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Method to estimate sag frequency in doubly fed induction generator integrated power system based on adaptive kernel density estimation

机译:基于自适应核密度估计的双馈感应发电机集成电力系统估算裂缝频率的方法

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摘要

Voltage sag frequency estimation is necessary for understanding the voltage sag severity in power system and offering full information for the interested parties to mitigate voltage sag. The high penetration of wind power in the power system and the uncertainty of the fault distribution raise new challenges to accurate voltage sag frequency estimation. This study presents a systematic voltage sag frequency estimation method, considering the fault distribution density, fault ride-through (FRT) process of wind turbines during voltage sag and the interval characteristic of voltage sag frequency. First, this study proposes a fault distribution estimation model based on adaptive kernel density. Second, this study proposes a method for calculating the residual voltage and duration of voltage sag during FRT and combines the common distance protection action to analyse the effect on voltage sag by FRT process of wind turbines. Lastly, this study proposes an interval-valued voltage sag estimation method considering the interval characteristics of fault rate in the power system. IEEE 30-bus test system is used to verify the proposed method, the estimation results show better performance of the proposed method compared with the typical estimation methods.
机译:电压下滑频率估计对于了解电力系统中的电压SAG严重程度是必要的,并为有关各方提供减轻电压凹陷的全部信息。电力系统中风电的高渗透性和故障分布的不确定性引起了准确电压下滑频率估计的新挑战。本研究提出了一种系统电压凹陷频率估计方法,考虑到电压凹陷期间风力涡轮机的故障分布密度,故障乘坐(FRT)过程和电压下滑频率的间隔特性。首先,本研究提出了一种基于自适应核密度的故障分布估计模型。其次,本研究提出了一种用于在FRT期间计算凹陷的剩余电压和持续时间的方法,并结合公共距离保护作用来分析风力涡轮机的FRT过程对电压凹陷的影响。最后,本研究提出了考虑到电力系统中的故障率的间隔特性的间隔值电压SAG估计方法。 IEEE 30-Bus测试系统用于验证所提出的方法,与典型估计方法相比,估计结果显示了所提出的方法的更好性能。

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