Modeling of decomposition products of supercooled austenite in pipe steels using artificial intelligence methods

Author:

Gafarov M. F.1,Okishev K. Yu.2,Makovetskii A. N.3,Gafarova K. P.4,Gafarova E. A.5

Affiliation:

1. South Ural State University (National Research University); PJSC “ТМК”

2. Ural Federal University named after the first President of Russia B. N. Yeltsin

3. PJSC “ТМК”

4. South Ural State University (National Research University)

5. South Ural State Humanitarian Pedagogical University

Abstract

The process of constructing machine learning models for predicting the microstructure of pipe steels after continuous cooling is shown, including the assembly and preparation of data, the source of which are thermokinetic decay diagrams of supercooled austenite. Statistics of intermediate and final data, as well as algorithms for their trans-formation are presented. Estimates of machine learning models for selected microstructures are considered. A method for generating data in conditions of a small sample and the introduction of an estimated feature of grain size are pro-posed. Validation of the models and interpretation of the significance of the features were carried out. The practical use of models for constructing thermokinetic diagrams of austenite decay and analysis of simulation results is shown.

Publisher

South Ural State University

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