
Predicting solidification cracking susceptibility of stainless steels using machine learning
Author(s) -
Shuo Feng,
Hongbiao Dong
Publication year - 2020
Publication title -
iop conference series. materials science and engineering
Language(s) - English
Resource type - Journals
eISSN - 1757-899X
pISSN - 1757-8981
DOI - 10.1088/1757-899x/861/1/012073
Subject(s) - interpretability , artificial neural network , artificial intelligence , cracking , machine learning , decision tree , set (abstract data type) , tree (set theory) , computer science , materials science , mathematics , composite material , mathematical analysis , programming language
Machine learning, which reveals the complex nonlinear relationship in the archived data, is a powerful complement to theory, experiment, and modeling. In this study we attempted to predict solidification cracking susceptibility of stainless steels as a function of chemistry and processing parameters using machine learning with a data set that contains about 600 longitudinal varestraint test results. Four machine learning models, i.e. decision tree, random forest, shallow neural network and deep neural network, were used to mine the data set. Our results show: deep neural network outperformed other models in prediction accuracy; tree-based models have accepted accuracy and better interpretability than neural network; machine learning models transforms scattered experimental data points into a map in high-dimensional chemistry and processing parameters space. The combination of different machine learning models reveals that the solidification cracking susceptibility of stainless steels was mainly determined by the ratio of Ni content to Cr content, impurity element content and the strain level.