LAPSE:2023.2674
Published Article

LAPSE:2023.2674
Steelmaking Process Optimised through a Decision Support System Aided by Self-Learning Machine Learning
February 21, 2023
Abstract
This paper presents the application of a reinforcement learning (RL) algorithm, concretely Q-Learning, as the core of a decision support system (DSS) for a steelmaking subprocess, the Composition Adjustment by Sealed Argon-bubbling with Oxygen Blowing (CAS-OB) from the SSAB Raahe steel plant. Since many CAS-OB actions are selected based on operator experience, this research aims to develop a DSS to assist the operator in taking the proper decisions during the process, especially less experienced operators. The DSS is intended to supports the operators in real-time during the process to facilitate their work and optimise the process, improving material and energy efficiency, thus increasing the operation’s sustainability. The objective is that the algorithm learns the process based only on raw data from the CAS-OB historical database, and on rewards set according to the objectives. Finally, the DSS was tested and validated by a developer engineer from the CAS-OB steelmaking plant. The results show that the algorithm successfully learns the process, recommending the same actions as those taken by the operator 69.23% of the time. The algorithm also suggests a better option in 30.76% of the remaining cases. Thanks to the DSS, the heat rejection due to wrong composition is reduced by 4%, and temperature accuracy is increased to 83.33%. These improvements resulted in an estimated reduction of 2% in CO2 emissions, 0.5% in energy consumption and 1.5% in costs. Additionally, actions taken based on the operator’s experience are incorporated into the DSS knowledge, facilitating the integration of operators with lower experience in the process.
This paper presents the application of a reinforcement learning (RL) algorithm, concretely Q-Learning, as the core of a decision support system (DSS) for a steelmaking subprocess, the Composition Adjustment by Sealed Argon-bubbling with Oxygen Blowing (CAS-OB) from the SSAB Raahe steel plant. Since many CAS-OB actions are selected based on operator experience, this research aims to develop a DSS to assist the operator in taking the proper decisions during the process, especially less experienced operators. The DSS is intended to supports the operators in real-time during the process to facilitate their work and optimise the process, improving material and energy efficiency, thus increasing the operation’s sustainability. The objective is that the algorithm learns the process based only on raw data from the CAS-OB historical database, and on rewards set according to the objectives. Finally, the DSS was tested and validated by a developer engineer from the CAS-OB steelmaking plant. The results show that the algorithm successfully learns the process, recommending the same actions as those taken by the operator 69.23% of the time. The algorithm also suggests a better option in 30.76% of the remaining cases. Thanks to the DSS, the heat rejection due to wrong composition is reduced by 4%, and temperature accuracy is increased to 83.33%. These improvements resulted in an estimated reduction of 2% in CO2 emissions, 0.5% in energy consumption and 1.5% in costs. Additionally, actions taken based on the operator’s experience are incorporated into the DSS knowledge, facilitating the integration of operators with lower experience in the process.
Record ID
Keywords
decision-support system, Machine Learning, optimisation algorithm, Q-learning, reinforcement learning, steelmaking process CAS-OB
Subject
Suggested Citation
Andreiana DS, Acevedo Galicia LE, Ollila S, Leyva Guerrero C, Ojeda Roldán Á, Dorado Navas F, del Real Torres A. Steelmaking Process Optimised through a Decision Support System Aided by Self-Learning Machine Learning. (2023). LAPSE:2023.2674
Author Affiliations
Andreiana DS: IDENER, IT Department, 41300 Sevilla, Spain [ORCID]
Acevedo Galicia LE: IDENER, IT Department, 41300 Sevilla, Spain
Ollila S: SSAB Europe Oy, Processes Development Steelmaking, 60100 Seinäjoki, Finland
Leyva Guerrero C: IDENER, IT Department, 41300 Sevilla, Spain
Ojeda Roldán Á: IDENER, IT Department, 41300 Sevilla, Spain
Dorado Navas F: IDENER, IT Department, 41300 Sevilla, Spain
del Real Torres A: IDENER, IT Department, 41300 Sevilla, Spain
Acevedo Galicia LE: IDENER, IT Department, 41300 Sevilla, Spain
Ollila S: SSAB Europe Oy, Processes Development Steelmaking, 60100 Seinäjoki, Finland
Leyva Guerrero C: IDENER, IT Department, 41300 Sevilla, Spain
Ojeda Roldán Á: IDENER, IT Department, 41300 Sevilla, Spain
Dorado Navas F: IDENER, IT Department, 41300 Sevilla, Spain
del Real Torres A: IDENER, IT Department, 41300 Sevilla, Spain
Journal Name
Processes
Volume
10
Issue
3
First Page
434
Year
2022
Publication Date
2022-02-22
ISSN
2227-9717
Version Comments
Original Submission
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PII: pr10030434, Publication Type: Journal Article
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LAPSE:2023.2674
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https://doi.org/10.3390/pr10030434
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Feb 21, 2023
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