4.6 Article

Data-driven recursive subspace identification based online modelling for prediction and control of molten iron quality in blast furnace ironmaking

期刊

IET CONTROL THEORY AND APPLICATIONS
卷 11, 期 14, 页码 2343-2351

出版社

INST ENGINEERING TECHNOLOGY-IET
DOI: 10.1049/iet-cta.2016.1474

关键词

blast furnaces; iron; predictive control; metallurgical industries; multivariable control systems; quality control; correlation methods; recursive estimation; matrix algebra; computational complexity; control system synthesis; MIQ prediction model; predictive controller design; computational complexity; data-driven input-output model; subspace matrices; SI modelling; forgetting factor; R-SI-based online modelling; recursive subspace identification; multitudinous factors; correlation analysis; canonical correlation analysis; data-driven hybrid method; multivariate MIQ indices control; online prediction; metallurgic automation; metallurgic engineering; silicon content; molten iron temperature; blast furnace ironmaking; molten iron quality prediction; molten iron quality control; data-driven recursive subspace identification based online modelling

资金

  1. National Natural Science Foundation of China [61290323, 61473064, 61290321, 61621004]
  2. Research Funds for the Central Universities [N160805001, N160801001]
  3. 111 Project [B08015]

向作者/读者索取更多资源

In blast furnace ironmaking operation, the molten iron temperature and the silicon content ([Si]) are two key molten iron quality (MIQ) indices. The measurement, modelling and control of these indices have always been of importance in metallurgic engineering and automation. In this study, data-driven methods for online prediction and control of multivariate MIQ indices are proposed by integrating hybrid modelling and control techniques together. First, a data-driven hybrid method that combines canonical correlation analysis and correlation analysis is proposed to identify the most influential controllable variables as the modelling inputs from multitudinous factors. Then a data-driven online model for prediction of MIQ is established by recursive subspace identification (R-SI) with forgetting factor. Unlike the conventional SI modelling, the proposed R-SI-based online modelling only identifies subspace matrices for a data-driven input-output model without explicitly estimating the system matrices, which can reduce the computation complexity. Finally, a predictive controller is designed to maintain the MIQ indices at an expected level by using the developed MIQ prediction model as an online predictor. Since the parameters of the predictor are updated adaptively by the latest process data, the predictive controller can produce more reliable and stable control performance. Experiments using industrial data have verified the superiority and practicability of the proposed methods.

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