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PMU analytics for decentralized dynamic state estimation of power systems using the Extended Kalman Filter with Unknown Inputs

机译:使用带有未知输入的扩展卡尔曼滤波器进行电力系统分散动态状态估计的PMU分析

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The rotor angle and rotor speed estimation of synchronous generators is a key for developing practical local or wide-area control of power system. The critical information in this context is the input signals such as field voltage and mechanical torque which are not available from easily available terminal phasor measurement unit (PMU) signals. To overcome these issues, the Extended Kalman Filter with Unknown Inputs, referred to as the EKF-UI technique, is employed in this paper for decentralized dynamic state estimation of a synchronous machine states using terminal active and reactive powers, voltage phasor and frequency measurements. It is demonstrated that using the decentralized EKF-UI scheme, synchronous machine states can be estimated accurately enough to enable wide-area power system stabilizers (WA-PSSs). Simulation results on Hydro-Quebec simplified network highlight the efficiency of the proposed method under fault conditions with electromagnetic transients and full-order generator models in realistic multi-machine setups.
机译:同步发电机的转子角和转子速度估计是开发实用的电力系统局部或广域控制的关键。在这种情况下,关键信息是输入信号,例如励磁电压和机械转矩,这些信号无法从容易获得的终端相量测量单元(PMU)信号获得。为了克服这些问题,本文采用具有未知输入的扩展卡尔曼滤波器(称为EKF-UI技术),用于使用终端有功功率和无功功率,电压相量和频率测量对同步电机状态进行分散的动态状态估计。结果表明,使用分散式EKF-UI方案,可以准确地估计同步机器状态,以启用广域电力系统稳定器(WA-PSS)。在魁北克水电简化网络上的仿真结果突显了该方法在故障条件下的电磁瞬态和全阶发电机模型在实际多机设置中的效率。

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