System Identification of Blast Furnace Processes with Genetic Programming

G. Kronberger, C. Feilmayr, M. Kommenda, Stephan M. Winkler, M. Affenzeller, T. Burgler
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引用次数: 7

Abstract

The blast furnace process is the most common form of iron ore reduction. The physical and chemical reactions in the blast furnace process are well understood on a high level of abstraction, but many more subtle inter-relationships between injected reducing agents, burden composition, heat loss in defined wall areas of the furnace, inhomogeneous burden movement, scaffolding, top gas composition, and the effect on the produced hot metal (molten iron) or slag are not totally understood. This paper details the application of data-based modeling methods: linear regression, support vector regression, and symbolic regression with genetic programming to create linear and non-linear models describing different aspects of the blast furnace process. Three variables of interest in the blast furnace process are modeled: the melting rate of the blast furnace (tons of produced hot metal per hour), the specific amount of oxygen per ton of hot metal, and the carbon content in the hot metal. The melting rate is largely determined by the qualities of the hot blast (in particular the amount of oxygen in the hot blast). Melting rate can be described accurately with linear models if data of the hot blast are available. Prediction of the required amount of oxygen per ton of hot metal and the carbon content in the hot metal is more difficult and requires non-linear models in order to achieve satisfactory accuracy.
基于遗传规划的高炉过程系统辨识
高炉工艺是铁矿石还原最常见的形式。高炉过程中的物理和化学反应在高层次的抽象上得到了很好的理解,但是在注入还原剂、炉料成分、炉壁特定区域的热损失、炉料不均匀运动、脚手架、顶部气体成分以及对产生的热金属(铁水)或炉渣的影响之间的许多更微妙的相互关系还没有完全理解。本文详细介绍了基于数据的建模方法的应用:线性回归、支持向量回归和符号回归与遗传规划来创建描述高炉过程不同方面的线性和非线性模型。在高炉过程中,三个感兴趣的变量被建模:高炉的熔化速度(每小时生产的金属热吨),每吨金属热的氧的具体量,以及金属热中的碳含量。熔化速度在很大程度上取决于热风的质量(特别是热风中的氧含量)。如果有热风数据,可以用线性模型准确地描述熔化速率。预测每吨铁水所需的氧气量和铁水中的碳含量更加困难,并且需要非线性模型才能达到令人满意的精度。
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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