CA (CAC) model has failed to provide a good depiction of the microstructure evolution, as it revealed a very low correlation coefficient (R) for XDRX (R 0.75) and DDRX (R - 0.8). This inaccuracy of the model could be related to its inherent inability to consider the effect of solute drag on grain growth and DRX kinetics. Therefore, a modified cellular automata (CAM) model has been developed by introducing a new temperature-strain rate-dependent mobility parameter for numerically considering the solute drag effect. Employing non-isothermal simulations, the CAM model has revealed a higher correlation coefficient than the CAC model for predicting XDRX (R - 0.95) and DDRX (R - 0.98). Moreover, the developed CAM model has also predicted the flow behavior of the alloy in the entire domain investigated, revealing a higher correlation coefficient (R - 0.987) and a low average absolute relative error (8.6%).
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页数:17
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