A Fast Outlier-robust Fusion Estimator for Local Bus Frequency Estimation in Power Systems

A. Farahani, A. Abolmasoumi, M. Bayat, L. Mili
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引用次数: 1

Abstract

A new robust fusion Unscented Kalman filter (UKF) is proposed and applied to the problem of local bus frequency estimation in power systems. The presented UKF has two main features. Firstly, it fuses the local bus frequency data obtained from two different methods, i.e. SRF-PLLs and Frequency divider (FD) formula. Secondly, the detection and outweighing outliers in state estimation process is addressed using projection statistics. It is shown that the proposed robust fusion UKF (RFUKF) increases the reliability of local bus frequency estimation against data loss and cyber-attacks affecting one of data sources due to the fusion method. More importantly, it is robust against observation outliers. To verify the effectiveness of the presented method, the impact of the robust fusion state estimation method is studied on the bus frequency estimation for providing feedback signal to Wide Area Power System Stabilizer (WAPSS) which aims to damp the inter-area oscillation in power system. The results of the transient stability analysis are discussed through non-linear time domain simulations with PST toolbox.
一种用于电力系统局部母线频率估计的快速离群鲁棒融合估计
提出了一种新的鲁棒融合无嗅卡尔曼滤波器(UKF),并将其应用于电力系统的局部母线频率估计问题。所提出的UKF有两个主要特点。首先,它融合了从srf - pll和分频器(FD)公式两种不同方法获得的本地母线频率数据。其次,利用投影统计方法解决了状态估计过程中异常值的检测和超越问题。结果表明,该鲁棒融合UKF (RFUKF)提高了本地总线频率估计的可靠性,避免了数据丢失和影响某个数据源的网络攻击。更重要的是,它对观测异常值具有鲁棒性。为了验证该方法的有效性,研究了鲁棒融合状态估计方法对向广域电力系统稳定器(WAPSS)提供反馈信号的母线频率估计的影响,以抑制电力系统的区域间振荡。利用PST工具箱进行非线性时域仿真,讨论了暂态稳定性分析的结果。
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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