ProgramMaster Logo
Conference Tools for 2025 TMS Annual Meeting & Exhibition
Login
Register as a New User
Help
Submit An Abstract
Propose A Symposium
Presenter/Author Tools
Organizer/Editor Tools
About this Abstract
Meeting 2025 TMS Annual Meeting & Exhibition
Symposium REWAS 2025: Automation and Digitalization in Recycling Processes
Presentation Title Controlling Minor Element Phosphorus in Green Electric Steelmaking Using Neural Networks
Author(s) Elmira Moosavi, Riadh Azzaz, Valentin Hurel, Mohammad Jahazi, Samira Ebrahimi Kahou
On-Site Speaker (Planned) Elmira Moosavi
Abstract Scope The scrap-based electric arc furnace (EAF) is pivotal in sustainable steelmaking by recycling steel and minimizing raw material extraction. The precise control of phosphorus, a critical impurity affecting steel quality, remains a significant challenge in the industry. This work details the development of an advanced artificial neural network (ANN) model designed to predict the final phosphorus content of steel based on the operational parameters within an EAF. This model leverages systematic data integration and rigorous model validation, demonstrating superior predictive accuracy compared to existing models. Inherent model limitations will also be addressed and future research directions aimed at further enhancing predictive capabilities and expanding the applicability of the proposed approach in steelmaking context will be presented. Industrial implementation of the model will be discussed, highlighting opportunities to optimize EAF operations for improved green steel quality.
Proceedings Inclusion? Planned:
Keywords Iron and Steel, Machine Learning, Recycling and Secondary Recovery

OTHER PAPERS PLANNED FOR THIS SYMPOSIUM

AI Assistance to Global Mineral Resource Analysis and Visualization
Controlling Minor Element Phosphorus in Green Electric Steelmaking Using Neural Networks
Insights to Rare Earth Element Separation and Recovery through Molecular Dynamics Modeling
Metal Extraction Informatics: A Conceptual Framework for Sustainable Metals Extraction
Optimizing Secondary Steel Production by Copper Contaminant Removal Using Artificial Intelligence
Thermodynamic-Based Process Simulation Coupled to Life Cycle Analysis: Exploring Pyrometallurgical Processes to Recycle End-of-Life Products

Questions about ProgramMaster? Contact programming@programmaster.org