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Ensemble pattern trees for predicting hot metal temperature in blast furnace

机译:组合模式树以预测高炉中的铁水温度

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摘要

In steel industry, it is crucial to predict hot metal temperature (HMT), which is strongly related to the product quality and the thermal state, to keep high productivity of the blast furnace. The present work proposes a novel ensemble pattern trees model to predict HMT. Ensemble pattern trees is a robust non-linear modeling method, which aggregates a set of pattern trees models into a single predictive model via the bagging technique. Ensemble pattern trees overcomes the drawback of single pattern trees which may not be robust enough against the random variations such as process perturbations and noises in the blast furnace. In addition, a novel variable importance measure derived from the ensemble pattern trees is proposed to understand which process variables affect the final hot metal quality. The proposed method was validated through an industrial blast furnace ironmaking process, and the results have demonstrated its superiority to several conventional methods. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在钢铁行业中,预测高铁温度(HMT)与高炉产品的生产和质量密切相关,而高铁温度与产品质量和热状态密切相关,这一点至关重要。本工作提出了一种新的集成模式树模型来预测HMT。集成模式树是一种鲁棒的非线性建模方法,它通过装袋技术将一组模式树模型聚合为单个预测模型。集成模式树克服了单个模式树的缺点,这种树可能不足以抵抗随机变量(例如高炉中的过程扰动和噪声)的鲁棒性。此外,提出了一种从整体模式树中得出的新颖的变量重要性度量,以了解哪些过程变量会影响最终的铁水质量。通过工业高炉炼铁工艺对提出的方法进行了验证,结果表明该方法优于几种常规方法。 (C)2018 Elsevier Ltd.保留所有权利。

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