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碳材料热物理性质预测模型的开发及基于该模型的制造条件建议

Development of a Model for Predicting the Thermophysical Properties of Carbon Materials and Proposal of Manufacturing Conditions Using the Model.

作者信息

Matsubara Masayoshi, Sasaki Ryo, Takahara Jun P, Moritake Shinji, Harada Yasuyuki, Kaneko Hiromasa

机构信息

Department of Applied Chemistry School of Science and Technology Kanagawa Japan.

Mitsubishi Chemical Corporation Tokyo Japan.

出版信息

Anal Sci Adv. 2025 Jul 30;6(2):e70031. doi: 10.1002/ansa.70031. eCollection 2025 Dec.

Abstract

A steelmaking method using electric furnaces is attracting attention in the iron and steel industry, and a carbon material called needle coke is used as an aggregate for the electrode in electric steelmaking. The performance of needle coke as an aggregate for electrodes in steelmaking is greatly affected by the quality of the needle coke, which depends on the ingredients of the raw materials and the process conditions. Because the raw material ingredients are not always constant and depend on the place and time they are produced, the quality of the needle coke is not stable under the same process conditions. Therefore, it is necessary to optimise the process conditions. In this study, to optimise the process conditions using machine learning, a model was constructed to predict the thermophysical properties of needle coke from the raw material ingredients and process conditions based on previous data. Because the subject plant is operated in a dynamic process and there is a time delay in the previous data, the genetic-algorithm-based process variables and dynamics selection method, which selects the time delays and process variable regionally, was studied. Furthermore, inverse analysis was performed on a sample whose quality was considered to be outside the specifications based on the previous data, with the aim of controlling the quality within the product specifications by changing only the process conditions.

摘要

一种使用电炉的炼钢方法在钢铁行业中备受关注,一种名为针状焦的碳材料被用作电炉炼钢电极的骨料。针状焦作为炼钢电极骨料的性能受到针状焦质量的极大影响,而针状焦质量取决于原材料成分和工艺条件。由于原材料成分并非始终恒定,且取决于其生产的地点和时间,在相同工艺条件下针状焦的质量不稳定。因此,有必要优化工艺条件。在本研究中,为了使用机器学习优化工艺条件,基于先前数据构建了一个模型,用于从原材料成分和工艺条件预测针状焦的热物理性质。由于目标工厂在动态过程中运行,且先前数据存在时间延迟,研究了基于遗传算法的过程变量和动力学选择方法,该方法可局部选择时间延迟和过程变量。此外,基于先前数据对质量被认为超出规格的样品进行了逆分析,目的是仅通过改变工艺条件将质量控制在产品规格范围内。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4563/12310388/044a4f90d430/ANSA-6-e70031-g002.jpg

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