Application of Kalman filter to improve model integrity for securing electricity delivery

P. Du, Zhenyu Huang, R. Diao, Barry Lee, K. Anderson
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引用次数: 7

Abstract

Power system model integrity is essential to many planning and operation tasks to ensure the safety and reliability of electricity delivery. Inaccurate system models would result in unreliable assessment of system security conditions and cause large-scale blackouts such as the 2003 Northeast Blackout. This dictates a strong need for model calibration and verification, which should be done periodically and preferably in an automatic manner. Our previous work has demonstrated the feasibility of applying Extended Kalman Filter (EKF) to calibrate generator parameters using disturbance data recorded by phasor measurement units (PMU). This paper proposes to use a Riccati equation to investigate EKF's performance, especially regarding parameter identifiability. The covariance, which can be derived from the Riccati equation, offers insight into the uncertainties of parameters estimated by the EKF-based method. Simulation results show the effectiveness of the proposed approach.
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应用卡尔曼滤波提高模型完整性,保证电力输送安全
电力系统模型的完整性对许多规划和运行任务至关重要,以确保电力输送的安全可靠。不准确的系统模型将导致对系统安全状况的不可靠评估,并导致大规模停电,如2003年东北大停电。这就决定了对模型校准和验证的强烈需求,这应该定期进行,最好以自动的方式进行。我们之前的工作已经证明了应用扩展卡尔曼滤波器(EKF)来校准发电机参数的可行性,该方法使用相量测量单元(PMU)记录的扰动数据。本文提出使用Riccati方程来研究EKF的性能,特别是在参数可辨识性方面。协方差可以从Riccati方程中推导出来,它提供了对基于ekf方法估计的参数的不确定性的洞察。仿真结果表明了该方法的有效性。
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