首页> 外文期刊>International Journal of Modern Physics, B. Condensed Matter Physics, Statistical Physics, Applied Physics >PREDICTION OF ROLLING FORCE USING AN ADAPTIVE NEURAL NETWORK MODEL DURING COLD ROLLING OF THIN STRIP
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PREDICTION OF ROLLING FORCE USING AN ADAPTIVE NEURAL NETWORK MODEL DURING COLD ROLLING OF THIN STRIP

机译:薄带冷轧过程中的自适应神经网络模型预测轧制力

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摘要

Customers for cold rolled strip products expect the good flatness and surface finish, consistent metallurgical properties and accurate strip thickness. These requirements demand accurate prediction model for rolling parameters. This paper presents a set-up optimization system developed to predict the rolling force during cold strip rolling. As the rolling force has the very nonlinear and time-varying characteristics, conventional methods with simple mathematical models and a coarse learning scheme are not sufficient to achieve a good prediction for rolling force. In this work, all the factors that influence the rolling force are analyzed. A hybrid mathematical roll force model and an adaptive neural network have been improved by adjusting the adaptive learning algorithm. A good agreement between the calculated results and measured values verifies that the approach is applicable in the prediction of rolling force during cold rolling of thin strips, and the developed model is efficient and stable.
机译:冷轧带钢产品的客户期望其良好的平直度和表面光洁度,一致的冶金性能以及精确的带钢厚度。这些要求要求精确的滚动参数预测模型。本文提出了一种设置优化系统,用于预测冷轧带钢过程中的轧制力。由于轧制力具有非常非线性和随时间变化的特征,因此具有简单数学模型和粗略学习方案的常规方法不足以实现对轧制力的良好预测。在这项工作中,分析了影响轧制力的所有因素。通过调整自适应学习算法,改进了混合数学侧倾力模型和自适应神经网络。计算结果与实测值吻合良好,验证了该方法可用于薄带冷轧过程中轧制力的预测,所开发的模型高效,稳定。

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