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Study on hot deformation behavior and recrystallization mechanism of an Al-6.3Zn-2.5Mg-2.6Cu-0.11Zr alloy based on machine learning.

Authors :
Bai, Min
Wu, Xiaodong
Tang, Songbai
Lin, Xiaomin
Yang, Yurong
Cao, Lingfei
Huang, Weijiu
Source :
Journal of Alloys & Compounds. Sep2024, Vol. 1000, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

The data from thermal simulation plays a significant role in understanding the deformation behavior and deformation mechanisms of materials, and provides guidance for the design of hot deformation processes. In this paper, thermal simulation experiments were performed on an Al-6.3Zn-2.5Mg-2.6Cu-0.11Zr alloy, and the microstructure after hot deformation were characterized by Electron Backscatter Diffraction (EBSD) technique. The thermal simulation data and microstructural characteristics were analyzed and studied using machine learning technique: the Backpropagation Artificial Neural Network (BP-ANN) method, correlation analysis and K-means clustering analysis. A model for predicting not only flow stress but also dislocation density was established using the BP-ANN method, which exhibits good prediction accuracy. The R² and AARE values are 90.19 % and 6.87 % for the prediction of dislocation density, and are 98.67 % and 6.96 % for the prediction of flow stress. Subsequently, correlation analysis was performed to investigate the relationship between energy dissipation efficiency η and deformation parameters as well as microstructural characteristics, revealing that energy dissipation rate is correlated positively with the content of dynamical recrystallization (DRX) and high angle grain boundary (coefficients of 0.90 and 0.82) and negatively with the dislocation density and the Zener-Hollomon parameter (coefficients of −0.98 and −0.97). Additionally, K-means clustering analysis was applied to study the relationship between the energy dissipation efficiency and softening mechanisms, it was found that the softening mechanisms changed with the variation of η value, dynamic recovery (DV), geometric DRX (GDRX) and continuous DRX (CDRX) dominated when η >0.38; DV, CDRX and discontinuous DRX(DDRX) dominated when 0.28< η <0.38; DV dominated when η <0.28. The results show that machine learning techniques are useful tools in mining thermal simulation data, and more information can be obtained than traditional data mining methods. • Flow stress and dislocation density of an AlZnMgCu alloy during hot deformation were accurately predicted by a neural network model. • The correlation analysis showed that the energy dissipation efficiency is related with the proportion of DRX. • Relationship between the η value and the deformation softening mechanism was established based on K-means clustering method. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09258388
Volume :
1000
Database :
Academic Search Index
Journal :
Journal of Alloys & Compounds
Publication Type :
Academic Journal
Accession number :
177905877
Full Text :
https://doi.org/10.1016/j.jallcom.2024.175086