Error Correction for Aggregation Model of Wind Farms Considering LVRT Characteristic

Hongyi Wang, Zhe Chen
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Abstract

Accuracy and simplicity issues of the widely-used aggregated model of wind farms focus on minimizing the error during the transient characteristics. In order to reduce the deviation between the detailed and reduced-order model, this paper presents a data-driven system identification method to discover a mathematical structure from the error data that possibly improve the established model. In this work, we devise a library of candidate dynamics tailored to wind farms for regression algorithm. This framework only requires fairly little data and is robust to noise, having good performance for the response to fast system variation. The simulation result illustrates the accuracy of the improved aggregation model of a wind power plant under low voltage ride-through (LVRT) mode.
考虑LVRT特性的风电场聚集模型误差修正
目前广泛应用的风电场综合模型的准确性和简洁性问题集中在使暂态特性误差最小化上。为了减少详细模型与降阶模型之间的偏差,本文提出了一种数据驱动的系统识别方法,从误差数据中发现可能改进已建立模型的数学结构。在这项工作中,我们设计了一个适合风力发电场的候选动态库,用于回归算法。该框架只需要相当少的数据,对噪声具有较强的鲁棒性,对系统的快速变化具有良好的响应性能。仿真结果验证了改进后的风电场低电压穿越(LVRT)模式聚合模型的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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