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Data-driven predictive control for blast furnace ironmaking process

机译:高炉炼铁过程的数据驱动预测控制

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摘要

High performance control of blast furnace (BF) ironmaking process is a difficult problem due to the high temperature and hostile measurement conditions for measuring devices in the process. Previous research focused on developing of accurate predictive models for silicon content in hot metal ([SI]) while control of the whole process is seldom discussed. In the present work, a data-driven predictive control method based on subspace method is presented for the blast furnace ironmaking process. The algorithm is based on input-output data and easy to implement. Simulation results show the algorithm is effective for the control application. Finally, various practical issues concerning predictive control of blast furnace ironmaking process are also addressed, such as constraint handling, control objective and output set-point selection, adaptive strategy, etc.
机译:由于该过程中测量设备的高温和恶劣的测量条件,高炉炼铁工艺的高性能控制是一个难题。先前的研究集中在开发准确的铁水硅含量预测模型上,而很少讨论整个过程的控制。本文提出了一种基于子空间方法的高炉炼铁工艺数据驱动预测控制方法。该算法基于输入输出数据,易于实现。仿真结果表明该算法对控制应用是有效的。最后,还讨论了与高炉炼铁过程的预测控制有关的各种实际问题,例如约束处理,控制目标和输出设定点的选择,自适应策略等。

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