基于机器学习的炼铁高炉自动化回归模型

Ricardo A. Calix, Orlando Ugarte, Tyamo Okosun, Hong Wang
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引用次数: 0

摘要

基于计算流体动力学(CFD)的仿真一直是复杂工业系统和过程建模的传统方法。一个非常庞大和复杂的工业系统受益于基于cfd的模拟是钢铁高炉系统。基于cfd的模拟方法的问题在于它生成数据的速度非常慢。仅使用差价合约的方法可能不够快,无法用于实时决策。为了解决这个问题,在这项工作中,作者建议使用机器学习技术来训练和测试基于CFD模拟生成的数据的模型。将基于神经网络的回归模型与树助推模型进行了比较。特别地,用这些方法对高炉的几个区域(风口、滚道和轴)进行了建模。给出了模型训练和测试的结果并进行了讨论。通常,得到的R2度量是非常高的。研究结果对提高高炉运行时操作人员和工艺工程师的决策效率具有一定的指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning-Based Regression Models for Ironmaking Blast Furnace Automation
Computational fluid dynamics (CFD)-based simulation has been the traditional way to model complex industrial systems and processes. One very large and complex industrial system that has benefited from CFD-based simulations is the steel blast furnace system. The problem with the CFD-based simulation approach is that it tends to be very slow for generating data. The CFD-only approach may not be fast enough for use in real-time decisionmaking. To address this issue, in this work, the authors propose the use of machine learning techniques to train and test models based on data generated via CFD simulation. Regression models based on neural networks are compared with tree-boosting models. In particular, several areas (tuyere, raceway, and shaft) of the blast furnace are modeled using these approaches. The results of the model training and testing are presented and discussed. The obtained R2 metrics are, in general, very high. The results appear promising and may help to improve the efficiency of operator and process engineer decisionmaking when running a blast furnace.
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