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首页> 外文期刊>Information Sciences: An International Journal >Multivariable dynamic modeling for molten iron quality using online sequential random vector functional-link networks with self-feedback connections
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Multivariable dynamic modeling for molten iron quality using online sequential random vector functional-link networks with self-feedback connections

机译:使用具有自反馈连接的在线顺序随机矢量功能链接网络对铁水质量进行多变量动态建模

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摘要

This paper presents a data-driven dynamic modeling method for the multivariate prediction of molten iron quality (MIQ) in a blast furnace (BF) using online sequential random vector functional-link networks (OS-RVFLNs) with the help of principal component analysis (PCA). At first, a data-driven PCA is employed to identify the most influential components from multitudinous factors that affect MIQ so as to reduce the model dimension. Secondly, a dynamic OS-RVFLNs modeling technology with fast learning and strong nonlinear mapping capability is proposed by applying the output self-feedback structure to the traditional OS-RVFLNs. Since it has been shown that such a dynamic modeling method has the ability to store and handle input-output data at different time scales, the dynamic OS-RVFLNs based MIQ prediction model has exhibited the potential for multivariable nonlinear mapping and the adaptability to dynamic time-varying process. Finally, some industrial experiments and comparative studies have been carried out on the 2# BF in Liuzhou Iron & Steel Group Co. of China using the proposed method, where it has been demonstrated that the constructed model produces a better modeling and estimating accuracy and has faster learning speed than other conventional MIQ modeling methods. (C) 2015 Elsevier Inc. All rights reserved.
机译:本文提出了一种数据驱动的动态建模方法,该方法利用在线顺序随机矢量功能链接网络(OS-RVFLNs)借助主成分分析来对高炉(BF)中的铁水质量(MIQ)进行多变量预测( PCA)。首先,采用数据驱动的PCA从影响MIQ的众多因素中找出最有影响力的组件,从而减小模型尺寸。其次,通过将输出自反馈结构应用于传统的OS-RVFLN,提出了一种具有快速学习和强大的非线性映射能力的动态OS-RVFLNs建模技术。由于已经表明这种动态建模方法具有在不同时间尺度上存储和处理输入输出数据的能力,因此基于动态OS-RVFLNs的MIQ预测模型展现出了多变量非线性映射的潜力以及对动态时间的适应性。不断变化的过程。最后,利用所提出的方法对中国柳州钢铁集团公司的2#高炉进行了一些工业实验和比较研究,结果表明所构建的模型具有较好的建模和估计精度,并且具有一定的实用价值。比其他常规MIQ建模方法更快的学习速度。 (C)2015 Elsevier Inc.保留所有权利。

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