Virtual Sensor for Estimating the Strain-Hardening Rate of Austenitic Stainless Steels Using a Machine Learning Approach

Author:

Contreras-Fortes Julia12ORCID,Rodríguez-García M. Inmaculada3ORCID,Sales David L.2ORCID,Sánchez-Miranda Rocío1,Almagro Juan F.1,Turias Ignacio3ORCID

Affiliation:

1. Laboratory and Research Section, Technical Department Acerinox Europa S.A.U., 11379 Los Barrios, Spain

2. INNANOMAT, IMEYMAT, Department of Materials Science Metallurgical Engineering and Inorganic Chemistry, Algeciras School of Engineering and Technology, Universidad de Cádiz, Ramón Puyol, Avda., 11202 Algeciras, Spain

3. MIS Group, Department of Computer Science Engineering, Algeciras School of Engineering and Technology, Universidad de Cádiz, Ramón Puyol, Avda., 11202 Algeciras, Spain

Abstract

This study introduces a Multiple Linear Regression (MLR) model that functions as a virtual sensor for estimating the strain-hardening rate of austenitic stainless steels, represented by the Hardening Rate of Hot rolled and annealed Stainless steel sheet (HRHS) parameter. The model correlates tensile strength (Rm) with cold thickness reduction and chemical composition, evidencing a robust linear relationship with an R-coefficient above 0.9800 for most samples. Key variables influencing the HRHS value include Cr, Mo, Si, Ni, and Nb, with the MLR model achieving a correlation coefficient of 0.9983. The Leave-One-Out Cross-Validation confirms the model’s generalization for test examples, consistently yielding high R-values and low mean squared errors. Additionally, a simplified HRHS version is proposed for instances where complete chemical analyses are not feasible, offering a practical alternative with minimal error increase. The research demonstrates the potential of linear regression as a virtual sensor linking cold strain hardening to chemical composition, providing a cost-effective tool for assessing strain hardening behaviour across various austenitic grades. The HRHS parameter significantly aids in the understanding and optimization of steel behaviour during cold forming, offering valuable insights for the design of new steel grades and processing conditions.

Publisher

MDPI AG

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