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Fuzzy neural networks control for hydraulic AGC system of aluminum cold rolling mill

机译:铝冷轧机液压AGC系统模糊神经网络控制

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The hydraulic AGC system of aluminum cold rolling mill is directly related to the quality and effectiveness of cold rolling aluminum sheet strips. Traditional PID control becomes difficult to satisfy the necessity of improving the control performance of cold rolling mill. High precision, simple and effective control strategies are very important for the hydraulic AGC system of cold rolling mill. For the complex control problems, it is also desirable to integrate neural networks into fuzzy control so as to simplify and automate the specification of linguistic rules. This leads to good adaptation, good robustness and less dependency on the precise model of the control system. In the paper, a fuzzy neural networks control has been developed and applied to the screw-down mechanism control of hydraulic AGC system of cold rolling mill. The simulation experiment results verify the superiority of the proposed compound control to the conventional PID control in the static and dynamic control performance. The merits of both fuzzy control and artificial neural networks are well used in the hydraulic AGC system of aluminum cold rolling mill.
机译:铝冷轧机液压AGC系统与冷轧铝板条的质量和有效性直接相关。传统的PID控制难以满足改善冷轧机控制性能的必要性。高精度,简单且有效的控制策略对于冷轧机的液压AGC系统非常重要。对于复杂的控制问题,还希望将神经网络集成到模糊控制中,以简化和自动化语言规则的规范。这导致对控制系统的精确模型的良好适应,良好的鲁棒性和更少的依赖性。本文已经开发了一种模糊的神经网络控制,并应用于冷轧机液压AGC系统的旋击机构控制。仿真实验结果验证了静态和动态控制性能中常规PID控制的所提出的复合控制的优越性。模糊控制和人工神经网络的优点在铝冷轧机液压AGC系统中很好地使用。

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