On neural tuner application to adjust speed P-controller of rolling mill main DC drive

A. Glushchenko, V. Petrov
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引用次数: 5

Abstract

Mechanics nonlinearity of such a complicated plant as rolling mill leads to deterioration of transients quality for a main drive speed control loop. A main reason for that is linearity of P-control algorithm used for this loop. That problem can be overcome by controller parameter adaptation algorithms usage. In this research we propose to adjust speed P-controller online using a neural tuner. It is implemented as a combination of an artificial neural network, which output is KP, and a rule base. The base reflects an automation engineer experience and allows to determine situations when the controller is to be adjusted, i.e. when to train the network. It also contains appropriate learning rate for the neurons of the network, which takes into account the nonlinearity of the plant. Numerical experiments are conducted using the model of the considered plant main drive. They are divided in two parts. The first one includes experiments, when the tuner task is to tune nonoptimal speed controller parameter back to the calculated one. The second one is made for the case of plant mechanical part parameters drift. The results show that neural tuner application allows to decrease energy consumption of considered DC drive by 1.9% in comparison with P-controller without adaptation.
神经网络调谐器在轧机主直流传动调速控制器中的应用
轧机等复杂装置的力学非线性导致主传动速度控制回路的瞬态质量恶化。其主要原因是用于该回路的p -控制算法的线性性。利用控制器参数自适应算法可以克服这一问题。在本研究中,我们提出使用神经调谐器在线调整速度p -控制器。它是由输出KP的人工神经网络和规则库相结合实现的。该基地反映了自动化工程师的经验,并允许确定何时调整控制器的情况,即何时训练网络。它还包含了网络神经元的适当学习率,它考虑了植物的非线性。利用所考虑的电厂主传动模型进行了数值实验。它们分为两部分。第一个包括实验,当调谐器的任务是将非最优速度控制器参数调整回计算值时。第二种是针对设备机械部件参数漂移的情况。结果表明,与不进行自适应的p控制器相比,神经调谐器的应用使所考虑的直流驱动器的能耗降低了1.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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