Adaptive variable structure series compensation for voltage stability improvement using internal recurrence neural network controller

A. Hemeida
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引用次数: 2

Abstract

The paper presents a control technique for variable structure series compensation (VSSrC) using internal recurrence adaptive neural network, IRANN controller for voltage stability enhancement in power systems. The present IRANN controller response is dependent on the power system response but independent on it's parameters. The IRANN implements a nonlinear adaptive functions which tracks the weights and bias matrices of the constructed internal recurrence neural network according to the power system response. The present controller implements speed deviation signal, Deltaomega and terminal voltage deviation signal DeltaVt added to feedback signals from the hidden layer as input signals. The output signal of the proposed controller is related to the power system response. The studied power system is modeled by a set of nonlinear algebraic and differential equations and solved by MATLAB software. The proposed scheme stabilize the studied system voltage in case of severe disturbance. A three phase short circuit fault at the main bus is considered for a period of 200 m.sec. To judge the present controller a comparative study is made with the conventional PI controller. The time response shows the superiority of the proposed IRANN controller over the PI controller in stabilizing the system voltage very fast.
基于内递归神经网络控制器的自适应变结构串联补偿提高电压稳定性
本文提出了一种利用内递归自适应神经网络、IRANN控制器增强电力系统电压稳定性的变结构串联补偿(VSSrC)控制技术。目前的伊朗网络控制器响应依赖于电力系统的响应,但不依赖于其参数。该算法实现了一种非线性自适应函数,根据电力系统的响应跟踪所构造的内递归神经网络的权值和偏置矩阵。本控制器实现了将速度偏差信号Deltaomega和终端电压偏差信号DeltaVt加入到隐藏层反馈信号中作为输入信号。该控制器的输出信号与电力系统的响应有关。用一组非线性代数方程和微分方程对所研究的电力系统进行建模,并用MATLAB软件进行求解。该方案能在严重干扰的情况下稳定所研究的系统电压。主母线上的三相短路故障被认为持续200毫秒。为了判断该控制器的优劣,与传统的PI控制器进行了比较研究。时间响应结果表明,所提出的IRANN控制器在快速稳定系统电压方面优于PI控制器。
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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