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Improvement of Prediction Method for Strip Coiling Temperature

机译:带材卷取温度预测方法的改进

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摘要

In order to improve the control precision of strip coiling temperature for hot strip mill, the BP neural network was combined with mathematical model to calculate convective heat-transfer coefficient of laminar flow cooling. The off-line calculated results indicate that the standard deviation of coiling temperature prediction is reduced by 22.84 % with the convective heat-transfer coefficient calculated by BP neural network. The prospects of this method for on-line application are bright. This method is more helpful to increasing the control precision of coiling temperature for hot strip steel.
机译:为了提高热轧带钢卷取温度的控制精度,将BP神经网络与数学模型相结合,计算出层流冷却对流换热系数。离线计算结果表明,利用BP神经网络计算的对流换热系数,卷取温度预测的标准偏差降低了22.84%。这种方法的在线应用前景广阔。该方法对提高热轧带钢卷取温度的控制精度有较大帮助。

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