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An adaptive Kalman filter for dynamic harmonic state estimation and harmonic injection tracking

机译:用于动态谐波状态估计和谐波注入跟踪的自适应卡尔曼滤波器

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摘要

Knowledge of the process noise covariance matrix Q is essential for the application of Kalman filtering. However, it is usually a difficult task to obtain an explicit expression of Q for large time varying systems. This paper looks at an adaptive Kalman filter method for dynamic harmonic state estimation and harmonic injection tracking. The method models the system as a linear frequency independent state model and does not require an exact knowledge of the noise covariance matrix Q. As an alternative, the proposed adaptive Kalman filter switches between the two basic Q models for steady-state and transient estimation. Its adaptive function allows for the resetting of the Kalman gain to avoid Kalman filter divergence problems under steady-state and allow fast tracking of system variations in transient conditions. Simulation results on the 220 kV network of the lower South Island of New Zealand are presented to validate this approach.
机译:对过程噪声协方差矩阵Q的了解对于卡尔曼滤波的应用至关重要。但是,对于大时变系统,获得Q的显式表达式通常是一项艰巨的任务。本文研究了用于动态谐波状态估计和谐波注入跟踪的自适应卡尔曼滤波器方法。该方法将系统建模为与频率无关的线性状态模型,不需要确切了解噪声协方差矩阵Q。作为替代方案,建议的自适应Kalman滤波器在两个基本Q模型之间切换以进行稳态和瞬态估计。其自适应功能允许重置卡尔曼增益,以避免稳态下的卡尔曼滤波器发散问题,并允许快速跟踪瞬态条件下的系统变化。提出了在新西兰下南岛的220 kV网络上进行的仿真结果,以验证这种方法。

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