基于神经网络的智能控制提高FACTS设备动态性能

W. Qiao, R. Harley, G. Venayagamoorthy
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引用次数: 8

摘要

柔性交流输电系统(FACTS)装置是公认的改善电力系统动态性能和稳定性的有力控制器。标准的FACTS控制器是围绕具有固定参数的线性化系统模型的特定工作点设计的线性控制器。然而,在其他操作点,它们的性能下降。基于神经网络的非线性智能控制为克服线性控制器的缺点提供了一种有吸引力的方法。本文提出了两种不同的基于神经网络的智能控制体系结构,即间接自适应神经控制和基于自适应批评设计的最优神经控制,用于设计SSSC FACTS设备的外部控制。对所提出的非线性智能控制器在单机无限母线和多机电力系统上的性能进行了仿真研究。结果表明,所提出的智能控制方法改善了SSSC和相关电网的动态性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural-network-based intelligent control for improving dynamic performance of FACTS devices
Flexible AC transmission system (FACTS) devices are widely recognized as powerful controllers to improve the dynamic performance and stability of power systems. The standard FACTS controllers are linear controllers designed around a specific operating point from a linearized system model with fixed parameters. However, at other operating points their performance degrades. Neural-network-based nonlinear intelligent control offers an attractive approach to overcome the drawbacks of the linear controllers. This paper presents two different neural-network-based intelligent control architectures, i.e., indirect adaptive neurocontrol and adaptive critic design based optimal neurocontrol, for designing the external control of an SSSC FACTS device. Simulation studies are carried out to evaluate the proposed nonlinear intelligent controllers on single machine infinite bus as well as multi-machine power systems. Results show that the proposed intelligent controls improve the dynamic performance of the SSSC and the associated power network.
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