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首页> 外文期刊>IEEE Transactions on Industrial Electronics >Data-Driven Robust RVFLNs Modeling of a Blast Furnace Iron-Making Process Using Cauchy Distribution Weighted M-Estimation
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Data-Driven Robust RVFLNs Modeling of a Blast Furnace Iron-Making Process Using Cauchy Distribution Weighted M-Estimation

机译:基于柯西分布加权M估计的高炉炼铁工艺的数据驱动鲁棒RVFLNs建模

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摘要

Optimal operation of a practical blast furnace (BF) iron-making process depends largely on a good measurement of molten iron quality (MIQ) indices. However, measuring the MIQ online is not feasible using the available techniques. In this paper, a novel data-driven robust modeling is proposed for an online estimation of MIQ using improved random vector functional-link networks (RVFLNs). Since the output weights of traditional RVFLNs are obtained by the least squares approach, a robustness problem may occur when the training dataset is contaminated with outliers. This affects the modeling accuracy of RVFLNs. To solve this problem, a Cauchy distribution weighted M-estimation-based robust RFVLNs are proposed. Since the weights of different outlier data are properly determined by the Cauchy distribution, their corresponding contribution on modeling can be properly distinguished. Thus, robust and better modeling results can be achieved. Moreover, given that the BF is a complex nonlinear system with numerous coupling variables, the data-driven canonical correlation analysis is employed to identify the most influential components from multitudinous factors that affect the MIQ indices to reduce the model dimension. Finally, experiments using industrial data and comparative studies have demonstrated that the obtained model produces a better modeling and estimating accuracy and stronger robustness than other modeling methods.
机译:实际高炉炼铁工艺的最佳运行很大程度上取决于对铁水质量(MIQ)指标的良好测量。但是,使用现有技术在线测量MIQ是不可行的。在本文中,提出了一种新颖的数据驱动的鲁棒建模,用于使用改进的随机矢量功能链接网络(RVFLN)在线估计MIQ。由于传统RVFLN的输出权重是通过最小二乘法获得的,因此当训练数据集被异常值污染时,可能会出现鲁棒性问题。这会影响RVFLN的建模准确性。为了解决这个问题,提出了一种基于柯西分布加权的基于M估计的鲁棒RFVLN。由于不同的离群数据的权重由柯西分布正确确定,因此可以适当地区分它们在建模上的相应贡献。因此,可以获得鲁棒且更好的建模结果。此外,由于BF是一个复杂的非线性系统,具有众多耦合变量,因此采用数据驱动的规范相关分析来从影响MIQ指数的众多因素中找出最具影响力的组成部分,以减少模型维数。最后,利用工业数据进行的实验和比较研究表明,与其他建模方法相比,所获得的模型具有更好的建模和估计精度以及更强的鲁棒性。

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