Shape control of rolling mills by a neural and fuzzy hybrid architecture

Y. Morooka
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引用次数: 3

Abstract

Hitachi Ltd has developed pattern recognition and control techniques which combine neural network and fuzzy logic. Conventionally, skilled operators recognize and manually control waveform patterns based on their sense and experience. The new system recognizes and controls waveform patterns by means of neural networks and fuzzy logics to realize fully automatic shape control of rolling mills. The neural network recognizes spatially distributed waveform patterns from sensor signals, and the fuzzy logics operate multiple final control elements for automatic pattern control. The developed control technique has been applied to automatic shape control system for a Sendzimir Rolling Mill. Shape control for this type of rolling mill is difficult with conventional automatic control systems because of complicated rolling phenomena and the difficulty of creating a control models. Tests with an actual rolling system proved that the new technique achieves more accurate control than the conventional manual operation by skilled operators. The system has been applied at a few plants and is operating favorably.<>
基于神经与模糊混合结构的轧机板形控制
日立公司开发了结合神经网络和模糊逻辑的模式识别和控制技术。传统上,熟练的操作员根据他们的感觉和经验来识别和手动控制波形模式。该系统利用神经网络和模糊逻辑对波形模式进行识别和控制,实现轧机板形的全自动控制。神经网络从传感器信号中识别空间分布的波形模式,模糊逻辑操作多个最终控制元件实现模式自动控制。所开发的控制技术已应用于森兹米尔轧机板形自动控制系统。由于轧制现象复杂,且难以建立控制模型,传统的自动控制系统难以对此类轧机进行板形控制。通过实际轧制系统的试验证明,新技术比传统的熟练操作人员的手动控制更精确。该系统已在几家工厂应用,运行良好
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