Dynamic State Estimation of Power System Considering Asynchronous Measurement

Yanwei Xiao, Min Lu, Zhao Huang, Yanping Wang, Ling Lin, Chao Zhang
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Abstract

In order to solve the problems that PMU measurement and SCADA are asynchronous and the measurement model is different, it is difficult to use them together. In this paper, a robust unscented Kalman filter based on quadratic constrained quadratic estimation is proposed to realize the fusion estimation of hybrid measurements. The algorithm realizes the following three functions: Firstly, the time scale of SCADA measurement is given and synchronized by sequential comparison and interpolation synchronization method; secondly, the strong tracking algorithm is introduced to solve the problem that the filtering effect of UKF is reduced when the process noise is abnormal; finally, the proposed algorithm is simulated in IEEE 30 test system. The test results show that the algorithm can realize the synchronization of asynchronous measurement, filter out the error caused by asynchronous problem, and effectively correct the influence of abnormal process noise on the filtering result, so as to realize the real-time tracking of the system state.
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考虑异步测量的电力系统动态估计
为了解决PMU测量和SCADA测量异步和测量模型不同的问题,很难将它们结合起来使用。本文提出了一种基于二次约束二次估计的鲁棒无气味卡尔曼滤波器,实现了混合测量的融合估计。该算法实现了以下三个功能:首先,通过序列比对和插值同步法给出SCADA测量的时间尺度并进行同步;其次,引入强跟踪算法,解决了过程噪声异常时UKF滤波效果降低的问题;最后,在IEEE 30测试系统中对该算法进行了仿真。测试结果表明,该算法能够实现异步测量的同步,滤除异步问题带来的误差,并有效纠正异常过程噪声对滤波结果的影响,从而实现系统状态的实时跟踪。
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