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PI-controller parameters tuning method to reject disturbances acting on heating furnaces

机译:PI控制器参数整定方法,以消除作用于加热炉的干扰

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On-line Kp, Ki gains adjustment of a Pi-controller to reject disturbances acting on a heating furnace is the main scope of this research. A neural tuner is used to resolve considered problem. it consists of two neural networks in order to ensure quality of control for heating and cooling processes. An additional network is integrated in its structure to enable disturbances attenuation. Network outputs are Kp, Ki values. Time moments when such networks need to be trained and learning rate values are determined by a rule base. A set of rules developed to reject step-like and impulse disturbances acting on the plant output is shown, as well as the tuner structure. The SNOL 40/1200 muffle electroheating furnace is used as a plant for experiments. Obtained results show the total amount of time spent on disturbance rejection may be reduced by 20% using the neural tuner in comparison with a control system with Pi-controller with fixed gains.
机译:在线Kp,Ki获得Pi控制器的调整以排除作用在加热炉上的干扰是本研究的主要范围。神经调谐器用于解决所考虑的问题。它由两个神经网络组成,以确保加热和冷却过程的控制质量。附加网络集成在其结构中,以实现干扰衰减。网络输出为Kp,Ki值。这些网络需要训练和学习率值的时间由规则库确定。显示了一套规则,以消除作用在设备输出上的阶梯状和脉冲干扰,以及调谐器结构。 SNOL 40/1200马弗炉电加热炉用作实验设备。获得的结果表明,与带有固定增益的Pi控制器的控制系统相比,使用神经调谐器可以将花费在干扰消除上的总时间减少20%。

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