利用神经网络建立了冷轧过程厚度预测控制结构,并通过灵敏度因子确定了较好的控制参数

L. E. Zarate
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引用次数: 1

摘要

单机架轧机控制方程是几个参数(入口厚度、前后张力、屈服应力和摩擦系数等)的非线性函数。其中一个的任何改变都会引起轧制载荷的改变,从而导致出料厚度的改变。本文提出了一种方法来确定适当的调整厚度控制考虑三个可能的控制参数:辊间隙,前后张力。该方法采用基于过程灵敏度方程的预测模型,通过对事先训练好的神经网络进行微分得到敏感性因子。该方法认为需要最小调整量的控制动作为最佳控制动作。否则,在轧制系统的控制器设计的主要问题之一是难以测量最终厚度无时滞。时间延迟是出线传感器的位置的结果,这些传感器总是被放置在离滚缝一段距离的地方。该控制系统基于输出厚度的预测模型计算必要的调整量。该模型允许克服这种过程中存在的时间延迟。这种新结构可以消除通常基于x射线探测器的厚度传感器。仿真结果表明了该方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A predictive thickness control structure and decision about the better control parameter for the cold rolling process through sensitivity factors via neural networks
The single stand rolling mill governing equation is a non-linear function on several parameters (entry thickness, front and back tensions, yield stress and friction coefficient among others). Any alteration in one of them will cause alterations on the rolling load and, consequently, on the outgoing thickness. This paper presents a method to determinate the appropriate adjustment for thickness control considering three possible control parameters: roll gap, front and back tensions. The method uses a predictive model based in the sensitivity equation of the process where the sensitivity factors are obtained by differentiating a neural network previously trained. The method considers as the best control action the one that demands the smallest adjustment. By otherwise, one of the capital issues in the controller design for rolling systems is the difficulty to measure the final thickness without time delays. The time delay is a consequence of the locations of the outgoing sensors that are always placed some distance away from the roll gap. The proposed control system calculates the necessary adjustment based on a predictive model for the output thickness. This model permits to overcome the time delay that exists in such processes. The new structure can eliminate the thickness sensor, usually based on an X-ray detector. Simulation results show the feasibility of the proposed technique.
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