Robust continuous-discrete extended Kalman filter for estimating machine states with model uncertainties

Pengxiang Ren, H. Lev-Ari, A. Abur
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引用次数: 5

Abstract

Dynamic state estimation for synchronous generators is rapidly gaining importance due to its impact on wide-area control and stability of large scale power grids. However, the underlying uncertainties in the dynamic models of the generators may influence the estimation results. In this paper, a robust extended Kalman filter is developed for estimating machine states in the presence of model uncertainties. The proposed filter is based on minimizing the squared residual norm under the worst possible case, which indicates the uncertainties in the model should be bounded. The proposed algorithm is derived in two steps. First, the nonlinear dynamic equations of the machine model as well as the structured uncertainties are discretized and linearized. Second, by constructing the min-max optimization problem and solving it with considerable algebra, the time- and measurement-update expressions of the Kalman filter can be reformulated with modified parameters. The proposed filter is tested numerically based on a typical machine model and the results are presented.
具有模型不确定性的机器状态估计的鲁棒连续离散扩展卡尔曼滤波
由于同步发电机的动态状态估计关系到大电网的广域控制和稳定,因此它的研究日益受到重视。然而,发电机动态模型中潜在的不确定性可能会影响估计结果。本文提出了一种鲁棒扩展卡尔曼滤波器,用于模型不确定性下的机器状态估计。所提出的滤波器是基于最小化最坏情况下的残差模平方,这表明模型中的不确定性应该是有界的。该算法分为两步推导。首先,对机器模型的非线性动力学方程和结构不确定性进行离散化和线性化处理。其次,通过构造最小-最大优化问题并进行大量代数求解,可以用修改后的参数重新表述卡尔曼滤波器的时间和测量更新表达式。在一个典型的机器模型上对所提出的滤波器进行了数值测试,并给出了结果。
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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