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Endpoint Temperature Prediction model for LD Converters Using Machine-Learning Techniques

机译:使用机器学习技术的LD转换器的端点温度预测模型

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摘要

LD converters are used to improve the quality of melted pig iron. In particular, LD converters inject pure oxygen into hot metal in order to remove impurities via oxidation-reduction reactions. The changes in temperature caused by this redox process can lead to changes in the composition of the iron. Therefore, it is necessary to determine the proper amount of oxygen that would produce the desired composition. This paper provides a machine-learning algorithm for predicting the endpoint temperature of molten steel in a converter and shows relevant simulation results by comparing them with the real operating temperatures. In particular, we introduce a gradient boosting-based decision tree algorithm, a suitable pre-processing method for the data, and an ensemble learning method for several machine-learning models. We also discuss our future work on fringe cases in steel-making processes, which might pose problems for the algorithm to learn to predict accurately.
机译:LD转换器用于改善生铁的质量。尤其是,LD转换器将纯氧注入铁水中,以便通过氧化还原反应去除杂质。由氧化还原过程引起的温度变化会导致铁成分的变化。因此,有必要确定将产生所需组成的氧气的适当量。本文提供了一种用于预测转炉中钢水终点温度的机器学习算法,并通过将其与实际工作温度进行比较来显示相关的模拟结果。特别是,我们介绍了一种基于梯度提升的决策树算法,一种适用于数据的预处理方法以及一种适用于多种机器学习模型的整体学习方法。我们还将讨论我们在炼钢过程中边缘情况下的未来工作,这可能会给算法学习准确预测带来问题。

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