ABSTRACT
Continuous cooling transformation (CCT) diagram is an indispensable tool for new product development in the steel industry and it is traditionally plotted via extensive thermomechanical studies. To reduce the cycle time of product development, a machine-learning model to predict the CCT of a new grade (chemistry and processing parameters) has been developed in this work. The idea is to have a holistic predictive model suitable for integrated steel manufacturing plant, instead of having many models for different class of material compositions. A wide range of data set is prepared to this effect and explored with multiple regression-based machine-learning models. Light Gradient Boosting Machine (LGBM) demonstrates exceptional results amongst the rest, and it is topped off with a metallurgical constraint/correction-factor to obtain the final model. The model is validated against test data as well as against some well-established metallurgical correlations and is found to perform fairly well.
Acknowledgments
We acknowledge the facilities rendered by Tata Steel R&D in carrying out this work. We are grateful to Dr Sujoy Biswas and Swami Swathy Prabhu Maharaj (RKMVERI, Howrah) for their guidance during the course of the project.
Disclosure statement
No potential conflict of interest was reported by the author(s).