Neural Identification of Average Model of STATCOM using DNN and MLP

M. T. Bina, S. Rahimzadeh
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引用次数: 2

Abstract

Modeling of STATCOM is conventionally performed in the time-domain. Amongst them, dq-theory is well-known in which state-space equations are used for the analysis. Power systems, however, use the frequency-domain information in phasor-related studies such as load flow analysis. Because time-domain models of FACTS controllers cannot be directly applied to the power system analysis, an intelligent model can usefully bridge the time-domain information to the corresponding frequency-domain data. This paper proposes two neural network identifiers based on the existing time-domain average model of STATCOM. Extended resultant bridge presents an average-neural model of STATCOM, which can be analytically applied to power systems. To this extent, design and development of two neural network identifiers are performed using the dynamic neural network (DNN) and the multi-layer perceptron (MLP). To verify the developed models, the exact solutions obtained from the average model of STATCOM are compared with the outcomes of the DNN and the MLP identifiers. Moreover performance of the two identifiers is accordingly compared as well.
基于DNN和MLP的STATCOM平均模型的神经识别
STATCOM的建模通常是在时域内进行的。其中,dq理论是众所周知的,它使用状态空间方程进行分析。然而,电力系统将频域信息用于与相量相关的研究,如潮流分析。由于FACTS控制器的时域模型不能直接应用于电力系统分析,因此智能模型可以有效地将时域信息与相应的频域数据连接起来。本文在现有的STATCOM时域平均模型的基础上,提出了两种神经网络标识符。扩展合成桥是一种可解析应用于电力系统的平均神经网络模型。在这种程度上,使用动态神经网络(DNN)和多层感知器(MLP)进行两个神经网络标识符的设计和开发。为了验证所建立的模型,将STATCOM平均模型得到的精确解与DNN和MLP标识符的结果进行了比较。此外,还相应地比较了这两个标识符的性能。
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