基于系统辨识的光伏系统单相逆变器建模

N. Patcharaprakiti, K. Kirtikara, D. Chenvidhya, V. Monyakul, B. Muenpinij
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引用次数: 28

摘要

本文提出了一种利用系统辨识方法对并网光伏系统逆变器进行建模的新方法。在这种方法中,系统被视为一个黑盒子,不需要知道里面的结构和参数。对一种并网型单相逆变器进行了建模。比较了四种线性模型,即自回归外生(ARX)模型,自回归外生移动平均(ARMAX)模型,Box-Jenkins (BJ)模型和输出误差(OE)模型。研究了四种非线性模型,即非线性自回归与外生(ARX)模型、Hammerstein模型、Wiener模型和Hammerstein-Wiener模型。最好的线性模型是输出误差模型,而最好的非线性模型是带小波网络估计的Hammerstein-Wiener模型。对比输出误差模型和Hammerstein-Wiener模型对逆变器的建模,Hammerstein-Wiener模型具有较低阶和较高的最佳拟合百分比的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of Single Phase Inverter of Photovoltaic System Using System Identification
This paper proposes a new method to modeling a power inverter of grid-connected photovoltaic system by using a system identification approach. In this method, the system is considered as a black box of which it is not necessary to know structures and parameters inside. Modeling of one type of grid connected single phase inverter is carried out. Four linear models have been compared, i.e. an Autoregressive with Exogenous (ARX) model, an Autoregressive Moving Average with Exogenous (ARMAX) model, a Box-Jenkins (BJ) model an Output Error (OE) model. Four nonlinear models are studied, i.e, a Nonlinear Autoregressive with Exogenous (ARX) model, a Hammerstein model, a Wiener Model and a Hammerstein-Wiener Model. The best linear model is an Output Error model whereas the best nonlinear model is a Hammerstein-Wiener model with wavelet network estimators. Comparing modeling of the inverter by an Output-Error (OE) model and a Hammerstein-Wiener model, a Hammerstein-Wiener model is better because of its lower order and higher percentage of best fit.
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