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Application of on-line adaptable Neural Network for the rolling force set-up of a plate mill

机译:在线自适应神经网络在平板轧机轧制力设定中的应用

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This paper introduces a Neural Network application to a plate mill to improve the model's prediction ability for rolling force. Since thickness accuracy is highly related to the rolling-force precision, its improvement is very important. Conventional methods with simple mathematical models and a coarse learning scheme are not sufficient to maintain a good prediction ability for the rolling force because the rolling force variable has very nonlinear and time-varying characteristics. These problems are alleviated when an on-line adaptable Neural Network is applied instead. Basically, the Neural Network is capable of compensating the nonlinear model deficiency, and its on-line training reduces the prediction errors caused by time-varying rolling conditions. The field test at Pohang No. 2 Plate Mill has showed that the proposed method has improved the prediction ability by 30%.
机译:本文将神经网络应用程序引入到轧机中,以提高模型对轧制力的预测能力。由于厚度精度与轧制力精度高度相关,因此提高其精度非常重要。具有简单数学模型和粗糙学习方案的常规方法不足以维持对轧制力的良好预测能力,因为轧制力变量具有非常非线性且随时间变化的特征。当改用在线自适应神经网络时,这些问题得到缓解。基本上,神经网络能够弥补非线性模型的不足,并且其在线训练可以减少由时变轧制条件引起的预测误差。在浦项第二板厂的现场测试表明,该方法将预测能力提高了30%。

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