一种用于UPFC多变量控制的改进在线神经网络控制器

G. Sridhar Reddy, R.K. Singh
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引用次数: 2

摘要

本文提出了一种改进的在线神经网络(OLNN)控制器,该控制器结合了先前提出的用于控制统一潮流控制器(UPFC)的潮流、交流母线和直流链路电压的间接逆识别神经网络控制器(IIINNC)的神经网络结构的变化。针对所提出的OLNN控制器,提出了一种新的学习算法。与IIINNC相比,所提出的OLNN控制器需要更少的训练和验证。所提出的神经控制器的结构和控制算法与IIINNC相比降低了复杂度和延迟时间。仿真研究证明了所提出的在线神经控制器对UPFC多变量控制的适用性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved on-line neural network controller for multi-variable control of UPFC
This paper proposes an improved on-line neural network (OLNN) controller by incorporating changes in neural network architecture of indirect-inverse identification neural network controller (IIINNC), which was proposed earlier for controlling power flow, AC bus and DC link voltages of unified power flow controller (UPFC). A new learning algorithm has been derived for the proposed OLNN controller. The proposed OLNN controller requires less training and validation compared to that of the IIINNC. The architecture and control algorithm of the proposed neural controller reduces the complexity and latency time in comparison to the IIINNC. Simulation studies carried out demonstrates the applicability of the proposed on-line neural controller for the multi-variable control of UPFC
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