Inertia Estimation in Power Systems using Energy Storage and System Identification Techniques

Ujjwol Tamrakar, Nischal Guruwacharya, Niranjan Bhujel, F. Wilches-Bernal, T. Hansen, R. Tonkoski
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引用次数: 7

Abstract

Fast-frequency control strategies have been proposed in the literature to maintain inertial response of electric generation and help with the frequency regulation of the system. However, it is challenging to deploy such strategies when the inertia constant of the system is unknown and time-varying. In this paper, we present a data-driven system identification approach for an energy storage system (ESS) operator to identify the inertial response of the system (and consequently the inertia constant). The method is first tested and validated with a simulated genset model using small changes in the system load as the excitation signal and measuring the corresponding change in frequency. The validated method is then used to experimentally identify the inertia constant of a genset. The inertia constant of the simulated genset model was estimated with an error of less than 5% which provides a reasonable estimate for the ESS operator to properly tune the parameters of a fast-frequency controller.
基于储能和系统辨识技术的电力系统惯性估计
在文献中提出了快速频率控制策略,以保持发电的惯性响应,并有助于系统的频率调节。然而,当系统的惯性常数是未知的且随时间变化时,部署这种策略是具有挑战性的。在本文中,我们提出了一种数据驱动的系统识别方法,用于储能系统(ESS)操作员识别系统的惯性响应(从而识别惯性常数)。该方法首先通过模拟发电机组模型进行测试和验证,该模型采用系统负载的微小变化作为激励信号,并测量相应的频率变化。然后将验证的方法用于实验确定发电机组的惯性常数。模拟的发电机组模型的惯性常数估计误差小于5%,为ESS操作员合理调整快频控制器的参数提供了合理的估计。
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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