基于神经网络的热轧机运行状态预测

Ge Lu-sheng, Z. Yingjie, L. Liang
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引用次数: 0

摘要

在连续热轧生产线中,有几台轧制机,通常分为粗轧、精轧等。为保证钢材质量,应根据所采用的轧制工艺设置轧制力参数和宽度/厚度控制系统参数。然而,在实际生产过程中,由于各种干扰,这些参数经常偏离设定值。因此,当系统运行状态偏离正常区域时,动态调整控制系统参数是很重要的。这反过来又要求正确地预测系统运行状态。本文采用分布式数据采集系统中基于神经网络和数据库的数据融合方法对滚动状态进行了全面分析。结果表明,该预测模型是正确的,为进一步优化轧制参数提供了重要参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Hot Rolling Machine Running States Based on Neural Network
In continuous hot mill production lines, there are several rolling machines that are usually classified into rough rolling, finished rolling, and so on. To ensure the quality of steel products, the parameters for rolling force and the width/thickness control system should be set according to the rolling technology used. However, during actual production, such parameters often deviate from the set points due to various disturbances. It is therefore important to adjust such control system parameters dynamically whenever the system running states changes from normal area. This in turn requires that the system running states be predicted correctly. This paper makes a full analysis of the rolling states by applying data fusion methods based on neural network and database of the distributed data acquisition system. The results indicate that the prediction model is correct and provides an important reference to optimize farther the rolling parameters.
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