Abstract:Phasor measurement unit (PMU) can measure the rotor angle of synchronous machine in power system dynamic process. However, the bad data may decrease the accuracy of state estimations, even lead to the failure of the estimator. Based on the robust cubature Kalman filter (CKF), a novel dynamic state estimator for synchronous machine in the electromechanical transient process is proposed. A time-varying multi-dimensional scale factor is introduced into CKF. The PMU measure- ment covariance can be adjusted according to the innovation. As a result, the PMU measurements will correct the state predictions precisely. The formulation of the scale factor is clarified, and the method for dealing with the problem of the gain matrix singularity is addressed. The detailed process of dynamic state estimation based on robust CKF is given. The simulation results show that the method can prevent the influence of bad data on the precision of the dynamic state estimation.
毕天姝, 陈亮, 薛安成, 杨奇逊. 基于鲁棒容积卡尔曼滤波器的发电机动态状态估计[J]. 电工技术学报, 2016, 31(4): 163-169.
Bi Tianshu, Chen Liang, Xue Ancheng, Yang Qixun. Dynamic State Estimator for Synchronous Machines Based on Robust Cubature Kalman Filter. Transactions of China Electrotechnical Society, 2016, 31(4): 163-169.
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