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Dynamic State Estimation in Power System by Applying the Extended Kalman Filter With Unknown Inputs to Phasor Measurements

机译:通过将具有未知输入的扩展卡尔曼滤波器应用于相量测量,来在电力系统中进行动态状态估计

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Availability of the synchronous machine angle and speed variables give us an accurate picture of the overall condition of power networks leading therefore to an improved situational awareness by system operators. In addition, they would be essential in developing local and global control schemes aimed at enhancing system stability and reliability. In this paper, the extended Kalman filter (EKF) technique for dynamic state estimation of a synchronous machine using phasor measurement unit (PMU) quantities is developed. The simulation results of the EKF approach show the accuracy of the resulting state estimates. However, the traditional EKF method requires that all externally observed variables, including input signals, be measured or available, which may not always be the case. In synchronous machines, for example, the exciter output voltage $E_{fd}$ may not be available for measuring in all cases. As a result, the extended Kalman filter with unknown inputs, referred to as EKF-UI, is proposed for identifying and estimating the states and the unknown inputs of the synchronous machine simultaneously. Simulation results demonstrate the efficiency and accuracy of the EKF-UI method under noisy or fault conditions, compared to the classic EKF approach and confirms its great potential in cases where there is no access to the input signals of the system.
机译:同步电机角度和速度变量的可用性为我们提供了电力网络总体状况的准确信息,因此提高了系统操作员的态势感知能力。此外,它们对于开发旨在增强系统稳定性和可靠性的本地和全局控制方案至关重要。本文提出了一种扩展的卡尔曼滤波器(EKF)技术,用于利用相量测量单位(PMU)量的同步电机动态状态估计。 EKF方法的仿真结果表明了所得状态估计的准确性。但是,传统的EKF方法要求测量或获得所有外部观察到的变量,包括输入信号,而情况并非总是如此。例如,在同步电机中,激励器输出电压$ E_ {fd} $可能并非在所有情况下都可以测量。结果,提出了具有未知输入的扩展卡尔曼滤波器,称为EKF-UI,用于同时识别和估计同步电机的状态和未知输入。与经典的EKF方法相比,仿真结果证明了在嘈杂或故障情况下EKF-UI方法的效率和准确性,并证实了在无法访问系统输入信号的情况下它的巨大潜力。

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