An Improved Aggregated Equivalent Modeling of DFIG Wind Farm Based on Dynamic Clustering Strategy for Post-fault Analysis

Yuhao Zhou, Long Zhao, I. Matsuo, Weijen Lee
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Abstract

Research communities have made significant efforts to derive dynamic equivalent models (DEM) for wind farms due to the high penetration of wind energy. The whole development can be divided into two categorical approaches: aggregated DEM and multi-machine pre-clustered DEM. However, with the stochastic characteristics of wind speeds and different crowbar activation patterns inside the wind farm resulted from different fault types, conventional DEMs may not be accurate for all kinds of faults, therefor are not suitable for post-fault analysis. This paper focuses on developing a DEM for LVRT studies. Firstly, a two-level clustering algorithm was proposed to build dynamic clusters based on the crowbar triggering waveforms and the grouping indicators' data, where Gaussian density distance clustering algorithm was applied. Then the established aggregated DEM was updated according to the previous clustering results. Different fault scenarios were tested. Compared with conventional methods, the simulation results showed that the proposed method could be more accurate to represent the dynamic response of the wind farm when there were several different triggering patterns from crowbar systems for post fault analysis.
基于动态聚类策略的DFIG风电场故障后分析改进聚合等效模型
由于风能的高渗透,研究团体已经做出了巨大的努力来推导风电场的动态等效模型(DEM)。整个发展过程可以分为两类方法:聚合DEM和多机预聚类DEM。然而,由于风速的随机特性和不同断层类型导致风电场内部撬棍激活方式的不同,传统的dem可能不能准确地反映所有类型的断层,因此不适合断层后分析。本文的重点是开发用于LVRT研究的DEM。首先,提出了基于撬棍触发波形和分组指标数据构建动态聚类的两级聚类算法,其中采用高斯密度距离聚类算法;然后根据之前的聚类结果更新已建立的聚类DEM。测试了不同的故障场景。仿真结果表明,与传统方法相比,所提出的方法能够更准确地反映故障后分析中不同触发方式下风电场的动态响应。
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