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Optimization of rollgap self-learning algorithm in tandem hot rolled strip finishing mill

机译:串联热轧带钢精轧机辊缝自学习算法的优化

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摘要

The thickness precision is an important indicator in strip production, in which a self-learning with high precise model is necessary. In this paper, tacking new data collection and processing, looper speed compensation and more influencing factors into account, an optimized rollgap self-learning model was proposed. With the help of algorithm optimization of Newton-Raphson method, the calculation accuracy are enhanced, and make the actual thickness more approximate to the target value. The application of a 700mm tandem hot strip rolling mill shows that the model could meet the demands of on-line control with high computing precision, and the thickness accuracy are raised to a higher level.
机译:厚度精度是带钢生产中的重要指标,其中需要具有高精度模型的自学习。本文针对新的数据采集与处理,弯管速度补偿以及更多影响因素,提出了一种优化的辊隙自学习模型。借助Newton-Raphson方法的算法优化,提高了计算精度,并使实际厚度更接近目标值。 700mm串列式热轧机的应用表明,该模型能够以较高的计算精度满足在线控制的要求,并将厚度精度提高到更高的水平。

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