Physical and chemical calculations of steelmaking processes and predictive models for the production of clean steel

S. A. Botnikov
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Abstract

The results of physicochemical calculations of steelmaking processes for the production of clean steels deoxidized with aluminum are presented. The efficiency of the calculations was achieved using as the main scientific idea the position on the leading role of the oxidation potential in the metal – slag – gas system, while controlling the external supply of oxygen from the atmosphere, materials, slag and refractories. The advantage of this idea lies in the fact that thanks to it it provides a quick identification of critical points in developed and existing technologies, and determines effective ways to solve emerging quality problems in clean and ultra-clean steels. An approach is considered to improve the technology of clean steel production, including elements of mathematical and thermodynamic models, as well as algorithmic approaches for building static models using machine learning technology to improve efficiency in steelmaking technologies. For the application of the presented approach it is necessary to prepare the data set before-hand, as well as to carry out the interpretation of the results of machine learning, based on fundamental laws and physical and chemical processes occurring in steelmaking production. As a result of the thermodynamic calculations performed in the STM program, measures were developed for the production of clean steels. On the examples of the production of thin slabs and billets search and confirmation of significant technological parameters in the formation of steel-making defects due to non-metallic inclusions was carried out using methods of in-depth analytics and machine learning
炼钢工艺的物理和化学计算以及洁净钢生产的预测模型
本文介绍了生产铝脱氧洁净钢的炼钢工艺的物理化学计算结果。计算的效率是以金属-熔渣-气体系统中氧化潜能的主导作用为主要科学思想,同时控制来自大气、材料、熔渣和耐火材料的外部氧气供应。这一想法的优势在于它能快速识别已开发和现有技术中的关键点,并确定解决洁净钢和超净钢中新出现的质量问题的有效方法。我们考虑采用一种方法来改进洁净钢生产技术,包括数学和热力学模型要素,以及利用机器学习技术建立静态模型的算法方法,以提高炼钢技术的效率。为了应用所介绍的方法,有必要事先准备好数据集,并根据炼钢生产中出现的基本规律和物理化学过程,对机器学习的结果进行解释。在 STM 程序中进行热力学计算的结果是,制定了生产清洁钢材的措施。在生产薄板坯和钢坯的实例中,使用深度分析和机器学习方法搜索并确认了因非金属夹杂物而形成炼钢缺陷的重要技术参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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