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Suitable Feedforward Artificial Neural Network Automatic Voltage Regulator for Excitation Control System

机译:适用于励磁控制系统的前馈人工神经网络自动电压调节器

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The feedforward artificial neural network (FFANN) based automatic voltage regulator (AVR) controller for excitation system using Matlab/Simulink approach is proposed in this paper.The proposed AVR controller investigates and demonstrates the application of radial basis function (RBF) and multiplayer perceptron (MLP) architectures of FFANNs and compares the suitability of both architectures. The simulation results of suggested AVR controller not only show the encouraging responses for the application but also show the improvement in the transient responses of synchronous machine. The responses of developed RBF and MLP networks have also been compared with conventional proportional integral and derivative (PID) excitation controller of synchronous machine. Investigations and results prove that FFANN AVR controllers are very simple and accurate than conventional AVR and also enhance the stability performance of synchronous machine in an efficient manner. This research also suggests that RBF network is more simple, accurate, fast and robust controller than MLP architecture. Huge numbers of research papers have been written and published on the different types of excitation controller, but the proposed controller for excitation control system is relatively most simple and suitable for software demonstration and practical implementation.
机译:本文提出了一种基于Matlab / Simulink方法的基于前馈人工神经网络(FFANN)的励磁系统自动电压调节器(AVR)控制器。该AVR控制器研究并演示了径向基函数(RBF)和多人感知器( MFAN)架构,并比较两种架构的适用性。所建议的AVR控制器的仿真结果不仅显示出令人鼓舞的应用响应,而且还显示了同步电机瞬态响应的改善。发达的RBF和MLP网络的响应也已与同步电机的常规比例积分和微分(PID)励磁控制器进行了比较。研究和结果证明,FFANN AVR控制器比常规AVR非常简单和准确,并且可以有效地提高同步机的稳定性能。这项研究还表明,RBF网络比MLP体系结构更简单,准确,快速且健壮。关于不同类型的励磁控制器,已经发表了大量的研究论文,但是所提出的励磁控制系统控制器相对来说最简单,适合于软件演示和实际实现。

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