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Shape recognition performance analysis and improvement in Sendzimir rolling mills

机译:Sendzimir轧机的形状识别性能分析与改进

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Twenty-high Sendzimir rolling mills (ZRMs) typically use small diameter work rolls to provide massive rolling force. Because of the small diameter of the work rolls, a rolled steel strip has a complex shape mixed with quarter, edge, and center waves. When the strip shape is controlled automatically, actuator saturation occurs in the shape actuator such as AS-U roll. These problems affect productivity and the quality of products made from the rolled material. We analyzed problems with the automatic shape control of ZRMs. The shape recognition performance was analyzed by comparing the measured and recognized shapes by multi-layer perceptron (MLP) method. In addition, neural networks were developed using the radial basis function (RBF) method, and are proposed to improve the shape recognition performance of the automatic shape control system in a ZRM. Through simulation results, we found that shape recognition performance can be improved by the proposed method based on RBF neural networks.
机译:二十高的Sendzimir轧机(Zrms)通常使用小直径工作辊来提供大规模的轧制力。由于工作辊的小直径,轧制钢带具有与四分之一,边缘和中心波混合的复杂形状。当自动控制条带形状时,致动器饱和在诸如-U卷的形状致动器中发生。这些问题会影响生产力和由轧制材料制成的产品的质量。我们分析了ZRMS自动形状控制的问题。通过通过多层的Perceptron(MLP)方法比较测量和识别的形状来分析形状识别性能。此外,使用径向基函数(RBF)方法开发了神经网络,并且提出了提高ZRM中自动形状控制系统的形状识别性能。通过仿真结果,我们发现通过基于RBF神经网络的提出方法可以改善形状识别性能。

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