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Robust stochastic configuration network multi-output modeling of molten iron quality in blast furnace ironmaking

机译:高炉炼铁中铁水质量的鲁棒随机配置网络多输出建模

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Blast furnace ironmaking (BFI) is currently the most widely used method of pig iron smelting. In order to achieve efficient and reasonable control, how to quickly and accurately obtain the molten iron quality (MIQ) model is a key issue. Aiming at this problem, this paper applies robust stochastic configuration networks (RSCNs) based on kernel density estimation (KDE) into the BFI modeling to obtain the MIQ model with good modeling accuracy and strong robustness quickly and effectively. Firstly, the network model is incrementally constructed by adding neurons one by one using the conventional SCNs algorithm. Secondly, in order to solve the problem of insufficient robustness of conventional SCNs, kernel density estimation algorithm is introduced to obtain the corresponding probability density estimates of each training set, and it's used as the penalty weight introduced into constructing process of conventional SCNs. At the same time, the network output weight is obtained by an improved method to solve the problem that the output weight of the conventional RSCNs is abnormal in the multi-output modeling application. Finally, modeling experiments based on actual industrial data of BFI production verified that RSCNs can achieve good modeling accuracy and strong robust performance. (C) 2020 Elsevier B.V. All rights reserved.
机译:高炉炼铁(BFI)是目前使用最广泛的生铁冶炼方法。为了实现高效合理的控制,如何快速,准确地获得铁水质量(MIQ)模型是一个关键问题。针对这一问题,本文将基于核密度估计(KDE)的鲁棒随机配置网络(RSCN)应用于BFI建模中,从而快速有效地获得了具有良好建模精度和强大鲁棒性的MIQ模型。首先,通过使用常规SCNs算法一个接一个地添加神经元来逐步构建网络模型。其次,为了解决常规SCNs鲁棒性不足的问题,引入核密度估计算法来获得各训练集的对应概率密度估计,并将其作为惩罚权重引入常规SCNs的构建过程中。同时,通过改进的方法获得网络输出权重,以解决传统的RSCN在多输出建模应用中的输出权重异常的问题。最后,基于BFI生产的实际工业数据的建模实验证明,RSCN可以实现良好的建模精度和强大的鲁棒性能。 (C)2020 Elsevier B.V.保留所有权利。

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