Power Systems Dynamic State Estimation using Central Difference Filter

Arindam Chowdhury, Sayantan Chatterjee, Aritro Dey
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Abstract

A nonlinear Sigma point Kalman filter known as Central Difference Filter which considers only first order Taylor series approximation with the help of interpolation formula, have been employed here for the first time during dynamic state estimation of power systems states. This paper also exhibits a comparative performance analysis of two estimation techniques namely Central difference filter (CDF) and Cubature Kalman filter technique (CKF) during power systems dynamic state estimation. The estimation is performed employing measurements from Remote terminal units (RTU) and Phasor measurement units (PMU). The whole simulation process is carried out for IEEE 30 bus test system. Holts two parameter linear exponential technique which often utilized as a state forecasting technique has been used here to forecast the systems state at the prediction step. The superiority of CDF over CKF, has been illustrated here on context of computation time and estimation accuracy.
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基于中心差分滤波器的电力系统动态状态估计
本文首次将一种仅考虑一阶泰勒级数近似的非线性西格玛点卡尔曼滤波器——中心差分滤波器应用于电力系统的动态估计。本文还对中心差分滤波(CDF)和库图卡尔曼滤波(CKF)两种估计技术在电力系统动态估计中的性能进行了比较分析。采用远程终端单元(RTU)和相量测量单元(PMU)进行估计。对ieee30总线测试系统进行了整个仿真过程。本文采用常被用作状态预测技术的霍尔特二参数线性指数技术,在预测阶段对系统状态进行预测。CDF算法在计算时间和估计精度方面优于CKF算法。
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